WO2019241674A1 - Apparatus and method for detection of physiological events - Google Patents
Apparatus and method for detection of physiological events Download PDFInfo
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
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- A61B5/02—Detecting, measuring or recording for evaluating the cardiovascular system, e.g. pulse, heart rate, blood pressure or blood flow
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- A61B5/113—Measuring movement of the entire body or parts thereof, e.g. head or hand tremor or mobility of a limb occurring during breathing
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Definitions
- FIG. 8 is a flow chart diagram that illustrates data processing to determine when an abnormal respiratory sound has been captured.
- FIG. 23 illustrates a method for assessing the risk associated with an abnormal respiratory sound.
- FIG. 2B illustrates exemplary battery 102.
- Battery 102 includes exemplary dimensions of 24.5mm in diameter and 3.3mm in height.
- FIG. 2E illustrates exemplary bottom housing and chestpiece 105 that includes exemplary dimensions of 56mm in length, 34mm in width, and 4.5mm in height.
- Bottom housing and chestpiece 105 is desirably comprised of rigid, lightweight polymeric material, although other materials may be used.
- Bottom housing and chestpiece 105 is desirably comprised of one type of material although it may be melded into one piece from several types of materials.
- FIG. 2F illustrates exemplary diaphragm seal 106 that includes exemplary dimensions of 29mm in diameter and 2.75mm in height. Diaphragm seal 106 secures diaphragm 107 to the bottom housing and chestpiece 105.
- the data captured by motion sensor module 317 may be used to, for example, determine the amplitude of each breath, the duration of inhalation and exhalation of each breath, and the duration of the interval between breaths, as well as the variability of these parameters. Further, in users wearing more than one wearable device 100, the respiratory pattern may be further characterized by the movement of different parts of the torso, including the abdominal area and the chest wall. As will be described further herein. This information may be used in combination with the audio data captured by microphones 305, 310 to characterize abnormal respiratory sounds and assess the risks associated therewith.
- data is transferred from memory 172 to external computer 360. This is further described below.
- the second type of data that is stored in memory is processed data, i.e. data that has been subjected to a form of processing (such as time-frequency analysis) by processor 171.
- a form of processing such as time-frequency analysis
- Examples of this type of processed data includes the examples set forth above such as Fast Fourier Transform, digital low pass and/or high pass Butterworth and/or Chebyshev filters, etc.
- 20 seconds of processed audio data is stored in memory 172. This data is also stored in a first in, first out configuration.
- the processed data is evaluated by processor 171 to determine if an “abnormal” respiratory sound has been captured by microphone 305.
- an“abnormal” respiratory sound include a wheeze, a cough, rhonchi, labored breathing, or some other type of respiratory sound that is indicative of a respiratory problem.
- Evaluation occurs as follows.
- the processed data i.e. from a transform such as a Fourier transform or a wavelet transform
- results in a spectrogram results in a spectrogram.
- the spectrogram may correspond, for example, to the 20 seconds worth of processed data that has been stored in memory 172.
- the spectrogram is then evaluated using a set of“predefined mathematical features”.
- The“predefined mathematical features” are generated from multiple“predefined spectrograms”. Each“predefined spectrogram” is generated by processing data that is known to correspond to an irregular respiratory sound (such as a wheeze). A method of generating such a predefined spectrogram is illustrated by the flowchart diagram of FIG.
- a physician listens to respiratory sounds from a person using a device such as a stethoscope; b) the respiratory sounds from the person are recorded and subjected to processing such as the processing identified above; c) a spectrogram is generated based on the processing set forth above; d) the physician notes the exact time when he/she hears a sound that the physician considers to be a wheeze, e) the portion of the spectrogram that corresponds to the exact time that the physician hears the wheeze is identified, and f) that portion of the spectrogram that has been identified is used as the“predefined spectrogram.” [0074]
- the predefined spectrograms can be patient specific.
- the steps a through f above may be performed for the particular patient who will wear the wearable device 100.
- the predefined spectrograms can also be population based. In other words, the predefined spectrograms can be based on performing steps a through f on someone other than the patient who will wear the wearable device 100. In some embodiments, the predefined spectrograms are based on both patient specific and population based spectrograms.
- a set of mathematical features can be extracted from each predefined spectrogram.
- Mathematical feature extraction is known to one of ordinary skill in the art and is described in various publications, including 1) Bahoura, M., & Pelletier, C. (2004, September). Respiratory sounds classification using cepstral analysis and Gaussian mixture models. In Engineering in Medicine and Biology Society, 2004. IEMBS'04. 26th Annual International Conference of the IEEE (Vol. 1, pp. 9-12). IEEE; 2) Bahoura, M. (2009). Pattern recognition methods applied to respiratory sounds classification into normal and wheeze classes. Computers in biology and medicine , 39(9), 824-843; 3) Palaniappan, R., & Sundaraj, K. (2013, December).
- the set of mathematical features are derived from the inherent power and/or frequency of the predefined spectrogram of data clusters using mathematical methods that include but are not limited to the following: data transforms (Fourier, wavelet, discrete cosine) and logarithmic analyses.
- the set of mathematical features extracted from each predefined spectrogram can vary by the method with which each feature in the set is extracted. These features may include, but are not limited to, frequency, power, pitch, tone, and shape of data waveform. See Lartillot, O., & Toiviainen, P. (2007, September). A Matlab toolbox for musical feature extraction from audio. In International Conference on Digital Audio Effects (pp. 237-244). This reference is hereby incorporated by reference in its entirety.
- a first set of two mathematical features are extracted from a predefined spectrogram using statistical mean and mode.
- a second set of two mathematical features are extracted from the same predefined spectrogram using statistical mean and entropy.
- the set of mathematical features can also vary by the number of features in each set of mathematical features. For example, in one embodiment, a set of twenty mathematical features are extracted from a predefined spectrogram. In another example, a set of fifty mathematical features are extracted from the same predefined spectrogram.
- the mathematical features may vary by the segment lengths of the predefined spectrogram with which the mathematical features are extracted. For example, a mathematical feature extracted from one-second segments of the predefined spectrogram using a statistical method is different from a mathematical feature extracted from five-second segments of the predefined spectrogram using the same statistical method.
- the set of mathematical methods used to extract the “predefined mathematical features” is the“pre-specified feature extraction”.
- the“pre- specified feature extraction” is developed using mel-frequency cepstral coefficients and is optimized using machine learning methods that include but are not limited to the following: support vector machines, decision trees, gaussian mixed models, recurrent neural network, semi- supervised auto encoder, restricted Boltzmann machines, convolutional neural networks, and hidden Markov chain (see above references).
- Each machine learning method may be used alone or in combination with other machine learning methods.
- the “predefined mathematical features” are derived from multiple predefined spectrograms in the following manner.
- a feature extraction method as defined above, is used to extract a set of mathematical features from each predefined spectrogram corresponding to a type of respiratory sound. Multiple features are evaluated in this manner.
- the features are then plotted together (step 1208) from multiple respiratory sound types in order to perform cluster analysis in the nth dimension (n being the number of features extracted). For example, if three features were extracted for analysis from each data file, each data file would correspond to one point in three- dimensional space, each axis representing the value of a particular feature. Thereafter, one example of algorithm generation attempts to find a hyperplane in this three-dimensional space that maximally separates clusters of points representing specific sound types.
- a plane that separates these two clusters would correspond to an algorithm that distinguishes the two and is able to classify these sound types into two groups.
- This analysis can be extrapolated to as many features as needed, n, thereby moving the analysis into nth dimensional space. This allows differentiation of each sound type based on its unique feature set.
- the algorithm that generates outputs (sets of mathematical features) that are most similar to each other is selected as the“pre-specified algorithm” as described above. For example, ten sets of twenty statistical features is extracted from ten predefined spectrograms corresponding to wheezing using different algorithms.
- the algorithm that extracts ten sets of features that are the most similar to each other is selected as the“pre-specified algorithm” (step 1210).
- lines represent the“pre-defmed algorithm” in classifying data in multiple dimensions in accordance with an exemplary embodiment.
- the“average” of the sets of mathematical features extracted with the“pre-specified algorithm” is selected as the “predefined mathematical features”.
- “average” is defined by mathematical similarity between the“predefined mathematical features” and each set of mathematical features from which the“predefined mathematical features” derives from.
- Evaluation of a spectrogram with a predefined spectrogram may be on several bases.
- a spectrogram is processed by the“pre-specified feature extraction” method to generate a set of mathematical features.
- the set of mathematical features is then compared to sets of“predefined mathematical features”, of which each set corresponds to a specific type of sound. If the similarity between the set of mathematical features extracted from a spectrogram and the predefined mathematical features of a type of respiratory sound goes past certain thresholds, then it is determined that the corresponding type of respiratory sound has been emitted.
- saying‘goes past” what may be meant is going above a value. What may alternatively be meant is going below a value.
- an abnormal respiratory sound may have occurred.
- a variety of factors can be used to identify, from the available predefined spectrograms, those that a particular patient’s data should be compared to and to otherwise classify respiratory sounds. For example, when the wearable device is used post-surgery, predefined spectrograms collected from a subject with a similar surgical anatomy can be used. Selecting appropriate comparison spectrograms in this way may provide more accurate results because general population data may be inappropriate for the post-surgery period.
- the motion data is also compared to data gathered from patients with similar anatomy and/or suffering from similar conditions.
- the appropriate predefined spectrograms can be selected based on a pulmonary disease experienced by the patient.
- the predefined spectrograms can be filtered to those that were captured from patients with COPD. Respiratory sounds are often diminished in patients with severe COPD. COPD also affects pulmonary mechanics. The chest wall is expanded at baseline in patients with COPD, which is termed“barrel chest”. This affects angular and linear displacements, and subsequent calculation of tidal volume and airflow rate. The severity of COPD can be determined from past medical records, and for patients without adequate prior medical evaluation, from smoking history. Selecting the predefined spectrograms by matching COPD history or smoking history can help ensure that the most relevant factors are considered.
- the information collected by the microphones 305, 310 and/or motion sensor module 317 can be used to distinguish edematous chest wall or lungs from a chest wall and lungs that do not have an edema. This information can be used to refine or filter the spectrograms to which the patient’s respiratory sounds will be compared. Because an edematous chest wall transmits sound differently than a chest wall without edema, comparison with data collected from subjects with a similar condition can further enhance the accuracy of the determination of abnormal respiratory sounds.
- the predefined spectrograms can be filtered based on the patient’s history of heart failure. These patients may experience wheezing due to bronchospasm or decompensated heart failure, which often also leads to an increase in weight. Based on sound alone, wheeze due to bronchospasm is hard to distinguish from a cardiac wheeze. In these patients, classification of respiratory wheezes vs. cardiac wheezes may take into account information available elsewhere in a patient’s medical records. One key differentiator is a patient’s past medical history. A marker of worsening heart failure is increasing body weight. This information can be used to adjust the threshold of classification.
- a wheeze in a patient without a history of heart failure, a wheeze can be classified as a wheeze due to bronchospasm regardless of the amount of weight gain.
- a significant weight gain z.e., two bounds or more
- a smaller change in weight will lead to a classification of cardiac wheeze rather than non-cardiac wheeze.
- Wheezes and other respiratory sounds can further be classified based on at what point in the respiratory cycle the wheeze occurs (e.g., during the inhalation or expiration phase). In various embodiments, it may be determined in which portion of the cycle the respiratory sound occurs based on data from motion sensor module 317 of wearable device 100, as described further herein.
- patient specific predefined spectrograms are acquired prior to a surgery to provide a pre-surgery benchmark for post-surgery monitoring.
- other pre-surgery information may be gathered.
- the patient s chest wall movement data, heart rate, respiratory rate, and ambulatory patterns including but not limited to posture and gait.
- this data can be used in the selection of appropriate boundary conditions or benchmark spectrograms for the patient.
- the audio and/or motion data can be compared to data captured after surgery, but at an earlier time, from the same patient.
- the previous 20 (for example) minutes of accumulated raw data that has been stored in memory 172 may receive“further processing.”
- the 20 minutes of raw data is transferred from memory 172 to external computer 360 for more robust processing.
- raw data is subjected to further processing in processor 171 without being transferred to an external computer. The further processing described above may be performed in processor 171, external computer 360, or both, depending upon respective processing power, ability to communicate wirelessly, etc.
- a first algorithm is used to possibly identify an irregular respiratory sound and a second algorithm (more robust - i.e. that requires more significant processing than the first algorithm) is applied to the raw data to try to make a more accurate determination as to whether an irregular respiratory sound (such as a wheeze) has indeed occurred.
- a first algorithm generates twenty mathematical features.
- a second algorithm generates fifty mathematical features and is more robust.
- the mathematical methods used to extract each mathematical feature in the second algorithm require more processing power than the mathematical methods used in a first algorithm. As such, the second algorithm may be more robust.
- this further processing may include determining whether processed data has passed (i.e. above or below) boundary conditions.
- the boundary conditions may include one or more of any of the inputs and/or characteristics identified above, such as the mathematical features extracted from the predefined spectrograms. In one embodiment, this is accomplished by pre- specified algorithms previously developed using a machine-learning approach using a deep- learning framework. This involves a multi-layer classification scheme.
- the variables used in the pre-specified algorithms in the external computer include, but are not limited to, the exemplary variables described above.
- variables may be integrated into the analysis, in place of or in addition to the variables that form the basis of the analysis of the initial processed data (e.g., the 20 seconds of data, for example, discussed above).
- factors can also include the patient’s demographics, heart rate, surgical type, activity level, posture, gait, medication use, and results of medical imaging.
- the wearable device 100 can measure body motion and lung sounds and the motion and audio data can be used to detect such changes. Further, in such an embodiment, the patient’s medication use data can be correlated with sensor data to provide feedback on the safety of pain medication use.
- the information gathered by the wearable device 100 e.g ., from the motion sensor module 317) and/or provided by a patient or caregiver (e.g., patient height, patient weight, patient demographics, medications, surgical information) can also be used to refine and adjust the boundary conditions. For example, the comparison mathematical features extracted from the predefined spectrograms may be adjusted up or down based on data derived from motion sensor module 317.
- an alert or warning can be provided.
- the alert or warning can be issued to the patient and/or to a physician or caregiver.
- the wearable device 100 can issue audible, visual, or tactile feedback, such as by beeping, illuminating one or more lights, or vibrating.
- the wearable device 100 can be connected to a computing device, such as a smartphone, via wireless module 173.
- a computing device such as a smartphone
- wireless module 173 As a result, an alert can be issued on the computing device.
- the computing device issuing the alert is the external computer 360.
- the alert can also be sent to a physician or other caregiver such that the caregiver can contact the patient or notify emergency responders.
- a respiratory condition is detected by identifying how many times a certain type of respiratory sound occurs during a time period (“frequency”). If the number of times the sound is identified in a time period goes past a threshold, then a signal is generated to indicate that an adverse respiratory condition has been detected (or that an adverse respiratory condition has gotten better or worse). By saying“goes past a threshold” what is included is meeting the threshold, going above the threshold, or going below the threshold, depending upon what adverse respiratory conditions are desired to be detected.
- the number of times a certain type of respiratory sound occurs in a first time period is compared with the number of times the certain type of respiratory sound occurs in a second time period (the first and second time periods may or may not be overlapping, the first and second time periods may or may not be equal).
- the number of respiratory sounds in a first time period may be compared with the number of respiratory sounds in a second time period greater than the first time period. Comparisons may be with regard to frequency, power, location in the time frame being evaluated, and/or other criteria.
- the first time period may be three hours and the second time period may be 18 hours. These time periods are merely exemplary.
- a patient engaging in low-intensity ambulation (as determined by data from motion sensor module 317) who develops mouth breathing (whereas it was not present in prior days) indicate possible deteriorating disease and can serve as a trigger for further processing of the audio data, or provide another piece of input for processing (in combination with other inputs including lung sounds, chest wall movement, and inhaler use).
- the calculation of tidal volume can be further improved by using motion data captured by motion sensor module 317 in conjunction with audio data received from microphones 305, 310.
- the amplitude of chest wall movement can be used to calculate the tidal volume, as described herein.
- the reliability of this determination may be assessed based on respiratory sounds captured by, for example microphones 305, 310.
- the correlation of chest wall motion with tidal volume may be based on the assumption that the patient’s airways are patent. As a result, if the patient’s airways are not patent, the calculation of tidal volume based on chest wall motion may be inaccurate. Patency of the airway can be assessed by respiratory sounds.
- chest wall movement that correlates with a tidal volume of 550cc may be classified as accurate when respiratory sounds are normal (as determined by audio data captured by microphones 305, 310).
- the same chest wall movement, when associated with wheezes (as determined by audio data captured by microphones 305, 310) may be classified as less accurate.
- the same chest wall movement may be classified as inaccurate when associated with absent of breath sounds (as determined by audio data captured by microphones 305, 310).
- the loudness of respiratory sounds may be correlated with the amount of air flow in the respiratory system. From the amount of flow and the duration of respiratory sounds, the tidal volume may be estimated. In such embodiments, the determination based on audio data may be compared with the determination based on chest wall movement to verify and/or adjust the calculation of tidal volume.
- the tidal volume (i.e., the amount of air that the patient moves in one minute) is also calculated based on the tidal volume and the rate of respiration. This may be done using both audio and motion data. A rapid increase or decrease in minute ventilation may indicate that the patient’s condition is deteriorating and caregiver attention is required. In such instances, the wearable device 100 may issue or transmit an alert.
- angular displacement can be measured and/or calculated as well.
- the angular displacement can be used in addition to or as alternative to the linear displacement.
- the angular displacement can be determined based on a gyroscope of the motion sensor module 317.
- the wearable device 100 detects both physiological sounds as well as movement of the chest wall, the accuracy of the identification of abnormalities and/or patterns in breathing can be improved.
- the combination of motion sensors and microphones can be used to identify individuals with diminished breath sounds, such as those suffering from severe bronchospasm.
- the motion sensor module 317 can be used to identify phases in the respiratory cycle, as described above. Comparing the data gathered by the microphones during the various phases allows for more accurate identification of abnormalities in breath sounds.
- the intensity of the program can be increased.
- the wearable device 100 may also allow the patient to safely perform training routines when the physical therapist is not present by providing continuous monitoring of the patient’s breathing, heart rate, and other metrics. A physical therapist or physician can review this information, either during the exercise or at a later time, to ensure that the patient is not in danger.
- the wearable device 100 can also be used to monitor compliance with prescribed or recommended activities. For example, incentive spirometry is often prescribed to prevent atelectasis in post-surgical patients.
- the wearable device 100 includes a user interface that provides real-time feedback and instructions on prescribed rehab activities based on sensor data. Concurrently, sensor data can be sent to family members and clinical providers to monitor compliance and progress.
- Body sounds and motions then undergo processing by comparing the sounds to boundary conditions derived from predefined mathematical features derived from benchmark audio and motion data, as described above.
- This information can be used to diagnose or monitor vascular diseases, which include but are not limited to peripheral artery disease, carotid artery stenosis, abdominal aortic aneurysm, and access sites of endovascular procedures.
- the wearable device 100 is placed on or near a joint of the patient (e.g ., the shoulder, the elbow, the hip, the knee, the ankle).
- the acoustic sound generated by the joint during movement is used to monitor orthopedic diseases.
- a wearable device 100 is placed over more than one joint.
- one wearable device can be placed over the left hip and one wearable device can be placed over the right hip.
- comparison of the data collected from the two devices allows for the identification of abnormalities in, for example, gait patterns. The identification can be performed by comparing the data collected to mathematical features derived from benchmark audio and motion data, as described above.
- a patient is able to provide feedback - i.e. a self- assessment of the diagnosis, in order to improve the accuracy of diagnosis.
- historical data can be accumulated over periods of time (days, months, years) to further refine boundary conditions and models used to identify respiratory problems.
- a computing device other than a smartphone may be used. Exemplary computing devices include computers, tablets, etc.
- results of identification of respiratory illness, and/or changes in respiratory conditions are provided to a patient provider.
- the identification and/or changes may be displayed using a variety of different user interfaces.
- NFC near-field communication
- An NFC-enabled tag is attached to an inhaler or a medication container.
- a user taps an NFC-enabled computing device to the NFC-enabled tag.
- the NFC-enabled computing device then records the time at which the tap occurs, which corresponds to the timing of the use of an inhaler or administering of a medication.
- the NFC-enabled computing device may include but is not limited to the following: mobile phone, tablet, or as part of the electronic components 130.
- the output of medication-use tracking is a“boundary condition” described above.
- results of identification and/or changes are pushed to a patient or to a patient provider.
- results of identification and/or changes are pulled to a patient or to a patient provider (i.e. provided on demand).
- a method of identifying physiological events includes affixing a wearable device to a user (step 1302).
- the wearable device includes at least one microphone, a motion sensor module, and a processor.
- the method further includes acquiring recorded audio data from the at least one microphone and recorded motion data from the motion sensor module (step 1304).
- the method further includes filtering a set of predefined audio samples based on the recorded motion data to arrive at a set of benchmark audio samples (step 1306).
- the method further includes extracting a first set of mathematical features from the set of benchmark audio samples (step 1308).
- the method further includes extracting a second set of mathematical features from the recorded audio data (step 1310).
- the method further includes comparing the second set of mathematical features to the first set of mathematical features to determine whether a physiological event has occurred (step 1312).
- the computing device further includes a processor, the processor configured to analyze the recorded audio data and the recorded motion data based at least partially on parameters not used by the processor of the wearable device.
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Priority Applications (5)
| Application Number | Priority Date | Filing Date | Title |
|---|---|---|---|
| CA3103625A CA3103625A1 (en) | 2018-06-14 | 2019-06-14 | Apparatus and method for detection of physiological events |
| AU2019287661A AU2019287661A1 (en) | 2018-06-14 | 2019-06-14 | Apparatus and method for detection of physiological events |
| EP19820092.5A EP3806737A4 (en) | 2018-06-14 | 2019-06-14 | Apparatus and method for detection of physiological events |
| CN201980054499.5A CN112804941A (en) | 2018-06-14 | 2019-06-14 | Apparatus and method for detecting physiological events |
| US17/251,239 US20210219925A1 (en) | 2018-06-14 | 2019-06-14 | Apparatus and method for detection of physiological events |
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| US201862684871P | 2018-06-14 | 2018-06-14 | |
| US62/684,871 | 2018-06-14 |
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| WO2019241674A1 true WO2019241674A1 (en) | 2019-12-19 |
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| US (1) | US20210219925A1 (en) |
| EP (1) | EP3806737A4 (en) |
| CN (1) | CN112804941A (en) |
| AU (1) | AU2019287661A1 (en) |
| CA (1) | CA3103625A1 (en) |
| WO (1) | WO2019241674A1 (en) |
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Also Published As
| Publication number | Publication date |
|---|---|
| CA3103625A1 (en) | 2019-12-19 |
| EP3806737A1 (en) | 2021-04-21 |
| AU2019287661A1 (en) | 2021-01-21 |
| EP3806737A4 (en) | 2022-04-06 |
| CN112804941A (en) | 2021-05-14 |
| US20210219925A1 (en) | 2021-07-22 |
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