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完整後設資料紀錄
DC 欄位值語言
dc.contributor.advisor李世光zh_TW
dc.contributor.advisorChih-Kung Leeen
dc.contributor.author羅正淯zh_TW
dc.contributor.authorZheng-Yu Luoen
dc.date.accessioned2024-09-25T16:48:12Z-
dc.date.available2024-09-26-
dc.date.copyright2024-09-25-
dc.date.issued2024-
dc.date.submitted2024-08-09-
dc.identifier.citation[1] Mohw.gov.tw. "111年國人死因統計結果." 2023. https://www.mohw.gov.tw/cp-16-74869-1.html (accessed May 13, 2024.
[2] ey.gov.tw. "人口(國情介紹-人民)." https://www.ey.gov.tw/state/99B2E89521FC31E1/835a4dc2-2c2d-4ee0-9a36-a0629a5de9f0 (accessed May 13, 2024.
[3] ourworldindata.org. "causes of death,wrold,2019." https://ourworldindata.org/causes-of-death (accessed May 13, 2024.
[4] Y. M. Barri, "Hypertension and kidney disease: a deadly connection," Current hypertension reports, vol. 10, no. 1, pp. 39-45, 2008.
[5] gov.tw. "3成國人不知道自己有高血壓 血壓量測「722原則」,您做了嗎?." https://www.mohw.gov.tw/cp-6560-75867-1.html (accessed May 14, 2024.
[6] B. C. Chee, I. C. Baldwin, L. Shahwan-Akl, N. G. Fealy, M. J. Heland, and J. J. Rogan, "Evaluation of a radial artery cannulation training program for intensive care nurses: a descriptive, explorative study," Australian Critical Care, vol. 24, no. 2, pp. 117-125, 2011.
[7] Y. Nguyen and V. Bora, "Arterial pressure monitoring," 2020.
[8] G. Drzewiecki, J. Melbin, and A. Noordergraaf, "The Krotkoff sound," Annals of biomedical engineering, vol. 17, pp. 325-359, 1989.
[9] N. C. G. Centre, "Hypertension: the clinical management of primary hypertension in adults: update of clinical guidelines 18 and 34," National Institute for Health and Clinical Excellence: Guidance, 2011.
[10] M. Forouzanfar, H. R. Dajani, V. Z. Groza, M. Bolic, S. Rajan, and I. Batkin, "Oscillometric blood pressure estimation: past, present, and future," IEEE reviews in biomedical engineering, vol. 8, pp. 44-63, 2015.
[11] L. Geddes, M. Voelz, C. Combs, D. Reiner, and C. F. Babbs, "Characterization of the oscillometric method for measuring indirect blood pressure," Annals of biomedical engineering, vol. 10, pp. 271-280, 1982.
[12] P. S. Lewis, British, and I. H. Society, "Oscillometric measurement of blood pressure: a simplified explanation. A technical note on behalf of the British and Irish Hypertension Society," Journal of human hypertension, vol. 33, no. 5, pp. 349-351, 2019.
[13] bpdoctormed.com. "BP Doctor Pro 12 Circle Dial Wearable Blood Pressure Smartwatch." https://bpdoctormed.com/collections/bp-doctor-pro-smartwatch/products/bp-doctor-med-4-0-pro-circular-dial-wearable-blood-pressure-smartwatch (accessed May 15, 2024).
[14] A. Eisenkraft, "ASSESSING WORKFLOW, SATISFACTION, AND POTENTIAL COST REDUCTION WHEN USING A CUFFLESS AMBULATORY BLOOD PRESSURE MONITOR," Journal of Hypertension, vol. 41, no. Suppl 3, pp. e113-e114, 2023.
[15] M. A. Almarshad, M. S. Islam, S. Al-Ahmadi, and A. S. BaHammam, "Diagnostic features and potential applications of PPG signal in healthcare: A systematic review," in Healthcare, 2022, vol. 10, no. 3: MDPI, p. 547.
[16] C. J. Raichle et al., "Performance of a blood pressure smartphone app in pregnant women: The iPARR Trial (iPhone app compared with standard RR measurement)," Hypertension, vol. 71, no. 6, pp. 1164-1169, 2018.
[17] P.-C. Hsu, H.-T. Wu, and C.-K. Sun, "Assessment of subtle changes in diabetes-associated arteriosclerosis using photoplethysmographic pulse wave from index finger," Journal of medical systems, vol. 42, no. 3, p. 43, 2018.
[18] A. Chandrasekhar, C.-S. Kim, M. Naji, K. Natarajan, J.-O. Hahn, and R. Mukkamala, "Smartphone-based blood pressure monitoring via the oscillometric finger-pressing method," Science translational medicine, vol. 10, no. 431, p. eaap8674, 2018.
[19] W.-H. Lin, H. Wang, O. W. Samuel, G. Liu, Z. Huang, and G. Li, "New photoplethysmogram indicators for improving cuffless and continuous blood pressure estimation accuracy," Physiological measurement, vol. 39, no. 2, p. 025005, 2018.
[20] C. Gonzalez Viejo, S. Fuentes, D. D. Torrico, and F. R. Dunshea, "Non-contact heart rate and blood pressure estimations from video analysis and machine learning modelling applied to food sensory responses: A case study for chocolate," Sensors, vol. 18, no. 6, p. 1802, 2018.
[21] Y. Wang, Z. Liu, and S. Ma, "Cuff-less blood pressure measurement from dual-channel photoplethysmographic signals via peripheral pulse transit time with singular spectrum analysis," Physiological measurement, vol. 39, no. 2, p. 025010, 2018.
[22] J. Liu, B. P. Yan, Y.-T. Zhang, X.-R. Ding, P. Su, and N. Zhao, "Multi-wavelength photoplethysmography enabling continuous blood pressure measurement with compact wearable electronics," IEEE Transactions on Biomedical Engineering, vol. 66, no. 6, pp. 1514-1525, 2018.
[23] X. Xing and M. Sun, "Optical blood pressure estimation with photoplethysmography and FFT-based neural networks," Biomedical optics express, vol. 7, no. 8, pp. 3007-3020, 2016.
[24] L. Wang, W. Zhou, Y. Xing, and X. Zhou, "A novel neural network model for blood pressure estimation using photoplethesmography without electrocardiogram," Journal of healthcare engineering, vol. 2018, 2018.
[25] S. C. Gao, P. Wittek, L. Zhao, and W. J. Jiang, "Data-driven estimation of blood pressure using photoplethysmographic signals," in 2016 38th annual international conference of the IEEE engineering in medicine and biology society (EMBC), 2016: IEEE, pp. 766-769.
[26] M. Liu, L.-M. Po, and H. Fu, "Cuffless blood pressure estimation based on photoplethysmography signal and its second derivative," International Journal of Computer Theory and Engineering, vol. 9, no. 3, p. 202, 2017.
[27] K. Duan, Z. Qian, M. Atef, and G. Wang, "A feature exploration methodology for learning based cuffless blood pressure measurement using photoplethysmography," in 2016 38th Annual international conference of the IEEE engineering in medicine and biology society (EMBC), 2016: IEEE, pp. 6385-6388.
[28] S. Chen, Z. Ji, H. Wu, and Y. Xu, "A non-invasive continuous blood pressure estimation approach based on machine learning," Sensors, vol. 19, no. 11, p. 2585, 2019.
[29] D. Fujita, A. Suzuki, and K. Ryu, "PPG-based systolic blood pressure estimation method using PLS and level-crossing feature," Applied Sciences, vol. 9, no. 2, p. 304, 2019.
[30] Ü. Şentürk, İ. Yücedağ, and K. Polat, "Repetitive neural network (RNN) based blood pressure estimation using PPG and ECG signals," in 2018 2Nd international symposium on multidisciplinary studies and innovative technologies (ISMSIT), 2018: Ieee, pp. 1-4.
[31] G. Slapničar, N. Mlakar, and M. Luštrek, "Blood pressure estimation from photoplethysmogram using a spectro-temporal deep neural network," Sensors, vol. 19, no. 15, p. 3420, 2019.
[32] M. S. Tanveer and M. K. Hasan, "Cuffless blood pressure estimation from electrocardiogram and photoplethysmogram using waveform based ANN-LSTM network," Biomedical Signal Processing and Control, vol. 51, pp. 382-392, 2019.
[33] S. Baker, W. Xiang, and I. Atkinson, "A hybrid neural network for continuous and non-invasive estimation of blood pressure from raw electrocardiogram and photoplethysmogram waveforms," Computer Methods and Programs in Biomedicine, vol. 207, p. 106191, 2021.
[34] W. Shi et al., "Hybrid modeling on reconstitution of continuous arterial blood pressure using finger photoplethysmography," Biomedical Signal Processing and Control, vol. 85, p. 104972, 2023.
[35] M. M. R. K. Mamun, "Cuff-less blood pressure measurement based on hybrid feature selection algorithm and multi-penalty regularized regression technique," Biomedical Physics & Engineering Express, vol. 7, no. 6, p. 065030, 2021.
[36] M. Elgendi, PPG signal analysis: An introduction using MATLAB®. CRC press, 2020.
[37] J. Allen, "Photoplethysmography and its application in clinical physiological measurement," Physiological measurement, vol. 28, no. 3, p. R1, 2007.
[38] J. Park, H. S. Seok, S.-S. Kim, and H. Shin, "Photoplethysmogram analysis and applications: an integrative review," Frontiers in physiology, vol. 12, p. 808451, 2022.
[39] W. Karlen, S. Raman, J. M. Ansermino, and G. A. Dumont, "Multiparameter respiratory rate estimation from the photoplethysmogram," IEEE Transactions on Biomedical Engineering, vol. 60, no. 7, pp. 1946-1953, 2013.
[40] S. Nemati, A. Malhotra, and G. D. Clifford, "Data fusion for improved respiration rate estimation," EURASIP journal on advances in signal processing, vol. 2010, pp. 1-10, 2010.
[41] B. Lee, J. Han, H. J. Baek, J. H. Shin, K. S. Park, and W. J. Yi, "Improved elimination of motion artifacts from a photoplethysmographic signal using a Kalman smoother with simultaneous accelerometry," Physiological measurement, vol. 31, no. 12, p. 1585, 2010.
[42] H. Fukushima, H. Kawanaka, M. S. Bhuiyan, and K. Oguri, "Estimating heart rate using wrist-type photoplethysmography and acceleration sensor while running," in 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society, 2012: IEEE, pp. 2901-2904.
[43] C. A. Haque, S. Hossain, T.-H. Kwon, and K.-D. Kim, "Comparison of different methods to estimate blood oxygen saturation using ppg," in 2021 International Conference on Information and Communication Technology Convergence (ICTC), 2021: IEEE, pp. 792-794.
[44] P. P. Banik, S. Hossain, T.-H. Kwon, H. Kim, and K.-D. Kim, "Development of a wearable reflection-type pulse oximeter system to acquire clean PPG signals and measure pulse rate and SpO2 with and without finger motion," Electronics, vol. 9, no. 11, p. 1905, 2020.
[45] J. A. Pologe, "Pulse oximetry: technical aspects of machine design," International anesthesiology clinics, vol. 25, no. 3, pp. 137-153, 1987.
[46] Y. Zhang et al., "Motion artifact reduction for wrist-worn photoplethysmograph sensors based on different wavelengths," Sensors, vol. 19, no. 3, p. 673, 2019.
[47] A. M. Gordon and W. B. Mendes, "A large-scale study of stress, emotions, and blood pressure in daily life using a digital platform," Proceedings of the National Academy of Sciences, vol. 118, no. 31, p. e2105573118, 2021.
[48] samsung.com. "Samsung Galaxy S9." https://www.samsung.com/tw/ (accessed August 1, 2024).
[49] mybplab.com. "My BP Lab." https://mybplab.com/ (accessed August 1, 2024.
[50] A. Bhattacharjee and M. S. U. Yusuf, "A facial video based framework to estimate physiological parameters using remote photoplethysmography," in 2021 International Conference on Advances in Electrical, Computing, Communication and Sustainable Technologies (ICAECT), 2021: IEEE, pp. 1-7.
[51] X. Liu, X. Yang, D. Wang, and S. Fang, "Heart Rate Detection From Facial Videos Using A Frequencyconstrained Multilayer Sparse Coding," in 2020 IEEE International Conference on Image Processing (ICIP), 2020: IEEE, pp. 335-339.
[52] R. H. Goudarzi, S. S. Mousavi, and M. Charmi, "Using imaging photoplethysmography (iPPG) signal for blood pressure estimation," in 2020 International conference on machine vision and image processing (MVIP), 2020: IEEE, pp. 1-6.
[53] A. A. Kamshilin et al., "A new look at the essence of the imaging photoplethysmography," Scientific reports, vol. 5, no. 1, pp. 1-9, 2015.
[54] A. A. Kamshilin, S. Miridonov, V. Teplov, R. Saarenheimo, and E. Nippolainen, "Photoplethysmographic imaging of high spatial resolution," Biomedical optics express, vol. 2, no. 4, pp. 996-1006, 2011.
[55] V. Teplov, E. Nippolainen, A. A. Makarenko, R. Giniatullin, and A. A. Kamshilin, "Ambiguity of mapping the relative phase of blood pulsations," Biomedical optics express, vol. 5, no. 9, pp. 3123-3139, 2014.
[56] A. Golgouneh and B. Tarvirdizadeh, "Fabrication of a portable device for stress monitoring using wearable sensors and soft computing algorithms," Neural Computing and Applications, vol. 32, no. 11, pp. 7515-7537, 2020.
[57] M. Mohamed, M. Yoshizawa, N. Sugita, S. Yamaki, and K. Ichiji, "Noncontact monitoring of heart rate responses to taste stimuli using a video camera," Indonesian Journal of Electrical Engineering and Computer Science, vol. 18, no. 1, pp. 293-300, 2020.
[58] 張惠婷, "利用結構光投影法實現非接觸式橈動脈表面振動測量及連續血壓監測," 碩士, 工程科學及海洋工程學研究所, 國立臺灣大學, 台北市, 2020. [Online]. Available: https://hdl.handle.net/11296/mdjmwy
[59] 丁炤元, "評估相位移法和傅立葉轉換法應用於結構光投影法進行橈動脈振動量測及連續血壓監測之初步研究," 碩士, 應用力學研究所, 國立臺灣大學, 台北市, 2021. [Online]. Available: https://hdl.handle.net/11296/suwt63
[60] 陳冠融, "以非接觸光學法量測血液流速並估算平均動脈壓," 碩士, 應用力學研究所, 國立臺灣大學, 台北市, 2021. [Online]. Available: https://hdl.handle.net/11296/78deec
[61] 林真理, "結合非侵入式光學量測血流速及光體積變化描記圖法以監測連續血壓," 碩士, 工程科學及海洋工程學系, 國立臺灣大學, 台北市, 2023.
[62] 高育晟, "以相異位置PPG訊號間脈衝傳遞時間建立血壓量測模型," 碩士, 應用力學研究所, 國立臺灣大學, 台北市, 2020. [Online]. Available: https://hdl.handle.net/11296/3axw27
[63] 吳鐘晏, "結合人臉辨識系統與遞迴神經網路處理成像式光體積描記訊號," 碩士, 應用力學研究所, 國立臺灣大學, 台北市, 2020. [Online]. Available: https://hdl.handle.net/11296/b5te5h
[64] 吳宇倫, "以影像-光體積描記訊號評估血壓脈衝傳遞時間," 碩士, 應用力學研究所, 國立臺灣大學, 台北市, 2021. [Online]. Available: https://hdl.handle.net/11296/75933w
[65] 江庭瑀, "以納維-斯托克斯方程與非侵入式光學方法連續監測平均動脈壓," 碩士, 應用力學研究所, 國立臺灣大學, 台北市, 2023.
[66] "IEEE Standard for Wearable, Cuffless Blood Pressure Measuring Devices - Amendment 1," IEEE Std 1708a-2019 (Amendment to IEEE Std 1708-2014), pp. 1-35, 2019, doi: 10.1109/IEEESTD.2019.8859685.
[67] E. O’Brien et al., "The British Hypertension Society protocol for the evaluation of blood pressure measuring devices," J hypertens, vol. 11, no. Suppl 2, pp. S43-S62, 1993.
[68] 徐郁捷, "長短期記憶網路實現面部光體積描記法特徵提取之研發," 碩士, 工程科學及海洋工程學研究所, 國立臺灣大學, 台北市, 2020. [Online]. Available: https://hdl.handle.net/11296/7z5564
[69] D. Jarchi, D. Salvi, L. Tarassenko, and D. A. Clifton, "Validation of instantaneous respiratory rate using reflectance PPG from different body positions," Sensors, vol. 18, no. 11, p. 3705, 2018.
[70] M. Alex Lukey, RN. "Pulse Points And How To Find Them." https://www.nursetogether.com/pulse-points/ (accessed May 17, 2024.
[71] F. Bajraktari, J. Liu, and P. P. Pott, "Methods of Contactless Blood Pressure Measurement: A Systematic Review," Current Directions in Biomedical Engineering, vol. 8, no. 2, pp. 439-442, 2022.
[72] W. A. Schmidt, H. E. Kraft, K. Vorpahl, L. Völker, and E. J. Gromnica-Ihle, "Color duplex ultrasonography in the diagnosis of temporal arteritis," New England Journal of Medicine, vol. 337, no. 19, pp. 1336-1342, 1997.
[73] A. C. Y. Tang, "Review of traditional Chinese medicine pulse diagnosis quantification," Complementary therapies for the contemporary healthcare, pp. 61-80, 2012.
[74] W.-y. Li, X.-h. Wang, L.-c. Lu, and H. Li, "Discrepancy of blood pressure between the brachial artery and radial artery," World journal of emergency medicine, vol. 4, no. 4, p. 294, 2013.
[75] G. A. Rongen et al., "Comparison of intrabrachial and finger blood pressure in healthy elderly volunteers," American journal of hypertension, vol. 8, no. 3, pp. 237-248, 1995.
[76] W.-W. Shen, C.-B. Jiao, J.-X. Ma, Y.-C. Xia, and L.-G. Cui, "Evaluation of facial artery course variations, diameters, and depth by Doppler ultrasonography," Journal of Plastic, Reconstructive & Aesthetic Surgery, vol. 84, pp. 79-86, 2023.
[77] J. U. Kim, Y. J. Lee, J. Lee, and J. Y. Kim, "Differences in the properties of the radial artery between Cun, Guan, Chi, and nearby segments using ultrasonographic imaging: a pilot study on arterial depth, diameter, and blood flow," Evidence-Based Complementary and Alternative Medicine, vol. 2015, 2015.
[78] J. Khavkin and D. A. Ellis, "Aging skin: histology, physiology, and pathology," Facial Plastic Surgery Clinics, vol. 19, no. 2, pp. 229-234, 2011.
[79] L. Finlayson et al., "Depth penetration of light into skin as a function of wavelength from 200 to 1000 nm," Photochemistry and Photobiology, vol. 98, no. 4, pp. 974-981, 2022.
[80] A. N. Bashkatov, E. A. Genina, V. I. Kochubey, and V. Tuchin, "Optical properties of human skin, subcutaneous and mucous tissues in the wavelength range from 400 to 2000 nm," Journal of Physics D: Applied Physics, vol. 38, no. 15, p. 2543, 2005.
[81] T. L. Troy and S. N. Thennadil, "Optical properties of human skin in the near infrared wavelength range of 1000 to 2200 nm," Journal of biomedical optics, vol. 6, no. 2, pp. 167-176, 2001.
[82] Y. Du, X. Hu, M. Cariveau, X. Ma, G. Kalmus, and J. Lu, "Optical properties of porcine skin dermis between 900 nm and 1500 nm," Physics in Medicine & Biology, vol. 46, no. 1, p. 167, 2001.
[83] C. R. Simpson, M. Kohl, M. Essenpreis, and M. Cope, "Near-infrared optical properties of ex vivo human skin and subcutaneous tissues measured using the Monte Carlo inversion technique," Physics in Medicine & Biology, vol. 43, no. 9, p. 2465, 1998.
[84] E. K. Chan, B. Sorg, D. Protsenko, M. O'Neil, M. Motamedi, and A. J. Welch, "Effects of compression on soft tissue optical properties," IEEE Journal of selected topics in quantum electronics, vol. 2, no. 4, pp. 943-950, 1996.
[85] S. A. Prahl, Light transport in tissue. The University of Texas at Austin, 1988.
[86] J. P. Ritz, A. Roggan, C. Isbert, G. Müller, H. J. Buhr, and C. T. Germer, "Optical properties of native and coagulated porcine liver tissue between 400 and 2400 nm," Lasers in Surgery and Medicine: The Official Journal of the American Society for Laser Medicine and Surgery, vol. 29, no. 3, pp. 205-212, 2001.
[87] D. Ray, T. Collins, S. I. Woolley, and P. V. Ponnapalli, "A review of wearable multi-wavelength photoplethysmography," IEEE Reviews in Biomedical Engineering, vol. 16, pp. 136-151, 2021.
[88] F. Würtenberger, T. Haist, C. Reichert, A. Faulhaber, T. Boettcher, and A. Herkommer, "Optimum wavelengths in the near infrared for imaging photoplethysmography," IEEE Transactions on Biomedical Engineering, vol. 66, no. 10, pp. 2855-2860, 2019.
[89] I. S. Sidorov, R. V. Romashko, V. T. Koval, R. Giniatullin, and A. A. Kamshilin, "Origin of infrared light modulation in reflectance-mode photoplethysmography," PLoS One, vol. 11, no. 10, p. e0165413, 2016.
[90] J. Jin, J. Q. Lu, C. Chen, R. Zhou, and X.-H. Hu, "Photoplethysmographic imaging and analysis of pulsatile pressure wave in palmar artery at 10 wavelengths," Journal of Biomedical Optics, vol. 27, no. 11, pp. 116004-116004, 2022.
[91] D. Han et al., "Pulse oximetry using organic optoelectronics under ambient light," Advanced Materials Technologies, vol. 5, no. 5, p. 1901122, 2020.
[92] A. A. Kamshilin and N. B. Margaryants, "Origin of photoplethysmographic waveform at green light," Physics Procedia, vol. 86, pp. 72-80, 2017.
[93] W. Verkruysse, L. O. Svaasand, and J. S. Nelson, "Remote plethysmographic imaging using ambient light," Optics express, vol. 16, no. 26, pp. 21434-21445, 2008.
[94] S. Alharbi, S. Hu, D. Mulvaney, and P. Blanos, "An applicable approach for extracting human heart rate and oxygen saturation during physical movements using a multi-wavelength illumination optoelectronic sensor system," in Design and Quality for Biomedical Technologies XI, 2018, vol. 10486: SPIE, pp. 85-99.
[95] N. E. Huang et al., "The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis," Proceedings of the Royal Society of London. Series A: mathematical, physical and engineering sciences, vol. 454, no. 1971, pp. 903-995, 1998.
[96] J. Watkins, "An Introduction to the Science of Statistics: From Theory to Implementation, Preliminary Edition," Recuperado de https://www. math. arizona. edu/~ jwatkins/statbook. pdf, 2016.
[97] R. R. Coifman and M. V. Wickerhauser, "Entropy-based algorithms for best basis selection," IEEE Transactions on information theory, vol. 38, no. 2, pp. 713-718, 1992.
[98] M. Elgendi, "Optimal signal quality index for photoplethysmogram signals," Bioengineering, vol. 3, no. 4, p. 21, 2016.
[99] S. Moscato, S. Lo Giudice, G. Massaro, and L. Chiari, "Wrist photoplethysmography signal quality assessment for reliable heart rate estimate and morphological analysis," Sensors, vol. 22, no. 15, p. 5831, 2022.
[100] R. Krishnan, B. Natarajan, and S. Warren, "Analysis and detection of motion artifact in photoplethysmographic data using higher order statistics," in 2008 IEEE International Conference on Acoustics, Speech and Signal Processing, 2008: IEEE, pp. 613-616.
[101] M. Kumar, A. Veeraraghavan, and A. Sabharwal, "DistancePPG: Robust non-contact vital signs monitoring using a camera," Biomedical optics express, vol. 6, no. 5, pp. 1565-1588, 2015.
[102] M. A. Hearst, S. T. Dumais, E. Osuna, J. Platt, and B. Scholkopf, "Support vector machines," IEEE Intelligent Systems and their applications, vol. 13, no. 4, pp. 18-28, 1998.
[103] V. Kecman, "Support vector machines–an introduction," in Support vector machines: theory and applications: Springer, 2005, pp. 1-47.
[104] E. Nader et al., "Blood rheology: key parameters, impact on blood flow, role in sickle cell disease and effects of exercise," Frontiers in physiology, vol. 10, p. 1329, 2019.
[105] M. Bhatt, K. R. Ayyalasomayajula, and P. K. Yalavarthy, "Generalized Beer–Lambert model for near-infrared light propagation in thick biological tissues," Journal of Biomedical Optics, vol. 21, no. 7, pp. 076012-076012, 2016.
[106] I. Oshina and J. Spigulis, "Beer–Lambert law for optical tissue diagnostics: current state of the art and the main limitations," Journal of biomedical optics, vol. 26, no. 10, pp. 100901-100901, 2021.
[107] D. G. Lapitan and A. P. Tarasov, "Analytical assessment of the modulation depth of photoplethysmographic signal based on the modified Beer-Lambert law," in 2019 IEEE 8th International Conference on Advanced Optoelectronics and Lasers (CAOL), 2019: IEEE, pp. 103-106.
[108] J. T. Flynn, J. R. Ingelfinger, and R. J. Portman, Pediatric hypertension. Springer, 2013.
[109] T. K. Day, "Role of arterial pressure, wall stiffness, pulse pressure and waveform in arterial wall stress/strain and its clinical implications," 2021.
[110] D. E. Vigo, L. N. Siri, and D. P. Cardinali, "Heart rate variability: a tool to explore autonomic nervous system activity in health and disease," Psychiatry and Neuroscience Update: From Translational Research to a Humanistic Approach-Volume III, pp. 113-126, 2019.
[111] F. Wang et al., "Subdivision of heart rate variability VLF band contains prognostic value of all-cause mortality after acute myocardial infarction," Journal of Electrocardiology, vol. 45, no. 6, p. 694, 2012.
[112] T. F. o. t. E. S. o. C. t. N. A. S. o. P. Electrophysiology, "Heart rate variability: standards of measurement, physiological interpretation, and clinical use," Circulation, vol. 93, no. 5, pp. 1043-1065, 1996.
[113] T.-Y. Chiang et al., "Continuous blood pressure monitoring from an autonomic nervous system perspective," in Biophotonics in Exercise Science, Sports Medicine, Health Monitoring Technologies, and Wearables IV, 2023, vol. 12375: SPIE, p. 1237502.
[114] T. Wehrly, D. Alabed, and M. Boutin, "Labeled raw PPG signals measured using wearable sensor-kit," Purdue Univ. Res. Repository, vol. 10, 2019.
[115] Z.-Y. Luo et al., "Integrating recurrent neural network (RNN) and Navier-Stokes equations for noncontact blood pressure assessment," in Health Monitoring of Structural and Biological Systems XVIII, 2024, vol. 12951: SPIE, pp. 361-371.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/96051-
dc.description.abstract根據世界衛生組織(World Health Organization, WHO)在2023年的報告,全世界每三位成年人中就有一人罹患高血壓,其中超過一半的患者尚未被確診,增加罹患心血管疾病、心臟病或中風等併發症的風險,因此日常監測血壓是非常重要的。居家保健通常使用袖套式血壓計,在量測過程中,袖套會對量測部位施加壓力,對於嬰幼兒、年長者或皮膚有傷口的患者來說,可能會造成不便。
本研究的目標是開發一種簡易裝置,利用相機與波長為525 nm的發光二極體(Light-Emitting Diode, LED),開發光學非接觸式方法,量測橈動脈(Radial Artery)的影像式光體積描記法(Imaging Photoplethysmography, iPPG)訊號,以評估平均動脈壓(Mean Artery Pressure, MAP)。然而本系統的綠光光源在人體皮膚中的穿透深度有限,僅能得到真皮層組織的訊號,不足以深入量測到直接代表橈動脈血管體積變化量的訊號。所以本研究亦架設了採用可穿透更深組織的980 nm近紅外光光源之接觸式光體積描記法(Photoplethysmography, PPG)裝置,以得到橈動脈的PPG訊號。
本研究提出三個波形指標:時域訊號的偏度(Skewness)、頻域訊號之峰度(Kurtosis)以及主諧指標(Goodness Index),作為波形品質參數,並使用支持向量機(Support Vector Machine, SVM)模型訓練波形品質分類器,從影像中提取iPPG訊號。由於真皮層組織與橈動脈相連,本研究假設真皮層與橈動脈共享相似的生理資訊,將iPPG訊號作為訓練資料,PPG訊號作為目標訊號,使用卷積雙向長短期記憶網路(Convolutional Neural Network Bidirectional Long Short-term Memory Network, CNN-BiLSTM)模型訓練波形重建器,將代表真皮層的iPPG訊號重建為橈動脈的PPG訊號。
應用本裝置探討動脈壓模型與受試者實際數據之關係,應用納維-斯托克斯方程(Navier-Stock Equations)的推導,介紹血液動力學著名的哈根-泊肅葉流(Hagen-Poiseuille's Law),用於描述血管壓降與血流量之間的關係。使用修正型布格-比爾-朗伯定律(Modify Bouguer-Beer-Lambert Law, MBLL)推導出PPG與iPPG訊號強度與血流量之間的自然對數關係。最後從生理調節的觀點出發,結合心率變異性(Heart Rate Variability, HRV)以及正副交感神經拮抗等關係,對二十位健康受試者建立兩個時域和兩個頻率域平均動脈壓迴歸模型。分析結果顯示,頻率域模型的表現優於時域模型;正副交感神經拮抗狀態的模型優於心率變異性模型。
綜觀本研究,採用相機拍攝橈動脈,並通過機器學習提升量測訊號,結合血液動力學與生理調節的影響,完成一個低成本、非接觸式且低負擔的平均動脈壓量測裝置雛形。此裝置在減少患者不適的同時,提供了一種便捷有效的血壓監測方法。參考國際協會新型血壓計開發標準,本裝置屬於C等級。由於研究過程推論出膚色是一個重要的參數,此為未來開發成商用儀器需要先進一步考量和調整的因素。
zh_TW
dc.description.abstractAccording to a 2023 report from the World Health Organization (WHO), approximately one in three adults worldwide suffers from hypertension, with over half of these cases going undiagnosed. This significantly increases the risk of complications such as cardiovascular disease, heart attacks, and strokes. Therefore, regular blood pressure monitoring is essential. Traditional cuff-based monitors, widely used in home healthcare, may be inconvenient for infants, seniors, or patients with skin wounds as they apply pressure to the measurement site.
This study aims to develop a simple device that utilizes a camera and a 525 nm wavelength Light-Emitting Diode (LED) to create an optical non-contact method for measuring Imaging Photoplethysmography (iPPG) signals from the radial artery in order to evaluate Mean Artery Pressure (MAP). However, the green light only captures signals from the dermal layer of human skin due to its limited penetration depth, making it inadequate for directly measuring volume changes in the radial artery. Consequently, this study established a contact-based Photoplethysmography (PPG) device using a 980 nm near-infrared light, with deeper tissue penetration capabilities, to obtain the radial artery's PPG signals.
This study introduces three waveform indicators: skewness of the time-domain signal, kurtosis of the frequency-domain signal, and the Goodness Index as parameters for assessing waveform quality. A Support Vector Machine (SVM) model was employed to train a classifier for waveform quality to extract iPPG signals from images. Based on the hypothesis that the dermal layer and the radial artery share similar physiological information, iPPG signals were utilized as training data. In contrast, PPG signals were used as target signals. A Convolutional Neural Network Bidirectional Long Short-term Memory Network (CNN-BiLSTM) model was trained to reconstruct the radial artery's PPG signals from the iPPG signals of the dermal layer.
This device was applied to investigate the correlation between arterial pressure models and actual subject data. Hagen-Poiseuille's Law, derived from the Navier-Stokes Equations, explained the connection between vascular pressure drop and blood flow. Additionally, the Modified Bouguer-Beer-Lambert Law (MBLL) was utilized to establish the natural logarithmic relationship between PPG and iPPG signal intensities and blood flow.
The study established two time-domain and two frequency-domain regression models for MAP based on heart rate variability (HRV) and the antagonistic relationship between the sympathetic and parasympathetic nervous systems. The analysis revealed that frequency-domain models outperformed time-domain models and that models considering the antagonistic state of the nervous systems outperformed HRV models.
In conclusion, this study has designed an affordable, non-invasive, and user-friendly device for measuring MAP by utilizing machine learning to process images of the radial artery. Considering the effects of hemodynamics and physiological regulation, a prototype of this device has been created. In accordance with the International Association for the Development of New Blood Pressure Monitors standards, this device falls under Grade C. Given that skin color was identified as a significant factor during the research, further adjustments and considerations are necessary for its progression into a commercial instrument.
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dc.description.tableofcontents致謝 i
摘要 ii
ABSTRACT iv
目次 vi
圖次 ix
表次 xii
第1章 緒論 1
1.1 研究背景 1
1.2 文獻回顧 3
1.2.1 血壓 3
1.2.2 光體積描記法 7
1.2.3 非接觸式光體積描記法 11
1.2.4 開發新興評估血壓裝置國際標準 14
1.3 研究目的 16
1.4 論文架構 17
第2章 研究原理 19
2.1 光體積描記法(Photoplethysmography, PPG) 19
2.1.1 量測部位之選擇 19
2.1.2 PPG光源選擇 21
2.1.3 iPPG系統光源選擇 25
2.2 訊號處理介紹 26
2.2.1 經驗模態分解(Empirical Mode Decomposition) 26
2.2.2 低通濾波器(Low-Pass Filter) 28
2.2.3 正規化 29
2.2.4 偏度與峰度(Skewness and Kurtosis) 30
2.2.5 主諧指標(Goodness Index) 31
2.2.6 二維交叉相關(2D Cross Correlation) 34
2.3 支持向量機(Support Vector Machine, SVM) 35
2.4 卷積雙向長短期記憶網路(CNN-BiLSTM) 39
2.4.1 卷積類神經網路(Convolution Neural Network, CNN) 39
2.4.2 雙向長短期神經網路(Bidirectional - Long Short-term Memory Network, Bi-LSTM) 43
2.5 物理模型 45
2.5.1 血液動力學 45
2.5.2 光體積描記法強度與血流量之關係 50
2.5.3 生理調節系統與血壓關係 53
2.5.4 平均動脈壓迴歸模型 55
2.6 血壓迴歸模型分析方法 58
第3章 實驗架設及系統驗證 61
3.1 光體積描記法系統及穩定測試 61
3.2 非接觸式光體積描記法系統及穩定測試 64
第4章 實驗設計及驗證 67
4.1 實驗設計及數據蒐集 67
4.2 訊號處理 70
4.2.1 SVM波形品質分類器架設 70
4.2.2 CNN-BiLSTM模型架設 71
4.2.3 血壓迴歸模型架設 72
4.3 模型表現與分析 72
4.3.1 SVM波形品質分類器設計與分析 73
4.3.2 CNN-BiLSTM波形重建設計與分析 75
第5章 平均橈動脈壓評估及分析 82
5.1 心率分析 82
5.2 平均橈動脈壓量測結果討論 84
5.2.1 混合性別平均動脈壓迴歸模型 84
5.2.2 依性別之平均動脈壓迴歸模型 89
5.3 平均動脈壓量測結果與討論 94
5.4 團隊成果比較 95
第6章 結論與未來展望 97
6.1 結論 97
6.2 未來展望 98
參考資料 99
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dc.language.isozh_TW-
dc.title整合卷積雙向長短期記憶網路與納維-斯托克斯方程以評估橈動脈平均動脈壓zh_TW
dc.titleIntegrating CNN-BiLSTM and Navier-Stokes Equations for Radial Artery Blood Pressure Assessmenten
dc.typeThesis-
dc.date.schoolyear112-2-
dc.description.degree碩士-
dc.contributor.coadvisor吳光鐘zh_TW
dc.contributor.coadvisorKuang-Chong Wuen
dc.contributor.oralexamcommittee李翔傑;李舒昇;黃君偉;廖愷修zh_TW
dc.contributor.oralexamcommitteeHsiang-Chieh Lee;Shu-Sheng Lee;Jiun-Woei Huang;Kai-Hsiu Liaoen
dc.subject.keyword平均動脈壓,影像式光體積描記法,機器學習,非接觸式血壓計,zh_TW
dc.subject.keywordMean artery pressure,image-Photoplethysmography,Machine learning,Non-contact blood pressure monitor,en
dc.relation.page108-
dc.identifier.doi10.6342/NTU202403506-
dc.rights.note同意授權(限校園內公開)-
dc.date.accepted2024-08-12-
dc.contributor.author-college工學院-
dc.contributor.author-dept應用力學研究所-
dc.date.embargo-lift2026-08-05-
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