The present disclosure relates to a method of cuff-less blood pressure measurements in a mobile device.
Hypertension afflicts about one-fourth of the world's adult population. It is a major risk factor for stroke and heart disease and is therefore a “silent killer”. Hypertension can be treated with lifestyle changes and medication. Medical therapy is associated with a 35-40% reduction in the risk of stroke and a 15-25% reduction in the risk of heart disease. Hence, hypertension management is an archetypical example of preventive, proactive healthcare. However, the detection of high blood pressure (BP) is often missed. An estimated 20% of people with hypertension in the US do not know they have it. Further, BP in known hypertensive patients is often uncontrolled. An estimated 53% of hypertensive patients in the US do not have their BP under control. Hypertension detection and control rates are much worse elsewhere, especially in low resource settings wherein personnel trained in BP measurement and the means for people to have their BP measured are lacking. Hypertension management is complicated by the well-known masked and white coat effects in the clinic and large BP variability amongst few measurements. In fact, ambulatory BP monitoring is now considered the gold standard for the diagnosis of high BP. Ubiquitous BP monitoring technology could improve hypertension detection by providing serial, out-of-clinic measurements in the mass population and could enhance hypertension control by providing continual feedback to the individual patient.
Several methods are available for measuring BP. However, none of these methods offers ubiquitous BP monitoring capabilities.
Catheterization is the gold standard method. This method measures a BP waveform by placing a strain gauge in fluid contact with blood. However, this method is invasive.
Auscultation is the standard clinical method. This method measures systolic BP (SP) and diastolic BP (DP) by occluding an artery with a cuff and detecting the Korotkoff sounds using a stethoscope and manometer during cuff deflation. The first sound indicates the initiation of turbulent flow and SP, while the fifth sound is silent and indicates the renewal of laminar flow and DP. The method is non-invasive but requires a skilled operator. Further, due to safety and ecological concerns, mercury manometers are being replaced with high maintenance aneroid manometers.
Oscillometry is the most popular non-invasive and automatic method. This method measures mean BP (MP), SP, and DP using an inflatable cuff with a sensor to record the pressure inside it. The recorded cuff pressure not only rises and falls with cuff inflation and deflation but also shows tiny oscillations indicating the pulsatile blood volume in the artery. The amplitude of these oscillations varies with the cuff pressure, as the arterial blood volume-transmural pressure relationship is nonlinear. Transmural pressure of an artery is defined as the internal pressure (i.e., BP) minus the external pressure (cuff pressure in this case). The BP values are estimated from the oscillogram (i.e., the oscillation amplitudes versus the cuff pressure) using an algorithm (e.g., fixed-ratios). However, automatic cuffs do not afford ubiquitous BP monitoring capabilities. That is, people in low resource settings may not have any access to such devices; others must go out of their way (e.g., to a pharmacy) to use these devices; and even people who own a device cannot carry and use them outside their homes.
Volume clamping is a non-invasive and automatic method used in research. This method measures a finger BP waveform by using a cuff with a photoplethysmography (PPG) sensor built-in to measure the blood volume. The blood volume at zero transmural pressure is estimated by slowly varying the cuff pressure. The cuff pressure is then continually varied to maintain this blood volume throughout the cardiac cycle via a fast servo-control system. The applied cuff pressure may thus equal BP. However, in addition to requiring a cuff, the method is prohibitively expensive.
Tonometry is another research method. This method measures a BP waveform by pressing a manometer-tipped probe on an artery. The probe must flatten or applanate the artery so that its wall tension is perpendicular to the probe. However, manual and automatic applanation have proven difficult. As a result, while the method should not require any calibration, the measured waveform has been routinely calibrated with a cuff in practice. Furthermore, the method is likewise costly.
As a result, cuff-less BP monitoring technology is being widely pursued. Much of these efforts are based on the principle of pulse transit time (PTT). PTT is the time delay for the pressure wave to travel between two arterial sites. An increase in BP causes the arteries to stiffen which, in turn, causes PTT to decline. So, PTT is often inversely correlated with BP in individual subjects. Further, PTT may be simply determined from the relative timing between proximal and distal arterial waveforms. Hence, PTT carries the advantage of possibly offering passive BP monitoring without using a cuff. However, this approach also has major disadvantages. Firstly, PTT not only changes with BP but also smooth muscle contraction (especially when measured in small arteries) and aging and disease (especially when measured in large arteries). Smooth muscle contraction occurs acutely and thus severely limits the accuracy of the approach, whereas aging and disease are longer processes that prevent PTT from being able to track chronic changes in BP such as the common development of isolated systolic hypertension due to large artery stiffening with aging. Secondly, the required calibration of PTT in units of msec to BP in units of mmHg must either be population-based and thus error-prone or involve periodic use of a BP cuff and thus not truly cuff-less.
In sum, hypertension is a major cardiovascular risk factor that is treatable, yet high BP detection and control rates are unacceptably low. Ubiquitous BP monitoring technology could improve hypertension management, but oscillometric and other available non-invasive BP measurement devices employ an inflatable cuff and therefore do not afford such monitoring capabilities. While the PTT approach could potentially permit cuff-less and passive BP monitoring, its accuracy will be limited due to confounding physiology and the need for calibration. Hence, there is a need in the art for a ubiquitous method for reliable, cuff-less measurement of BP.
This section provides background information related to the present disclosure, which is not necessarily prior art.
A handheld mobile device that measures blood pressure is presented. The mobile device includes: a processor enclosed within a housing; a display unit integrated into an exterior surface of the housing; and a sensing unit integrated into an exterior surface of the housing. The sensing unit is configured to measure blood pressure at a fingertip of a user. The sensing unit includes a reflectance-mode photo-plethysmography (PPG) sensor configured to measure blood volume oscillations and a pressure sensor configured to measure pressure applied by the fingertip. A non-transitory computer-readable medium enclosed in the housing stores instructions that, when executed by the processor, cause the processor to: measure pressure applied to the sensing unit by a fingertip of a user, measure blood volume oscillations in the fingertip while varying pressure is being applied to the sensing unit by the fingertip, generate an oscillogram from the measured pressure and the measured blood volume oscillations, where the oscillogram plots amplitude of blood volume oscillations as a function of the measured pressure; calculate a blood pressure value from the oscillogram, and present the blood pressure value on the display unit.
The mobile device may include a visual guide disposed on the exterior surface and arrange in relation to the sensing unit. In one embodiment, the visual guide is further defined as indicia for placement of the fingertip in relation to the sensing unit.
The sensing unit may take on different forms. For example, the PPG sensor may be implemented by a light emitting diode cooperatively operating with a photodetector. Alternatively, the PPG sensor may be implemented as a camera. In some examples, the pressure sensor is placed on top of the PPG sensor as it relates the exterior surface of the housing. In other examples, the sensing unit is disposed underneath the display unit.
In one embodiment, blood pressure is determined by an application residing on the mobile device. Instructions comprising the application may further cause the processor to guide the user via the display unit to vary pressure being applied to the sensing unit while blood volume oscillations are measured. Instructions comprising the application may also cause the processor to guide the user to hold the mobile device at a height aligned with heart of the user.
The drawings described herein are for illustrative purposes only of selected embodiments and not all possible implementations, and are not intended to limit the scope of the present disclosure.
Corresponding reference numerals indicate corresponding parts throughout the several views of the drawings.
Example embodiments will now be described more fully with reference to the accompanying drawings.
The present invention relates to a reliable method for cuff-less BP monitoring via the oscillometric principle. In conventional oscillometry, an inflatable cuff serves as both an actuator to vary the external pressure of an artery and a sensor to measure this pressure and the resulting variable-amplitude blood volume oscillations in the artery. BP is then estimated from the oscillation amplitudes as a function of the applied pressure (again, the “oscillogram”). The idea of this disclosure is to extend the oscillometric principle for cuff-less monitoring of BP using a smartphone, another mobile device (e.g., PDAs, laptops, tablets, and wearables), and/or possibly an encasing of a mobile device. Note that smartphones, in particular, are readily available even to those in low resource settings.
The user serves as the actuator by pressing her finger against the mobile device held at heart level to steadily increase the external pressure of the underlying artery. Such finger actuation may afford external pressure application similar to a cuff in that the artery will be pressed against supporting bone. The mobile device provides visual guidance for proper finger actuation, measures the applied pressure and blood volume oscillations, and estimates BP from the oscillogram. This invention could be implemented with a photoplethysmography (PPG) sensor, which measures pulsatile blood volume and a pressure sensor embedded in a smartphone encasing or within the phone itself. By having the user serve as the actuator, the requisite hardware is automatically miniaturized and greatly simplified. Note that the mobile device may also warn users of high BP, securely transmit the measured BP to caregivers, and send text reminders to patients with uncontrolled BP to take their medications. In this way, a complete hypertension management system would be available to many
The mobile device 100 provides visual guidance on the display 104 for proper finger actuation. That is, having the graph 112 of the pressure applied 116 to the sensing unit 108 on the same graph 112 as the target pressure 118 provides the user with visual feedback as to how much pressure to exert. The sensing unit 108 also measures blood volume oscillations 120 to generate an oscillogram 128, and BP is estimated from the oscillogram 128. The pressure applied 116 to the sensing unit 108 is graphed in relation to target pressure 118 to guide the user on the need to apply increased pressure and when to apply increased pressure. Graphing the pressure applied 116 to the sensing unit 108 in real time over the target pressure 118 allows the user to attempt to trace the target pressure 118. By having the user serve as the actuator, the requisite hardware is automatically miniaturized and greatly simplified. The SP, the DP, and the MP can be calculated from the oscillogram 128.
The sensing unit 108 is operably coupled to the computer processor 300 of the mobile device 100. The sensing unit 108 includes a PPG sensor 320, a pressure sensor 324, and possibly a temperature sensor 326. The temperature sensor 326 is optional, and the BP measurements may be obtained without it. The PPG sensor 320 of the sensing unit 108 is operably coupled to the oscillogram generator 308, and the pressure sensor 324 is operably coupled to the oscillogram generator 308 and the pressure guide 30. The sensing unit 108 is configured to communicate the measured values of the PPG sensor 320 and the pressure sensor 324 to the computer processor 300 of the mobile device 100. An example embodiment of the sensing unit 108 is further described below in
The oscillogram generator 308 is configured to generate an oscillogram based on input from the PPG sensor 320 and input from the pressure sensor 324. In an example embodiment, an oscillogram is constructed by first taking a maximum value and a minimum value of each beat of the blood volume waveform that is detected and measured by the PPG sensor 320. The maximum value and minimum value of each beat, as a function of the pressure applied 116 to the sensing unit 108 (obtained by the pressure sensor 324), are then median filtered to attenuate respiratory and heart rate variability. Finally, the maximum value and minimum value of each beat are linearly interpolated, and the difference between the two envelopes is taken as the oscillogram 128. Although not limited thereto, the oscillogram generator 308 may generate an oscillogram 128 using other known algorithms as would be understood by one having skill in the art.
In extending this algorithm of generating the oscillogram 128 using finger pressing instead of a cuff, issues of detecting beats in the presence of artifact and connecting the extrema of valid beats, which can be separated by a wide range of the pressure applied 116 to the sensing unit 108, may be present. To overcome these issues, algorithms that first identify artifact in the blood volume waveform that exploit the anticipated blood volume shape and then detect the maxima and minima of the artifact-free beats can be implemented into the system. Advanced filtering and splining algorithms, as well as parametric model (Gaussian functions) fitting, which may be more robust, can be used to connect the extrema of the clean beats.
To assess the validity of the oscillogram 128, various features such as the number of artifact-free beats, the applied pressure range over which these beats extend, and the shape, width, and degree of symmetry of the oscillogram 128 may be analyzed to determine the validity of the oscillogram 128. An algorithm such as linear discriminant analysis may be implemented to distinguish between valid and invalid oscillograms based on these features.
The BP estimator 312 is configured to determine the BP based on the oscillogram 128 generated by the oscillogram generator 308. Subsequently, the BP estimator 312 presents the BP value on the display 104. Example algorithms that may be used in estimating BP are the Standard Fixed-Ratio Algorithm, the Fixed-Slope Algorithm, a Patient-Specific Algorithm, and other variations of these algorithms. These algorithms may also be combined in various manners to estimate BP.
In addition, an age-dependent scaling algorithm of finger SP may be used to estimate brachial SP, since the ratio of finger SP to brachial SP may decrease with age. Brachial BP may also be determined from model-based transfer functions. While using the model-based transfer functions would require an input of the finger BP waveform, the finger BP waveform may be obtained using a Patient-Specific Algorithm. Some example embodiments of algorithms that may be used in estimating the BP are further described below in relation to
The pressure guide 316 may optionally be interfaced with the pressure sensor 324. In some embodiments, the pressure guide 316 scales the pressure applied to the pressure sensor 324 to a measure of pressure applied 116 to the sensing unit 108 exerted on the PPG sensor 320. The pressure guide 316 is also configured to present the estimated magnitude of the pressure applied to the sensing unit 108 on the display 104. By displaying the amount of pressure applied to the sensing unit 108 on the display 104, the pressure guide 316 also provides the user with real time feedback regarding the amount of pressure applied to the sensing unit 108 and the location of the finger relative to the sensing unit 108, as described further below. Thus, the user can take corrective action based on the real-time feedback so that the target pressure 118 can be applied to the sensing unit 108 for a predetermined period of time. The pressure guide 316 also receives feedback from the temperature sensor 326. The temperature sensor 326 measures a temperature of the finger applying pressure 116 to the sensor unit 108. Under the circumstance that the temperature of the finger is too low or possibly too high, the display provides feedback informing the user that the finger temperature is outside of an acceptable range, which can affect the results of the BP measurement system.
In an example embodiment, the oscillogram generator 308, BP estimator 312, and the pressure guide 316 may be implemented on the mobile device 100 as an application. The application can be used to guide the finger actuation, inform the user of any adjustments required in the pressure applied 116 to the sensing unit 108 or finger placement, graph finger pressure and possibly the blood volume oscillations 120, and display the graphs along with the SP, DP, and MP/BP. The application uses the display 104 and processor of the mobile device. For example, the application provides visual feedback to guide the finger actuation by graphing the pressure applied 116 to the sensing unit 108 over the target pressure 118. That is, the target pressure 118 may be a linear target rise or a pressure in step increments, which may yield more artifact-robust oscillograms over certain time interval (e.g., at least 15 sec). The pressure applied 116 to the sensing unit 108 is superimposed as it is being recorded in real-time. Alternatively, a display of the pressure applied 116 to the sensing unit 108 as it evolves in real-time within a plotting window that tells the user to raise the pressure steadily to a high level (e.g., 150 mmHg) over fixed time interval, but not in any preset way, may be used. A third option is to guide the finger actuation through a video game that requires the user press at various pressures to accomplish the goals of the game. In addition or in another embodiment, audio feedback could be used to guide the finger actuation.
Additionally, after the BP has been computed, the application may determine whether the BP is within an acceptable range. If the BP falls outside of the acceptable range, the application may instruct the user to repeat the BP measurement in order to ensure accuracy.
The application then displays the computed BP and other physiologic variables, if available, or asks the user to repeat the procedure in the event of an unsuccessful finger actuation. The application could also ask the user to repeat the procedure even when the actuation is deemed successful. For example, the application could average two similar BP measurements or the two closest BP measurements out of three total measurements to reduce variability. The application may also alert the user if the BP is too high or too low, securely transmit the measurements to the cloud as well as the physician, and send text reminders to users with repeatedly high BP measurements to take their medications. The application may further allow the user to view their history of BP measurements over time and integrate with other health and lifestyle applications on the mobile device 100 such as those that track eating habits.
The data store 304 is interfaced with the BP estimator 312 and the pressure guide 316. The data store 304 is configured to store BP values (MP, DP, and SP) that have been determined by the BP estimator 312. Pressure values from the pressure sensor 324 and PPG values from the PPG sensor 320 may also be stored in the data store 304. This may be useful for a user who is interested in tracking and analyzing BP values over a period of time to determine whether lifestyle changes, dietary changes, and/or exercise routines are improving her BP and overall cardiovascular health. The data store 304 may also be configured to provide the computer processor 300 of the mobile device 100 with processor readable instructions for the oscillogram generator 308, the pressure guide 316, and the BP estimator 312. As an example, the data store 304 may provide the computer processor 300 of the mobile device 100 with executable instructions that allow it to generate an oscillogram 128 from the blood volume oscillations detected and measured by the PPG sensor 320 and the pressure applied 116 to the sensing unit 108 detected and measured in the pressure sensor 324. The data store 304 may also provide the computer processor 300 of the mobile device 100 with executable instructions to estimate BP based on the oscillogram 128 generated by the oscillogram generator 308 and an algorithm that estimates BP based on certain parameters of the oscillogram 128.
The display 104 may provide the user with real-time feedback regarding the pressure applied 116 to the sensing unit 108 and the location of the finger relative to the sensing unit 108. As an example, the system may provide the user visual feedback when the pressure applied 116 to the sensing unit 108 is below a target pressure 118. As another example, the system may provide the user visual feedback when the location of the finger is not at a predefined optimal finger location that allows for optimal oscillogram measurements. The predefined finger location may be determined by an initialization protocol, which occurs when the finger actuation is attempted over a range of locations on the sensor, and the location that yields the largest oscillogram amplitude is selected as the predefined optimal finger location. The predefined optimal finger location may be located on the upper index finger above a transverse palmer arch artery of the subject.
To guide the user in increasing the pressure applied 116 to the sensing unit 108, the target pressure 118 may have a trajectory of a linear rise, a step increment, or a combination of a step increment and a linear rise shown on the display 104. In other embodiments, the target pressure 118 may not be displayed. For example, the display 104 could include the desired start and end pressures with the time interval to reach the end pressure.
Second, the system begins to detect the pressure applied 116 to the sensing unit 108 at 208. Next, the system provides the user with real-time feedback. At 212 the system then determines whether the location of the finger relative to the sensor is proper, wherein the proper location is the predefined optimal finger location. If so, then at 216 the system determines whether the user is applying the proper amount of pressure, wherein the proper amount of pressure is the target pressure 118. If so, the system proceeds to the next step.
If the location of the finger relative to the sensing unit 108 is not proper at 212, or if the amount of pressure is not proper at 216, the system, at 220, provides corrective feedback so that the user can either correct the amount of pressure applied to the sensing unit 108 or adjust her finger positioning relative to the sensing unit 108. As an example, the feedback may instruct the user to either increase or decrease the amount of pressure applied so that the user can apply the target pressure 118. As another example, the feedback may instruct the user to adjust the positioning of her finger so that the positioning of the finger is at the predefined optimal finger location. Control then proceeds to 208. The feedback may be visual, audio-based, or a combination of visual and audio-based feedback.
Once the target pressure 118 is met and proper finger positioning is achieved, the sensing unit 108 measures and graphs the blood volume oscillations and the pressure applied 116 to the sensing unit 108 at 224. The system then displays the BP to the user. The system determines the SP and DP based on the blood volume oscillations and the pressure applied 116 to the sensing unit 108. Using the SP and DP, the system estimates the MP/BP from the blood volume oscillations and the pressure applied 116 to the sensing unit 108 using various BP estimation algorithms. Depending on the determination method, the MP/BP may be determined first followed by the SP and DP. In any case, the mobile device 100 subsequently displays the MP/BP.
In an example embodiment, the PPG sensor 320 is an infrared, reflectance-mode PPG sensor that measures blood volume oscillations from the arteries beneath the skin. The PPG sensor 320 may be configured in a way such that the blood volume oscillations of a transverse palmer arch artery, above the top knuckle of the index finger, can be accurately and efficiently recorded. An LED and a photodetector (referenced and discussed in
In an example embodiment, the pressure sensor 324 is a thin-filmed capacitive transducer. The transducer outputs the pressure applied 116 to the sensing unit 108 in the normal direction. The pressure sensor 324 may be configured to output a pressure between the range of 0 to 250 mmHg at an output resolution of less than 0.1 mmHg. Other pressure sensors that are configured to output a force when the pressure applied 116 to the sensing unit 108 may also be used instead of the thin-filmed capacitive pressure sensor 324 described in this embodiment.
In an example embodiment, the interface unit 328 is a thin, rigid structure 328A adhesively coupled to a foam material 328B. The rigid structure of the interface unit 328A is coupled to the PPG sensor 320, while the foam material of the interface unit 328B is coupled to the pressure sensor 324. This interface unit 328 allows for the force applied to the PPG sensor 320 to be distributed uniformly to the pressure sensor 324.
Alternatively, a silicone layer or similar material may be used in place of the foam material 328B. Other materials that may be used in place of the foam material 328B are materials that are configured to distribute an applied force evenly over its respective area and acts as a mechanical low-pass filter to mitigate the impact of any spurious finger pressing.
A surface of the sensing unit 108 that receives the pressure applied 116 to the sensing unit 108 from the user should have an area that is optimized in order to allow for reliable BP estimation. For example, in certain embodiments, if the area of the surface is too large, then substantial force will be needed to achieve the target pressure 118. If the area of the surface is too small, then modest variations in pressure applied 116 to the sensing unit 108 will induce substantial pressure changes. The area of the surface of the sensing unit 108 that receives the applied force from the subject should therefore be optimized to allow for the sensing unit 108 to measure and detect the pressure applied 116 to the sensing unit 108 that achieves an optimal balance between these two considerations.
However, since the Standard Fixed-Ratio Algorithm is population based, the algorithm may be less effective in accurately determining BP levels for those individuals who have BP not within a normal BP range. The BP estimation errors of the Standard Fixed-Ratio Algorithm may be significant and may be impacted by the width of the arterial compliance curve, which is the derivative of the blood volume transmural pressure relationship with respect to transmural pressure. The accuracy of the Standard Fixed-Ratio Algorithm may also be affected by those who have a high pulse pressure (i.e., the difference between the SP and DP) due to artery stiffening, a common condition that occurs with aging and disease.
In
The first step of estimating BP using the Patient-Specific Algorithm is to represent the cuff pressure oscillation amplitude versus the cuff pressure function (i.e., the oscillogram) with a parametric model of the nonlinear brachial artery blood volume-transmural pressure relationship. This representation is demonstrated in the following equation 1:
The unknown parameters (a, b, c, and e) represent the SP, DP, and brachial artery mechanics. In terms of the brachial artery compliance curve (i.e., the derivative of the nonlinear relationship with respect to transmural pressure), parameter a represents the transmural pressure at which the curve is a maximum; parameters b and c denote the width of the curve and the extent of the asymmetry about its maximum; and parameter e indicates the amplitude of the curve. The parameter e is determined by the reciprocal of the cuff compliance, which is represented by scale factor k 360. The scale factor k 360 is assumed to be constant as justified by experimental data. A blood volume 372 is determined based on (i) the nearly linear relationship of the cuff pressure and air volume 356, (ii) blood volume oscillations 364, and (ii) cuff pressure oscillations 368. The envelope differences of the blood volume 372 are equal to within scale factor k 360.
The second step of estimating BP using the Patient-Specific Algorithm is to estimate the model parameters including the SP and DP by fitting the model to the oscillogram. The model parameters are estimated using the following equation 2:
The first step and the second step yield estimates for SP and DP as well as parameters a, b, c, and e, which characterize the underlying model of the nonlinear brachial artery blood-volume transmural pressure relationship. The third and fourth step use the parameter estimates to ultimately yield an estimate for the entire brachial BP waveform (Pb(t)) and MP, as described next.
The third step of estimating BP using the Patient-Specific Algorithm, which is shown in
The fourth step of estimating BP using the Patient-Specific Algorithm is to construct the BP waveform using the blood volume waveform 388 via root finding. From the BP waveform, MP is computed as the time average of the derived waveform. The following equation 3 illustrates how the BP waveform and the MP are derived:
Further details regarding the Patient-Specific Algorithm may be found in U.S. Provisional Application No. 62/217,331 filed Sep. 11, 2015 incorporated by reference in its entirety herein.
The oscillometric principles of an inflatable cuff as described in
The prototype system 394 consists of a simple sensor unit interfaced to a computer, which provides a visual display, as shown in
The sensing unit includes the PPG sensor 320 and pressure transducers as the pressure sensor 324 housed in a plastic enclosure. The PPG sensor 320 is an LED and photodetector operating in reflectance-mode and at an infrared wavelength (940 nm) to penetrate an artery beneath the skin. The PPG sensor 320 surface, which constitutes the finger pressing area, is a 10 mm diameter circle. The pressure sensor 324 (DigiTacts Sensors, Pressure Profiling Systems, USA) is a thin-filmed, 16×3 array of capacitive transducer elements (5 mm length squares). Each element outputs the pressure exerted on it in the normal direction and has specifications that are congruent with BP measurement (e.g., resolution and range are <1 mmHg and >250 mmHg). The PPG sensor 320 is on top of the pressure sensor 324 with a rigid structure-foam sheet interface between the two. This interface allows the force applied on the PPG sensor 320 (but not elsewhere on the enclosure) to reach the pressure sensor 324 and be uniformly distributed on the pressure sensor 324. The applied finger pressure is the total force measured by all of the sensing elements divided by the pressing area. The pressure sensor 324 was calibrated as it resides in the sensing unit by placing high density weights on the PPG sensor 320. The relationship between the measured voltage and known pressure was nearly linear over physiologic pressures.
The cuff-less BP estimates of the system were compared to BP measurements from an oscillometric arm cuff device (BP760, Omron) in 23 mostly inexperienced students and staff at Michigan State University (MSU). Each subject was allowed to practice the finger actuation a couple of times before recording the BP estimates.
A single photodetector 508 and light emitting diode 512 (LED) pair may be used for measurement of blood volume in a target artery 516 such as the transverse palmer arch artery 400 above the top knuckle 396 of an index finger (see
Alternatively, the PPG sensor 320 may be transmissive-mode PPG sensor. For example, the PPG sensor 320 can be in a ring or “clothespin” format with the pressure sensor mounted below the photodetector 508. When the user presses their finger or thumb inside the PPG sensor 320 ring onto an external, hard surface, the finger deforms. The ring can be made out of a soft material to enable the proper transmission of the force and keep the LED 512 preloaded onto the top of the finger.
In
In another embodiment, a red, green, and blue (RGB) camera (e.g. from e-con Systems, USA) can be used as reflectance-mode PPG sensor array. The RGB camera can operate as multiple photodetectors and the camera flash can operate as a light source. Each pixel in a RGB video provides blood volume waveforms at the three wavelengths. That is, the RGB video can construct a “PPG image”. From the PPG image, “hot spots” in the finger can be identified to measure the blood volume from the target artery 516. The RBG camera, already built in the mobile device, may be leveraged to measure the blood volume oscillations.
As shown in
The entire “external” system may be battery powered by the battery 548. In form factors built into the mobile device, the digitized data may be sent to the display 104 and stored in an available medium for processing in the mobile device 100. The storage medium, however, may be included in the encasing 520. The necessary components could also be added on to or included in existing mobile devices 100 such as a cell phone, PDAs, laptops, tablets, wearables including smartwatches and wristbands, or any other form of a portable electronic device.
To compute BP or determine that the finger actuation was unsuccessful, the recorded data, stored in the storage medium, are analyzed by a set of algorithms implemented on the mobile device's processor 544.
The quality of the pressure applied 116 to the sensing unit 108, e.g., in
If the pressure applied 116 to the sensing unit 108 and blood volume waveform are considered to be of sufficient quality, the oscillogram 128 is constructed, for example by the oscillogram generator 308 of
Finger BP is next estimated from successful oscillograms according to known algorithms in the art of oscillometry. For example, the basic maximum oscillation algorithm, the standard fixed-ratio algorithm seen in
Standard brachial (arm) BP, which is the proven cardiovascular risk factor, may also be derived. While finger and brachial MP and DP are similar, finger SP is higher than brachial SP due to arterial wave reflection. Brachial SP may be estimated by simple transformations of finger BP. For example, since the ratio of finger SP to brachial SP may decrease with age, an age-dependent scaling of finger SP could be applied to estimate brachial SP. Alternatively, a transfer function may be applied to more accurately estimate brachial BP from finger BP. The transfer function would require input of the finger BP waveform, which could be obtained with the patient-specific algorithm. Another possibility is to estimate brachial SP from finger DP and MP using empirical formulas designed for brachial BP (e.g., MP=(⅓)*SP+(⅔)*DP).
Other physiologic parameters of interest such as pulse rate and pulse rate variability may also be computed from the blood volume waveform using any method known in the art. The pulse rate variability could be assessed to determine the presence of an arrhythmia such as atrial fibrillation using any method known in the art. If red and infrared PPG measurements are available, SpO2 may additionally be computed using an existing method.
Finally, an algorithm could also be employed for early termination of the finger actuation. For example, the oscillogram 128 could be constructed in real-time as the finger pressure is being applied. If the portion of the oscillogram that has been currently constructed is similar to the same portion of a previously constructed, complete oscillogram, then the previous BP levels could reasonably be assumed and immediately outputted. In this way, some BP measurements may only take a few seconds to make.
In
The cuff-less BP measurement system, in any of the embodiments, may also be accompanied by additional means to guide proper finger actuation. In particular, proper finger placement for a specific user may be determined via an initialization protocol. This protocol involves measuring the oscillogram 128 at different finger positions on the sensing unit 108 and choosing the finger position based on the oscillogram amplitude and morphology (e.g., maximal oscillogram) or based on an initial cuff BP reading.
In another embodiment, the cuff-less BP system may compensate for BP calculations when it has been detected that the user had their BP measured without holding the mobile device 100 at heart level. For example, after instructing the user to hold the mobile device 100 at heart level and then proceed to steadily increase the applied finger pressure, the system measures and records BP measurements. If the system detects that the mobile device 100 is not being held at heart level, then the recorded BP measurements can be adjusted accordingly for the height at which the measurements were being taken using a rho-g-h correction, where rho is the known blood density, g is gravity, and h is the vertical distance between the finger and heart estimated from the images.
As another example to guide proper finger actuation, a fingerprint could be taken and used to confirm and/or guide proper finger positioning on the sensing unit 108 as well as to identify the user for a multi-user device. Maintaining an identity of users ensures measurements are transmitted to the appropriate place. In addition, the application could include an instructional video to explain how to use the device correctly. Alternatively, the user could test for the best finger position by measuring the user's BP multiple times and recording the finger position each time. After at least two attempts to measure the user's BP, the application could determine which BP measurement results in the largest oscillogram and indicate to the user that the recorded finger position for the largest oscillogram is the preferred finger position for that user.
In other embodiments, the mobile device 100 could act as the actuator instead of the user. For example, the mobile device 100 could include a motor driven system or a mechanical spring that would automatically apply the pressure to the finger placed on the sensing unit 108. Additionally, the method could also be integrated within non-mobile device form factors including elevator control panels, video game controllers, doorbells, keychains, steering wheels, bathroom mirrors, pill bottle caps, etc.
Some portions of the above description present the techniques described herein in terms of algorithms and symbolic representations of operations on information. These algorithmic descriptions and representations are the means used by those skilled in the data processing arts to most effectively convey the substance of their work to others skilled in the art. These operations, while described functionally or logically, are understood to be implemented by computer programs. Furthermore, it has also proven convenient at times to refer to these arrangements of operations as modules or by functional names, without loss of generality.
Unless specifically stated otherwise as apparent from the above discussion, it is appreciated that throughout the description, discussions utilizing terms such as “processing” or “computing” or “calculating” or “determining” or “displaying” or the like, refer to the action and processes of a computer system, or similar electronic computing device, that manipulates and transforms data represented as physical (electronic) quantities within the computer system memories or registers or other such information storage, transmission or display devices.
Certain aspects of the described techniques include process steps and instructions described herein in the form of an algorithm. It should be noted that the described process steps and instructions could be embodied in software, firmware or hardware, and when embodied in software, could be downloaded to reside on and be operated from different platforms used by real time network operating systems.
The present disclosure also relates to an apparatus for performing the operations herein. This apparatus may be specially constructed for the required purposes, or it may comprise a computer selectively activated or reconfigured by a computer program stored on a computer readable medium that can be accessed by the computer. Such a computer program may be stored in a tangible computer readable storage medium, such as, but is not limited to, any type of disk including floppy disks, optical disks, CD-ROMs, magnetic-optical disks, read-only memories (ROMs), random access memories (RAMs), EPROMs, EEPROMs, magnetic or optical cards, application specific integrated circuits (ASICs), or any type of media suitable for storing electronic instructions, and each coupled to a computer system bus. Furthermore, the computers referred to in the specification may include a single processor or may be architectures employing multiple processor designs for increased computing capability.
The algorithms and operations presented herein are not inherently related to any particular computer or other apparatus. Various general-purpose systems may also be used with programs in accordance with the teachings herein, or it may prove convenient to construct more specialized apparatuses to perform the required method steps. The required structure for a variety of these systems will be apparent to those of skill in the art, along with equivalent variations. In addition, the present disclosure is not described with reference to any particular programming language. It is appreciated that a variety of programming languages may be used to implement the teachings of the present disclosure as described herein.
The foregoing description of the embodiments has been provided for purposes of illustration and description. It is not intended to be exhaustive or to limit the disclosure. Individual elements or features of a particular embodiment are generally not limited to that particular embodiment, but, where applicable, are interchangeable and can be used in a selected embodiment, even if not specifically shown or described. The same may also be varied in many ways. Such variations are not to be regarded as a departure from the disclosure, and all such modifications are intended to be included within the scope of the disclosure.
This application is a continuation of U.S. patent application Ser. No. 16/118,530 filed on Aug. 31, 2018; which is a continuation-in-part of and claims the benefit of priority to International Application No. PCT/US2017/020739, filed Mar. 3, 2017, which in turn claims the benefit of U.S. Provisional Application No. 62/303,074, filed Mar. 3, 2016 and U.S. Provisional Application No. 62/436,477, filed Dec. 20, 2016. The present application also claims the benefit of U.S. Provisional Application No. 62/555,028, filed Sep. 6, 2017 and U.S. Provisional Application No. 62/554,795 filed Sep. 6, 2017. The entire disclosures of the applications referenced above are incorporated by reference.
This invention was made with government support under EB018818 awarded by the National Institutes of Health. The government has certain rights in the invention.
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20200008693 A1 | Jan 2020 | US |
Number | Date | Country | |
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Number | Date | Country | |
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Parent | 16118530 | Aug 2018 | US |
Child | 16515590 | US |
Number | Date | Country | |
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Parent | PCT/US2017/020739 | Mar 2017 | US |
Child | 16118530 | US |