SYSTEM AND METHOD OF EXTRACTION OF THE HEART VALVE SIGNALS
A method and system of assessing and monitoring of cardiopulmonary diseases can include the steps of receiving a composite signal representative of individual events from a plurality of sources associated with a patients cardio-pulmonary system and separating an individual signal as a separate component of the composite signal where the individual signal i s representative of an individual event from one of a plurality of cardio-pulmonary events. The method and system can further include and deriving clinical findings responsive from the separating and presenting the clinical findings.
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This Application is a Continuation application from U.S. patent application Ser. No. 15/397,040 filed on Jan. 3, 2017 and claims the priority benefit of Provisional Application Nos. 62/274,763, 62/274,761, 62/274,765, 62/274,766, and 62/274,770, each of which were filed on Jan. 4, 2016, where the entire disclosure of each of the aforementioned applications above are incorporated herein by reference.
FIELDThe embodiments herein relate generally to cardiac health monitoring and more particularly to analysis software combined with transducers to capture multi-channel vibration signals along with an electrocardiogram signal for the measurement of heart functions.
BACKGROUNDHeart disease is the leading cause of death accounting for more than one-third (33.6%) of all U.S. deaths. Overall cardiac health can be significantly improved by proper triage. Low invasive and non-invasive ultrasound techniques (e.g. echocardiogram) are standard procedures, but the requirement of expensive devices and skilled operators limit their applicability. The following are the various types of heart disease that can be diagnosed and treated using the separated signal, namely, Coronary artery disease, Heart murmurs and valve abnormalities, Heart failure, Heart rhythm abnormalities (arrhythmias), Vascular disease, congenital heart disease, and Risk factor modification. A physician can work with patients to perform a comprehensive evaluation and design a personalized plan of care aimed at keeping them healthy.
The cardio pulmonary system which consists of the respiratory components, snoring components, and cardiac components, creates vibrations during each cardiac cycle. The vibrations are the result of the lung sounds, heart sounds, acceleration and deceleration of blood due to abrupt mechanical opening and closing of the valves during the cardiac cycle.
SUMMARYThe exemplary embodiments herein provide a method and system based on a technique for source separating the cardiopulmonary signals, to extract information contained from the cardiac vibration objects. In some embodiments, machine learning, auditory scene analysis, spare coding, determined Models, Principal Component Analysis (PCA), Independent Component Analysis ICA, Singular Value Decomposition (SVD), Bin-wise Clustering and Permutation posterior probability alignment, Undetermined Models, Sparseness condition, Dictionary learning, Convolutive models, K-SVD Matching Pursuit, Non-negative matrix factorization or Deep Belief Networks (Restricted Boltzmann Machine) are used as approaches to the source separation problem. Data is obtained using a tri-axial accelerometer or multiple tri-axial accelerometers placed on different points of a torso. Further note that the techniques and methods herein are not limited to acoustic, electrical or vibrational data as might be used in some stethoscopes, but can also be applied to other forms of monitoring such as echo imaging or sonograms, magnetic resonance imaging (MRI), computed tomography (CT) scanning, positron emission tomography (PET) scanning, and monitoring using various forms of catheterization. The techniques and methods herein are primarily applicable to monitoring of heart valve events, but can be alternatively applied to other types of involuntary biological signaling emanating from the brain, intrauterine, pre-natal contractions, or elsewhere within both humans and other species.
Examples of cardiac vibration objects are the first sound, the second sound, the third sound, the fourth sound, ejection sounds, opening sounds, murmurs, heart wall motions, coronary artery sounds, and valve sounds of the Mitral valve opening and closing, Aortic valve opening and closing, Pulmonary valve opening and closing, Tricuspid valve opening and closing. Examples of the pulmonary vibration objects are the respiratory lung sounds, breathing sounds, tracheobronchial sounds, vesicular sounds, Broncho vesicular sounds, snoring sounds. A portion of the energy produced by these vibrations lies in the infra-sound range, which falls in the inaudible and low sensitivity human hearing range. A portion of the energy produced by these vibrations falls in the audible hearing range. For example, the vibration objects from the Mitral, Tricuspid, Aortic, and Pulmonary valve openings fall in a lower range of vibrations such as 0 to 60 Hertz, whereas vibration objects from the Mitral, Tricuspid, Aortic, and Pulmonary valve closings fall in a higher range of vibrations such as 50 to 150 Hertz. Accelerometer transducers placed on the chest capture these vibrations from both these ranges.
Source separation analysis in accordance with the methods described herein extract individual vibration objects from the composite vibration signal captured on the surface. The individual vibration signals are identified to be from the mitral valve, aortic valve, tricuspid valve, the pulmonary valve, coronary artery, murmurs, third sound, fourth sound, respiratory sound, breathing, and snoring during individual heart beats. The identified signals are marked to indicate their start with respect to the start of the electrocardiogram or EKG.
The exemplary embodiments may be further understood with reference to the following description and the appended drawings, wherein like elements are referred to with the same reference numerals. The exemplary embodiments describe a system and method of source separation on the composite vibrations captured on the chest wall to extract the individual cardiopulmonary signals. Specifically, psychoacoustics are considered in separating cardiac vibration signals captured through the transducers. The system, the psychoacoustics, and a related method will be discussed in further detail below.
The embodiments can include different source separation techniques specifically used for extracting individual cardiopulmonary signals for application in a non-linear time variant system, such as, Determined Models, Principal Component Analysis (PCA), Independent Component Analysis ICA, Singular Value Decomposition (SVD), Bin-wise Clustering and Permutation posterior probability Alignment, Undetermined Models, Sparseness condition, Dictionary learning, Convolutive models, K-SVD Matching Pursuit, Non-negative matrix factorization and Deep Belief Networks (Restricted Boltzmann Machine).
The exemplary embodiments provide a novel approach for small, portable, robust, fast and configurable source separation based software with transducer hardware 103, 203. The use of the vibration signal pattern and novel psychoacoustics help bypass conventional issues faced by linear time invariant systems.The following are the various types of heart disease that can be diagnosed and treated using the separated signal, namely, Coronary artery disease, Heart murmurs and valve abnormalities, Heart failure, Heart rhythm abnormalities (arrhythmias), Vascular disease, congenital heart disease, and Risk factor modification. A physician can work with patients to perform a comprehensive evaluation and design a personalized plan of care aimed at keeping them healthy.The two major audible heart sounds in a normal cardiac cycle are the first and second heart sound, S1 and S2. S1 occurs at the onset of the ventricular contraction during the closure of the AV-valves. It contains a series of low-frequency vibrations, and is usually the longest and loudest heart sound. The audible sub-components of S1 are those associated with the closure of each of the two AV-valves. S2 is heard at the end of the ventricular systole, during the closure of the semilunar valves. Typically, its frequency is higher than S1, and its duration is shorter. It has aortic and pulmonary sub-components. A third low-frequency sound (S3, ventricular gallop) may be heard at the beginning of the diastole, during the rapid filling of the ventricles. A fourth heart sound (S4, atrial gallop) may be heard in late diastole during atrial contraction. Opening snaps of the mitral valve or ejection sound of the blood in the aorta may be heard in case of valve disease (stenosis, regurgitation). Murmurs are high-frequency, noise-like sounds that are heard between the two major heart sounds during systole or diastole. They can be innocent, but can also indicate certain cardiovascular defects. Fourth heart sound, abnormal left atrial filling waves, and third heart sounds are commonly found in patients with coronary artery disease, and left ventricular dysfunction. Extensive correlations of these clinical findings with hemodynamic have been demonstrated, providing the importance of extracting these signals from the composite signals for automated and remote monitoring and diagnosis. The third heart sound is a low frequency sound coinciding with the rapid filling phase of ventricular diastole. It is recorded 0.10 to 0.20 sec after the aortic component of the second sound and often corresponds to a rapid filling wave. The major vibrations of the fourth heart sound usually occur 0.12 to 0.17 sec after the onset of the P wave of the electrocardiogram. These vibrations usually precede the onset of the QRS complex, except in instances of short P-R intervals. Unless the P-R interval is prolonged, the fourth heart sound is normally inaudible, although some small, insignificant vibrations can be recorded at low frequency ranges. Significant (abnormal) vibrations have greater amplitude and pitch, and constitute the clinically audible fourth heart sound. They are readily recorded, even at medium frequency ranges.The signals of the biomechanical system show a high clinical relevance when auscultated on the chest. The heart and lung sounds are applied to the diagnosis of cardiac and respiratory disturbances, whereas the snoring sounds have been acknowledged as important symptoms of the airway obstruction. The innovation here provides extraction of all three types of body sounds from the composite vibration captured at the skin. The exemplary embodiments of the system and method proposed here for source separation can use the composite signal capture via different transducers not limited to accelerometer, acoustic, or piezoelectric. Any of these act as an electro-acoustic converter to establish a body sound for processing. The source separation provides the capability to extract signals while operating in a medium that is non-linear and time variant.
The exemplary embodiments of the system and method proposed here are shown in
A wearable microprocessor hardware module 103 can include digital signal processing capabilities, application processor, Analog to digital frontend, data storage, input modality like buttons, wired connection or wireless connection via Bluetooth, Bluetooth low energy, near field communication transceiver, Wi-Fi, Ethernet or USB. The module 103 can include the signal processing module on the wearable hardware module 103 that captures synchronized sensor data from the transducer array 102. The module saves the captured synchronized sensor data to memory (locally or elsewhere) and communicates with the system 100 for data transfer. A module 105 communicatively coupled to the module 103 can calculate vital signs from the input sensor stream coming from the module 103 for the Heart rate, breathing rate, EKG signal, skin temperature, and associated vitals. The module 105 can encrypt the raw sensor data for transmission to a cloud computing module 106. The module 105 also communicates with a dashboard on 106 for data exchange, login, alerts, notifications, display of processed data. Module 106 in
In some embodiments, the system and method 200 as shown in
The exemplary embodiments of the system and method proposed here for the source extraction using source separation of the cardiopulmonary signals from the composite signal 300 are shown in
The exemplary embodiments of the system and method proposed here draw inspirations from biology with respect to the cardiac cycle in-relation with electrocardiogram and accelerometer transducer captured cardiac signal. A timeline chart 400 in
The exemplary embodiments of the system and accompanying method proposed herein provide a source separation analysis algorithm that allows for the separation of the vibrations of the cardiopulmonary system as illustrated in the system 500 of
The exemplary embodiments of the system and method proposed here provide a source separation analysis algorithm that allows for the separation of the vibrations of the cardiopulmonary system using blind signal separation (BSS) or a BSS system. One of the proposed embodiments is a separation algorithm via Bin-wise Clustering and Permutation Alignment as shown in system 600 of
The exemplary embodiments of the system and method proposed herein provide a source separation analysis algorithm that allows for the separation of the vibrations of the cardiopulmonary system. One of the proposed embodiments is a separation algorithm via Non-negative matrix factorization based separation as represented by the algorithmic blocks 701 and 702 of system or method 700 of
The exemplary embodiments of the system and method proposed here provide a source separation analysis algorithm that allows for the separation of the vibrations from the cardiopulmonary system. One of the proposed embodiments is a separation algorithm via Deep Belief Networks (“DBN” and also known as Restricted Boltzmann Machine) represented by the system 800 in
The exemplary embodiments of the system and method proposed here provide source separation algorithms that allow from the explanation earlier for the separation of cardiopulmonary signals. The charts 900 and 910 of
In the exemplary embodiments we develop various novel ways of source separating individual heart vibration events from the composite vibration objects captured via multiple transducers that can work on a single package that is embodied by an easy-to-use and portable device.
The exemplary embodiments develop novel methods of source separation, which in one embodiment lends the system capable of identifying individual cardiopulmonary events from the vibrations. The source separation (SS) algorithm work with arbitrarily arranged multiple sensors is capable of working with two or more transducers and that handles multiple sources in reverberant and noisy environments. The embodiments are capable of separating more sources than the number of transducers or microphones used (Underdetermined use-case). The system in accordance with some embodiments handles spatial aliasing and the algorithms are further able to separate signals in media that is non-linear, has time varying propagation, and heavily reverberant. The embodiments do not explicitly require sensor location information and can be arranged in any two or three dimensions' form.
The exemplary embodiments develop a novel method of source separation, which in one embodiment uses the Pulmonary and Aortic auscultation locations, and in addition possibly the Tricuspid and Mitral auscultation locations, lends the system capable of marking the time of occurrence of the individual valve events with respect to the electrocardiogram. The embodiments herein enable the system to measure the time intervals of the cardiopulmonary events.
The exemplary embodiments develop a novel method of providing source separation of individual signals over time. The novel method allows for both short-term and long-term discrimination between signals. Short-term pertains to tracking individual streams when they are captured simultaneously as part of the composite signal. Long-term tracking pertains to tracking individual streams across multiple heart beats, tracking valve signals as they transition in and out during each cardiac cycle.
The exemplary embodiment of system and method described is the development of an embedded hardware system, the main elements required to capture body sounds are the sensor unit that captures the body sounds, digitization, and digital processing of the body sounds for noise reduction, filtering and amplification. Of course, more complicated embodiments using the techniques described herein can use visual sensors, endoscopy cameras, ultrasound sensors, MRI, CT, PET, EEG and other scanning methods alone or in combination such that the monitoring techniques enable improvement in terms of source separation or identification, and/or marking of events such as heart valve openings, brain spikes, contractions, or even peristaltic movements or vibrations. Although the focus of the embodiments herein are for non-invasive applications, the techniques are not limited to such non-invasive monitoring. The techniques ultimately enable diagnosticians to better identify or associate or correlate detected vibrations or signaling with specific biological events (such as heart valve openings and closings, brain spikes, fetal signals, or pre-natal contractions.)
It will be apparent to those skilled in the art that various modifications may be made in the present invention without departing from the spirit or scope of the invention. Thus, it is intended that the present invention cover the modifications and variations of this invention provided they come within the scope of the method and system described and their equivalents.
Claims
1. A method of assessing and monitoring of cardiopulmonary diseases, the method comprising:
- receiving a composite signal representative of individual events from a plurality of sources associated with a patients cardio-pulmonary system;
- separating an individual signal as a separate component of the composite signal, the individual signal representative of an individual event from one of a plurality of cardio-pulmonary events; and
- deriving clinical findings responsive from the separating.
2. The method of claim 1, wherein the method further comprises providing an output related to the individual signal and the assessing of the cardiopulmonary diseases.
3. The method of claim 1 the said receiving comprises employing an array of transducers, and wherein each respective transducer in the array is disposed in a respective location on a patient.
4. The method of claim 1 wherein the separating comprises measuring a cardiac time interval for the individual signal with respect to an electrocardiogram signal.
5. The method of claim 1 wherein the individual event is one among a Mitral valve closing, a Mitral valve opening, a Tricuspid valve closing, a tricuspid valve opening, an Aortic valve opening, an Aortic valve closing, a Pulmonic valve opening, or a Pulmonic valve closing, third sound, fourth sound, ejection sounds, opening sounds, murmurs, heart wall motions, coronary artery sounds, respiratory lung sounds, breathing sounds, airway obstruction or snoring sounds.
6. The method of claim 1 wherein the step of separating comprises separating a plurality of individual heart vibration events from a composite vibration object from multichannel signals by decomposing the multichannel signals into sparse activation patterns and clustering the sparse activation patterns.
7. The method of claim 1, further comprising a step of identification by tagging each of the separated events from individual heart beats to be one of the cardio-pulmonary events, using methods of machine learning, auditory scene analysis, or sparse coding.
8. The method of claim 1, wherein the method further comprises a step of using cardiac time intervals and the cardio-pulmonary events for assessment one or more among innocent cardiac dysfunction, indication of certain cardiac dysfunction, abnormal atrial contraction, abnormal atrial filling, abnormal filling of the ventricles, abnormal ventricular ejection, abnormal volume changes during a cardiac cycle, abnormal pressures in aorta or abnormal pressures in pulmonary artery.
9. The method of claim 1, wherein the method further comprises the step of correlating cardiac time intervals and the cardio-pulmonary events to measurements from other forms of devices selected among one or more of echo imaging or sonograms, magnetic resonance imaging (MRI), computed tomography (CT) scanning, positron emission tomography (PET) scanning, or catheterization.
10. The method of claim 1, wherein the method further comprises the step of using cardiac time intervals or the cardio-pulmonary events to provide assessment and monitoring of pressure changes in heart ventricles and of pressure changes in the pulmonary artery.
11. The method of claim 1, wherein the method further comprises the step of using cardiac time intervals and the cardio-pulmonary events to provide assessment and monitoring of volume changes in heart ventricles and for detecting ventricular dysfunction.
12. The method of claim 1, wherein the method further comprises calculating time stamps of individual sources at each heartbeat with respect to a synchronized EKG signal.
13. The method of claim 1, wherein the individual events comprises one or more among heart valve openings, brain spikes, contractions, fetal signals, pre-natal contractions, or peristaltic movements.
14. A method of assessing and monitoring of cardiopulmonary diseases, the method comprising:
- receiving via a sensor array a composite signal representative of individual events from a plurality of sources associated with a patients cardio-pulmonary system;
- sensing pressure and volume changes within a heart from identified cardiac time intervals;
- sensing an electrocardiogram (EKG) signal representative of heart function;
- separating an individual signal as a separate component of the composite signal, the individual signal representative of an individual event from one of the plurality of sources; and
- deriving hemodynamic measurements using the sensed pressure and volume changes and the EKG signal.
15. A system for assessing and monitoring of cardiopulmonary diseases, the system comprising:
- a plurality of transducers;
- a computer memory having computer instructions stored therein one or more processors coupled to the computer memory and the plurality of transducers, wherein the one or more processors are configured upon execution of the computer instructions to perform the operations of: receiving a composite signal representative of individual events from a plurality of sources associated with a patients cardio-pulmonary system using the plurality of transducers; separating, using the one or more processors, an individual signal as a separate component of the composite signal, the individual signal representative of an individual event from one of the plurality of sources; and deriving, by the one or more processors, hemodynamic parameters responsive to the separating.
16. The system of claim 15, wherein the one or more processors are further configured to provide an output related to pressure changes in heart ventricles and in the pulmonary artery.
17. The system of claim 15, wherein the receiving comprises employing an array of transducers, and wherein each respective transducer in the array is configured for placement in a respective location on a patient.
18. The system of claim 15, wherein the separating comprises measuring a cardiac time interval for the individual signal with respect to an electrocardiogram signal.
19. The system of claim 15 wherein the individual event is one among a Mitral valve closing, a Mitral valve opening, a Tricuspid valve closing, a tricuspid valve opening, an Aortic valve opening, an Aortic valve closing, a Pulmonic valve opening, or a Pulmonic valve closing.
20. The system of claim 15, wherein the one or more processors are further configured to provide an output related to volume changes in heart ventricles for detecting ventricular dysfunction.
Type: Application
Filed: Jan 1, 2019
Publication Date: May 9, 2019
Applicant: AventuSoft, LLC (Boca Raton, FL)
Inventors: Kaustubh Kale (Royal Palm Beach, FL), Luis Gonzalo Sanchez Giraldo (Miami, FL)
Application Number: 16/237,748