Respiratory Rate Estimation by Using ECG, Impedance, and Motion Sensing in Smart Clothing
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Published:2017-07-01
Issue:6
Volume:37
Page:826-842
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ISSN:1609-0985
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Container-title:Journal of Medical and Biological Engineering
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language:en
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Short-container-title:J. Med. Biol. Eng.
Author:
Shen Chien-Lung,Huang Tzu-Hao,Hsu Po-Chun,Ko Ya-Chi,Chen Fen-Ling,Wang Wei-Chun,Kao Tsair,Chan Chia-Tai
Abstract
Abstract
The needs for light-weight and soft smart clothing in homecare have been rising since the past decade. Many smart textile sensors have been developed and applied to automatic physiological and user-centered environmental status recognition. In the present study, we propose wearable multi-sensor smart clothing for homecare monitoring based on an economic fabric electrode with high elasticity and low resistance. The wearable smart clothing integrated with heterogeneous sensors is capable to measure multiple human biosignals (ECG and respiration), acceleration, and gyro information. Five independent respiratory signals (electric impedance plethysmography, respiratory induced frequency variation, respiratory induced amplitude variation, respiratory induced intensity variation, and respiratory induced movement variation) are obtained. The smart clothing can provide accurate respiratory rate estimation by using three different techniques (Naïve Bayes inference, static Kalman filter, and dynamic Kalman filter). During the static sitting experiments, respiratory induced frequency variation has the best performance; whereas during the running experiments, respiratory induced amplitude variation has the best performance. The Naïve Bayes inference and dynamic Kalman filter have shown good results. The novel smart clothing is soft, elastic, and washable and it is suitable for long-term monitoring in homecare medical service and healthcare industry.
Funder
Ministry of Economy Affairs of the R.O.C.
Publisher
Springer Science and Business Media LLC
Subject
Biomedical Engineering,General Medicine
Reference36 articles.
1. Wang, W. D., Zhang, Z. B., Shen, Y. H., Wang, B. Q., & Zheng, J. W. (2011). Design and implementation of sensing shirt for ambulatory cardiopulmonary monitoring. Journal of Medical and Biological Engineering, 31(3), 207–215. 2. Okada, Y., Yoto, T. Y., Suzuki, T.-A., Sakuragawa, S., Sakakibara, H., Shimoi, K., et al. (2013). Wearable ECG recorder with acceleration sensors for monitoring daily stress. Journal of Medical and Biological Engineering, 33(4), 420–426. 3. Weng, J., Guo, X.-M., Chen, L.-S., Yuan, Z.-H., Ding, X.-R., & Lei, M. (2013). Study on real-time monitoring technique for cardiac arrhythmia based on smartphone. Journal of Medical and Biological Engineering, 33(4), 394–399. 4. Stoppa, M., & Chiolerio, A. (2014). Wearable electronics and smart textiles: A critical review. Sensors, 14(7), 11957–11992. 5. Axisa, F., Schmitt, P. M., Gehin, C., Delhomme, G., McAdams, E., & Dittmar, A. (2005). Flexible technologies and smart clothing for citizen medicine, home healthcare, and disease prevention. IEEE Transactions on Information Technology in Biomedicine, 9(3), 325–336. doi:
10.1109/titb.2005.854505
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