28 research outputs found

    A method for extracting respiratory frequency during blood pressure measurement, from oscillometric cuff pressure pulses and Korotkoff sounds recorded during the measurement

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    Respiratory frequency is an important physiological feature commonly used to assess health. However, the current measurements involve dedicated devices which not only increase the medical cost but also make health monitoring inconvenient. Earlier studies have shown that respiratory frequency could be extracted from electrocardiography (ECG) signal, but little was done to assess the possibility of extracting respiratory frequency from oscillometric cuff pressure pulses (OscP) or Korotkoff sounds (KorS), which are normally used for measuring blood pressure and more easily accessible than the ECG signal. This study presented a method to extract respiratory frequency from OscP and KorS during clinical blood pressure measurement. The method was evaluated with clinical data collected from 15 healthy participants, and its measurement accuracy was compared with a reference respiratory rate obtained with a magnetometer. Experimental results showed small non-significant mean absolute bias (0.019 Hz for OscP and 0.024 Hz for KorS) and high correlation (0.7 for both OscP and KorS) between the reference respiratory frequency and respiratory frequency extracted from OscP or KorS, indicating the high reliability of extracting respiratory frequency from OscP and KorS during normal blood pressure measurement

    Effect of Respiration on the Characteristic Ratios of Oscillometric Pulse Amplitude Envelope in Blood Pressure Measurement

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    Systolic and diastolic blood pressures (BPs) are important physiological parameters for disease diagnosis. Systolic and diastolic characteristic ratios derived from oscillometric pulse waveform have been widely used to estimate automated non-invasive BPs in oscillometric BP measurement devices. The oscillometric pulse waveform is easily influenced by respiration, which may cause variability to the characteristic ratios and subsequently BP measurement. This study quantitatively investigated how respiration patterns (i.e., normal breathing and deep breathing) affect the systolic and diastolic characteristic ratios. The study was performed with clinical data collected from 39 healthy subjects, and each subject conducted BP measurements during normal and deep breathings. Analytical results showed that the systolic characteristic ratio increased significantly from 0.52 ยฑ 0.13 under normal breathing to 0.58 ยฑ 0.14under deep breathing (p < 0.05), and the diastolic characteristic ratio was not significantly affected from 0.75 ยฑ 0.12 under normal breathing to 0.76 ยฑ 0.13 under deep breathing (p = 0.48). In conclusion, deep breathing significantly affected the systolic characteristic ratio, suggesting that automated oscillometric BP device which is validated under resting condition should be strictly used for measurements under resting condition

    Pulse interval modulation-based method to extract the respiratory rate from oscillometric cuff pressure waveform during blood pressure measurement

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    Respiratory frequency has been extensively used to assess health status. This study aimed to evaluate two methods of extracting the respiratory rate from oscillometric cuff pressure pulses (OscP) during blood pressure (BP) measurement, which was compared with reference respiration signal (Resp). OscP and Resp were simultaneously recorded on 20 healthy subjects during the linear cuff deflation period of BP measurement. Reference Resp was obtained from a chest magnetometer and OscP from an electronic pressure sensor connected to the cuff. Two de-modulation methods were developed by using the peak or valley positions of the OscP waveform to measure pulse intervals, from which the respiration modulation signal was derived. Statistical analysis showed that, in comparison with the Resp, there was no significant difference (-0.001 Hz for the peak-based method, and 0.001 Hz for valley-based method), and their corresponding limits of agreement were -0.08 Hz to 0.08 Hz and -0.10 Hz to 0.11 Hz, respectively. There was also a high correlation between Resp and respiratory frequencies extracted from OscP waveform, with the correlation coefficients of 0.7 for both methods. In conclusion, the present work demonstrated that, during BP measurement, respiratory frequency can be accurately derived from using either peak or valley point to characterize pulse intervals

    Recent development of respiratory rate measurement technologies

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    Respiratory rate (RR) is an important physiological parameter whose abnormity has been regarded as an important indicator of serious illness. In order to make RR monitoring simple to do, reliable and accurate, many different methods have been proposed for such automatic monitoring. According to the theory of respiratory rate extraction, methods are categorized into three modalities: extracting RR from other physiological signals, RR measurement based on respiratory movements, and RR measurement based on airflow. The merits and limitations of each method are highlighted and discussed. In addition, current works are summarized to suggest key directions for the development of future RR monitoring methodologies

    Cuff-free blood pressure estimation using signal processing techniques

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    Since blood pressure is a significant parameter to examine people's physical attributes and it is useful to indicate cardiovascular diseases, the measurement/estimation of blood pressure has gained increasing attention. The continuous, cuff-less and non-invasive blood pressure estimation is required for the daily health monitoring. In recent years, studies have been focusing on the ways of blood pressure estimation based on other physiological parameters. It is widely accepted that the pulse transit time (PTT) is related to arterial stiffness, and can be used to estimate blood pressure. A promising signal processing technology, Hilbert-Huang Transform (HHT), is introduced to analyze both ECG and PPG data, which are applied to calculate PTT. The relationship between blood pressure and PTT is illustrated, and the problems of calibration and re-calibration are also discussed. The proposed algorithm is tested based on the continuous data from MIMIC database. To verify the algorithm, the HHT algorithm is compared with other used processing technique (wavelet transform). The accuracy is calculated to validate the method. Furthermore, we collect data using our own developed system and test our algorithm

    Early Disease Detection by Extracting Features of Biomedical Signals

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    Elderly people face a lot of health problems in day to day life due to old age and so many reasons. Therefore a regular health check-up is needed for them which is much more expensive and cannot be afforded by many people. Again the diagnosis is much more complicated to understand and in many cases there is a chance of mistreatment. There is another chance of delay in the detection of disease and late treatment causing risk in their lives. So, the disease should be detected in the early stage for lower cost and lower risk in life. The present work is related to the different physiological parameters of a human being that are to be measured to accurately diagnose the related disease. Though there are numerous physiological parameters, this work emphasizes on some of the most common physiological parameters such as blood pressure, heart rate and ECG which are of primary importance to elderly people. Accurate measurement and analysis of these parameters can lead to diagnose of several lethal disease. In this work, the method of measurement and analysis of these physiological parameters are described. The simulation, processing and analyses of these signals are also done in the work. The prime objective of the research work is to analyze and extract the features of ECG signal and blood pressure signal for early diagnosis of life threatening diseases

    Non-invasive blood pressure estimation based on electro/phonocardiogram

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    Ingeniero (a) ElectrรณnicoPregrad

    Advances in non-invasive blood pressure measurement techniques

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    Hypertension, or elevated blood pressure (BP), is a marker for many cardiovascular diseases and can lead to life threatening conditions such as heart failure, coronary artery disease and stroke. Several techniques have recently been proposed and investigated for non-invasive BP monitoring. The increasing desire for telemonitoring solutions that allow patients to manage their own conditions from home has accelerated the development of new BP monitoring techniques. In this review, we present the recent progress in non-invasive blood pressure monitoring solutions emphasizing clinical validation and trade-offs between available techniques. We introduce the current BP measurement techniques with their underlying operating principles. New promising proof-of-concept studies are presented and recent modeling and machine learning approaches for improved BP estimation are summarized. This aids discussions on how new BP monitors should evaluated in order to bring forth new home monitoring solutions in wearable form factor. Finally, we discuss on unresolved challenges in making convenient, reliable and validated BP monitoring solutions.</p

    ๋”ฅ๋Ÿฌ๋‹ ๊ธฐ๋ฐ˜ ํ˜ˆ์•• ์˜ˆ์ธก ๊ธฐ๋ฒ•

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    ํ•™์œ„๋…ผ๋ฌธ (๋ฐ•์‚ฌ) -- ์„œ์šธ๋Œ€ํ•™๊ต ๋Œ€ํ•™์› : ๊ณต๊ณผ๋Œ€ํ•™ ์ „๊ธฐยท์ •๋ณด๊ณตํ•™๋ถ€, 2020. 8. ์œค์„ฑ๋กœ.While COVID-19 is changing the world's social profile, it is expected that the telemedicine sector, which has not been activated due to low regulation and reliability, will also undergo a major change. As COVID-19 spreads in the United States, the US Department of Health \& Human Services temporarily loosens the standards for telemedicine, while enabling telemedicine using Facebook, Facebook Messenger-based video chat, Hangouts, and Skype. The expansion of the telemedicine market is expected to quickly transform the existing treatment-oriented hospital-led medical market into a digital healthcare service market focused on prevention and management through wearables, big data, and health records analysis. In this prevention and management-oriented digital healthcare service, it is very important to develop a technology that can easily monitor a person's health status. One of the vital signs that can be used for personal health monitoring is blood pressure. High BP is a common and dangerous condition. About 1 out of 3 adults in the U.S. (about 75 million people) have high BP. This common condition increases the risk of heart disease and stroke, two of the leading causes of death for Americans. High BP is called the silent killer because it often has no warning signs or symptoms, and many people are not aware they have it. For these reasons, it is important to develop a technology that can easily and conveniently check BP regularly. In biomedical data analysis, various studies are being attempted to effectively analyze by applying machine learning to biomedical big data accumulated in large quantities. However, collecting blood pressure-related data at the level of big data is very difficult and very expensive because it takes a lot of manpower and time. So in this dissertation, we proposed a three-step strategy to overcome these issues. First, we describe a BP prediction model with extraction and concentration CNN architecture, to process publicly disclosed sequential ECG and PPG dataset. Second, we evaluate the performance of the developed model by applying the developed model to privately measured data. To address the third issue, we propose the knowledge distillation method and input pre-processing method to improve the accuracy of the blood pressure prediction model. All the methods proposed in this dissertation are based on a deep convolutional neural network (CNN). Unlike other studies based on manual recognition of the features, by utilizing the advantage of deep learning which automatically extracts features, raw biomedical signals are used intact to reflect the inherent characteristics of the signals themselves.์ฝ”๋กœ๋‚˜ 19์— ์˜ํ•œ ์ „ ์„ธ๊ณ„์˜ ์‚ฌํšŒ์  ํ”„๋กœํ•„ ๋ณ€ํ™”๋กœ, ๊ทœ์ œ์™€ ์‹ ๋ขฐ์„ฑ์ด ๋‚ฎ๊ธฐ ๋•Œ๋ฌธ์— ํ™œ์„ฑํ™” ๋˜์ง€ ์•Š์€ ์›๊ฒฉ ์˜๋ฃŒ ๋ถ„์•ผ๋„ ํฐ ๋ณ€ํ™”๋ฅผ ๊ฒช์„ ๊ฒƒ์œผ๋กœ ์˜ˆ์ƒ๋ฉ๋‹ˆ๋‹ค. ์ฝ”๋กœ๋‚˜ 19๊ฐ€ ๋ฏธ๊ตญ์— ํผ์ง์— ๋”ฐ๋ผ ๋ฏธ๊ตญ ๋ณด๊ฑด๋ณต์ง€๋ถ€๋Š” ์›๊ฒฉ ์ง„๋ฃŒ์˜ ํ‘œ์ค€์„ ์ผ์‹œ์ ์œผ๋กœ ์™„ํ™”ํ•˜๋ฉด์„œ ํŽ˜์ด์Šค๋ถ, ํŽ˜์ด์Šค๋ถ ๋ฉ”์‹ ์ € ๊ธฐ๋ฐ˜ ํ™”์ƒ ์ฑ„ํŒ…, ํ–‰์•„์›ƒ, ์Šค์นด์ดํ”„๋ฅผ ์‚ฌ์šฉํ•œ ์›๊ฒฉ ์ง„๋ฃŒ๋ฅผ ๊ฐ€๋Šฅํ•˜๊ฒŒ ํ–ˆ์Šต๋‹ˆ๋‹ค. ์›๊ฒฉ์˜๋ฃŒ ์‹œ์žฅ์˜ ํ™•์žฅ์€ ๊ธฐ์กด์˜ ์น˜๋ฃŒ์ค‘์‹ฌ ๋ณ‘์›์ฃผ๋„์˜ ์˜๋ฃŒ์‹œ์žฅ์„ ์›จ์–ด๋Ÿฌ๋ธ”, ๋น… ๋ฐ์ดํ„ฐ ๋ฐ ๊ฑด๊ฐ•๊ธฐ๋ก ๋ถ„์„์„ ํ†ตํ•œ ์˜ˆ๋ฐฉ ๋ฐ ๊ด€๋ฆฌ์— ์ค‘์ ์„ ๋‘” ๋””์ง€ํ„ธ ์˜๋ฃŒ ์„œ๋น„์Šค ์‹œ์žฅ์œผ๋กœ ๋น ๋ฅด๊ฒŒ ๋ณ€ํ™”์‹œํ‚ฌ ๊ฒƒ์œผ๋กœ ์˜ˆ์ƒ๋ฉ๋‹ˆ๋‹ค. ์ด๋Ÿฌํ•œ ์˜ˆ๋ฐฉ ๋ฐ ๊ด€๋ฆฌ ์ค‘์‹ฌ์˜ ๋””์ง€ํ„ธ ํ—ฌ์Šค์ผ€์–ด ์„œ๋น„์Šค์—์„œ๋Š” ์‚ฌ๋žŒ์˜ ๊ฑด๊ฐ• ์ƒํƒœ๋ฅผ ์‰ฝ๊ฒŒ ๋ชจ๋‹ˆํ„ฐ๋ง ํ•  ์ˆ˜ ์žˆ๋Š” ๊ธฐ์ˆ  ๊ฐœ๋ฐœ์ด ๋งค์šฐ ์ค‘์š”ํ•œ๋ฐ ํ˜ˆ์••์€ ๊ฐœ์ธ ๊ฑด๊ฐ• ๋ชจ๋‹ˆํ„ฐ๋ง์— ์‚ฌ์šฉ๋  ์ˆ˜ ์žˆ๋Š” ํ•„์ˆ˜ ์ง•ํ›„ ์ค‘ ํ•˜๋‚˜ ์ž…๋‹ˆ๋‹ค. ๊ณ ํ˜ˆ์••์€ ์•„์ฃผ ํ”ํ•˜๊ณ  ์œ„ํ—˜ํ•œ ์งˆํ™˜์ž…๋‹ˆ๋‹ค. ๋ฏธ๊ตญ ์„ฑ์ธ 3๋ช…์ค‘ 1๋ช…(์•ฝ 7,500๋งŒ๋ช…)์ด ๊ณ ํ˜ˆ์••์„ ๊ฐ€์ง€๊ณ  ์žˆ์Šต๋‹ˆ๋‹ค. ์ด๋Š” ๋ฏธ๊ตญ์ธ์˜ ์ฃผ์š” ์‚ฌ๋ง ์›์ธ ์ค‘ ๋‘๊ฐ€์ง€์ธ ์‹ฌ์žฅ์งˆํ™˜๊ณผ ๋‡Œ์กธ์ค‘์˜ ์œ„ํ—˜์„ ์ฆ๊ฐ€ ์‹œํ‚ต๋‹ˆ๋‹ค. ๊ณ ํ˜ˆ์••์€ ์‹ ์ฒด์— ๊ฒฝ๊ณ  ์‹ ํ˜ธ๋‚˜ ์ž๊ฐ ์ฆ์ƒ์ด ์—†์–ด ๋งŽ์€ ์‚ฌ๋žŒ๋“ค์ด ์ž์‹ ์ด ๊ณ ํ˜ˆ์••์ธ ๊ฒƒ์„ ์ธ์ง€ํ•˜์ง€ ๋ชปํ•˜๊ธฐ ๋•Œ๋ฌธ์— "์‚ฌ์ผ๋ŸฐํŠธ ํ‚ฌ๋Ÿฌ"๋ผ ๋ถˆ๋ฆฌ์›๋‹ˆ๋‹ค. ์ด๋Ÿฌํ•œ ์ด์œ ๋กœ ์ •๊ธฐ์ ์œผ๋กœ ์‰ฝ๊ณ  ํŽธ๋ฆฌํ•˜๊ฒŒ ํ˜ˆ์••์„ ํ™•์ธํ•  ์ˆ˜ ์žˆ๋Š” ๊ธฐ์ˆ ์˜ ๊ฐœ๋ฐœ์ด ๋งค์šฐ ์ค‘์š”ํ•ฉ๋‹ˆ๋‹ค. ์ƒ์ฒด์˜ํ•™ ๋ฐ์ดํ„ฐ ๋ถ„์„ ๋ถ„์•ผ์—์„œ๋Š” ๋จธ์‹  ๋Ÿฌ๋‹์„ ๋Œ€๋Ÿ‰์œผ๋กœ ์ˆ˜์ง‘๋œ ์ƒ์ฒด์˜ํ•™ ๋น… ๋ฐ์ดํ„ฐ์— ์ ์šฉํ•˜๋Š” ๋‹ค์–‘ํ•œ ์—ฐ๊ตฌ๊ฐ€ ํšจ๊ณผ์ ์œผ๋กœ ์ด๋ฃจ์–ด์ง€๊ณ  ์žˆ์Šต๋‹ˆ๋‹ค. ๊ทธ๋Ÿฌ๋‚˜ ๋น… ๋ฐ์ดํ„ฐ ์ˆ˜์ค€์œผ๋กœ ๋‹ค๋Ÿ‰์˜ ํ˜ˆ์•• ๊ด€๋ จ ๋ฐ์ดํ„ฐ๋ฅผ ์ˆ˜์ง‘ํ•˜๋Š” ๊ฒƒ์€ ๋งŽ์€ ์ „๋ฌธ์ ์ธ ์ธ๋ ฅ๋“ค์ด ์˜ค๋žœ์‹œ๊ฐ„์„ ํ•„์š”๋กœ ํ•˜๊ธฐ ๋•Œ๋ฌธ์— ๋งค์šฐ ์–ด๋ ต๊ณ  ๋น„์šฉ ๋˜ํ•œ ๋งŽ์ด ํ•„์š”ํ•ฉ๋‹ˆ๋‹ค. ๋”ฐ๋ผ์„œ ๋ณธ ํ•™์œ„๋…ผ๋ฌธ์—์„œ๋Š” ์ด๋Ÿฌํ•œ ๋ฌธ์ œ๋ฅผ ๊ทน๋ณตํ•˜๊ธฐ ์œ„ํ•œ 3๋‹จ๊ณ„ ์ „๋žต์„ ์ œ์•ˆํ–ˆ์Šต๋‹ˆ๋‹ค. ๋จผ์ € ๋ˆ„๊ตฌ๋‚˜ ์‹œ์šฉํ•  ์ˆ˜ ์žˆ๋„๋ก ๊ณต๊ฐœ๋˜์–ด ์žˆ๋Š” ์‹ฌ์ „๋„, ๊ด‘์šฉ์ ๋งฅํŒŒ ๋ฐ์ดํ„ฐ์…‹์„ ์ด์šฉ, ์ˆœ์ฐจ์ ์ธ ์‹ฌ์ „๋„, ๊ด‘์šฉ์ ๋งฅํŒŒ ์‹ ํ˜ธ์—์„œ ํ˜ˆ์••์„ ์ž˜ ์˜ˆ์ธกํ•˜๋„๋ก ๊ณ ์•ˆ๋œ ์ถ”์ถœ ๋ฐ ๋†์ถ• ์ž‘์—…์„ ๋ฐ˜๋ณตํ•˜๋Š” ํ•จ์„ฑ๊ณฑ ์‹ ๊ฒฝ๋ง ๊ตฌ์กฐ๋ฅผ ์ œ์•ˆํ–ˆ์Šต๋‹ˆ๋‹ค. ๋‘๋ฒˆ์งธ๋กœ ์ œ์•ˆ๋œ ํ•ฉ์„ฑ๊ณฑ ์‹ ๊ฒฝ๋ง ๋ชจ๋ธ์„ ๊ฐœ์ธ์—๊ฒŒ์„œ ์ธก์ •ํ•œ ๊ด‘์šฉ์ ๋งฅํŒŒ ์‹ ํ˜ธ๋ฅผ ์ด์šฉํ•ด ์ œ์•ˆ๋œ ํ•จ์„ฑ๊ณฑ ์‹ ๊ฒฝ๋ง ๋ชจ๋ธ์˜ ์„ฑ๋Šฅ์„ ํ‰๊ฐ€ํ–ˆ์Šต๋‹ˆ๋‹ค. ์„ธ๋ฒˆ์งธ๋กœ ํ˜ˆ์••์˜ˆ์ธก ๋ชจ๋ธ์˜ ์ •ํ™•์„ฑ์„ ๋†’์ด๊ธฐ ์œ„ํ•ด ์ง€์‹ ์ฆ๋ฅ˜๋ฒ•๊ณผ ์ž…๋ ฅ์‹ ํ˜ธ ์ „์ฒ˜๋ฆฌ ๋ฐฉ๋ฒ•์„ ์ œ์•ˆํ–ˆ์Šต๋‹ˆ๋‹ค. ์ด ๋…ผ๋ฌธ์—์„œ ์ œ์•ˆ๋œ ๋ชจ๋“  ํ˜ˆ์••์˜ˆ์ธก ๋ฐฉ๋ฒ•์€ ํ•ฉ์„ฑ๊ณฑ ์‹ ๊ฒฝ๋ง์„ ๊ธฐ๋ฐ˜์œผ๋กœ ํ•ฉ๋‹ˆ๋‹ค. ํ˜ˆ์•• ์˜ˆ์ธก์— ํ•„์š”ํ•œ ํŠน์ง•๋“ค์„ ์ˆ˜๋™์œผ๋กœ ์ถ”์ถœํ•ด์•ผ ํ•˜๋Š” ๋‹ค๋ฅธ ์—ฐ๊ตฌ๋“ค๊ณผ ๋‹ค๋ฅด๊ฒŒ ํŠน์ง•์„ ์ž๋™์œผ๋กœ ์ถ”์ถœํ•˜๋Š” ๋”ฅ๋Ÿฌ๋‹์˜ ์žฅ์ ์„ ํ™œ์šฉ, ์•„๋ฌด๋Ÿฐ ์ฒ˜๋ฆฌ๋„ ํ•˜์ง€ ์•Š์€ ์›๋ž˜ ๊ทธ๋Œ€๋กœ์˜ ์ƒ์ฒด ์‹ ํ˜ธ์—์„œ ์‹ ํ˜ธ ์ž์ฒด์˜ ๊ณ ์œ ํ•œ ํŠน์ง•์„ ๋ฐ˜์˜ํ•  ์ˆ˜ ์žˆ์Šต๋‹ˆ๋‹ค.1 Introduction 1 2 Background 5 2.1 Cuff-based BP measurement methods 9 2.1.1 Auscultatory method 9 2.1.2 Oscillometric method 10 2.1.3 Tonometric method 11 2.2 Biomedical signals used in cuffless BP prediction methods 13 2.2.1 Electrocardiography (ECG) 13 2.2.2 Photoplethysmography (PPG) 20 2.3 Cuffless BP measurement methods 21 2.3.1 PWV based BP prediction methods 25 2.3.2 Machine learning based pulse wave analysis methods 26 2.4 Deep learning for sequential biomedical data 30 2.4.1 Convolutional neural networks 31 2.4.2 Recurrent neural networks 32 3 End-to-end blood pressure prediction via fully convolutional networks 33 3.1 Introduction 35 3.2 Method 38 3.2.1 Data preparation 38 3.2.2 CNN based prediction model 41 3.2.3 Detailed architecture 45 3.3 Experimental results 47 3.3.1 Setup 47 3.3.2 Model evaluation & selection 48 3.3.3 Calibration-based method 51 3.3.4 Performance comparison 52 3.3.5 Verification using international standards for BP measurement grading criteria 54 3.3.6 Performance comparison by the input signal combinations 56 3.3.7 An ablation study of each architectural component of extraction-concentration blocks 58 3.3.8 Preprocessing of input signal to improve blood pressure prediction performance 59 3.4 Discussion 61 3.5 Summary 63 4 Blood pressure prediction by a smartphone sensor using fully convolutional networks 64 4.1 Introduction 66 4.2 Method 69 4.2.1 Data acquisition 71 4.2.2 Preprocessing of the PPG signals 71 4.2.3 PPG signal selection 71 4.2.4 Data preparation for CNN model training 72 4.2.5 Network architectures 72 4.3 Experimental results 75 4.3.1 Implementation details 75 4.3.2 Effect of PPG combination on BP prediction 75 4.3.3 Performance comparison with other related works 76 4.3.4 Verification using international standards for BP measurement grading criteria 77 4.3.5 Preprocessing of input signal to improve blood pressure prediction performance 79 4.4 Discussion 81 4.5 Summary 83 5 Improving accuracy of blood pressure prediction by distilling the knowledge of neural networks 84 5.1 Introduction 85 5.2 Methods 87 5.3 Experimental results 88 5.4 Discussion & Summary 89 6 Conclusion 90 6.1 Future work 92 Bibliography 93 Abstract (In Korean) 106Docto
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