Utilizing artificial intelligence to detect objects or patient safety events in a patient room

Information

  • Patent Grant
  • 11276291
  • Patent Number
    11,276,291
  • Date Filed
    Thursday, December 10, 2020
    3 years ago
  • Date Issued
    Tuesday, March 15, 2022
    2 years ago
Abstract
Methods and systems are provided for detecting objects or patient safety events in a patient room. Artificial intelligence is utilized to enhance safety issue recognition capabilities by the methods and systems. Sensors collect a series of images and depth data in a room of a patient. Data (corresponding to images and depth data of an object or patient safety event) is received from the sensors and compared to stored data to identify the object or patient safety event. The images are communicated to a central video monitoring system and a user may be prompted to confirm if the object requires learning or a patient safety event occurred (or identify the object or patient safety event) or to provide additional parameters or actions. A patient safety learning system analyzes the data and incorporates the user response to enhance safety issue recognition capabilities of the system and reduce false alerts.
Description
BACKGROUND

Medical facilities, such as hospitals, face many challenges in addition to simply caring for patients. For example, securing patients and preventing safety events (e.g., stroke, seizure, getting out of bed, etc.) from occurring consumes many resources and current methods lack effectiveness. Although some medical facilities utilize cameras and/or sensors to monitor patients, current systems require subjective decision-making and are prone to error by the personnel monitoring the data received from the cameras and/or sensors. Additionally, in some situations, a patient may obtain an object the particular patient is not allowed (e.g., a gift from a visitor that might present health or safety risks to the patient) that the current methods are unable to automatically detect. Accordingly, overall security for patients and equipment suffers and the many resources currently being utilized are wasted.


BRIEF SUMMARY

This brief summary is provided as a general overview of the more detailed disclosure which follows. It is not intended to identify key or essential elements of the disclosure, or to define the claim terms in isolation from the remainder of the disclosure, including the drawings.


This disclosure generally relates to methods and systems for detecting objects or patient safety events in a patient room. More particularly, artificial intelligence or machine learning is utilized to enhance safety issue recognition capabilities by the methods and systems. Generally, and without limitation, the sensors collect a series of images and depth data in a room of a patient. Data (corresponding to images and depth data of an object or patient safety event) is received from the sensors and compared to stored data to identify an object or patient safety event. The images of the object or patient safety event are communicated to a central video monitoring system and a user may be prompted to confirm if the object requires learning or a patient safety event occurred (or to identify the object or patient safety event so a patient safety learning system learns continuously). In some embodiments, the user may change the identification that the system originally produced if it is incorrect to further train the patient safety learning system. The patient safety learning system analyzes the data and incorporates the user response to enhance safety issue recognition capabilities of the system and reduce false alerts.


In some aspects, this disclosure relates to a system for utilizing artificial intelligence to detect objects or patient safety events in a patient room. The system comprises: one or more motion sensors located to collect a series of images of a room of a patient; a computerized patient safety monitoring system communicatively coupled to the one or more motion sensors, the computerized monitoring system receiving data from the one or more motion sensors and comparing the data to stored data in a database to identify an object or patient safety event; and a central video monitoring system that receives images of the object or patient safety event from the computerized patient safety monitoring system and prompts a user to confirm the object requires learning or the patient safety event occurred; and a patient safety learning system that analyzes the data and incorporates whether the object requires learning or the patient safety event occurred to enhance safety issue recognition capabilities of the system and reduce false alerts.


In some aspects this disclosure relates to computer-readable storage media having embodied thereon computer-executable instructions. When executed by one or more computer processors, the instructions may cause the processors to: utilize one or more motion sensors to collect a series of images of a room of a patient; receive data from the one or more motion sensors at a computerized patient safety monitoring system, the computerized patient safety monitoring system communicatively coupled to the one or more motion sensors; compare the data to stored data in a database to identify an object or patient safety event; communicate, to a central video monitoring system, images of the object or patient safety event from the computerized patient safety monitoring system; and analyze, by a patient safety learning system, the data to enhance safety issue recognition capabilities of the system and reduce false alerts.


In some aspects, this disclosure relates to a method for utilizing artificial intelligence to detect objects or patient safety events in a patient room. The method comprises: utilizing one or more motion sensors to collect a series of images of a room of a patient; receiving data from the one or more motion sensors at a computerized patient safety monitoring system, the computerized patient safety monitoring system communicatively coupled to the one or more motion sensors; comparing the data to stored data in a database to identify an object or patient safety event; receiving, by a central video monitoring system, images of the object or patient safety event from the computerized patient safety monitoring system; prompting, at the central video monitoring system, a user to identify the object that requires learning or identify the patient safety event that occurred and to add additional parameters to the object or patient safety event; and analyzing, by a patient safety learning system, the data and incorporating the identification of the object that requires learning or the identification of the patient safety event that occurred to enhance safety issue recognition capabilities of the system and reduce false alerts.


Additional objects, advantages, and novel features of the disclosure will be set forth in part in the description which follows, and in part will become apparent to those skilled in the art upon examination of the following, or may be learned by practice of the disclosure.





BRIEF DESCRIPTION OF THE SEVERAL VIEWS OF THE DRAWING

The description references the attached drawing figures, wherein:



FIG. 1 is an exemplary flowchart for an automated learning process to detect objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure;



FIG. 2 is an exemplary flowchart for a semi-automated learning process to detect objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure;



FIG. 3 is an exemplary display for object or patient safety event detection in a patient room, in accordance with embodiments of the present disclosure;



FIG. 4 is an exemplary display for object or patient safety event confirmation in a patient room, in accordance with embodiments of the present disclosure;



FIG. 5 is an exemplary flowchart for a semi-automated learning process to detect objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure; and



FIG. 6 is an exemplary flowchart for a manually initiated learning process to detect objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure.





DETAILED DESCRIPTION

As noted in the Background, medical facilities, such as hospitals, face many challenges in addition to simply caring for patients. For example, securing patients and preventing safety events (e.g., stroke, seizure, getting out of bed, etc.) from occurring consumes many resources and current methods lack effectiveness. Although some medical facilities utilize cameras and/or sensors to monitor patients, current systems require subjective decision-making and are prone to error by the personnel monitoring the data received from the cameras and/or sensors. Additionally, in some situations, a patient may obtain an object the particular patient is not allowed (e.g., a gift from a visitor that might present health or safety risks to the patient) that the current methods are unable to automatically detect. Accordingly, overall security for patients and equipment suffers and the many resources currently being utilized are wasted.


The subject matter of the present invention is described with specificity herein to meet statutory requirements. However, the description itself is not intended to limit the scope of this patient. Rather, the inventor has contemplated that the claimed subject matter might also be embodied in other ways, to include different steps or combinations of steps similar to the ones described in this document, in conjunction with other present or future technologies. Moreover, although the terms “step” and/or “block” may be used herein to connote different elements of methods employed, the terms should not be interpreted as implying any particular order among or between various steps herein disclosed unless and except when the order of individual steps is explicitly described.


Referring initially to FIG. 1, an automated learning process detects objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure. As shown in FIG. 1, a system 100 for utilizing artificial intelligence to detect objects or patient safety events in a patient room may include one or more 3D motion sensors 104. Although described as 3D motion sensors, it is contemplated that aspects of the present invention may be accomplished using 2D motion sensors rather than 3D motion sensors. A 3D motion sensor is an electronic device that contains one or more cameras capable of identifying individual objects, people and motion. The 3D motion sensor may further contain one or more microphones to detect audio. The cameras can utilize technologies including but not limited to color RGB, CMOS sensors, lasers, infrared projectors and RF-modulated light. The 3D motion sensor may have one or more integrated microprocessors and/or image sensors to detect and process information both transmitted from and received by the various cameras. Exemplary 3D motion sensors include the Microsoft® Kinect® Camera, the Sony® PlayStation® Camera, the Intel® RealSense™ Camera, the Orbbec® Persee®, the Orbbec® Astra®, and the Asus® Ztion, each of which happens to include microphones, although sound capture is not essential to the practice of the disclosure. A user may be able to configure alerts based on data that is received from the 3D motion sensor 204 and interpreted by the computerized patient monitoring system 106. For example, a user can configure the computerized patient monitoring system 106 to provide alerts based on data the computerized patient monitoring system 106 has interpreted to detect objects or patient safety events.


As used herein, “a sensor” and “sensors” are used interchangeably in the singular and plural unless expressly described as a singular sensor or an array of sensors. A singular sensor may be used, or a sensor may comprise two or more cameras integrated into a single physical unit. Alternately, two or more physically distinct sensors may be used, or two or more physically distinct arrays of sensors may be used.


An “object” may be any object in the room of a patient being monitored that presents safety or medical issues to the patient. For example, the object may be a gift the patient received that heightens the risk for aggravating a condition that patient is being treated for. The “object” may also be medical equipment or devices in the room of the patient being monitored. For example, the object may be an infusion pump or a pole that supports the infusion pump and bag. The object may also include contraband, such as weapons or drugs.


A “patient safety event” may be any action (e.g., getting out of bed), activity, condition, symptom, or inferred diagnosis (e.g., stroke or seizure) that presents safety or medical issues to the patient.


As shown in FIG. 1, the system 100 may be utilized to collect a series of images in the room of a patient 102. For example, 3D motion sensor 104 may detect an object (e.g., medication, food, beverage, drug paraphernalia, tobacco products, and the like) in the room of the patient. Additionally, or alternatively, 3D motion sensor 104 may detect a patient safety event (e.g., the patient getting out of bed). Computerized patient safety monitoring system 106 is communicatively coupled to the 3D motion sensor 104 and receives data (i.e., the series of images relevant to the object or patient safety issue) from the 3D motion sensor 104. Features of the object or patient safety event may be analyzed by computerized patient safety monitoring system 106 and compared to stored data in a database 112 to identify known issues, patterns, and the like that can be used to detect an object or patient safety event.


If the object requires learning or the patient safety event occurred, as shown at 108, the data is communicated to a patient safety learning system 110. The patient safety learning system 110 analyzes the data (i.e., the video and depth data captured by the sensor 104) and stores new or modified issues, patterns, and the like that can be used to detect an object or patient safety event in database 112. This automated learning process enhances the safety issue recognition capabilities of the system and reduces false alerts. If, on the other hand, no object or patient safety event is detected, no further action is taken and the computerized patient safety monitoring system 106 continues to wait for data received by the 3D sensor 104.


In embodiments, the 3D motion sensor 104 may be co-located with a patient 102 to be monitored. The patient 102 to be monitored may be monitored in a variety of environments, including, without limitation, a hospital, a home, a hospice care facility, a nursing home, an assisted living facility, an outpatient medical care facility, and the like. The 3D motion sensor 104 may be positioned where it is likely to capture images of the face of the patient 102 to be monitored. For example, a 3D motion sensor 104 may be oriented to take images of a bed, chair, or other location where the patient 102 to be monitored may spend a significant amount of time. In some embodiments, the 3D motion sensor 104 may be oriented to take images of persons and/or objects entering and exiting the room of the patient 102 to be monitored. In some embodiments, the 3D motion sensor 104 may be oriented to take images of items or equipment (e.g., medical devices) that may be located in the room of the patient 102 to be monitored. The 3D motion sensor 104 may be permanently installed, or may be temporarily set up in a room as needed. The patient 102 to be monitored may be under immediate medical care, e.g., in a medical facility under the supervision of a medical professional, or may not be under immediate care, e.g., in a home or other environment, possibly with a caregiver. A caregiver may be a medical professional or paraprofessional, such as an orderly, nurse's aide, nurse, or the like. A caregiver may also be a friend, relative, individual, company, or facility that provides assistance with daily living activities and/or medical care for individuals, such as individuals who are disabled, ill, injured, elderly, or otherwise in need of temporary or long-term assistance. In some instances, the person to be monitored may be self-sufficient and not under the immediate care of any other person or service provider.


The 3D motion sensor 104 may communicate data (i.e., the video and depth data captured by the sensor 104), such as images of the patient 102 being monitored or an object detected in the room, to a computerized patient safety monitoring system 106. The computerized patient safety monitoring system 106 is a computer programmed to monitor transmissions of data from the 3D motion sensor 104. The computerized patient safety monitoring system 106 may be integral to the 3D motion sensor 104 or a distinctly separate apparatus from the 3D motion sensor 104, possibly in a remote location from 3D motion sensor 104 provided that the computerized patient safety monitoring system 106 can receive data from the 3D motion sensor 104. The computerized patient safety monitoring system 106 may be located in the monitored person's room, such as a hospital room, bedroom, or living room. The computerized patient safety monitoring system 106 may be connected to a central video monitoring system (e.g., central video monitoring system 210 described below with respect to FIG. 2). The computerized patient safety monitoring system 106 and central video monitoring system may be remotely located at any physical locations so long as a data connection exists (USB, TCP/IP or comparable) between the computerized patient safety monitoring system 106, the central video monitoring system, and the 3D motion sensor(s) 104.


The computerized patient safety monitoring system 106 may receive data from 3D motion sensor 104 for a monitoring zone (i.e., the patient's room or area to be monitored). Computerized patient monitoring and object recognition system 106 may assign reference points to distinctive features of a person or object. It should be understood that the selection of the reference points may vary with the individual and/or the configuration of the monitoring system 100. Reference points may be configured automatically by the monitoring system 100, may be configured automatically by the monitoring system 100 subject to confirmation and/or modification by a system user, or may be configured manually by a system user. The reference points corresponding to the object may be compared to a database comprising reference points of known or acceptable objects or patient safety events. As described below, various machine learning and/or object recognition techniques may additionally be utilized by patient safety learning system 110 to recognize the object or patient safety event.


As shown in FIG. 2, a semi-automated learning process detects objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure. The system 200 may be utilized to collect a series of images and depth data in the room of a patient 202. For example, 3D motion sensor 204 may detect an object (e.g., medication, food, beverage, drug paraphernalia, tobacco products, and the like) in the room of the patient. Additionally, or alternatively, 3D motion sensor 204 may detect a patient safety event (e.g., the patient getting out of bed). Computerized patient safety monitoring system 206 is communicatively coupled to the 3D motion sensor 204 and receives data (i.e., the series of images relevant to the object or patient safety issue) from the 3D motion sensor 204. Features of the object or patient safety event may be analyzed by computerized patient safety monitoring system 206 and compared to stored data in a database 216 to identify known issues, patterns, and the like that can be used to detect an object or patient safety event.


When an object or patient safety event is detected, images of the object or patient safety event are communicated, as shown at 208, by the computerized patient safety monitoring system 206 to the central video monitoring system 210. At the central video monitoring system 210, a user is prompted, as shown at step 212, to confirm the object requires learning (if not already known by the system 200) or to confirm the patient safety event occurred. This process can occur in real-time or any time in the future. For example, the detected object or patient safety event's video and depth data may be recorded and displayed for a user at the central video monitoring system to be played back so the user can provide additional information or confirmation at any time. If the object requires learning or the patient safety event occurred, the data is communicated to a patient safety learning system 214. The patient safety learning system 214 incorporates the response by the user so the object or patient safety event can be learned and stored in database 216. This semi-automated learning process enhances the safety issue recognition capabilities of the system and reduces false alerts. If, on the other hand, the object does not require learning or the patient safety event did not occur, no further action is taken and the computerized patient safety monitoring system 206 continues to wait for data received by the 3D sensor 204.


The 3D motion sensor 204 may communicate data, such as images of the patient 202 being monitored (e.g., via skeletal tracking or blob recognition) or an object detected in the room, to a computerized patient monitoring system 206. The computerized patient monitoring system 206 is a computer programmed to monitor transmissions of data from the 3D motion sensor 204. The computerized patient monitoring system 206 may be integral to the 3D motion sensor 204 or a distinctly separate apparatus from the 3D motion sensor 204, possibly in a remote location from 3D motion sensor 204 provided that the computerized patient monitoring system 206 can receive data from the 3D motion sensor 204. The computerized patient monitoring system 206 may be located in the monitored person's room, such as a hospital room, bedroom, or living room. The computerized patient monitoring system 206 may be connected to a central video monitoring system 210. The computerized patient monitoring system 206 and central video monitoring system 210 may be remotely located at any physical locations so long as a data connection exists (USB, TCP/IP or comparable) between the computerized patient monitoring system 206, the central video monitoring system 210, and the 3D motion sensor(s) 204.


Computerized patient monitoring system 206 may assign reference points to identify the boundaries of an area to be monitored. For example, reference points may be assigned to a perimeter around the patient. It should be understood that the selection of the reference points may vary with the individual and/or the configuration of the monitoring system 200. Reference points may be configured automatically by the system 200, may be configured automatically by the system 200 subject to confirmation and/or modification by a system user, or may be configured manually by a system user.


Data associated with objects or patient safety events may be logged by computerized patient monitoring system 206 and/or central video monitoring system 210 in a database 216. Data associated with the objects or patient safety events may include, without limitation, the telemetry data from 3D motion sensor 204 that triggered the object or patient safety event; buffered data preceding the telemetry data that triggered the object or patient safety event; telemetry data subsequent to the object or patient safety event; the number and substantive content of object or patient safety event; the individual(s) and/or groups to whom the object or patient safety event was addressed; the response, if any, received or observed following the object or patient safety event; and combinations thereof. In some embodiments, data associated with the object or patient safety event may include the video and/or pictures of the object or patient safety event.



FIG. 3 shows an exemplary view for central video monitoring system 300, in accordance with embodiments of the present disclosure. More particularly, the central video monitoring system 300 displays patient safety event detection in a patient room. The view includes skeletal figures, which may be identified by central video monitoring system, and used to track or “lock on to” a patient. Although skeletal figures are shown in FIG. 3, alternate image analysis could be used, including, without limitation, blob recognition, bounding boxes, person masks, and facial recognition or object recognition. As illustrated, a user may be watching live or recorded video 310, 320, 330. If the user sees an object or event that the user wants the system to learn, the user can select the appropriate button (e.g., Tag 2D Object/Event or Tag 3D Object/Event) to indicate to the system that the user wants to store the video immediately before and after the time the user hit the button to send to the patient safety learning system. The patient safety learning system is capable of buffering video and depth data for the user to enable this process. The user is additionally provided an opportunity to include additional information parameters about the object or safety event, as shown in FIG. 4, described below.



FIG. 4 shows an exemplary view for central video monitoring system 400, in accordance with embodiments of the present disclosure. More particularly, the central video monitoring system 400 displays object detection in a patient room (although illustrated in FIG. 4 and described with respect to object detection, the same process is used for patient safety events). As illustrated, an object 410 has been detected or identified by a user. Upon selecting the object 410, a user can add additional parameters 420 corresponding to the object 410. The objects and additional parameters are communicated to a patient safety learning system to enhance safety issue recognition capabilities of the system and reduce false alerts.


In FIG. 5, a semi-automated learning process detects objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure. The system 500 may be utilized to collect a series of images and depth data in the room of a patient 502. For example, 3D motion sensor 504 may detect an object (e.g., medication, food, beverage, drug paraphernalia, tobacco products, and the like) in the room of the patient. Additionally, or alternatively, 3D motion sensor 504 may detect a patient safety event (e.g., the patient getting out of bed). Computerized patient safety monitoring system 506 is communicatively coupled to the 3D motion sensor 504 and receives data (i.e., the series of images relevant to the object or patient safety issue) from the 3D motion sensor 504. Features of the object or patient safety event may be analyzed by computerized patient safety monitoring system 506 and compared to stored data in a database 520 to identify known issues, patterns, and the like that can be used to detect an object or patient safety event.


As shown at step 508, images from the computerized patient safety monitoring system 506 are communicated for display on the central video monitoring system 510 regardless of whether an object or patient safety event is detected. However, when an object or patient safety event is detected, a user is prompted, as shown at step 512, to confirm the object requires learning (if not already known by the system 500) or to confirm the patient safety event occurred. Either way, the data is communicated to a patient safety learning system 518. The patient safety learning system 518 incorporates the response by the user so the object or patient safety event can be learned and stored in database 520. This semi-automated learning process enhances the safety issue recognition capabilities of the system and reduces false alerts. If, on the other hand, the object does not require learning or the patient safety event did not occur, no further action is taken and the computerized patient safety monitoring system 506 continues to wait for data received by the 3D sensor 504.


Additionally, or alternatively, if the system does not detect an object or patient safety event, the user may indicate, as shown at step 514, that an object requires learning (if not already known by the system 500) or that a patient safety event occurred. If the user indicates that an object requires learning or that a patient safety event occurred, the user may be prompted, as shown at step 516, to indicate parameters of the object or the type of patient safety event. This information, along with the data (which may include a recording prior (using data buffering), during, and after the object or patient safety event was detected), is communicated to a patient safety learning system 518. The patient safety learning system 518 incorporates the parameters or type of event indicated by the user with the data so the object or patient safety event can be learned and stored in database 520. This semi-automated learning process enhances the safety issue recognition capabilities of the system and reduces false alerts. If, on the other hand, the user indicates that the object does not require learning or the patient safety event did not occur, no further action is taken and the computerized patient safety monitoring system 506 continues to wait for data received by the 3D sensor 504.


Referring now to FIG. 6, a manually initiated learning process detects objects or patient safety events in a patient room, in accordance with embodiments of the present disclosure. In FIG. 6, the system 600 may be utilized to collect a series of images and depth data in the room of a patient 602. For example, 3D motion sensor 604 may collect images of an object (e.g., medication, food, beverage, drug paraphernalia, tobacco products, and the like) in the room of the patient. Additionally, or alternatively, 3D motion sensor 604 may collect images of a patient safety event (e.g., the patient getting out of bed). Computerized patient safety monitoring system 606 is communicatively coupled to the 3D motion sensor 604 and receives data (i.e., the series of images relevant to the object or patient safety issue) from the 3D motion sensor 604. A constant stream of images is communicated by computerized patient safety monitoring system 606 for display on the central video monitoring system 610.


As shown at step 608, images from the computerized patient safety monitoring system 606 are communicated for display on the central video monitoring system 610. As shown at step 610, to indicate an object requires learning or to indicate a patient safety event occurred. If the user indicates that an object requires learning or that a patient safety event occurred, the user may be prompted, as shown at step 612, to indicate parameters of the object or the type of patient safety event. This information, along with the data (which may include a recording prior (using data buffering), during, and after the object or patient safety event was detected), is communicated to a patient safety learning system 614. The patient safety learning system 614 incorporates the parameters or type of event indicated by the user with the data so the object or patient safety event can be learned and stored in database 616. This semi-automated learning process enhances the safety issue recognition capabilities of the system and reduces false alerts. If, on the other hand, the user does not indicate that an object requires learning or that a patient safety event occurred, no further action is taken and the central video monitoring system 608 continues to display data received by the computerized patient safety monitoring system 606.


As noted, the patient safety learning system may utilize one or more machine learning algorithms to determine if an object or patient safety event is detected. For example, an ensemble of alternating decision trees can be used to determine if an object or patient safety event is detected. Each decision tree may be trained on a random subset of objects and patient safety events. In some embodiments, the number of decision trees used is based on the type of healthcare data received or specific information pertaining to the patient.


A generic decision tree is a decision support tool which arrives at a decision after following steps or rules along a tree-like path. While most decision trees are only concerned about the final destination along the decision path, alternating decision trees take into account every decision made along the path and may assign a score for every decision encountered. Once the decision path ends, the algorithm sum all of the incurred scores to determine a final classification (i.e., information that should be grouped and displayed together). In some embodiments, the alternating decision tree algorithm may be further customized. For example, the alternating decision tree algorithm may be modified by wrapping it in other algorithms.


A machine learning algorithm may use a generic cost matrix. The intuition behind the cost matrix is as follows. If the model predicts a member to be classified in group A, and the member really should be in group A, no penalty is assigned. However, if this same member is predicted to be in group B, C, or D, a 1-point penalty will be assigned to the model for this misclassification, regardless of which group the member was predicted to be in. Thus, all misclassifications are penalized equally. However, by adjusting the cost matrix, penalties for specific misclassifications can be assigned. For example, where someone who was truly in group D was classified in group A, the model could increase the penalty in that section of the cost matrix. A cost matrix such as this may be adjusted as needed to help fine tune the model for different iterations, and may be based on the specific patient in some embodiments.


With regards to a multi-class classifier, some machine learning algorithms, such as alternating decision trees, generally only allow for the classification into two categories (e.g. a binary classification). In cases where it is desired to classify three or more categories, a multi-class classifier is used.


In order to assist the alternating decision tree in selecting best features for predictive modeling, an ensemble method called rotation forest may be used. The rotation forest algorithm randomly splits the dataset into a specified number of subsets and uses a clustering method called Principal Component Analysis to group features deemed useful. Each tree is then gathered (i.e., “bundled into a forest”) and evaluated to determine the features to be used by the base classifier.


Various alternative classifiers may be used to provide the medical and preventive healthcare personal assistant services. Indeed, there are thousands of machine learning algorithms, which could be used in place of, or in conjunction with, the alternating decision tree algorithm. For example, one set of alternative classifiers comprise ensemble methods.


Ensemble methods use multiple, and usually random, variations of learning algorithms to strengthen classification performance. Two of the most common ensemble methods are bagging and boosting. Bagging methods, short for “bootstrap aggregating” methods, develop multiple models from random subsets of features from the data (“bootstrapping”), assigns equal weight to each feature, and selects the best-performing attributes for the base classifier using the aggregated results. Boosting, on the other hand, learns from the data by incrementally building a model, thereby attempting to correct misclassifications from previous boosting iterations.


Regression models are frequently used to evaluate the relationship between different features in supervised learning, especially when trying to predict a value rather than a classification. However, regression methods are also used with other methods to develop regression trees. Some algorithms combine both classification and regression methods; algorithms that used both methods are often referred to as CART (Classification and Regression Trees) algorithms.


Bayesian statistical methods are used when the probability of some events happening are, in part, conditional to other circumstances occurring. When the exact probability of such events is not known, maximum likelihood methods are used to estimate the probability distributions. A textbook example of Bayesian learning is using weather conditions, and whether a sprinkler system has recently gone off, to determine whether a lawn will be wet. However, whether a homeowner will turn on their sprinkler system is influenced, in part, to the weather. Bayesian learning methods, then, build predictive models based on calculated prior probability distributions.


Another type of classifiers comprise artificial neural networks. While typical machine learning algorithms have a pre-determined starting node and organized decision paths, the structure of artificial neural networks are less structured. These algorithms of interconnected nodes are inspired by the neural paths of the brain. In particular, neural network methods are very effective in solving difficult machine learning tasks. Much of the computation occurs in “hidden” layers.


By way of example and not limitation, other classifiers and methods that may be utilized include (1) decision tree classifiers, such as: C4.5—a decision tree that first selects features by evaluating how relevant each attribute is, then using these attributes in the decision path development; Decision Stump—a decision tree that classifies two categories based on a single feature (think of a single swing of an axe); by itself, the decision stump is not very useful, but becomes more so paired with ensemble methods; LADTree—a multi-class alternating decision tree using a LogitBoost ensemble method; Logistic Model Tree (LMT)—a decision tree with logistic regression functions at the leaves; Naive Bayes Tree (NBTree)—a decision tree with naive Bayes classifiers at the leaves; Random Tree—a decision tree that considers a pre-determined number of randomly chosen attributes at each node of the decision tree; Random Forest—an ensemble of Random Trees; and Reduced-Error Pruning Tree (REPTree)—a fast decision tree learning that builds trees based on information gain, then prunes the tree using reduce-error pruning methods; (2) ensemble methods such as: AdaBoostM1—an adaptive boosting method; Bagging—develops models using bootstrapped random samples, then aggregates the results and votes for the most meaningful features to use in the base classifier; LogitBoost—a boosting method that uses additive logistic regression to develop the ensemble; MultiBoostAB—an advancement of the AdaBoost method; and Stacking—a method similar to boosting for evaluating several models at the same time; (3) regression methods, such as Logistic Regression—regression method for predicting classification; (4) Bayesian networks, such as BayesNet—Bayesian classification; and NaiveBayes—Bayesian classification with strong independence assumptions; and (4) artificial neural networks such as MultiLayerPerception—a forward-based artificial neural network.


The various computerized systems and processors as described herein may include, individually or collectively, and without limitation, a processing unit, internal system memory, and a suitable system bus for coupling various system components, including database 118, with a control server. Computerized patient monitoring system 106 and/or central video monitoring system 116 may provide control server structure and/or function. The system bus may be any of several types of bus structures, including a memory bus or memory controller, a peripheral bus, and a local bus, using any of a variety of bus architectures. By way of example, and not limitation, such architectures include Industry Standard Architecture (ISA) bus, Micro Channel Architecture (MCA) bus, Enhanced ISA (EISA) bus, Video Electronic Standards Association (VESA) local bus, and Peripheral Component Interconnect (PCI) bus.


The computerized systems typically include therein, or have access to, a variety of computer-readable media, for instance, database 118. Computer-readable media can be any available media that may be accessed by the computerized system, and includes volatile and nonvolatile media, as well as removable and non-removable media. By way of example, and not limitation, computer-readable media may include computer-storage media and communication media. Computer-readable storage media may include, without limitation, volatile and nonvolatile media, as well as removable and non-removable media implemented in any method or technology for storage of information, such as computer readable instructions, data structures, program modules, or other data. In this regard, computer-storage media may include, but is not limited to, RAM, ROM, EEPROM, flash memory or other memory technology, CD-ROM, digital versatile disks (DVDs) or other optical disk storage, magnetic cassettes, magnetic tape, magnetic disk storage, or other magnetic storage device, or any other medium which can be used to store the desired information and which may be accessed by the control server. Computer-readable storage media excludes signals per se.


Communication media typically embodies computer readable instructions, data structures, program modules, or other data in a modulated data signal, such as a carrier wave or other transport mechanism, and may include any information delivery media. As used herein, the term “modulated data signal” refers to a signal that has one or more of its attributes set or changed in such a manner as to encode information in the signal. By way of example, and not limitation, communication media includes wired media such as a wired network or direct-wired connection, and wireless media such as acoustic, RF, infrared, and other wireless media. Combinations of any of the above also may be included within the scope of computer-readable media. The computer-readable storage media discussed above, including database 118, provide storage of computer readable instructions, data structures, program modules, and other data for the computerized systems. Computer readable instructions embodied on computer-readable storage media may be accessible by prohibited object system 100 and/or component(s) thereof, and, when executed by a computer processor and/or server, may cause the system to function and/or perform the methods described herein.


The computerized systems may operate in a computer network using logical connections to one or more remote computers. Remote computers may be located at a variety of locations, for example, but not limited to, hospitals and other inpatient settings, veterinary environments, ambulatory settings, medical billing and financial offices, hospital administration settings, home health care environments, payer offices (e.g., insurance companies), home health care agencies, clinicians' offices and the clinician's home or the patient's own home or over the Internet. Clinicians may include, but are not limited to, a treating physician or physicians, specialists such as surgeons, radiologists, cardiologists, and oncologists, emergency medical technicians, physicians' assistants, nurse practitioners, nurses, nurses' aides, pharmacists, dieticians, microbiologists, laboratory experts, laboratory technologists, genetic counselors, researchers, veterinarians, students, and the like. The remote computers may also be physically located in non-traditional medical care environments so that the entire health care community may be capable of integration on the network. The remote computers may be personal computers, servers, routers, network PCs, peer devices, other common network nodes, or the like, and may include some or all of the elements described above in relation to the control server. The devices can be personal digital assistants or other like devices.


Exemplary computer networks may include, without limitation, local area networks (LANs) and/or wide area networks (WANs). Such networking environments are commonplace in offices, enterprise-wide computer networks, intranets, and the Internet. When utilized in a WAN networking environment, the control server may include a modem or other means for establishing communications over the WAN, such as the Internet. In a networked environment, program modules or portions thereof may be stored in the control server, in the database 118, or on any of the remote computers. For example, and not by way of limitation, various application programs may reside on the memory associated with any one or more of the remote computers. It will be appreciated by those of ordinary skill in the art that the network connections shown are exemplary and other means of establishing a communications link between the computers may be utilized.


In operation, a user may enter commands and information into the computerized system(s) using input devices, such as a keyboard, a pointing device (commonly referred to as a mouse), a trackball, a touch pad, a 3D Gesture recognition camera or motion sensor. Other input devices may include, without limitation, microphones, satellite dishes, scanners, or the like. In addition to or in lieu of a monitor, the computerized systems may include other peripheral output devices, such as speakers and a printer.


Many other internal components of the computerized system hardware are not shown because such components and their interconnection are well known. Accordingly, additional details concerning the internal construction of the computers that make up the computerized systems are not further disclosed herein.


Methods and systems of embodiments of the present disclosure may be implemented in a WINDOWS or LINUX operating system, operating in conjunction with an Internet-based delivery system, however, one of ordinary skill in the art will recognize that the described methods and systems can be implemented in any operating system suitable for supporting the disclosed processing and communications. As contemplated by the language above, the methods and systems of embodiments of the present invention may also be implemented on a stand-alone desktop, personal computer, cellular phone, smart phone, tablet computer, PDA, or any other computing device used in a healthcare environment or any of a number of other locations.


From the foregoing, it will be seen that this disclosure is well adapted to attain all the ends and objects hereinabove set forth together with other advantages which are obvious and which are inherent to the structure.


It will be understood that certain features and subcombinations are of utility and may be employed without reference to other features and subcombinations. This is contemplated by and is within the scope of the claims.


Since many possible embodiments may be made of the invention without departing from the scope thereof, it is to be understood that all matter herein set forth or shown in the accompanying drawings is to be interpreted as illustrative and not in a limiting sense.

Claims
  • 1. A system for utilizing artificial intelligence to detect patient safety events for a monitored individual, the system comprising: one or more motion sensors located to collect a series of images of at least one area associated with a monitored individual;a computerized patient safety monitoring system communicatively coupled to the one or more motion sensors, the computerized patient safety monitoring system receiving data from the one or more motion sensors and utilizing the data to identify a patient safety event;a central video monitoring system that: receives one or more of the series of images of the patient safety event from the computerized patient safety monitoring system;prompts a user to confirm the patient safety event; andupon receiving a confirmation of the patient safety event, creates a recording of the patient safety event prior, during, and after the patient safety event was detected; anda patient safety learning system that analyzes the data and incorporates the confirmation of the patient safety event.
  • 2. The system of claim 1, wherein if the patient safety event is confirmed, the central video monitoring system creates the recording of the patient safety event prior to using data buffering.
  • 3. The system of claim 1, wherein the recording is communicated to the patient safety learning system along with the patient safety event and additional parameters added by the user.
  • 4. The system of claim 1, wherein the central video monitoring system further prompts the user to add additional parameters to the patient safety event.
  • 5. The system of claim 1, wherein if no patient safety event is detected, the computerized patient safety monitoring system communicates live images of the data to the central video monitoring system for the user to view.
  • 6. The system of claim 1, wherein the monitored individual is represented using skeletal tracking.
  • 7. A method for utilizing artificial intelligence to detect patient safety events for a monitored individual, the method comprising: utilizing one or more motion sensors to collect a series of images of at least one area associated with a monitored individual;receiving data from the one or more motion sensors at a computerized patient safety monitoring system, the computerized patient safety monitoring system communicatively coupled to the one or more motion sensors;receiving, by a central video monitoring system, one or more of the series of images of a patient safety event from the computerized patient safety monitoring system;enabling, at the central video monitoring system, a user to confirm the patient safety event;upon receiving a confirmation of the patient safety event, creating a recording of the one or more of the series of images prior to, during, and after detection of the patient safety event; andanalyzing, by a patient safety learning system, the data and incorporating the confirmation of the patient safety event that occurred.
  • 8. The method of claim 7, further comprising communicating the recording to the patient safety learning system along with the identification of the patient safety event and any additional parameters added by the user.
  • 9. The method of claim 7, further comprising storing, by a database, new or modified lessons learned by the patient safety learning system.
  • 10. The method of claim 7, further comprising, if no patient safety event is identified by the user, communicating, by the computerized patient safety monitoring system, the series of images of the data to the central video monitoring system for the user to view, wherein the series of images are live images.
  • 11. The method of claim 7, wherein the monitored individual is represented using skeletal tracking.
  • 12. The method of claim 7, wherein the at least one area to be monitored is a residential environment.
  • 13. A method for utilizing artificial intelligence to detect patient safety events for a monitored individual, the method comprising: utilizing one or more motion sensors to collect a series of images of at least one area associated with a monitored individual, wherein the monitored individual is represented using skeletal tracking;receiving data from the one or more motion sensors at a computerized patient safety monitoring system, the computerized patient safety monitoring system communicatively coupled to the one or more motion sensors;receiving, by a central video monitoring system, one or more of the series of images of a patient safety event from the computerized patient safety monitoring system;receiving, at the central video monitoring system, a confirmation of the patient safety event;upon receiving the confirmation of the patient safety event, creating a recording of the one or more of the series of images prior to, during, and after detection of the patient safety event; andanalyzing, by a patient safety learning system, the data and incorporating the confirmation of the patient safety event.
  • 14. The method of claim 13, wherein the at least one area to be monitored is a residential environment.
  • 15. The method of claim 13, further comprising storing, by a database, new or modified lessons learned by the patient safety learning system.
  • 16. The method of claim 13, further comprising communicating the recording to the patient safety learning system.
  • 17. The method of claim 16, further comprising communicating the identification of the patient safety event and any additional parameters added by a user to the patient safety learning system.
CROSS REFERENCE TO RELATED APPLICATIONS

This application is a continuation of U.S. application Ser. No. 16/832,790, titled “Utilizing Artificial Intelligence to Detect Objects or Patient Safety Events in a Patient Room” and filed on Mar. 27, 2020, which is a continuation of U.S. application Ser. No. 15/856,419, titled “Utilizing Artificial Intelligence to Detect Objects or Patient Safety Events in a Patient Room” and filed Dec. 28, 2017, the contents of which are hereby expressly incorporated by reference in their entireties.

US Referenced Citations (306)
Number Name Date Kind
4669263 Sugiyama Jun 1987 A
4857716 Gombrich et al. Aug 1989 A
5031228 Lu Jul 1991 A
5276432 Travis Jan 1994 A
5448221 Weller Sep 1995 A
5482050 Smokoff et al. Jan 1996 A
5592153 Welling et al. Jan 1997 A
5798798 Rector et al. Aug 1998 A
5838223 Gallant et al. Nov 1998 A
5915379 Wallace et al. Jun 1999 A
5942986 Shabot et al. Aug 1999 A
6050940 Braun et al. Apr 2000 A
6095984 Amano et al. Aug 2000 A
6160478 Jacobsen et al. Dec 2000 A
6174283 Nevo et al. Jan 2001 B1
6188407 Smith et al. Feb 2001 B1
6269812 Wallace et al. Aug 2001 B1
6287452 Allen et al. Sep 2001 B1
6322502 Schoenberg et al. Nov 2001 B1
6369838 Wallace et al. Apr 2002 B1
6429869 Kamakura et al. Aug 2002 B1
6614349 Proctor et al. Sep 2003 B1
6727818 Wildman et al. Apr 2004 B1
6804656 Rosenfeld et al. Oct 2004 B1
7015816 Wildman et al. Mar 2006 B2
7122005 Shusterman Oct 2006 B2
7154397 Zerhusen et al. Dec 2006 B2
7237287 Weismiller et al. Jul 2007 B2
7323991 Eckert et al. Jan 2008 B1
7408470 Wildman et al. Aug 2008 B2
7420472 Tran Sep 2008 B2
7430608 Noonan et al. Sep 2008 B2
7502498 Wen et al. Mar 2009 B2
7612679 Fackler et al. Nov 2009 B1
7669263 Menkedick et al. Mar 2010 B2
7715387 Schuman May 2010 B2
7724147 Brown May 2010 B2
7756723 Rosow et al. Jul 2010 B2
7890349 Cole et al. Feb 2011 B2
7893842 Deutsch Feb 2011 B2
7895055 Schneider et al. Feb 2011 B2
7908153 Scherpbier et al. Mar 2011 B2
7945457 Zaleski May 2011 B2
7962544 Forok et al. Jun 2011 B2
7972140 Renaud Jul 2011 B2
8108036 Tran Jan 2012 B2
8123685 Brauers et al. Feb 2012 B2
8128596 Carter Mar 2012 B2
8190447 Hungerford et al. May 2012 B2
8224108 Steinberg et al. Jul 2012 B2
8237558 Seyed et al. Aug 2012 B2
8273018 Fackler et al. Sep 2012 B1
8432263 Kunz Apr 2013 B2
8451314 Cline et al. May 2013 B1
8529448 Mcnair Sep 2013 B2
8565500 Neff Oct 2013 B2
8620682 Bechtel et al. Dec 2013 B2
8655680 Bechtel et al. Feb 2014 B2
8700423 Eaton et al. Apr 2014 B2
8727981 Bechtel et al. May 2014 B2
8769153 Dziubinski Jul 2014 B2
8890937 Skubic et al. Nov 2014 B2
8902068 Bechtel et al. Dec 2014 B2
8917186 Grant Dec 2014 B1
8953886 King et al. Feb 2015 B2
9072929 Rush et al. Jul 2015 B1
9129506 Kusens Sep 2015 B1
9147334 Long et al. Sep 2015 B2
9159215 Kusens Oct 2015 B1
9269012 Fotland Feb 2016 B2
9292089 Sadek Mar 2016 B1
9305191 Long et al. Apr 2016 B2
9367270 Robertson Jun 2016 B1
9408561 Stone et al. Aug 2016 B2
9489820 Kusens Nov 2016 B1
9519969 Kusens Dec 2016 B1
9524443 Kusens Dec 2016 B1
9536310 Kusens Jan 2017 B1
9538158 Rush et al. Jan 2017 B1
9563955 Kamarshi et al. Feb 2017 B1
9597016 Stone et al. Mar 2017 B2
9729833 Kusens Aug 2017 B1
9741227 Kusens Aug 2017 B1
9892310 Kusens et al. Feb 2018 B2
9892311 Kusens et al. Feb 2018 B2
9892611 Kusens Feb 2018 B1
9905113 Kusens Feb 2018 B2
9934427 Derenne et al. Apr 2018 B2
10055961 Johnson et al. Aug 2018 B1
10078956 Kusens Sep 2018 B1
10090068 Kusens et al. Oct 2018 B2
10091463 Kusens Oct 2018 B1
10096223 Kusens Oct 2018 B1
10210378 Kusens et al. Feb 2019 B2
10225522 Kusens Mar 2019 B1
10276019 Johnson et al. Apr 2019 B2
10342478 Kusens Jul 2019 B2
10524722 Kusens et al. Jan 2020 B2
10643061 Kusens May 2020 B2
10643446 Kusens May 2020 B2
10614288 Kusens Jun 2020 B2
10878220 Kusens Dec 2020 B2
10922946 Kusens Feb 2021 B2
20020015034 Malmborg Feb 2002 A1
20020038073 August Mar 2002 A1
20020077863 Rutledge et al. Jun 2002 A1
20020101349 Rojas Aug 2002 A1
20020115905 August Aug 2002 A1
20020183976 Pearce Dec 2002 A1
20030037786 Biondi et al. Feb 2003 A1
20030070177 Kondo et al. Apr 2003 A1
20030092974 Santoso et al. May 2003 A1
20030095147 Daw May 2003 A1
20030135390 Obrien et al. Jul 2003 A1
20030140928 Bui et al. Jul 2003 A1
20030227386 Pulkkinen et al. Dec 2003 A1
20040019900 Knightbridge et al. Jan 2004 A1
20040052418 Delean Mar 2004 A1
20040054760 Ewing et al. Mar 2004 A1
20040097227 Siegel May 2004 A1
20040116804 Mostafavi Jun 2004 A1
20040193449 Wildman et al. Sep 2004 A1
20050038326 Mathur Feb 2005 A1
20050182305 Hendrich Aug 2005 A1
20050231341 Shimizu Oct 2005 A1
20050249139 Nesbit Nov 2005 A1
20060004606 Wendl et al. Jan 2006 A1
20060047538 Condurso et al. Mar 2006 A1
20060049936 Collins et al. Mar 2006 A1
20060058587 Heimbrock et al. Mar 2006 A1
20060089541 Braun et al. Apr 2006 A1
20060092043 Lagassey May 2006 A1
20060107295 Margis et al. May 2006 A1
20060145874 Fredriksson et al. Jul 2006 A1
20060261974 Albert et al. Nov 2006 A1
20070033072 Bildirici Feb 2007 A1
20070083445 Garcia et al. Apr 2007 A1
20070085690 Tran Apr 2007 A1
20070118054 Pinhas et al. May 2007 A1
20070120689 Zerhusen et al. May 2007 A1
20070129983 Scherpbier et al. Jun 2007 A1
20070136102 Rodgers Jun 2007 A1
20070136218 Bauer et al. Jun 2007 A1
20070159332 Koblasz Jul 2007 A1
20070279219 Warriner Dec 2007 A1
20070296600 Dixon et al. Dec 2007 A1
20080001735 Tran Jan 2008 A1
20080001763 Raja et al. Jan 2008 A1
20080002860 Super et al. Jan 2008 A1
20080004904 Tran Jan 2008 A1
20080009686 Hendrich Jan 2008 A1
20080015903 Rodgers Jan 2008 A1
20080021731 Rodgers Jan 2008 A1
20080071210 Moubayed et al. Mar 2008 A1
20080087719 Sahud Apr 2008 A1
20080106374 Sharbaugh May 2008 A1
20080126132 Warner et al. May 2008 A1
20080228045 Gao et al. Sep 2008 A1
20080249376 Zaleski Oct 2008 A1
20080267447 Kelusky et al. Oct 2008 A1
20080277486 Seem et al. Nov 2008 A1
20080281638 Weatherly et al. Nov 2008 A1
20090082829 Panken et al. Mar 2009 A1
20090091458 Deutsch Apr 2009 A1
20090099480 Salgo et al. Apr 2009 A1
20090112630 Collins, Jr. et al. Apr 2009 A1
20090119843 Rodgers et al. May 2009 A1
20090177327 Turner et al. Jul 2009 A1
20090224924 Thorp Sep 2009 A1
20090278934 Ecker et al. Nov 2009 A1
20090322513 Hwang et al. Dec 2009 A1
20090326340 Wang et al. Dec 2009 A1
20100117836 Seyed et al. May 2010 A1
20100169114 Henderson et al. Jul 2010 A1
20100169120 Herbst et al. Jul 2010 A1
20100172567 Prokoski Jul 2010 A1
20100176952 Bajcsy et al. Jul 2010 A1
20100188228 Hyland Jul 2010 A1
20100205771 Pietryga et al. Aug 2010 A1
20100245577 Yamamoto et al. Sep 2010 A1
20100285771 Peabody Nov 2010 A1
20100305466 Corn Dec 2010 A1
20110018709 Kornbluh Jan 2011 A1
20110022981 Mahajan et al. Jan 2011 A1
20110025493 Papadopoulos et al. Feb 2011 A1
20110025499 Hoy et al. Feb 2011 A1
20110035057 Receveur et al. Feb 2011 A1
20110035466 Panigrahi Feb 2011 A1
20110054936 Cowan et al. Mar 2011 A1
20110068930 Wildman et al. Mar 2011 A1
20110077965 Nolte et al. Mar 2011 A1
20110087079 Aarts Apr 2011 A1
20110087125 Causevic Apr 2011 A1
20110102133 Shaffer May 2011 A1
20110102181 Metz et al. May 2011 A1
20110106560 Eaton et al. May 2011 A1
20110106561 Eaton et al. May 2011 A1
20110175809 Markovic et al. Jul 2011 A1
20110190593 Mcnair Aug 2011 A1
20110227740 Wohltjen Sep 2011 A1
20110245707 Castle et al. Oct 2011 A1
20110254682 Sigrist Oct 2011 A1
20110288811 Greene Nov 2011 A1
20110295621 Farooq et al. Dec 2011 A1
20110301440 Riley et al. Dec 2011 A1
20110313325 Cuddihy Dec 2011 A1
20120016295 Tsoukalis Jan 2012 A1
20120025991 Okeefe et al. Feb 2012 A1
20120026308 Johnson et al. Feb 2012 A1
20120075464 Derenne et al. Mar 2012 A1
20120092162 Rosenberg Apr 2012 A1
20120098918 Murphy Apr 2012 A1
20120140068 Monroe et al. Jun 2012 A1
20120154582 Johnson et al. Jun 2012 A1
20120212582 Deutsch Aug 2012 A1
20120259650 Mallon et al. Oct 2012 A1
20120314901 Hanson et al. Dec 2012 A1
20120323090 Bechtel et al. Dec 2012 A1
20120323591 Bechtel et al. Dec 2012 A1
20120323592 Bechtel et al. Dec 2012 A1
20130027199 Bonner Jan 2013 A1
20130028570 Suematsu et al. Jan 2013 A1
20130120120 Long et al. May 2013 A1
20130122807 Tenarvitz et al. May 2013 A1
20130127620 Siebers et al. May 2013 A1
20130184592 Venetianer et al. Jul 2013 A1
20130265482 Funamoto Oct 2013 A1
20130309128 Voegeli et al. Nov 2013 A1
20130332184 Burnham et al. Dec 2013 A1
20140039351 Mix et al. Feb 2014 A1
20140070950 Snodgrass Mar 2014 A1
20140081654 Bechtel et al. Mar 2014 A1
20140085501 Tran Mar 2014 A1
20140086450 Huang et al. Mar 2014 A1
20140108041 Bechtel et al. Apr 2014 A1
20140155755 Pinter et al. Jun 2014 A1
20140168397 Greco et al. Jun 2014 A1
20140191861 Scherrer Jul 2014 A1
20140191946 Cho et al. Jul 2014 A1
20140213845 Bechtel et al. Jul 2014 A1
20140267625 Clark et al. Sep 2014 A1
20140267736 Delean Sep 2014 A1
20140309789 Ricci Oct 2014 A1
20140327545 Bolling et al. Nov 2014 A1
20140328512 Gurwicz et al. Nov 2014 A1
20140333744 Baym et al. Nov 2014 A1
20140333776 Dedeoglu et al. Nov 2014 A1
20140354436 Nix et al. Dec 2014 A1
20140365242 Neff Dec 2014 A1
20150057635 Bechtel et al. Feb 2015 A1
20150061891 Oleson et al. Mar 2015 A1
20150109442 Derenne et al. Apr 2015 A1
20150206415 Wegelin et al. Jul 2015 A1
20150269318 Neff Sep 2015 A1
20150278456 Rodriguez et al. Oct 2015 A1
20150294143 Wells et al. Oct 2015 A1
20160022218 Hayes et al. Jan 2016 A1
20160070869 Portnoy Mar 2016 A1
20160093195 Ophardt Mar 2016 A1
20160127641 Gove May 2016 A1
20160180668 Kusens et al. Jun 2016 A1
20160183864 Kusens et al. Jun 2016 A1
20160217347 Mineo Jul 2016 A1
20160253802 Venetianer et al. Sep 2016 A1
20160267327 Franz et al. Sep 2016 A1
20160285416 Tiwari et al. Sep 2016 A1
20160314258 Kusens Oct 2016 A1
20160324460 Kusens Nov 2016 A1
20160360970 Tzvieli et al. Dec 2016 A1
20170055917 Stone et al. Mar 2017 A1
20170084158 Kusens Mar 2017 A1
20170091562 Kusens Mar 2017 A1
20170109991 Kusens Apr 2017 A1
20170116473 Sashida et al. Apr 2017 A1
20170143240 Stone et al. May 2017 A1
20170163949 Suzuki Jun 2017 A1
20170193177 Kusens Jul 2017 A1
20170193279 Kusens et al. Jul 2017 A1
20170193772 Kusens et al. Jul 2017 A1
20170195637 Kusens et al. Jul 2017 A1
20170214902 Braune Jul 2017 A1
20170289503 Kusens Oct 2017 A1
20170337682 Liao Nov 2017 A1
20180018864 Baker Jan 2018 A1
20180068545 Kusens Mar 2018 A1
20180104409 Bechtel et al. Apr 2018 A1
20180114053 Kusens et al. Apr 2018 A1
20180116528 Tzvieli et al. May 2018 A1
20180137340 Kusens et al. May 2018 A1
20180144605 Kusens May 2018 A1
20180189946 Kusens et al. Jul 2018 A1
20180190098 Kusens Jul 2018 A1
20180357875 Kusens Dec 2018 A1
20190006046 Kusens et al. Jan 2019 A1
20190029528 Tzvieli et al. Jan 2019 A1
20190043192 Kusens et al. Feb 2019 A1
20190057592 Kusens Feb 2019 A1
20190122028 Kusens et al. Apr 2019 A1
20190205630 Kusens Jul 2019 A1
20190206218 Kusens et al. Jul 2019 A1
20190209022 Sobol et al. Jul 2019 A1
20190228866 Weffers-Albu et al. Jul 2019 A1
20190307405 Terry et al. Oct 2019 A1
20200050844 Kusens Feb 2020 A1
20200226905 Kusens et al. Jul 2020 A1
20210202052 Bechtel et al. Jul 2021 A1
Foreign Referenced Citations (4)
Number Date Country
19844918 Apr 2000 DE
2007081629 Jul 2007 WO
2009018422 Feb 2009 WO
2012122002 Sep 2012 WO
Non-Patent Literature Citations (13)
Entry
Conaire et al., “Fusion Of Infrared and Visible Spectrum Video for Indoor Surveillance”, WIAMIS, Apr. 2005, 4 pages.
Mooney, Tom, “Rhode Island ER First to Test Google Glass on Medical Conditions”, EMS1, Available online at <https://www.ems1.com/ems-products/technology/articles/1860487-Rhode-Island-ER-first-to-test-Google-Glass-on-medical-conditions/>, Mar. 10, 2014, 3 pages.
Raheja et al., “Human Facial Expression Detection From Detected in Captured Image Using Back Propagation Neural Network”, International Journal of Computer Science and Information Technology (IJCSIT), vol. 2, No. 1, Feb. 2010, 9 pages.
“Virtual Patient Observation: Centralize Monitoring of High-Risk Patients with Video”, CISCO, Cisco Video Surveillance Manager, 2013, pp. 1-6.
Non-Final Office action received for U.S. Appl. No. 16/410,745, dated May 21, 2021, 21 pages.
Notice of Allowance received for U.S. Appl. No. 16/654,502, dated Feb. 17, 2021, 9 pages.
Pre-Interview First Office action received for U.S. Appl. No. 16/816,626, dated Dec. 22, 2020, 4 pages.
Pre-interview First Office Action received for U.S. Appl. No. 16/731,274, dated Sep. 1, 2021, 12 pages.
Non-Final Office Action received for U.S. Appl. No. 16/830,498, dated Sep. 22, 2021, 29 pages.
Non-Final Office Action received for U.S. Appl. No. 17/101,639, dated Sep. 13, 2021, 2021, 13 pages.
Notice of Allowance received for U.S. Appl. No. 16/816,626, dated Sep. 30, 2021, 9 pages.
Quan et al., “Facial Asymmetry Analysis Based on 3-D Dynamic Scans”, 2012 IEEE International Conference on Systems, Man, and Cybernetics; COEX, Seoul, Korea; DOI: 10.1109/ICSMC.2012.6378151, Oct. 14-17, 2012, pp. 2676-2681.
Notice of Allowance received for U.S. Appl. No. 16/410,745, dated Jan. 4, 2022, 10 pages.
Related Publications (1)
Number Date Country
20210090420 A1 Mar 2021 US
Continuations (2)
Number Date Country
Parent 16832790 Mar 2020 US
Child 17117414 US
Parent 15856419 Dec 2017 US
Child 16832790 US