METHOD AND SYSTEM FOR TELEMEDICINE RESOURCE DEPLOYMENT TO OPTIMIZE COHORT-BASED PATIENT HEALTH OUTCOMES IN RESOURCE-CONSTRAINED ENVIRONMENTS

Information

  • Patent Application
  • 20220230729
  • Publication Number
    20220230729
  • Date Filed
    April 07, 2022
    2 years ago
  • Date Published
    July 21, 2022
    2 years ago
  • Inventors
  • Original Assignees
    • ROM TECHNOLOGIES, INC. (Brookfield, CT, US)
Abstract
A method includes receiving a set of treatment plans. Each treatment plan comprising the set of treatment plans may be associated with a user capable of using a treatment device to perform the associated treatment plan. The method also includes receiving healthcare professional profile information. The method also includes identifying treatment device information for each treatment device capable of being used by a cohort of users associated with respective treatment plans. The method also includes using an artificial intelligence engine, wherein the artificial intelligence engine uses at least one machine learning model configured to generate resource deployment predictions, to generate at least one resource deployment prediction. The at least one machine learning model may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.
Description
BACKGROUND

Remote medical assistance, also referred to, inter alia, as remote medicine, telemedicine, telemed, telmed, tel-med, or telehealth, is an at least two-way communication between a healthcare professional or providers, such as a physician or a physical therapist, and a patient using audio and/or audiovisual and/or other sensorial or perceptive (e.g., tactile, gustatory, haptic, pressure-sensing-based or electromagnetic (e.g., neurostimulation) communications (e.g., via a computer, a smartphone, or a tablet).


SUMMARY

Another aspect of the disclosed embodiments includes a method that includes receiving a set of treatment plans. Each treatment plan comprising the set of treatment plans may be associated with a user capable of using a treatment device to perform the associated treatment plan. The method also includes receiving healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans. The method also includes identifying treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans. The method also includes, using an artificial intelligence engine configured to use at least one machine learning model configured to generate resource deployment predictions, generating at least one resource deployment prediction. The at least one machine learning model may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.


Another aspect of the disclosed embodiments includes a system that includes a processing device and a memory communicatively coupled to the processing device and capable of storing instructions. The processing device executes the instructions to perform any of the methods, operations, or steps described herein.


Another aspect of the disclosed embodiments includes a tangible, non-transitory computer-readable medium storing instructions that, when executed, cause a processing device to perform any of the methods, operations, or steps described herein.





BRIEF DESCRIPTION OF THE DRAWINGS

The disclosure is best understood from the following detailed description when read in conjunction with the accompanying drawings. It is emphasized that, according to common practice, the various features of the drawings are not to-scale. On the contrary, the dimensions of the various features are arbitrarily expanded or reduced for clarity.



FIG. 1 generally illustrates a block diagram of an embodiment of a computer-implemented system for managing a treatment plan according to the principles of the present disclosure.



FIG. 2 generally illustrates a perspective view of an embodiment of a treatment device according to the principles of the present disclosure.



FIG. 3 generally illustrates a perspective view of a pedal of the treatment device of FIG. 2 according to the principles of the present disclosure.



FIG. 4 generally illustrates a perspective view of a person using the treatment device of FIG. 2 according to the principles of the present disclosure.



FIG. 5 generally illustrates an example embodiment of an overview display of an assistant interface according to the principles of the present disclosure.



FIG. 6 generally illustrates an example block diagram of training a machine learning model to output, based on data pertaining to the patient, a treatment plan for the patient according to the principles of the present disclosure.



FIG. 7 generally illustrates an embodiment of an overview display of the assistant interface presenting recommended treatment plans and excluded treatment plans in real-time during a telemedicine session according to the principles of the present disclosure.



FIG. 8 generally illustrates an embodiment of the overview display of the assistant interface presenting, in real-time during a telemedicine session, recommended treatment plans that have changed as a result of patient data changing according to the principles of the present disclosure.



FIG. 9 is a flow diagram generally illustrating a method for resource deployment to optimize cohort-based patient health outcomes in resource-constrained environments, according to the principles of the present disclosure.



FIG. 10 is a flow diagram generally illustrating an alternative method for resource deployment to optimize cohort-based patient health outcomes in resource-constrained environments, according to the principles of the present disclosure.



FIG. 11 is a flow diagram generally illustrating an alternative method for resource deployment to optimize cohort-based patient health outcomes in resource-constrained environments, according to the principles of the present disclosure.



FIG. 12 generally illustrates a computer system according to the principles of the present disclosure.





NOTATION AND NOMENCLATURE

Various terms are used to refer to particular system components. Different companies may refer to a component by different names—this document does not intend to distinguish between components that differ in name but not function. In the following discussion and in the claims, the terms “including” and “comprising” are used in an open-ended fashion, and thus should be interpreted to mean “including, but not limited to . . . ” Also, the term “couple” or “couples” is intended to mean either an indirect or direct connection. Thus, if a first device couples to a second device, that connection may be through a direct connection or through an indirect connection via other devices and connections.


The terminology used herein is for the purpose of describing particular example embodiments only, and is not intended to be limiting. As used herein, the singular forms “a,” “an,” and “the” may be intended to include the plural forms as well, unless the context clearly indicates otherwise. The method steps, processes, and operations described herein are not to be construed as necessarily requiring their performance in the particular order discussed or illustrated, unless specifically identified as an order of performance. It is also to be understood that additional or alternative steps may be employed.


The terms first, second, third, etc. may be used herein to describe various elements, components, regions, layers and/or sections; however, these elements, components, regions, layers and/or sections should not be limited by these terms. These terms may be only used to distinguish one element, component, region, layer, or section from another region, layer, or section. Terms such as “first,” “second,” and other numerical terms, when used herein, do not imply a sequence or order unless clearly indicated by the context. Thus, a first element, component, region, layer, or section discussed below could be termed a second element, component, region, layer, or section without departing from the teachings of the example embodiments. The phrase “at least one of,” when used with a list of items, means that different combinations of one or more of the listed items may be used, and only one item in the list may be needed. For example, “at least one of: A, B, and C” includes any of the following combinations: A, B, C, A and B, A and C, B and C, and A and B and C. In another example, the phrase “one or more” when used with a list of items means there may be one item or any suitable number of items exceeding one.


Spatially relative terms, such as “inner,” “outer,” “beneath,” “below,” “lower,” “above,” “upper,” “top,” “bottom,” and the like, may be used herein. These spatially relative terms can be used for ease of description to describe one element's or feature's relationship to another element(s) or feature(s) as illustrated in the figures. The spatially relative terms may also be intended to encompass different orientations of the device in use, or operation, in addition to the orientation depicted in the figures. For example, if the device in the figures is turned over, elements described as “below” or “beneath” other elements or features would then be oriented “above” the other elements or features. Thus, the example term “below” can encompass both an orientation of above and below. The device may be otherwise oriented (rotated 90 degrees or at other orientations) and the spatially relative descriptions used herein interpreted accordingly.


A “treatment plan” may include one or more treatment protocols, and each treatment protocol includes one or more treatment sessions. Each treatment session comprises several session periods, with each session period including a particular exercise for treating the body part of the patient. For example, a treatment plan for post-operative rehabilitation after a knee surgery may include an initial treatment protocol with twice daily stretching sessions for the first 3 days after surgery and a more intensive treatment protocol with active exercise sessions performed 4 times per day starting 4 days after surgery. A treatment plan may also include information pertaining to a medical procedure to perform on the patient, a treatment protocol for the patient using a treatment device, a diet regimen for the patient, a medication regimen for the patient, a sleep regimen for the patient, additional regimens, or some combination thereof.


The terms telemedicine, telehealth, telemed, teletherapeutic, telemedicine, etc. may be used interchangeably herein.


The term “medical action(s)” may refer to any suitable action performed by the medical professional (e.g., or the healthcare professional), and such action or actions may include diagnoses, prescription of treatment plans, prescription of treatment devices, and the making, composing and/or executing of appointments, telemedicine sessions, prescriptions or medicines, telephone calls, emails, text messages, and the like.


DETAILED DESCRIPTION

The following discussion is directed to various embodiments of the present disclosure. Although one or more of these embodiments may be preferred, the embodiments disclosed should not be interpreted, or otherwise used, as limiting the scope of the disclosure, including the claims. In addition, one skilled in the art will understand that the following description has broad application, and the discussion of any embodiment is meant only to be exemplary of that embodiment, and not intended to intimate that the scope of the disclosure, including the claims, is limited to that embodiment.


Determining optimal remote examination procedures to create an optimal treatment plan for a patient having certain characteristics (e.g., vital-sign or other measurements; performance; demographic; psychographic; geographic; diagnostic; measurement- or test-based; medically historic; etiologic; cohort-associative; differentially diagnostic; surgical, physically therapeutic, behavioral, pharmacologic and other treatment(s) recommended; etc.) may be a technically challenging problem. For example, a multitude of information may be considered when determining a treatment plan, which may result in inefficiencies and inaccuracies in the treatment plan selection process. In a rehabilitative setting, some of the multitude of information considered may include characteristics of the patient such as personal information, performance information, and measurement information.


The personal information may include, e.g., demographic, psychographic or other information, such as an age, a weight, a gender, a height, a body mass index, a medical condition, a familial medication history, an injury, a medical procedure, a medication prescribed, or some combination thereof. The performance information may include, e.g., an elapsed time of using a treatment device, an amount of force exerted on a portion of the treatment device, a range of motion achieved on the treatment device, a movement speed of a portion of the treatment device, a duration of use of the treatment device, an indication of a plurality of pain levels using the treatment device, or some combination thereof. The measurement information may include, e.g., one or more vital signs of the user, a respiration rate of the user, a heartrate of the user, a temperature of the user, an SpO2-measurement of the blood oxygen level of the user (e.g., oxygen saturation level), a blood pressure of the user, a glucose level of the user, other suitable measurement information of the user, microbiome-related data pertaining to the user, or a combination thereof. It may be desirable to process and analyze the characteristics of a multitude of patients, the treatment plans performed for those patients, and the results of the treatment plans for those patients.


Further, another technical problem may involve distally treating, via a computing device during a telemedicine or telehealth session, a patient from a location different than a location at which the patient is located. An additional technical problem is controlling or enabling the control of, from the different location, a treatment device used by the patient at the location at which the patient is located. Oftentimes, when a patient undergoes rehabilitative surgery (e.g., knee surgery), a healthcare professional may prescribe a treatment device to the patient to use to perform a treatment protocol at their residence or any mobile location or temporary domicile. A healthcare professional may refer to a doctor, physician assistant, nurse, chiropractor, dentist, physical therapist, acupuncturist, physical trainer, coach, personal trainer, neurologist, cardiologist, or the like. A healthcare professional may refer to any person with a credential, license, degree, or the like in the field of medicine, physical therapy, rehabilitation, or the like.


When the healthcare professional is located in a different location from the patient and the treatment device, it may be technically challenging for the healthcare professional to monitor the patient's actual progress (as opposed to relying on the patient's word about their progress) using the treatment device, modify the treatment plan according to the patient's progress, adapt the treatment device to the personal characteristics of the patient as the patient performs the treatment plan, and the like.


Additionally, or alternatively, resources, such as the treatment device or other treatment devices, healthcare professionals, and the like, may be limited or scarce, due to various reasons, such as an epidemic, pandemic, regional or local supply, and the like. Accordingly, systems and methods, such as those described herein, may be configured to optimize, based on a telemedicine resource deployment, cohort-based patient health outcomes in resource-constrained environments. In some embodiments, the systems and methods described herein may be configured to receive treatment data pertaining to a user capable of using the treatment device to perform the treatment plan. The user may include a patient or a person using the treatment device to perform various exercises. In some embodiments, the systems and methods described herein may be configured to receive the treatment data while the user uses the treatment device. Additionally, or alternatively, the systems and methods described herein may be configured to receive the treatment data while the user uses the treatment device during a telemedicine session.


The treatment plan may include a rehabilitation plan, a prehabilitation plan, an exercise plan, or other suitable treatment plan. The treatment data may include various characteristics of the user, various measurement information pertaining to the user while the user uses the treatment device, various performance measurement information pertaining to the use of the treatment device by the user, various characteristics of the treatment device, the treatment plan, other suitable data, or a combination thereof.


In some embodiments, while the user uses the treatment device to perform the treatment plan, at least some of the treatment data may correspond to sensor data from a sensor configured to sense various characteristics of the treatment device and/or the measurement information of the user. Additionally, or alternatively, while the user uses the treatment device to perform the treatment plan, at least some of the treatment data may correspond to sensor data from a sensor associated with a wearable device configured to sense the measurement information of the user.


The various characteristics of the treatment device may include one or more settings of the treatment device, a current revolutions per time period (e.g., such as one minute) of a rotating member (e.g., such as a wheel) of the treatment device, a resistance setting of the treatment device, other suitable characteristics of the treatment device, or a combination thereof. The measurement information may include one or more vital signs of the user, a respiration rate of the user, a heartrate of the user, a temperature of the user, an SpO2-measurement of the blood oxygen level of the user (e.g., oxygen saturation level), a blood pressure of the user, a glucose level of the user, other suitable measurement information of the user, microbiome-related data pertaining to the user, or a combination thereof.


The various characteristics of the user may include a user age, a user height, a user weight, one or more health-related or other conditions, comorbidities or characteristics of the user, a location of the user, and the like. The various performance measurement information may include, while the user uses the treatment device, at least one of a pedal pressure measurement of a first pedal of the treatment device, a pedal rotational angle of the first pedal of the treatment device, wherein the pedal rotational angle of the first pedal is associated with a respective pedal pressure measurement, a pedal pressure measurement of a second pedal of the treatment device, a pedal rotational angle of the second pedal of the treatment device, wherein the pedal rotational angle of the second pedal is associated with a respective pedal pressure measurement, and/or other suitable performance measurement information.


In some embodiments, the systems and methods described herein may be configured to receive a set of treatment plans. Each treatment plan of the set of treatment plans may be associated with a user capable of using a treatment device to perform the associated treatment plan. For example, each treatment plan may be associated with a user or a group of users (e.g., which may be referred to herein as a cohort of users). Additionally, or alternatively, each user may be associated with a treatment plan or a group of treatment plans. Additionally, or alternatively, a group of users may be associated with a treatment plan or a group of treatment plans. For example, as described herein, a cohort of users may share at least one similar characteristic and/or may be assigned to perform at least some similar aspects of a treatment plan. For example, at least two users may be treated following the same or a similar medical procedure. The two or more users may have one or more similar characteristics, such as a similar age, one or more similar healthcare characteristics, and the like. The two or more users may perform the same treatment plan to rehabilitate from the medical procedure.


In some embodiments, the systems and methods described herein may be configured to receive healthcare professional profile information associated with respective healthcare professionals of a set of healthcare professionals. The set of healthcare professionals may include respective healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans of the set of treatment plans. For example, each respective healthcare professional of the set of healthcare professionals may be capable of utilizing at least one aspect of at least one treatment plan to engage in treatment of at least one user associated with the at least one treatment plan.


A respective healthcare professional may include a medical professional (e.g., such as a doctor, a nurse, a therapist, and the like), an exercise professional (e.g., such as a coach, a trainer, a nutritionist, and the like), or another professional sharing at least one of medical and exercise attributes (e.g., such as an exercise physiologist, a physiatrist, a physical therapist, an occupational therapist, and the like). As used herein, and without limiting the foregoing, a “healthcare professional” may be a human being, a robot, a virtual assistant, a virtual assistant in a virtual and/or augmented reality, or an artificially intelligent entity, including a software program, integrated software and hardware, or hardware alone.


In some embodiments, for a respective healthcare professional of the set of healthcare professionals, the healthcare professional profile information may include at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional. Additionally, or alternatively, for the respective healthcare professional of the set of healthcare professionals, the healthcare professional profile information may include at least one of identities of healthcare professionals potentially available to treat a respective user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.


In some embodiments, the systems and methods described herein may be configured to generating, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction. the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


In some embodiments, for a respective treatment device, the treatment device information may include at least one of identification information associated with the respective treatment device (e.g., such as a serial number associated with the treatment device, a model number associated with the treatment device, an internet protocol (IP) address associated with the treatment device, operating system information associated with the treatment device, software patch information associated with the treatment device, installed software application information associated with the treatment device, available software application information associated with the treatment device, hardware information, connectivity information associated with the treatment device, social medical capability information associated with the treatment device, virtual personal trainer capability information associated with the treatment device, and/or the like), location information associated with the respective treatment device (e.g., such as a physical location of the respective treatment device, a virtual location of the treatment device, and/or the like); availability information associated with the respective treatment device (e.g., a time or times that the treatment device is available and not being used by another user, not undergoing scheduled or unscheduled maintenance, a time or times that the treatment device is available for use at the location of the treatment device, one or more time constraints on the use of the treatment device, and/or the like), other suitable information, or a combination thereof.


In some embodiments, the systems and methods described herein may be configured to use an artificial intelligence engine that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, in order to generate at least one resource deployment prediction. The resource deployment prediction may include or indicate one or more resources (e.g., such as one or more healthcare professionals, one or more treatment devices, one or more treatment device locations, other suitable resources, or a combination thereof) capable of being used or engaged with by a respective user to perform at least one aspect of at least one treatment plan of the set of treatment plans.


Additionally, or alternatively, the resource deployment prediction may include or indicate at least scheduling information associated with the one or more resources. The scheduling information may include information corresponding to an availability (e.g., such as a time, a location, or other suitable information corresponding to availability, and the like) of the one or more resources, information corresponding to at least one appointment (e.g., such as a telemedicine appointment) during which the one or more resources may be utilized by the respective user, information corresponding to a health insurance policy associated with the respective user (e.g., such as an estimated out-of-pocket expense, an estimated negotiated rate for the one or more resources, and the like), other suitable information, or a combination thereof.


In some embodiments, according to the at least one resource deployment prediction, the respective user associated with at least one treatment plan of the set of treatment plans may be enabled to perform at least one aspect of the at least one treatment plan using at least one treatment device comprising the set of treatment devices. In some embodiments, during a telemedicine session, the respective user may be enabled to perform at least one aspect of the at least one treatment plan using the at least one treatment device.


In some embodiments, the at least one resource deployment prediction may define a mapping between or among at least some of the healthcare professionals of the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, at least some treatment devices comprising the set of treatment devices, and/or the like. In some embodiments, the at least one resource deployment prediction may be associated with an optimized treatment or performance outcome for the cohort of users associated with the respective treatment plans.


In some embodiments, the at least one machine learning model may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, at least some of the treatment device information, or a combination thereof.


In some embodiments, the systems and methods described herein may be configured to identify super-cohorts of users (e.g., a group comprising one or more cohorts of users) comprising, at least, the cohort of users associated with respective treatment plans of the set of treatment plans. In some embodiments, the at least one machine learning model may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, at least some of the treatment device information, the identified super-cohorts of users, or a combination thereof.


In some embodiments, the systems and methods described herein may be configured to receive, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information. The subsequent treatment plan may correspond to one of at least one treatment plan of the set of treatment plans or to a treatment plan not in the set of treatment plans.


The subsequent healthcare professional profile information may correspond to one of at least one healthcare professional of at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals. The subsequent treatment device information may correspond to one of at least one treatment device of the set of treatment devices and at least one treatment device not in the set of treatment devices.


In some embodiments, the systems and methods described herein may be configured to generate, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction. The at least one machine learning model may generate the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


In some embodiments, the systems and methods described herein may be configured to use artificial intelligence and/or machine learning to assign patients to cohorts and to dynamically control a treatment device based on the assignment during an adaptive telemedicine session. In some embodiments, numerous treatment devices may be provided to patients. The treatment devices may be used by the patients to perform treatment plans in their residences, at a gym, at a rehabilitative center, at a hospital, or any suitable location, including permanent or temporary domiciles.


In some embodiments, the treatment devices may be communicatively coupled to a server. Characteristics of the patients, including the treatment data, may be collected before, during, and/or after the patients perform the treatment plans. For example, the personal information, the performance information, and the measurement information may be collected before, during, and/or after the person performs the treatment plans. The results (e.g., improved performance or decreased performance) of performing each exercise may be collected from the treatment device throughout the treatment plan and after the treatment plan is performed. The parameters, settings, configurations, etc. (e.g., position of pedal, amount of resistance, etc.) of the treatment device may be collected before, during, and/or after the treatment plan is performed.


Each characteristic of the patient, each result, and each parameter, setting, configuration, etc. may be timestamped and may be correlated with a particular step in the treatment plan. Such a technique may enable determining which steps in the treatment plan lead to desired results (e.g., improved muscle strength, range of motion, etc.) and which steps lead to diminishing returns (e.g., continuing to exercise after 3 minutes actually delays or harms recovery).


Data may be collected from the treatment devices and/or any suitable computing device (e.g., computing devices where personal information is entered, such as the interface of the computing device described herein, a clinician interface, patient interface, and the like) over time as the patients use the treatment devices to perform the various treatment plans. The data that may be collected may include the characteristics of the patients, the treatment plans performed by the patients, the results of the treatment plans, any of the data described herein, any other suitable data, or a combination thereof.


In some embodiments, the data may be processed to group certain people into cohorts. The people may be grouped by people having certain or selected similar characteristics, treatment plans, and results of performing the treatment plans. For example, athletic people having no medical conditions who perform a treatment plan (e.g., use the treatment device for 30 minutes a day 5 times a week for 3 weeks) and who fully recover may be grouped into a first cohort. Older people who are classified obese and who perform a treatment plan (e.g., use the treatment plan for 10 minutes a day 3 times a week for 4 weeks) and who improve their range of motion by 75 percent may be grouped into a second cohort.


In some embodiments, an artificial intelligence engine may include one or more machine learning models that are trained using the cohorts. For example, the one or more machine learning models may be trained to receive an input of characteristics of a new patient and to output a treatment plan for the patient that results in a desired result. The machine learning models may match a pattern between the characteristics of the new patient and at least one patient of the patients included in a particular cohort. When a pattern is matched, the machine learning models may assign the new patient to the particular cohort and select the treatment plan associated with the at least one patient. The artificial intelligence engine may be configured to control, distally and based on the treatment plan, the treatment device while the new patient uses the treatment device to perform the treatment plan.


As may be appreciated, the characteristics of the new patient (e.g., a new user) may change as the new patient uses the treatment device to perform the treatment plan. For example, the performance of the patient may improve quicker than expected for people in the cohort to which the new patient is currently assigned. Accordingly, the machine learning models may be trained to dynamically reassign, based on the changed characteristics, the new patient to a different cohort that includes people having characteristics similar to the now-changed characteristics as the new patient. For example, a clinically obese patient may lose weight and no longer meet the weight criterion for the initial cohort, result in the patient's being reassigned to a different cohort with a different weight criterion.


A different treatment plan may be selected for the new patient, and the treatment device may be controlled, distally (e.g., which may be referred to as remotely) and based on the different treatment plan, the treatment device while the new patient uses the treatment device to perform the treatment plan. Such techniques may provide the technical solution of distally controlling a treatment device.


Further, the systems and methods described herein may lead to faster recovery times and/or better results for the patients because the treatment plan that most accurately fits their characteristics is selected and implemented, in real-time, at any given moment. “Real-time” may also refer to near real-time, which may be less than 10 seconds. As described herein, the term “results” may refer to medical results or medical outcomes. Results and outcomes may refer to responses to medical actions.


Depending on what result is desired, the artificial intelligence engine may be trained to output several treatment plans. For example, one result may include recovering to a threshold level (e.g., 75% range of motion) in a fastest amount of time, while another result may include fully recovering (e.g., 100% range of motion) regardless of the amount of time. The data obtained from the patients and sorted into cohorts may indicate that a first treatment plan provides the first result for people with characteristics similar to the patient's, and that a second treatment plan provides the second result for people with characteristics similar to the patient.


Further, the artificial intelligence engine may be trained to output treatment plans that are not optimal i.e., sub-optimal, nonstandard, or otherwise excluded (all referred to, without limitation, as “excluded treatment plans”) for the patient. For example, if a patient has high blood pressure, a particular exercise may not be approved or suitable for the patient as it may put the patient at unnecessary risk or even induce a hypertensive crisis and, accordingly, that exercise may be flagged in the excluded treatment plan for the patient. In some embodiments, the artificial intelligence engine may monitor the treatment data received while the patient (e.g., the user) with, for example, high blood pressure, uses the treatment device to perform an appropriate treatment plan and may modify the appropriate treatment plan to include features of an excluded treatment plan that may provide beneficial results for the patient if the treatment data indicates the patient is handling the appropriate treatment plan without aggravating, for example, the high blood pressure condition of the patient.


In some embodiments, the treatment plans and/or excluded treatment plans may be presented, during a telemedicine or telehealth session, to a healthcare professional. The healthcare professional may select a particular treatment plan for the patient to cause that treatment plan to be transmitted to the patient and/or to control, based on the treatment plan, the treatment device. In some embodiments, to facilitate telehealth or telemedicine applications, including remote diagnoses, determination of treatment plans and rehabilitative and/or pharmacologic prescriptions, the artificial intelligence engine may receive and/or operate distally from the patient and the treatment device.


In such cases, the recommended treatment plans and/or excluded treatment plans may be presented simultaneously with a video of the patient in real-time or near real-time during a telemedicine or telehealth session on a user interface of a computing device of a healthcare professional. The video may also be accompanied by audio, text and other multimedia information. Real-time may refer to less than or equal to 2 seconds. Real-time may also refer to near real-time, which may be less than 10 seconds or any reasonably proximate different between two different times. Additionally, or alternatively, near real-time may refer to any interaction of a sufficiently short time to enable two individuals to engage in a dialogue via such user interface and will generally be less than 10 seconds but greater than 2 seconds.


Presenting the treatment plans generated by the artificial intelligence engine concurrently with a presentation of the patient video may provide an enhanced user interface because the healthcare professional may continue to visually and/or otherwise communicate with the patient while also reviewing the treatment plans on the same user interface. The enhanced user interface may improve the healthcare professional's experience using the computing device and may encourage the healthcare professional to reuse the user interface. Such a technique may also reduce computing resources (e.g., processing, memory, network) because the healthcare professional does not have to switch to another user interface screen to enter a query for a treatment plan to recommend based on the characteristics of the patient. The artificial intelligence engine may be configured to provide, dynamically on the fly, the treatment plans and excluded treatment plans.


In some embodiments, the treatment device may be adaptive and/or personalized because its properties, configurations, and positions may be adapted to the needs of a particular patient. For example, the pedals may be dynamically adjusted on the fly (e.g., via a telemedicine session or based on programmed configurations in response to certain measurements being detected) to increase or decrease a range of motion to comply with a treatment plan designed for the user. In some embodiments, a healthcare professional may adapt, remotely during a telemedicine session, the treatment device to the needs of the patient by causing a control instruction to be transmitted from a server to treatment device. Such adaptive nature may improve the results of recovery for a patient, furthering the goals of personalized medicine, and enabling personalization of the treatment plan on a per-individual basis.



FIG. 1 generally illustrates a block diagram of a computer-implemented system 10, hereinafter called “the system” for managing a treatment plan. Managing the treatment plan may include using an artificial intelligence engine to recommend treatment plans and/or provide excluded treatment plans that should not be recommended to a patient.


The system 10 also includes a server 30 configured to store (e.g., write to an associated memory) and to provide data related to managing the treatment plan. The server 30 may include one or more computers and may take the form of a distributed and/or virtualized computer or computers. The server 30 also includes a first communication interface 32 configured to communicate with the clinician interface 20 via a first network 34. In some embodiments, the first network 34 may include wired and/or wireless network connections such as Wi-Fi, Bluetooth, ZigBee, Near-Field Communications (NFC), cellular data network, etc. The server 30 includes a first processor 36 and a first machine-readable storage memory 38, which may be called a “memory” for short, holding first instructions 40 for performing the various actions of the server 30 for execution by the first processor 36.


The server 30 is configured to store data regarding the treatment plan. For example, the memory 38 includes a system data store 42 configured to hold system data, such as data pertaining to treatment plans for treating one or more patients. The server 30 is also configured to store data regarding performance by a patient in following a treatment plan. For example, the memory 38 includes a patient data store 44 configured to hold patient data, such as data pertaining to the one or more patients, including data representing each patient's performance within the treatment plan.


Additionally, or alternatively, the characteristics (e.g., personal, performance, measurement, etc.) of the people, the treatment plans followed by the people, the level of compliance with the treatment plans, and the results of the treatment plans may use correlations and other statistical or probabilistic measures to enable the partitioning of or to partition the treatment plans into different patient cohort-equivalent databases in the patient data store 44. For example, the data for a first cohort of first patients having a first similar injury, a first similar medical condition, a first similar medical procedure performed, a first treatment plan followed by the first patient, and a first result of the treatment plan may be stored in a first patient database. The data for a second cohort of second patients having a second similar injury, a second similar medical condition, a second similar medical procedure performed, a second treatment plan followed by the second patient, and a second result of the treatment plan may be stored in a second patient database. Any single characteristic or any combination of characteristics may be used to separate the cohorts of patients. In some embodiments, the different cohorts of patients may be stored in different partitions or volumes of the same database. There is no specific limit to the number of different cohorts of patients allowed, other than as limited by mathematical combinatoric and/or partition theory.


This characteristic data, treatment plan data, and results data may be obtained from numerous treatment devices and/or computing devices over time and stored in the database 44. The characteristic data, treatment plan data, and results data may be correlated in the patient-cohort databases in the patient data store 44. The characteristics of the people may include personal information, performance information, and/or measurement information.


In addition to the historical information about other people stored in the patient cohort-equivalent databases, real-time or near-real-time information based on the current patient's characteristics about a current patient being treated may be stored in an appropriate patient cohort-equivalent database. The characteristics of the patient may be determined to match or be similar to the characteristics of another person in a particular cohort (e.g., cohort A) and the patient may be assigned to that cohort.


In some embodiments, the server 30 may execute an artificial intelligence (Al) engine 11 that uses one or more machine learning models 13 to perform at least one of the embodiments disclosed herein. The server 30 may include a training engine 9 capable of generating the one or more machine learning models 13. The machine learning models 13 may be trained to assign people to certain cohorts based on their characteristics, select treatment plans using real-time and historical data correlations involving patient cohort-equivalents, and control a treatment device 70, among other things.


The one or more machine learning models 13 may be generated by the training engine 9 and may be implemented in computer instructions executable by one or more processing devices of the training engine 9 and/or the servers 30. To generate the one or more machine learning models 13, the training engine 9 may train the one or more machine learning models 13. The one or more machine learning models 13 may be used by the artificial intelligence engine 11.


The training engine 9 may be a rackmount server, a router computer, a personal computer, a portable digital assistant, a smartphone, a laptop computer, a tablet computer, a netbook, a desktop computer, an Internet of Things (IoT) device, any other suitable computing device, or a combination thereof. The training engine 9 may be cloud-based or a real-time software platform, and it may include privacy software or protocols, and/or security software or protocols.


To train the one or more machine learning models 13, the training engine 9 may use a training data set of a corpus of the characteristics of the people that used the treatment device 70 to perform treatment plans, the details (e.g., treatment protocol including exercises, amount of time to perform the exercises, how often to perform the exercises, a schedule of exercises, parameters/configurations/settings of the treatment device 70 throughout each step of the treatment plan, etc.) of the treatment plans performed by the people using the treatment device 70, and the results of the treatment plans performed by the people. The one or more machine learning models 13 may be trained to match patterns of characteristics of a patient with characteristics of other people assigned to a particular cohort. The term “match” may refer to an exact match, a correlative match, a substantial match, etc. The one or more machine learning models 13 may be trained to receive the characteristics of a patient as input, map the characteristics to characteristics of people assigned to a cohort, and select a treatment plan from that cohort. The one or more machine learning models 13 may also be trained to control, based on the treatment plan, the machine learning apparatus 70.


Different machine learning models 13 may be trained to recommend different treatment plans for different desired results. For example, one machine learning model may be trained to recommend treatment plans for most effective recovery, while another machine learning model may be trained to recommend treatment plans based on speed of recovery.


Using training data that includes training inputs and corresponding target outputs, the one or more machine learning models 13 may refer to model artifacts created by the training engine 9. The training engine 9 may find patterns in the training data wherein such patterns map the training input to the target output, and generate the machine learning models 13 that capture these patterns. In some embodiments, the artificial intelligence engine 11, the database 33, and/or the training engine 9 may reside on another component (e.g., assistant interface 94, clinician interface 20, etc.) depicted in FIG. 1.


The one or more machine learning models 13 may comprise, e.g., a single level of linear or non-linear operations (e.g., a support vector machine [SVM]) or the machine learning models 13 may be a deep network, i.e., a machine learning model comprising multiple levels of non-linear operations. Examples of deep networks are neural networks including generative adversarial networks, convolutional neural networks, recurrent neural networks with one or more hidden layers, and fully connected neural networks (e.g., each neuron may transmit its output signal to the input of the remaining neurons, as well as to itself). For example, the machine learning model may include numerous layers and/or hidden layers that perform calculations (e.g., dot products) using various neurons.


The system 10 also includes a patient interface 50 configured to communicate information to a patient and to receive feedback from the patient. Specifically, the patient interface includes an input device 52 and an output device 54, which may be collectively called a patient user interface 52, 54. The input device 52 may include one or more devices, such as a keyboard, a mouse, a touch screen input, a gesture sensor, and/or a microphone and processor configured for voice recognition. The output device 54 may take one or more different forms including, for example, a computer monitor or display screen on a tablet, smartphone, or a smart watch. The output device 54 may include other hardware and/or software components such as a projector, virtual reality capability, augmented reality capability, etc. The output device 54 may incorporate various different visual, audio, or other presentation technologies. For example, the output device 54 may include a non-visual display, such as an audio signal, which may include spoken language and/or other sounds such as tones, chimes, and/or melodies, which may signal different conditions and/or directions. The output device 54 may comprise one or more different display screens presenting various data and/or interfaces or controls for use by the patient. The output device 54 may include graphics, which may be presented by a web-based interface and/or by a computer program or application (App.).


As is generally illustrated in FIG. 1, the patient interface 50 includes a second communication interface 56, which may also be called a remote communication interface configured to communicate with the server 30 and/or the clinician interface 20 via a second network 58. In some embodiments, the second network 58 may include a local area network (LAN), such as an Ethernet network. In some embodiments, the second network 58 may include the Internet, and communications between the patient interface 50 and the server 30 and/or the clinician interface 20 may be secured via encryption, such as, for example, by using a virtual private network (VPN). In some embodiments, the second network 58 may include wired and/or wireless network connections such as Wi-Fi, Bluetooth, ZigBee, Near-Field Communications (NFC), cellular data network, etc. In some embodiments, the second network 58 may be the same as and/or operationally coupled to the first network 34.


The patient interface 50 includes a second processor 60 and a second machine-readable storage memory 62 holding second instructions 64 for execution by the second processor 60 for performing various actions of patient interface 50. The second machine-readable storage memory 62 also includes a local data store 66 configured to hold data, such as data pertaining to a treatment plan and/or patient data, such as data representing a patient's performance within a treatment plan. The patient interface 50 also includes a local communication interface 68 configured to communicate with various devices for use by the patient in the vicinity of the patient interface 50. The local communication interface 68 may include wired and/or wireless communications. In some embodiments, the local communication interface 68 may include a local wireless network such as Wi-Fi, Bluetooth, ZigBee, Near-Field Communications (NFC), cellular data network, etc.


The system 10 also includes a treatment device 70 configured to be manipulated by the patient and/or to manipulate a body part of the patient for performing activities according to the treatment plan. In some embodiments, the treatment device 70 may take the form of an exercise and rehabilitation apparatus configured to perform and/or to aid in the performance of a rehabilitation regimen, which may be an orthopedic rehabilitation regimen, and the treatment includes rehabilitation of a body part of the patient, such as a joint or a bone or a muscle group. The treatment device 70 may be any suitable medical, rehabilitative, therapeutic, etc. apparatus configured to be controlled distally via another computing device to treat a patient and/or exercise the patient. The treatment device 70 may be an electromechanical machine including one or more weights, an electromechanical bicycle, an electromechanical spin-wheel, a smart-mirror, a treadmill, or the like. The body part may include, for example, a spine, a hand, a foot, a knee, or a shoulder. The body part may include a part of a joint, a bone, or a muscle group, such as one or more vertebrae, a tendon, or a ligament. As is generally illustrated in FIG. 1, the treatment device 70 includes a controller 72, which may include one or more processors, computer memory, and/or other components. The treatment device 70 also includes a fourth communication interface 74 configured to communicate with the patient interface 50 via the local communication interface 68. The treatment device 70 also includes one or more internal sensors 76 and an actuator 78, such as a motor. The actuator 78 may be used, for example, for moving the patient's body part and/or for resisting forces by the patient.


The internal sensors 76 may measure one or more operating characteristics of the treatment device 70 such as, for example, a force a position, a speed, and/or a velocity. In some embodiments, the internal sensors 76 may include a position sensor configured to measure at least one of a linear motion or an angular motion of a body part of the patient. For example, an internal sensor 76 in the form of a position sensor may measure a distance that the patient is able to move a part of the treatment device 70, where such distance may correspond to a range of motion that the patient's body part is able to achieve. In some embodiments, the internal sensors 76 may include a force sensor configured to measure a force applied by the patient. For example, an internal sensor 76 in the form of a force sensor may measure a force or weight the patient is able to apply, using a particular body part, to the treatment device 70.


The system 10 generally illustrated in FIG. 1 also includes an ambulation sensor 82, which communicates with the server 30 via the local communication interface 68 of the patient interface 50. The ambulation sensor 82 may track and store a number of steps taken by the patient. In some embodiments, the ambulation sensor 82 may take the form of a wristband, wristwatch, or smart watch. In some embodiments, the ambulation sensor 82 may be integrated within a phone, such as a smartphone.


The system 10 generally illustrated in FIG. 1 also includes a goniometer 84, which communicates with the server 30 via the local communication interface 68 of the patient interface 50. The goniometer 84 measures an angle of the patient's body part. For example, the goniometer 84 may measure the angle of flex of a patient's knee or elbow or shoulder.


The system 10 generally illustrated in FIG. 1 also includes a pressure sensor 86, which communicates with the server 30 via the local communication interface 68 of the patient interface 50. The pressure sensor 86 measures an amount of pressure or weight applied by a body part of the patient. For example, pressure sensor 86 may measure an amount of force applied by a patient's foot when pedaling a stationary bike.


The system 10 generally illustrated in FIG. 1 also includes a supervisory interface 90 which may be similar or identical to the clinician interface 20. In some embodiments, the supervisory interface 90 may have enhanced functionality beyond what is provided on the clinician interface 20. The supervisory interface 90 may be configured for use by a person having responsibility for the treatment plan, such as an orthopedic surgeon.


The system 10 generally illustrated in FIG. 1 also includes a reporting interface 92 which may be similar or identical to the clinician interface 20. In some embodiments, the reporting interface 92 may have less functionality from what is provided on the clinician interface 20. For example, the reporting interface 92 may not have the ability to modify a treatment plan. Such a reporting interface 92 may be used, for example, by a biller to determine the use of the system 10 for billing purposes. In another example, the reporting interface 92 may not have the ability to display patient identifiable information, presenting only pseudonymized data and/or anonymized data for certain data fields concerning a data subject and/or for certain data fields concerning a quasi-identifier of the data subject. Such a reporting interface 92 may be used, for example, by a researcher to determine various effects of a treatment plan on different patients.


The system 10 includes an assistant interface 94 for a healthcare professional, such as those described herein, to remotely communicate with the patient interface 50 and/or the treatment device 70. Such remote communications may enable the healthcare professional to provide assistance or guidance to a patient using the system 10. More specifically, the assistant interface 94 is configured to communicate a telemedicine signal 96, 97, 98a, 98b, 99a, 99b with the patient interface 50 via a network connection such as, for example, via the first network 34 and/or the second network 58. The telemedicine signal 96, 97, 98a, 98b, 99a, 99b comprises one of an audio signal 96, an audiovisual signal 97, an interface control signal 98a for controlling a function of the patient interface 50, an interface monitor signal 98b for monitoring a status of the patient interface 50, an apparatus control signal 99a for changing an operating parameter of the treatment device 70, and/or an apparatus monitor signal 99b for monitoring a status of the treatment device 70. In some embodiments, each of the control signals 98a, 99a may be unidirectional, conveying commands from the assistant interface 94 to the patient interface 50. In some embodiments, in response to successfully receiving a control signal 98a, 99a and/or to communicate successful and/or unsuccessful implementation of the requested control action, an acknowledgement message may be sent from the patient interface 50 to the assistant interface 94. In some embodiments, each of the monitor signals 98b, 99b may be unidirectional, status-information commands from the patient interface 50 to the assistant interface 94. In some embodiments, an acknowledgement message may be sent from the assistant interface 94 to the patient interface 50 in response to successfully receiving one of the monitor signals 98b, 99b.


In some embodiments, the patient interface 50 may be configured as a pass-through for the apparatus control signals 99a and the apparatus monitor signals 99b between the treatment device 70 and one or more other devices, such as the assistant interface 94 and/or the server 30. For example, the patient interface 50 may be configured to transmit an apparatus control signal 99a in response to an apparatus control signal 99a within the telemedicine signal 96, 97, 98a, 98b, 99a, 99b from the assistant interface 94.


In some embodiments, the assistant interface 94 may be presented on a shared physical device as the clinician interface 20. For example, the clinician interface 20 may include one or more screens that implement the assistant interface 94. Alternatively or additionally, the clinician interface 20 may include additional hardware components, such as a video camera, a speaker, and/or a microphone, to implement aspects of the assistant interface 94.


In some embodiments, one or more portions of the telemedicine signal 96, 97, 98a, 98b, 99a, 99b may be generated from a prerecorded source (e.g., an audio recording, a video recording, or an animation) for presentation by the output device 54 of the patient interface 50. For example, a tutorial video may be streamed from the server 30 and presented upon the patient interface 50. Content from the prerecorded source may be requested by the patient via the patient interface 50. Alternatively, via a control on the assistant interface 94, the healthcare professional may cause content from the prerecorded source to be played on the patient interface 50.


The assistant interface 94 includes an assistant input device 22 and an assistant display 24, which may be collectively called an assistant user interface 22, 24. The assistant input device 22 may include one or more of a telephone, a keyboard, a mouse, a trackpad, or a touch screen, for example. Alternatively or additionally, the assistant input device 22 may include one or more microphones. In some embodiments, the one or more microphones may take the form of a telephone handset, headset, or wide-area microphone or microphones configured for the healthcare professional to speak to a patient via the patient interface 50. In some embodiments, assistant input device 22 may be configured to provide voice-based functionalities, with hardware and/or software configured to interpret spoken instructions by the healthcare professional by using the one or more microphones. The assistant input device 22 may include functionality provided by or similar to existing voice-based assistants such as Siri by Apple, Alexa by Amazon, Google Assistant, or Bixby by Samsung. The assistant input device 22 may include other hardware and/or software components. The assistant input device 22 may include one or more general purpose devices and/or special-purpose devices.


The assistant display 24 may take one or more different forms including, for example, a computer monitor or display screen on a tablet, a smartphone, or a smart watch. The assistant display 24 may include other hardware and/or software components such as projectors, virtual reality capabilities, or augmented reality capabilities, etc. The assistant display 24 may incorporate various different visual, audio, or other presentation technologies. For example, the assistant display 24 may include a non-visual display, such as an audio signal, which may include spoken language and/or other sounds such as tones, chimes, melodies, and/or compositions, which may signal different conditions and/or directions. The assistant display 24 may comprise one or more different display screens presenting various data and/or interfaces or controls for use by the healthcare professional. The assistant display 24 may include graphics, which may be presented by a web-based interface and/or by a computer program or application (App.).


In some embodiments, the system 10 may provide computer translation of language from the assistant interface 94 to the patient interface 50 and/or vice-versa. The computer translation of language may include computer translation of spoken language and/or computer translation of text. Additionally or alternatively, the system 10 may provide voice recognition and/or spoken pronunciation of text. For example, the system 10 may convert spoken words to printed text and/or the system 10 may audibly speak language from printed text. The system 10 may be configured to recognize spoken words by any or all of the patient, the clinician, and/or the healthcare professional. In some embodiments, the system 10 may be configured to recognize and react to spoken requests or commands by the patient. For example, the system 10 may automatically initiate a telemedicine session in response to a verbal command by the patient (which may be given in any one of several different languages).


In some embodiments, the server 30 may generate aspects of the assistant display 24 for presentation by the assistant interface 94. For example, the server 30 may include a web server configured to generate the display screens for presentation upon the assistant display 24. For example, the artificial intelligence engine 11 may generate recommended treatment plans and/or excluded treatment plans for patients and generate the display screens including those recommended treatment plans and/or external treatment plans for presentation on the assistant display 24 of the assistant interface 94. In some embodiments, the assistant display 24 may be configured to present a virtualized desktop hosted by the server 30. In some embodiments, the server 30 may be configured to communicate with the assistant interface 94 via the first network 34. In some embodiments, the first network 34 may include a local area network (LAN), such as an Ethernet network.


In some embodiments, the first network 34 may include the Internet, and communications between the server 30 and the assistant interface 94 may be secured via privacy enhancing technologies, such as, for example, by using encryption over a virtual private network (VPN). Alternatively or additionally, the server 30 may be configured to communicate with the assistant interface 94 via one or more networks independent of the first network 34 and/or other communication means, such as a direct wired or wireless communication channel. In some embodiments, the patient interface 50 and the treatment device 70 may each operate from a patient location geographically separate from a location of the assistant interface 94. For example, the patient interface 50 and the treatment device 70 may be used as part of an in-home rehabilitation system, which may be aided remotely by using the assistant interface 94 at a centralized location, such as a clinic or a call center.


In some embodiments, the assistant interface 94 may be one of several different terminals (e.g., computing devices) that may be grouped together, for example, in one or more call centers or at one or more clinicians' offices. In some embodiments, a plurality of assistant interfaces 94 may be distributed geographically. In some embodiments, a person may work as a healthcare professional remotely from any conventional office infrastructure. Such remote work may be performed, for example, where the assistant interface 94 takes the form of a computer and/or telephone. This remote work functionality may allow for work-from-home arrangements that may include part time and/or flexible work hours for a healthcare professional.



FIGS. 2-3 show an embodiment of a treatment device 70. More specifically, FIG. 2 generally illustrates a treatment device 70 in the form of a stationary cycling machine 100, which may be called a stationary bike, for short. The stationary cycling machine 100 includes a set of pedals 102 each attached to a pedal arm 104 for rotation about an axle 106. In some embodiments, and as is generally illustrated in FIG. 2, the pedals 102 are movable on the pedal arms 104 in order to adjust a range of motion used by the patient in pedaling. For example, the pedals being located inwardly toward the axle 106 corresponds to a smaller range of motion than when the pedals are located outwardly away from the axle 106. A pressure sensor 86 is attached to or embedded within one of the pedals 102 for measuring an amount of force applied by the patient on the pedal 102. The pressure sensor 86 may communicate wirelessly to the treatment device 70 and/or to the patient interface 50.



FIG. 4 generally illustrates a person (a patient) using the treatment device of FIG. 2, and showing sensors and various data parameters connected to a patient interface 50. The example patient interface 50 is a tablet computer or smartphone, or a phablet, such as an iPad, an iPhone, an Android device, or a Surface tablet, which is held manually by the patient. In some other embodiments, the patient interface 50 may be embedded within or attached to the treatment device 70.



FIG. 4 generally illustrates the patient wearing the ambulation sensor 82 on his wrist, with a note showing “STEPS TODAY 1355”, indicating that the ambulation sensor 82 has recorded and transmitted that step count to the patient interface 50. FIG. 4 also generally illustrates the patient wearing the goniometer 84 on his right knee, with a note showing “KNEE ANGLE 72°”, indicating that the goniometer 84 is measuring and transmitting that knee angle to the patient interface 50. FIG. 4 also generally illustrates a right side of one of the pedals 102 with a pressure sensor 86 showing “FORCE 12.5 lbs.,” indicating that the right pedal pressure sensor 86 is measuring and transmitting that force measurement to the patient interface 50.



FIG. 4 also generally illustrates a left side of one of the pedals 102 with a pressure sensor 86 showing “FORCE 27 lbs.”, indicating that the left pedal pressure sensor 86 is measuring and transmitting that force measurement to the patient interface 50. FIG. 4 also generally illustrates other patient data, such as an indicator of “SESSION TIME 0:04:13”, indicating that the patient has been using the treatment device 70 for 4 minutes and 13 seconds. This session time may be determined by the patient interface 50 based on information received from the treatment device 70. FIG. 4 also generally illustrates an indicator showing “PAIN LEVEL 3”. Such a pain level may be obtained from the patent in response to a solicitation, such as a question, presented upon the patient interface 50.



FIG. 5 is an example embodiment of an overview display 120 of the assistant interface 94. Specifically, the overview display 120 presents several different controls and interfaces for the healthcare professional to remotely assist a patient with using the patient interface 50 and/or the treatment device 70. This remote assistance functionality may also be called telemedicine or telehealth.


Specifically, the overview display 120 includes a patient profile display 130 presenting biographical information regarding a patient using the treatment device 70. The patient profile display 130 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5, although the patient profile display 130 may take other forms, such as a separate screen or a popup window.


In some embodiments, the patient profile display 130 may include a limited subset of the patient's biographical information. More specifically, the data presented upon the patient profile display 130 may depend upon the healthcare professional's need for that information. For example, a healthcare professional that is assisting the patient with a medical issue may be provided with medical history information regarding the patient, whereas a technician troubleshooting an issue with the treatment device 70 may be provided with a much more limited set of information regarding the patient. The technician, for example, may be given only the patient's name.


The patient profile display 130 may include pseudonymized data and/or anonymized data or use any privacy enhancing technology to prevent confidential patient data from being communicated in a way that could violate patient confidentiality requirements. Such privacy enhancing technologies may enable compliance with laws, regulations, or other rules of governance such as, but not limited to, the Health Insurance Portability and Accountability Act (HIPAA), or the General Data Protection Regulation (GDPR), wherein the patient may be deemed a “data subject”.


In some embodiments, the patient profile display 130 may present information regarding the treatment plan for the patient to follow in using the treatment device 70. Such treatment plan information may be limited to a healthcare professional. For example, a healthcare professional assisting the patient with an issue regarding the treatment regimen may be provided with treatment plan information, whereas a technician troubleshooting an issue with the treatment device 70 may not be provided with any information regarding the patient's treatment plan.


In some embodiments, one or more recommended treatment plans and/or excluded treatment plans may be presented in the patient profile display 130 to the healthcare professional. The one or more recommended treatment plans and/or excluded treatment plans may be generated by the artificial intelligence engine 11 of the server 30 and received from the server 30 in real-time during, inter alia, a telemedicine or telehealth session. An example of presenting the one or more recommended treatment plans and/or ruled-out treatment plans is described below with reference to FIG. 7.


The example overview display 120 generally illustrated in FIG. 5 also includes a patient status display 134 presenting status information regarding a patient using the treatment device. The patient status display 134 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5, although the patient status display 134 may take other forms, such as a separate screen or a popup window.


The patient status display 134 includes sensor data 136 from one or more of the external sensors 82, 84, 86, and/or from one or more internal sensors 76 of the treatment device 70. In some embodiments, the patient status display 134 may include sensor data from one or more sensors of one or more wearable devices worn by the patient while using the treatment device 70. The one or more wearable devices may include a watch, a bracelet, a necklace, a headband, a wristband, an ankle band, any other suitable band, eyeglasses or eyewear (such as, without limitation, Google Glass) a chest or torso strap, a device configured to be worked on, attached to, or communicatively coupled to a body, and the like. While the user is using the treatment device 70, the one or more wearable devices may be configured to monitor, with respect to the user, a heartrate, a temperature, a blood pressure, an eye dilation, one or more vital signs, one or more metabolic markers, one or more biomarkers, and the like. In some embodiments, the patient status display 134 may present other data 138 regarding the patient, such as last reported pain level, or progress within a treatment plan.


User access controls may be used to limit access, including what data is available to be viewed and/or modified, on any or all of the user interfaces 20, 50, 90, 92, 94 of the system 10. In some embodiments, user access controls may be employed to control what information is available to any given person using the system 10. For example, data presented on the assistant interface 94 may be controlled by user access controls, with permissions set depending on the healthcare professional/user's need for and/or qualifications to view that information.


The example overview display 120 generally illustrated in FIG. 5 also includes a help data display 140 presenting information for the healthcare professional to use in assisting the patient. The help data display 140 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5. The help data display 140 may take other forms, such as a separate screen or a popup window. The help data display 140 may include, for example, presenting answers to frequently asked questions regarding use of the patient interface 50 and/or the treatment device 70.


The help data display 140 may also include research data or best practices. In some embodiments, the help data display 140 may present scripts for answers or explanations in response to patient questions. In some embodiments, the help data display 140 may present flow charts or walk-throughs for the healthcare professional to use in determining a root cause and/or solution to a patient's problem.


In some embodiments, the assistant interface 94 may present two or more help data displays 140, which may be the same or different, for simultaneous presentation of help data for use by the healthcare professional. for example, a first help data display may be used to present a troubleshooting flowchart to determine the source of a patient's problem, and a second help data display may present script information for the healthcare professional to read to the patient, such information to preferably include directions for the patient to perform some action, which may help to narrow down or solve the problem. In some embodiments, based upon inputs to the troubleshooting flowchart in the first help data display, the second help data display may automatically populate with script information.


The example overview display 120 generally illustrated in FIG. 5 also includes a patient interface control 150 presenting information regarding the patient interface 50, and/or to modify one or more settings of the patient interface 50. The patient interface control 150 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5. The patient interface control 150 may take other forms, such as a separate screen or a popup window. The patient interface control 150 may present information communicated to the assistant interface 94 via one or more of the interface monitor signals 98b.


As is generally illustrated in FIG. 5, the patient interface control 150 includes a display feed 152 of the display presented by the patient interface 50. In some embodiments, the display feed 152 may include a live copy of the display screen currently being presented to the patient by the patient interface 50. In other words, the display feed 152 may present an image of what is presented on a display screen of the patient interface 50.


In some embodiments, the display feed 152 may include abbreviated information regarding the display screen currently being presented by the patient interface 50, such as a screen name or a screen number. The patient interface control 150 may include a patient interface setting control 154 for the healthcare professional to adjust or to control one or more settings or aspects of the patient interface 50. In some embodiments, the patient interface setting control 154 may cause the assistant interface 94 to generate and/or to transmit an interface control signal 98 for controlling a function or a setting of the patient interface 50.


In some embodiments, the patient interface setting control 154 may include collaborative browsing or co-browsing capability for the healthcare professional to remotely view and/or control the patient interface 50. For example, the patient interface setting control 154 may enable the healthcare professional to remotely enter text to one or more text entry fields on the patient interface 50 and/or to remotely control a cursor on the patient interface 50 using a mouse or touchscreen of the assistant interface 94.


In some embodiments, using the patient interface 50, the patient interface setting control 154 may allow the healthcare professional to change a setting that cannot be changed by the patient. For example, the patient interface 50 may be precluded from accessing a language setting to prevent a patient from inadvertently switching, on the patient interface 50, the language used for the displays, whereas the patient interface setting control 154 may enable the healthcare professional to change the language setting of the patient interface 50. In another example, the patient interface 50 may not be able to change a font size setting to a smaller size in order to prevent a patient from inadvertently switching the font size used for the displays on the patient interface 50 such that the display would become illegible to the patient, whereas the patient interface setting control 154 may provide for the healthcare professional to change the font size setting of the patient interface 50.


The example overview display 120 generally illustrated in FIG. 5 also includes an interface communications display 156 showing the status of communications between the patient interface 50 and one or more other devices 70, 82, 84, such as the treatment device 70, the ambulation sensor 82, and/or the goniometer 84. The interface communications display 156 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5.


The interface communications display 156 may take other forms, such as a separate screen or a popup window. The interface communications display 156 may include controls for the healthcare professional to remotely modify communications with one or more of the other devices 70, 82, 84. For example, the healthcare professional may remotely command the patient interface 50 to reset communications with one of the other devices 70, 82, 84, or to establish communications with a new one of the other devices 70, 82, 84. This functionality may be used, for example, where the patient has a problem with one of the other devices 70, 82, 84, or where the patient receives a new or a replacement one of the other devices 70, 82, 84.


The example overview display 120 generally illustrated in FIG. 5 also includes an apparatus control 160 for the healthcare professional to view and/or to control information regarding the treatment device 70. The apparatus control 160 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5. The apparatus control 160 may take other forms, such as a separate screen or a popup window. The apparatus control 160 may include an apparatus status display 162 with information regarding the current status of the apparatus. The apparatus status display 162 may present information communicated to the assistant interface 94 via one or more of the apparatus monitor signals 99b. The apparatus status display 162 may indicate whether the treatment device 70 is currently communicating with the patient interface 50. The apparatus status display 162 may present other current and/or historical information regarding the status of the treatment device 70.


The apparatus control 160 may include an apparatus setting control 164 for the healthcare professional to adjust or control one or more aspects of the treatment device 70. The apparatus setting control 164 may cause the assistant interface 94 to generate and/or to transmit an apparatus control signal 99 (e.g., which may be referred to as treatment plan input, as described) for changing an operating parameter and/or one or more characteristics of the treatment device 70, (e.g., a pedal radius setting, a resistance setting, a target RPM, other suitable characteristics of the treatment device 70, or a combination thereof).


The apparatus setting control 164 may include a mode button 166 and a position control 168, which may be used in conjunction for the healthcare professional to place an actuator 78 of the treatment device 70 in a manual mode, after which a setting, such as a position or a speed of the actuator 78, can be changed using the position control 168. The mode button 166 may provide for a setting, such as a position, to be toggled between automatic and manual modes.


In some embodiments, one or more settings may be adjustable at any time, and without having an associated auto/manual mode. In some embodiments, the healthcare professional may change an operating parameter of the treatment device 70, such as a pedal radius setting, while the patient is actively using the treatment device 70. Such “on the fly” adjustment may or may not be available to the patient using the patient interface 50.


In some embodiments, the apparatus setting control 164 may allow the healthcare professional to change a setting that cannot be changed by the patient using the patient interface 50. For example, the patient interface 50 may be precluded from changing a preconfigured setting, such as a height or a tilt setting of the treatment device 70, whereas the apparatus setting control 164 may provide for the healthcare professional to change the height or tilt setting of the treatment device 70.


The example overview display 120 generally illustrated in FIG. 5 also includes a patient communications control 170 for controlling an audio or an audiovisual communications session with the patient interface 50. The communications session with the patient interface 50 may comprise a live feed from the assistant interface 94 for presentation by the output device of the patient interface 50. The live feed may take the form of an audio feed and/or a video feed. In some embodiments, the patient interface 50 may be configured to provide two-way audio or audiovisual communications with a person using the assistant interface 94. Specifically, the communications session with the patient interface 50 may include bidirectional (two-way) video or audiovisual feeds, with each of the patient interface 50 and the assistant interface 94 presenting video of the other one.


In some embodiments, the patient interface 50 may present video from the assistant interface 94, while the assistant interface 94 presents only audio or the assistant interface 94 presents no live audio or visual signal from the patient interface 50. In some embodiments, the assistant interface 94 may present video from the patient interface 50, while the patient interface 50 presents only audio or the patient interface 50 presents no live audio or visual signal from the assistant interface 94.


In some embodiments, the audio or an audiovisual communications session with the patient interface 50 may take place, at least in part, while the patient is performing the rehabilitation regimen upon the body part. The patient communications control 170 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5. The patient communications control 170 may take other forms, such as a separate screen or a popup window.


The audio and/or audiovisual communications may be processed and/or directed by the assistant interface 94 and/or by another device or devices, such as a telephone system, or a videoconferencing system used by the healthcare professional while the healthcare professional uses the assistant interface 94. Alternatively or additionally, the audio and/or audiovisual communications may include communications with a third party. For example, the system 10 may enable the healthcare professional to initiate a 3-way conversation regarding use of a particular piece of hardware or software, with the patient and a subject matter expert, such as a healthcare professional or a specialist. The example patient communications control 170 generally illustrated in FIG. 5 includes call controls 172 for the healthcare professional to use in managing various aspects of the audio or audiovisual communications with the patient. The call controls 172 include a disconnect button 174 for the healthcare professional to end the audio or audiovisual communications session. The call controls 172 also include a mute button 176 to temporarily silence an audio or audiovisual signal from the assistant interface 94. In some embodiments, the call controls 172 may include other features, such as a hold button (not shown).


The call controls 172 also include one or more record/playback controls 178, such as record, play, and pause buttons to control, with the patient interface 50, recording and/or playback of audio and/or video from the teleconference session. The call controls 172 also include a video feed display 180 for presenting still and/or video images from the patient interface 50, and a self-video display 182 showing the current image of the healthcare professional using the assistant interface 94. The self-video display 182 may be presented as a picture-in-picture format, within a section of the video feed display 180, as is generally illustrated in FIG. 5. Alternatively or additionally, the self-video display 182 may be presented separately and/or independently from the video feed display 180.


The example overview display 120 generally illustrated in FIG. 5 also includes a third party communications control 190 for use in conducting audio and/or audiovisual communications with a third party. The third party communications control 190 may take the form of a portion or region of the overview display 120, as is generally illustrated in FIG. 5. The third party communications control 190 may take other forms, such as a display on a separate screen or a popup window.


The third party communications control 190 may include one or more controls, such as a contact list and/or buttons or controls to contact a third party regarding use of a particular piece of hardware or software, e.g., a subject matter expert, such as a healthcare professional or a specialist. The third party communications control 190 may include conference calling capability for the third party to simultaneously communicate with both the healthcare professional via the assistant interface 94, and with the patient via the patient interface 50. For example, the system 10 may provide for the healthcare professional to initiate a 3-way conversation with the patient and the third party.



FIG. 6 generally illustrates an example block diagram of training a machine learning model 13 to output, based on data 600 pertaining to the patient, a treatment plan 602 for the patient according to the present disclosure. Data pertaining to other patients may be received by the server 30. The other patients may have used various treatment devices to perform treatment plans.


The data may include characteristics of the other patients, the details of the treatment plans performed by the other patients, and/or the results of performing the treatment plans (e.g., a percent of recovery of a portion of the patients' bodies, an amount of recovery of a portion of the patients' bodies, an amount of increase or decrease in muscle strength of a portion of patients' bodies, an amount of increase or decrease in range of motion of a portion of patients' bodies, etc.).


As depicted, the data has been assigned to different cohorts. Cohort A includes data for patients having similar first characteristics, first treatment plans, and first results. Cohort B includes data for patients having similar second characteristics, second treatment plans, and second results. For example, cohort A may include first characteristics of patients in their twenties without any medical conditions who underwent surgery for a broken limb; their treatment plans may include a certain treatment protocol (e.g., use the treatment device 70 for 30 minutes 5 times a week for 3 weeks, wherein values for the properties, configurations, and/or settings of the treatment device 70 are set to X (where X is a numerical value) for the first two weeks and to Y (where Y is a numerical value) for the last week).


Cohort A and cohort B may be included in a training dataset used to train the machine learning model 13. The machine learning model 13 may be trained to match a pattern between characteristics for each cohort and output the treatment plan that provides the result. Accordingly, when the data 600 for a new patient is input into the trained machine learning model 13, the trained machine learning model 13 may match the characteristics included in the data 600 with characteristics in either cohort A or cohort B and output the appropriate treatment plan 602. In some embodiments, the machine learning model 13 may be trained to output one or more excluded treatment plans that should not be performed by the new patient.



FIG. 7 generally illustrates an embodiment of an overview display 120 of the assistant interface 94 presenting recommended treatment plans and excluded treatment plans in real-time during a telemedicine session according to the present disclosure. As depicted, the overview display 120 just includes sections for the patient profile 130 and the video feed display 180, including the self-video display 182. Any suitable configuration of controls and interfaces of the overview display 120 described with reference to FIG. 5 may be presented in addition to or instead of the patient profile 130, the video feed display 180, and the self-video display 182.


The healthcare professional using the assistant interface 94 (e.g., computing device) during the telemedicine session may be presented in the self-video 182 in a portion of the overview display 120 (e.g., user interface presented on a display screen 24 of the assistant interface 94) that also presents a video from the patient in the video feed display 180. Further, the video feed display 180 may also include a graphical user interface (GUI) object 700 (e.g., a button) that enables the healthcare professional to share, in real-time or near real-time during the telemedicine session, the recommended treatment plans and/or the excluded treatment plans with the patient on the patient interface 50. The healthcare professional may select the GUI object 700 to share the recommended treatment plans and/or the excluded treatment plans. As depicted, another portion of the overview display 120 includes the patient profile display 130.


The patient profile display 130 is presenting two example recommended treatment plans 602 and one example excluded treatment plan 602. As described herein, the treatment plans may be recommended in view of characteristics of the patient being treated. To generate the recommended treatment plans 602 the patient should follow to achieve a desired result, a pattern between the characteristics of the patient being treated and a cohort of other people who have used the treatment device 70 to perform a treatment plan may be matched by one or more machine learning models 13 of the artificial intelligence engine 11. Each of the recommended treatment plans may be generated based on different desired results.


For example, as depicted, the patient profile display 130 presents “The characteristics of the patient match characteristics of uses in Cohort A. The following treatment plans are recommended for the patient based on his characteristics and desired results.” Then, the patient profile display 130 presents recommended treatment plans from cohort A, and each treatment plan provides different results.


As depicted, treatment plan “A” indicates “Patient X should use treatment device for 30 minutes a day for 4 days to achieve an increased range of motion of Y %; Patient X has Type 2 Diabetes; and Patient X should be prescribed medication Z for pain management during the treatment plan (medication Z is approved for people having Type 2 Diabetes).” Accordingly, the treatment plan generated achieves increasing the range of motion of Y %. As may be appreciated, the treatment plan also includes a recommended medication (e.g., medication Z) to prescribe to the patient to manage pain in view of a known medical disease (e.g., Type 2 Diabetes) of the patient. That is, the recommended patient medication not only does not conflict with the medical condition of the patient but thereby improves the probability of a superior patient outcome. This specific example and all such examples elsewhere herein are not intended to limit in any way the generated treatment plan from recommending multiple medications, or from handling the acknowledgement, view, diagnosis and/or treatment of comorbid conditions or diseases.


Recommended treatment plan “B” may specify, based on a different desired result of the treatment plan, a different treatment plan including a different treatment protocol for a treatment device, a different medication regimen, etc.


As depicted, the patient profile display 130 may also present the excluded treatment plans 602. These types of treatment plans are shown to the healthcare professional using the assistant interface 94 to alert the healthcare professional not to recommend certain portions of a treatment plan to the patient. For example, the excluded treatment plan could specify the following: “Patient X should not use treatment device for longer than 30 minutes a day due to a heart condition; Patient X has Type 2 Diabetes; and Patient X should not be prescribed medication M for pain management during the treatment plan (in this scenario, medication M can cause complications for people having Type 2 Diabetes). Specifically, the excluded treatment plan points out a limitation of a treatment protocol where, due to a heart condition, Patient X should not exercise for more than 30 minutes a day. The ruled-out treatment plan also points out that Patient X should not be prescribed medication M because it conflicts with the medical condition Type 2 Diabetes.


The healthcare professional may select the treatment plan for the patient on the overview display 120. For example, the healthcare professional may use an input peripheral (e.g., mouse, touchscreen, microphone, keyboard, etc.) to select from the treatment plans 602 for the patient. In some embodiments, during the telemedicine session, the healthcare professional may discuss the pros and cons of the recommended treatment plans 602 with the patient.


In any event, the healthcare professional may select the treatment plan for the patient to follow to achieve the desired result. The selected treatment plan may be transmitted to the patient interface 50 for presentation. The patient may view the selected treatment plan on the patient interface 50. In some embodiments, the healthcare professional and the patient may discuss during the telemedicine session the details (e.g., treatment protocol using treatment device 70, diet regimen, medication regimen, etc.) in real-time or in near real-time. In some embodiments, the server 30 may control, based on the selected treatment plan and during the telemedicine session, the treatment device 70 as the user uses the treatment device 70.



FIG. 8 generally illustrates an embodiment of the overview display 120 of the assistant interface 94 presenting, in real-time during a telemedicine session, recommended treatment plans that have changed as a result of patient data changing according to the present disclosure. As may be appreciated, the treatment device 70 and/or any computing device (e.g., patient interface 50) may transmit data while the patient uses the treatment device 70 to perform a treatment plan. The data may include updated characteristics of the patient and/or other treatment data. For example, the updated characteristics may include new performance information and/or measurement information. The performance information may include a speed of a portion of the treatment device 70, a range of motion achieved by the patient, a force exerted on a portion of the treatment device 70, a heartrate of the patient, a blood pressure of the patient, a respiratory rate of the patient, and so forth.


In some embodiments, the data received at the server 30 may be input into the trained machine learning model 13, which may determine that the characteristics indicate the patient is on track for the current treatment plan. Determining the patient is on track for the current treatment plan may cause the trained machine learning model 13 to adjust a parameter of the treatment device 70. The adjustment may be based on a next step of the treatment plan to further improve the performance of the patient.


In some embodiments, the data received at the server 30 may be input into the trained machine learning model 13, which may determine that the characteristics indicate the patient is not on track (e.g., behind schedule, not able to maintain a speed, not able to achieve a certain range of motion, is in too much pain, etc.) for the current treatment plan or is ahead of schedule (e.g., exceeding a certain speed, exercising longer than specified with no pain, exerting more than a specified force, etc.) for the current treatment plan.


The trained machine learning model 13 may determine that the characteristics of the patient no longer match the characteristics of the patients in the cohort to which the patient is assigned. Accordingly, the trained machine learning model 13 may reassign the patient to another cohort that includes qualifying characteristics the patient's characteristics. As such, the trained machine learning model 13 may select a new treatment plan from the new cohort and control, based on the new treatment plan, the treatment device 70.


In some embodiments, prior to controlling the treatment device 70, the server 30 may provide the new treatment plan 800 to the assistant interface 94 for presentation in the patient profile 130. As depicted, the patient profile 130 indicates “The characteristics of the patient have changed and now match characteristics of uses in Cohort B. The following treatment plan is recommended for the patient based on his characteristics and desired results.” Then, the patient profile 130 presents the new treatment plan 800 (“Patient X should use the treatment device for 10 minutes a day for 3 days to achieve an increased range of motion of L %.” The healthcare professional may select the new treatment plan 800, and the server 30 may receive the selection. The server 30 may control the treatment device 70 based on the new treatment plan 800. In some embodiments, the new treatment plan 800 may be transmitted to the patient interface 50 such that the patient may view the details of the new treatment plan 800.


In some embodiments, while the patient is using the treatment device 70 to perform the treatment plan, the server 30 may receive treatment data pertaining to a patient while the patient is using the treatment device 70 to perform the treatment plan. The patient may include a user or person using the treatment device 70 to perform various exercises. In some embodiments, the server 30 may receive the treatment data during a telemedicine session. Additionally, or alternatively, during the telemedicine session, the patient may use the treatment device 70.


As described, the treatment data may include various characteristics of the patient, various measurement information pertaining to the patient while the patient uses the treatment device 70, various performance measurement information pertaining to the use of the treatment device 70 by the patient, various characteristics of the treatment device 70, the treatment plan, other suitable data, or a combination thereof.


In some embodiments, while the patient uses the treatment device 70 to perform the treatment plan, at least some of the treatment data may include the sensor data 136 from one or more of the external sensors 82, 84, 86, and/or from one or more internal sensors 76 of the treatment device 70. In some embodiments, at least some of the treatment data may include sensor data from one or more sensors of one or more wearable devices worn by the patient while using the treatment device 70. The one or more wearable devices may include a watch, a bracelet, a necklace, a headband, a wristband, an ankle band, any other suitable band, eyeglasses or eyewear (such as, without limitation, Google Glass) a chest or torso strap, a device configured to be worked on, attached to, or communicatively coupled to a body, and the like. While the user is using the treatment device 70, the one or more wearable devices may be configured to monitor, with respect to the user, a heartrate, a temperature, a blood pressure, an eye dilation, one or more vital signs, one or more metabolic markers, biomarkers, and the like.


In some embodiments, the server 30 may receive a set of treatment plans. Each treatment plan of the set of treatment plans may be associated with a patient capable of using a treatment device to perform the associated treatment plan. For example, each treatment plan may be associated with a patient or a group of patients. Additionally, or alternatively, each patient may be associated with a treatment plan or a group of treatment plans. Additionally, or alternatively, a group of patients may be associated with a treatment plan or a group of treatment plans.


In some embodiments, the server 30 may receive healthcare professional profile information associated with respective healthcare professionals of a set of healthcare professionals. The set of healthcare professionals may include respective healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans of the set of treatment plans. For example, each respective healthcare professional of the set of healthcare professionals may be capable of utilizing at least one aspect of at least one treatment plan to engage in treatment of at least one patient associated with the at least one treatment plan.


In some embodiments, the server 30 may identify treatment device information for at least one treatment device (e.g., such as the treatment device 70) of a set of treatment devices. In some embodiments, at least for the treatment device 70, the treatment device information may include at least one of identification information associated with the treatment device 70 (e.g., as described herein), location information associated with the treatment device 70 (e.g., as described herein); availability information associated with the respective treatment device 70 (e.g., as described herein), other suitable information, or a combination thereof.


In some embodiments, the server 30 may use the artificial intelligence engine 11 (e.g., where the artificial intelligence engine uses the machine learning model 13) to generate at least one resource deployment prediction. The resource deployment prediction may include or indicate one or more resources (e.g., such as one or more healthcare professionals, one or more treatment devices, one or more treatment device locations, other suitable resources, or a combination thereof) capable of being used or engaged with by a respective patient to perform at least one aspect of at least one treatment plan of the set of treatment plans. Additionally, or alternatively, the resource deployment prediction may include or indicate at least scheduling information associated with the one or more resources. The scheduling information may include information corresponding to an availability (e.g., such as a time, a location, or other suitable information corresponding to availability, and the like) of the one or more resources, information corresponding to at least one appointment (e.g., such as a telemedicine appointment) during which the one or more resources may be utilized by the respective patient, information corresponding to a health insurance policy associated with the respective patient (e.g., such as an estimated out of pocket expense, an estimated negotiated rate for the one or more resources, and the like), other suitable information, or a combination thereof.


In some embodiments, according to the at least one resource deployment prediction, the respective patient associated with at least one treatment plan of the set of treatment plans may be enabled to perform, using at least the treatment device 70, at least one aspect of the at least one treatment plan. In some embodiments, during a telemedicine session, the respective patient may be enabled, using the treatment device 70, to perform at least one aspect of the at least one treatment plan.


In some embodiments, the at least one resource deployment prediction may define a mapping between or among at least some of the healthcare professionals of the set of healthcare professionals, the patients associated with respective treatment plans comprising the set of treatment plans, at least some treatment devices comprising the set of treatment devices, and/or the like. In some embodiments, the at least one resource deployment prediction may be associated with an optimized outcome for the cohort of patients associated with the respective treatment plans.


In some embodiments, the machine learning model 13 may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, at least some of the treatment device information, or a combination thereof.


In some embodiments, the server 30 may identify super-cohorts of patients comprising, at least, the cohort of patients associated with respective treatment plans of the set of treatment plans. In some embodiments, based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, at least some of the treatment device information, the identified super-cohorts of patients, or a combination thereof, the machine learning model 13 may generate the at least one resource deployment prediction.


In some embodiments, the server 30 may receive, subsequent to the machine learning model 13 generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information. The subsequent treatment plan may correspond to one of at least one treatment plan of the set of treatment plans or to a treatment plan not in the set of treatment plans. The subsequent healthcare professional profile information may correspond to one of (i) at least one healthcare professional of at least the set of healthcare professionals and (ii) at least a healthcare professional not in the set of healthcare professionals. The subsequent treatment device information may correspond to one of the one treatment device 70 and at least one treatment device not in the set of treatment devices.


In some embodiments, the server 30 may generate, using the machine learning model 13 via the artificial intelligence engine 11, at least one subsequent resource deployment prediction. The machine learning model 13 may generate the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


In some embodiments, during performance of one or more aspects of a respective treatment plan by a respective patient, a respective healthcare professional may selectively adjust one or more aspects of the respective treatment plan in response to one or more changes in at least one of the treatment plan, the healthcare professional profile information, and the treatment device information. For example, in response to the treatment device information indicating that the treatment device 70 is no longer available at a scheduled telemedicine appointment, the healthcare professional may identify another treatment device (e.g., having similar characteristics to or different characteristics from the treatment device 70) capable of being used by the patient to perform at least one aspect of the treatment plan during the scheduled telemedicine appointment.



FIG. 9 is a flow diagram generally illustrating a method 900 for resource deployment to optimize cohort-based patient health outcomes in resource-constrained environments, according to the present disclosure. The method 900 is performed by processing logic that may include hardware (circuitry, dedicated logic, etc.), software (such as is run on a general-purpose computer system or a dedicated machine), or a combination of both. The method 900 and/or each of its individual functions, routines, subroutines, or operations may be performed by one or more processors of a computing device (e.g., any component of FIG. 1, such as server 30 executing the artificial intelligence engine 11). In some embodiments, the method 900 may be performed by a single processing thread. Alternatively, the method 900 may be performed by two or more processing threads, each thread implementing one or more individual functions, routines, subroutines, or operations of the methods.


For simplicity of explanation, the method 900 is depicted and described as a series of operations. However, operations in accordance with this disclosure can occur in various orders and/or concurrently, and/or with other operations not presented and described herein. For example, the operations depicted in the method 900 may occur in combination with any other operation of any other method disclosed herein. Furthermore, not all illustrated operations may be required to implement the method 900 in accordance with the disclosed subject matter. In addition, those skilled in the art will understand and appreciate that the method 900 could alternatively be represented as a series of interrelated states via a state diagram or events.


At 902, the processing device may receive a set of treatment plans. Each treatment plan comprising the set of treatment plans may be associated with a user capable of using a treatment device to perform the associated treatment plan.


At 904, the processing device may receive healthcare professional profile information associated with respective healthcare professionals, wherein the respective healthcare professionals comprise a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans which comprise the set of treatment plans.


At 906, the processing device may identify treatment device information for each treatment device comprising a set of treatment devices (e.g., which may include the treatment device 70) capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans.


At 908, the processing device may, using an artificial intelligence engine (e.g., such as the artificial intelligence engine 11) that is configured to use at least one machine learning model (e.g., such as the machine learning model 13) that is configured to generate resource deployment predictions, generate at least one resource deployment prediction. The machine learning model 13 may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.



FIG. 10 is a flow diagram generally illustrating an alternative method 1000 for resource deployment to optimize cohort-based patient health outcomes in resource-constrained environments, according to the present disclosure. Method 1000 includes operations performed by processors of a computing device (e.g., any component of FIG. 1, such as server 30 executing the artificial intelligence engine 11). In some embodiments, one or more operations of the method 1000 are implemented in computer instructions stored on a memory device and executed by a processing device. The method 1000 may be performed in the same or a similar manner as described above in regard to method 900. The operations of the method 1000 may be performed in some combination with any of the operations of any of the methods described herein.


At 1002, the processing device may receive a set of treatment plans. Each treatment plan comprising the set of treatment plans may be associated with a user capable of using a treatment device to perform the associated treatment plan.


At 1004, the processing device may receive healthcare professional profile information associated with respective healthcare professionals who comprise a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans.


At 1006, the processing device may identify treatment device information for each treatment device comprising a set of treatment devices (e.g., which may include the treatment device 70) capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans.


At 1008, the processing device may identify super-cohorts of users comprising the cohort of users associated with the respective treatment plans comprising the set of treatment plans.


At 1010, the processing device may, using an artificial intelligence engine (e.g., such as the artificial intelligence engine 11) that is configured to use at least one machine learning model (e.g., such as the machine learning model 13) that is configured to generate resource deployment predictions, generate at least one resource deployment prediction. The machine learning model 13 may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, at least some of the treatment device information, and the identified super-cohorts of users.



FIG. 11 is a flow diagram generally illustrating an alternative method 1100 for resource deployment to optimize cohort-based patient health outcomes in resource-constrained environments, according to the present disclosure. Method 1100 includes operations performed by processors of a computing device (e.g., any component of FIG. 1, such as server 30 executing the artificial intelligence engine 11). In some embodiments, one or more operations of the method 1100 are implemented in computer instructions stored on a memory device and executed by a processing device. The method 1100 may be performed in the same or a similar manner as described above in regard to method 900 and/or method 1000. The operations of the method 1100 may be performed in some combination with any of the operations of any of the methods described herein.


At 1102, the processing device may receive a set of treatment plans. Each treatment plan comprising the set of treatment plans may be associated with a user capable of using a treatment device to perform the associated treatment plan.


At 1104, the processing device may receive healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans.


At 1106, the processing device may identify treatment device information for each treatment device comprising a set of treatment devices (e.g., which may include the treatment device 70) capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans.


At 1108, the processing device may, using an artificial intelligence engine (e.g., such as the artificial intelligence engine 11) that is configured to use at least one machine learning model (e.g., such as the machine learning model 13) that is configured to generate resource deployment predictions, generate at least one resource deployment prediction. The machine learning model 13 may generate the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.


At 1110, the processing device may receive, subsequent to the machine learning model 13 generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


At 1112, the processing device may generate, using the machine learning model 13 via the artificial intelligence engine 11, at least one subsequent resource deployment prediction. The machine learning model 13 may generate the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.



FIG. 12 generally illustrates an example computer system 1200 which can perform any one or more of the methods described herein, in accordance with one or more aspects of the present disclosure. In one example, computer system 1200 may include a computing device and correspond to the assistant interface 94, reporting interface 92, supervisory interface 90, clinician interface 20, server 30 (including the Al engine 11), patient interface 50, ambulatory sensor 82, goniometer 84, treatment device 70, pressure sensor 86, or any suitable component of FIG. 1. The computer system 1200 may be capable of executing instructions implementing the one or more machine learning models 13 of the artificial intelligence engine 11 of FIG. 1. The computer system may be connected (e.g., networked) to other computer systems in a LAN, an intranet, an extranet, or the Internet, including via the cloud or a peer-to-peer network.


The computer system may operate in the capacity of a server in a client-server network environment. The computer system may be a personal computer (PC), a tablet computer, a wearable (e.g., wristband), a set-top box (STB), a personal Digital Assistant (PDA), a mobile phone, a camera, a video camera, an Internet of Things (IoT) device, or any device capable of executing a set of instructions (sequential or otherwise) that specify actions to be taken by that device. Further, while only a single computer system is illustrated, the term “computer” shall also be taken to include any collection of computers that individually or jointly execute a set (or multiple sets) of instructions to perform any one or more of the methods discussed herein.


The computer system 1200 includes a processing device 1202, a main memory 1204 (e.g., read-only memory (ROM), flash memory, solid state drives (SSDs), dynamic random access memory (DRAM) such as synchronous DRAM (SDRAM)), a static memory 1206 (e.g., flash memory, solid state drives (SSDs), static random access memory (SRAM)), and a data storage device 1208, which communicate with each other via a bus 1210.


Processing device 1202 represents one or more general-purpose processing devices such as a microprocessor, central processing unit, or the like. More particularly, the processing device 1202 may be a complex instruction set computing (CISC) microprocessor, reduced instruction set computing (RISC) microprocessor, very long instruction word (VLIW) microprocessor, or a processor implementing other instruction sets or processors implementing a combination of instruction sets. The processing device 1402 may also be one or more special-purpose processing devices such as an application specific integrated circuit (ASIC), a system on a chip, a field programmable gate array (FPGA), a digital signal processor (DSP), network processor, or the like. The processing device 1402 is configured to execute instructions for performing any of the operations and steps discussed herein.


The computer system 1200 may further include a network interface device 1212. The computer system 1200 also may include a video display 1214 (e.g., a liquid crystal display (LCD), a light-emitting diode (LED), an organic light-emitting diode (OLED), a quantum LED, a cathode ray tube (CRT), a shadow mask CRT, an aperture grille CRT, a monochrome CRT), one or more input devices 1216 (e.g., a keyboard and/or a mouse or a gaming-like control), and one or more speakers 1218 (e.g., a speaker). In one illustrative example, the video display 1214 and the input device(s) 1216 may be combined into a single component or device (e.g., an LCD touch screen).


The data storage device 1216 may include a computer-readable medium 1220 on which the instructions 1222 embodying any one or more of the methods, operations, or functions described herein is stored. The instructions 1222 may also reside, completely or at least partially, within the main memory 1204 and/or within the processing device 1202 during execution thereof by the computer system 1200. As such, the main memory 1204 and the processing device 1202 also constitute computer-readable media. The instructions 1222 may further be transmitted or received over a network via the network interface device 1212.


While the computer-readable storage medium 1220 is generally illustrated in the illustrative examples to be a single medium, the term “computer-readable storage medium” should be taken to include a single medium or multiple media (e.g., a centralized or distributed database, and/or associated caches and servers) that store the one or more sets of instructions. The term “computer-readable storage medium” shall also be taken to include any medium that is capable of storing, encoding or carrying a set of instructions for execution by the machine and that cause the machine to perform any one or more of the methodologies of the present disclosure. The term “computer-readable storage medium” shall accordingly be taken to include, but not be limited to, solid-state memories, optical media, and magnetic media.


Clause 1. A method comprising: receiving a set of treatment plans, wherein each treatment plan comprising the set of treatment plans is associated with a user capable of using a treatment device to perform the associated treatment plan; receiving healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans; identifying treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans; and using an artificial intelligence engine that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, generating at least one resource deployment prediction, wherein the at least one machine learning model generates the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.


Clause 2. The method of clause 1, wherein, according to the at least one resource deployment prediction, at least one user associated with at least one treatment plan of the set of treatment plans is enabled to perform the at least one treatment plan using at least one treatment device comprising the set of treatment devices.


Clause 3. The method of clause 2, wherein, during a telemedicine session, the at least one user associated with the at least one treatment plan comprising the set of treatment plans is enabled to perform the at least one treatment plan using the at least one treatment device comprising the set of treatment devices.


Clause 4. The method of clause 1, wherein, for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional.


Clause 5. The method of clause 1, wherein for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of identities of healthcare professionals potentially available to treat the user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.


Clause 6. The method of clause 1, wherein, for a respective treatment device comprising the set of treatment devices, the treatment device information includes at least one of identification information associated with the respective treatment device; location information associated with the respective treatment device; and availability information associated with the respective treatment device.


Clause 7. The method of clause 1, wherein the at least one resource deployment prediction defines a mapping between or among at least some of the healthcare professionals comprising the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, and at least some treatment devices comprising the set of treatment devices.


Clause 8. The method of clause 1, wherein the at least one resource deployment prediction is associated with an optimized outcome for the cohort of users associated with the respective treatment plans.


Clause 9. The method of clause 1, further comprising identifying super-cohorts of users comprising the cohort of users associated with respective treatment plans comprising the set of treatment plans, wherein, further, based on the identified super-cohorts of users, the at least one machine learning model generates the at least one resource deployment prediction.


Clause 10. The method of clause 1, further comprising receiving, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information.


Clause 11. The method of clause 10, wherein: the subsequent treatment plan corresponds to one of at least one treatment plan comprising the set of treatment plans or to a treatment plan not in the set of treatment plans; the subsequent healthcare professional profile information corresponds to one of at least one healthcare professional comprising at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals; and the subsequent treatment device information corresponds to one of at least one treatment device comprising the set of treatment devices and at least one treatment device not in the set of treatment devices.


Clause 12. The method of clause 10, further comprising generating, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction, wherein the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


Clause 13. The method of clause 1, wherein at least one treatment device of the set of treatment devices includes at least one pedal.


Clause 14. The method of clause 1, wherein at least one treatment device of the set of treatment devices includes at least one hand grip or hand pedal.


Clause 15. The method of clause 1, wherein the treatment device information includes at least information indicating an availability of the treatment device.


Clause 16. A tangible, non-transitory computer-readable medium storing instructions that, when executed, cause a processing device to: receive a set of treatment plans, wherein each treatment plan comprising the set of treatment plans is associated with a user capable of using a treatment device to perform the associated treatment plan; receive healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans; identify treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans; and use an artificial intelligence engine that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, generating at least one resource deployment prediction, wherein the at least one machine learning model generates the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.


Clause 17. The computer-readable medium of clause 16, wherein, according to the at least one resource deployment prediction, at least one user associated with at least one treatment plan of the set of treatment plans is enabled to perform the at least one treatment plan using at least one treatment device comprising the set of treatment devices.


Clause 18. The computer-readable medium of clause 17, wherein, during a telemedicine session, the at least one user associated with the at least one treatment plan comprising the set of treatment plans is enabled to perform the at least one treatment plan using the at least one treatment device comprising the set of treatment devices.


Clause 19. The computer-readable medium of clause 16, wherein, for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional.


Clause 20. The computer-readable medium of clause 16, wherein for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of identities of healthcare professionals potentially available to treat the user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.


Clause 21. The computer-readable medium of clause 16, wherein, for a respective treatment device comprising the set of treatment devices, the treatment device information includes at least one of identification information associated with the respective treatment device; location information associated with the respective treatment device; and availability information associated with the respective treatment device.


Clause 22. The computer-readable medium of clause 16, wherein the at least one resource deployment prediction defines a mapping between or among at least some of the healthcare professionals comprising the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, and at least some treatment devices comprising the set of treatment devices.


Clause 23. The computer-readable medium of clause 16, wherein the at least one resource deployment prediction is associated with an optimized outcome for the cohort of users associated with the respective treatment plans.


Clause 24. The computer-readable medium of clause 16, wherein the instructions further cause the processing device to identify super-cohorts of users comprising the cohort of users associated with respective treatment plans comprising the set of treatment plans, wherein, further, based on the identified super-cohorts of users, the at least one machine learning model generates the at least one resource deployment prediction.


Clause 25. The computer-readable medium of clause 16, wherein the instructions further cause the processing device to receive, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information.


Clause 26. The computer-readable medium of clause 25, wherein: the subsequent treatment plan corresponds to one of at least one treatment plan comprising the set of treatment plans or to a treatment plan not in the set of treatment plans; the subsequent healthcare professional profile information corresponds to one of at least one healthcare professional comprising at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals; and the subsequent treatment device information corresponds to one of at least one treatment device comprising the set of treatment devices and at least one treatment device not in the set of treatment devices.


Clause 27. The computer-readable medium of clause 25, wherein the instructions further cause the processing device to generate, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction, wherein the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


Clause 28. The computer-readable medium of clause 16, wherein at least one treatment device of the set of treatment devices includes at least one pedal.


Clause 29. The computer-readable medium of clause 16, wherein at least one treatment device of the set of treatment devices includes at least one hand grip or hand pedal.


Clause 30. The computer-readable medium of clause 16, wherein the treatment device information includes at least information indicating an availability of the treatment device.


Clause 31. A system comprising: a processor; and a memory including instructions that, when executed by the processor, cause the processor to: receive a set of treatment plans, wherein each treatment plan comprising the set of treatment plans is associated with a user capable of using a treatment device to perform the associated treatment plan; receive healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans; identify treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans; and use an artificial intelligence engine that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, generating at least one resource deployment prediction, wherein the at least one machine learning model generates the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.


Clause 32. The system of clause 31, wherein, according to the at least one resource deployment prediction, at least one user associated with at least one treatment plan of the set of treatment plans is enabled to perform the at least one treatment plan using at least one treatment device comprising the set of treatment devices.


Clause 33. The system of clause 32, wherein, during a telemedicine session, the at least one user associated with the at least one treatment plan comprising the set of treatment plans is enabled to perform the at least one treatment plan using the at least one treatment device comprising the set of treatment devices.


Clause 34. The system of clause 31, wherein, for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional.


Clause 35. The system of clause 31, wherein for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of identities of healthcare professionals potentially available to treat the user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.


Clause 36. The system of clause 31, wherein, for a respective treatment device comprising the set of treatment devices, the treatment device information includes at least one of identification information associated with the respective treatment device; location information associated with the respective treatment device; and availability information associated with the respective treatment device.


Clause 37. The system of clause 31, wherein the at least one resource deployment prediction defines a mapping between or among at least some of the healthcare professionals comprising the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, and at least some treatment devices comprising the set of treatment devices.


Clause 38. The system of clause 31, wherein the at least one resource deployment prediction is associated with an optimized outcome for the cohort of users associated with the respective treatment plans.


Clause 39. The system of clause 31, wherein the instructions further cause the processor to identify super-cohorts of users comprising the cohort of users associated with respective treatment plans comprising the set of treatment plans, wherein, further, based on the identified super-cohorts of users, the at least one machine learning model generates the at least one resource deployment prediction.


Clause 40. The system of clause 31, wherein the instructions further cause the processor to receive, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information.


Clause 41. The system of clause 40, wherein: the subsequent treatment plan corresponds to one of at least one treatment plan comprising the set of treatment plans or to a treatment plan not in the set of treatment plans; the subsequent healthcare professional profile information corresponds to one of at least one healthcare professional comprising at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals; and the subsequent treatment device information corresponds to one of at least one treatment device comprising the set of treatment devices and at least one treatment device not in the set of treatment devices.


Clause 42. The system of clause 40, wherein the instructions further cause the processor to generate, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction, wherein the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.


Clause 43. The system of clause 31, wherein at least one treatment device of the set of treatment devices includes at least one pedal.


Clause 44. The system of clause 31, wherein at least one treatment device of the set of treatment devices includes at least one hand grip or hand pedal.


Clause 45. The system of clause 31, wherein the treatment device information includes at least information indicating an availability of the treatment device.


The above discussion is meant to be illustrative of the principles and various embodiments of the present disclosure. Numerous variations and modifications will become apparent to those skilled in the art once the above disclosure is fully appreciated. It is intended that the following claims be interpreted to embrace all such variations and modifications.


The various aspects, embodiments, implementations, or features of the described embodiments can be used separately or in any combination. The embodiments disclosed herein are modular in nature and can be used in conjunction with or coupled to other embodiments.


Consistent with the above disclosure, the examples of assemblies enumerated in the following clauses are specifically contemplated and are intended as a non-limiting set of examples.

Claims
  • 1. A method comprising: receiving a set of treatment plans, wherein each treatment plan comprising the set of treatment plans is associated with a user capable of using a treatment device to perform the associated treatment plan;receiving healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans;identifying treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans; andusing an artificial intelligence engine, that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, generating at least one resource deployment prediction, wherein the at least one machine learning model generates the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.
  • 2. The method of claim 1, wherein, according to the at least one resource deployment prediction, at least one user associated with at least one treatment plan of the set of treatment plans is enabled to perform the at least one treatment plan using at least one treatment device comprising the set of treatment devices.
  • 3. The method of claim 2, wherein, during a telemedicine session, the at least one user associated with the at least one treatment plan comprising the set of treatment plans is enabled to perform the at least one treatment plan using the at least one treatment device comprising the set of treatment devices.
  • 4. The method of claim 1, wherein, for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional.
  • 5. The method of claim 1, wherein for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of identities of healthcare professionals potentially available to treat the user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.
  • 6. The method of claim 1, wherein, for a respective treatment device comprising the set of treatment devices, the treatment device information includes at least one of identification information associated with the respective treatment device; location information associated with the respective treatment device; and availability information associated with the respective treatment device.
  • 7. The method of claim 1, wherein the at least one resource deployment prediction defines a mapping between or among at least some of the healthcare professionals comprising the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, and at least some treatment devices comprising the set of treatment devices.
  • 8. The method of claim 1, wherein the at least one resource deployment prediction is associated with an optimized outcome for the cohort of users associated with the respective treatment plans.
  • 9. The method of claim 1, further comprising identifying super-cohorts of users comprising the cohort of users associated with respective treatment plans comprising the set of treatment plans, wherein, further, based on the identified super-cohorts of users, the at least one machine learning model generates the at least one resource deployment prediction.
  • 10. The method of claim 1, further comprising receiving, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information.
  • 11. The method of claim 10, wherein: the subsequent treatment plan corresponds to one of at least one treatment plan comprising the set of treatment plans or to a treatment plan not in the set of treatment plans;the subsequent healthcare professional profile information corresponds to one of at least one healthcare professional comprising at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals; andthe subsequent treatment device information corresponds to one of at least one treatment device comprising the set of treatment devices and at least one treatment device not in the set of treatment devices.
  • 12. The method of claim 10, further comprising generating, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction, wherein the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.
  • 13. The method of claim 1, wherein at least one treatment device of the set of treatment devices includes at least one pedal.
  • 14. The method of claim 1, wherein at least one treatment device of the set of treatment devices includes at least one hand grip or hand pedal.
  • 15. The method of claim 1, wherein the treatment device information includes at least information indicating an availability of the treatment device.
  • 16. A tangible, non-transitory computer-readable medium storing instructions that, when executed, cause a processing device to: receive a set of treatment plans, wherein each treatment plan comprising the set of treatment plans is associated with a user capable of using a treatment device to perform the associated treatment plan;receive healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans;identify treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans; anduse an artificial intelligence engine that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, generating at least one resource deployment prediction, wherein the at least one machine learning model generates the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.
  • 17. The computer-readable medium of claim 16, wherein, according to the at least one resource deployment prediction, at least one user associated with at least one treatment plan of the set of treatment plans is enabled to perform the at least one treatment plan using at least one treatment device comprising the set of treatment devices.
  • 18. The computer-readable medium of claim 17, wherein, during a telemedicine session, the at least one user associated with the at least one treatment plan comprising the set of treatment plans is enabled to perform the at least one treatment plan using the at least one treatment device comprising the set of treatment devices.
  • 19. The computer-readable medium of claim 16, wherein, for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional.
  • 20. The computer-readable medium of claim 16, wherein for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of identities of healthcare professionals potentially available to treat the user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.
  • 21. The computer-readable medium of claim 16, wherein, for a respective treatment device comprising the set of treatment devices, the treatment device information includes at least one of identification information associated with the respective treatment device; location information associated with the respective treatment device; and availability information associated with the respective treatment device.
  • 22. The computer-readable medium of claim 16, wherein the at least one resource deployment prediction defines a mapping between or among at least some of the healthcare professionals comprising the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, and at least some treatment devices comprising the set of treatment devices.
  • 23. The computer-readable medium of claim 16, wherein the at least one resource deployment prediction is associated with an optimized outcome for the cohort of users associated with the respective treatment plans.
  • 24. The computer-readable medium of claim 16, wherein the instructions further cause the processing device to identify super-cohorts of users comprising the cohort of users associated with respective treatment plans comprising the set of treatment plans, wherein, further, based on the identified super-cohorts of users, the at least one machine learning model generates the at least one resource deployment prediction.
  • 25. The computer-readable medium of claim 16, wherein the instructions further cause the processing device to receive, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information.
  • 26. The computer-readable medium of claim 25, wherein: the subsequent treatment plan corresponds to one of at least one treatment plan comprising the set of treatment plans or to a treatment plan not in the set of treatment plans;the subsequent healthcare professional profile information corresponds to one of at least one healthcare professional comprising at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals; andthe subsequent treatment device information corresponds to one of at least one treatment device comprising the set of treatment devices and at least one treatment device not in the set of treatment devices.
  • 27. The computer-readable medium of claim 25, wherein the instructions further cause the processing device to generate, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction, wherein the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.
  • 28. The computer-readable medium of claim 16, wherein at least one treatment device of the set of treatment devices includes at least one pedal.
  • 29. The computer-readable medium of claim 16, wherein at least one treatment device of the set of treatment devices includes at least one hand grip or hand pedal.
  • 30. The computer-readable medium of claim 16, wherein the treatment device information includes at least information indicating an availability of the treatment device.
  • 31. A system comprising: a processor; anda memory including instructions that, when executed by the processor, cause the processor to: receive a set of treatment plans, wherein each treatment plan comprising the set of treatment plans is associated with a user capable of using a treatment device to perform the associated treatment plan;receive healthcare professional profile information associated with respective healthcare professionals comprising a set of healthcare professionals capable of utilizing at least one aspect of the one or more treatment plans comprising the set of treatment plans;identify treatment device information for each treatment device comprising a set of treatment devices capable of being used by a cohort of users associated with respective treatment plans comprising the set of treatment plans; anduse an artificial intelligence engine that is configured to use at least one machine learning model that is configured to generate resource deployment predictions, generating at least one resource deployment prediction, wherein the at least one machine learning model generates the at least one resource deployment prediction based on at least some treatment plans comprising the set of treatment plans, at least some of the healthcare professional profile information, and at least some of the treatment device information.
  • 32. The system of claim 31, wherein, according to the at least one resource deployment prediction, at least one user associated with at least one treatment plan of the set of treatment plans is enabled to perform the at least one treatment plan using at least one treatment device comprising the set of treatment devices.
  • 33. The system of claim 32, wherein, during a telemedicine session, the at least one user associated with the at least one treatment plan comprising the set of treatment plans is enabled to perform the at least one treatment plan using the at least one treatment device comprising the set of treatment devices.
  • 34. The system of claim 31, wherein, for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of information associated with the respective healthcare professional, credential or degree information associated with the respective healthcare professional, professional experience information associated with the respective healthcare professional, and availability information associated with the respective healthcare professional.
  • 35. The system of claim 31, wherein for a respective healthcare professional comprising the set of healthcare professionals, the healthcare professional profile information includes at least one of identities of healthcare professionals potentially available to treat the user if the respective healthcare professional is unavailable, and information associated with the healthcare professionals potentially available.
  • 36. The system of claim 31, wherein, for a respective treatment device comprising the set of treatment devices, the treatment device information includes at least one of identification information associated with the respective treatment device; location information associated with the respective treatment device; and availability information associated with the respective treatment device.
  • 37. The system of claim 31, wherein the at least one resource deployment prediction defines a mapping between or among at least some of the healthcare professionals comprising the set of healthcare professionals, the users associated with respective treatment plans comprising the set of treatment plans, and at least some treatment devices comprising the set of treatment devices.
  • 38. The system of claim 31, wherein the at least one resource deployment prediction is associated with an optimized outcome for the cohort of users associated with the respective treatment plans.
  • 39. The system of claim 31, wherein the instructions further cause the processor to identify super-cohorts of users comprising the cohort of users associated with respective treatment plans comprising the set of treatment plans, wherein, further, based on the identified super-cohorts of users, the at least one machine learning model generates the at least one resource deployment prediction.
  • 40. The system of claim 31, wherein the instructions further cause the processor to receive, subsequent to the at least one machine learning model generating the at least one resource deployment prediction, at least one of a subsequent treatment plan, subsequent healthcare professional profile information, and subsequent treatment device information.
  • 41. The system of claim 40, wherein: the subsequent treatment plan corresponds to one of at least one treatment plan comprising the set of treatment plans or to a treatment plan not in the set of treatment plans;the subsequent healthcare professional profile information corresponds to one of at least one healthcare professional comprising at least the set of healthcare professionals and at least a healthcare professional not in the set of healthcare professionals; andthe subsequent treatment device information corresponds to one of at least one treatment device comprising the set of treatment devices and at least one treatment device not in the set of treatment devices.
  • 42. The system of claim 40, wherein the instructions further cause the processor to generate, using the at least one machine learning model via the artificial intelligence engine, at least one subsequent resource deployment prediction, wherein the at least one machine learning model generates the at least one subsequent resource deployment prediction based, at least in part, on the subsequent treatment plan, the subsequent healthcare professional profile information, and the subsequent treatment device information.
  • 43. The system of claim 31, wherein at least one treatment device of the set of treatment devices includes at least one pedal.
  • 44. The system of claim 31, wherein at least one treatment device of the set of treatment devices includes at least one hand grip or hand pedal.
  • 45. The system of claim 31, wherein the treatment device information includes at least information indicating an availability of the treatment device.
CROSS-REFERENCE TO RELATED APPLICATIONS

This application is a continuation-in-part of U.S. patent application Ser. No. 17/379,661, filed Jul. 19, 2021, which is a continuation of U.S. patent application Ser. No. 17/147,232, filed Jan. 12, 2021, which is a continuation-in-part of U.S. patent application Ser. No. 17/021,895, filed Sep. 15, 2020, which claims priority to U.S. Provisional Patent Application No. 62/910,232, filed Oct. 3, 2019, the entire disclosures of which are hereby incorporated by reference for all purposes.

Provisional Applications (1)
Number Date Country
62910232 Oct 2019 US
Continuations (1)
Number Date Country
Parent 17147232 Jan 2021 US
Child 17379661 US
Continuation in Parts (2)
Number Date Country
Parent 17379661 Jul 2021 US
Child 17715424 US
Parent 17021895 Sep 2020 US
Child 17147232 US