Machine learning-reinforced noninvasive biosensors for healthcare
The emergence and development of noninvasive biosensors largely facilitate the collection of physiological signals and the processing of health-related data. The utilization of appropriate machine learning algorithms improves the accuracy and efficiency of biosensors. Machine learning-reinforced bio...
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sg-ntu-dr.10356-1563842023-07-14T16:05:44Z Machine learning-reinforced noninvasive biosensors for healthcare Zhang, Kaiyi Wang, Jianwu Liu, Tianyi Luo, Yifei Loh, Xian Jun Chen, Xiaodong School of Materials Science and Engineering Institute of Materials Research and Engineering, A*STAR Innovative Centre for Flexible Devices Max Planck-NTU Joint Lab for Artificial Senses Engineering::Materials Clinical Practice Data Processing The emergence and development of noninvasive biosensors largely facilitate the collection of physiological signals and the processing of health-related data. The utilization of appropriate machine learning algorithms improves the accuracy and efficiency of biosensors. Machine learning-reinforced biosensors are started to use in clinical practice, health monitoring, and food safety, bringing a digital revolution in healthcare. Herein, the recent advances in machine learning-reinforced noninvasive biosensors applied in healthcare are summarized. First, different types of noninvasive biosensors and physiological signals collected are categorized and summarized. Then machine learning algorithms adopted in subsequent data processing are introduced and their practical applications in biosensors are reviewed. Finally, the challenges faced by machine learning-reinforced biosensors are raised, including data privacy and adaptive learning capability, and their prospects in real-time monitoring, out-of-clinic diagnosis, and onsite food safety detection are proposed. Agency for Science, Technology and Research (A*STAR) Ministry of Education (MOE) National Research Foundation (NRF) Submitted/Accepted version The authors thank the financial support from the Agency for Science,Technology and Research (A*STAR) under its AME Programmatic Fund-ing Scheme (project no. A18A1b0045), the National Research Foundation(NRF), Prime Minister’s Office, Singapore, under its NRF Investigatorship(NRF-NRFI2017-07), and Singapore Ministry of Education (MOE2019-T2-2-022). 2022-04-19T04:15:25Z 2022-04-19T04:15:25Z 2021 Journal Article Zhang, K., Wang, J., Liu, T., Luo, Y., Loh, X. J. & Chen, X. (2021). Machine learning-reinforced noninvasive biosensors for healthcare. Advanced Healthcare Materials, 10(17), 2100734-. https://dx.doi.org/10.1002/adhm.202100734 2192-2640 https://hdl.handle.net/10356/156384 10.1002/adhm.202100734 34165240 2-s2.0-85108610400 17 10 2100734 en A18A1b0045 NRF-NRFI2017-07 MOE2019-T2-2-022 Advanced Healthcare Materials This is the peer reviewed version of the following article: Zhang, K., Wang, J., Liu, T., Luo, Y., Loh, X. J. & Chen, X. (2021). Machine learning-reinforced noninvasive biosensors for healthcare. Advanced Healthcare Materials, 10(17), 2100734-, which has been published in final form at https://doi.org/10.1002/adhm.202100734. This article may be used for non-commercial purposes in accordance with Wiley Terms and Conditions for Use of Self-Archived Versions. application/pdf |
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Engineering::Materials Clinical Practice Data Processing Zhang, Kaiyi Wang, Jianwu Liu, Tianyi Luo, Yifei Loh, Xian Jun Chen, Xiaodong Machine learning-reinforced noninvasive biosensors for healthcare |
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The emergence and development of noninvasive biosensors largely facilitate the collection of physiological signals and the processing of health-related data. The utilization of appropriate machine learning algorithms improves the accuracy and efficiency of biosensors. Machine learning-reinforced biosensors are started to use in clinical practice, health monitoring, and food safety, bringing a digital revolution in healthcare. Herein, the recent advances in machine learning-reinforced noninvasive biosensors applied in healthcare are summarized. First, different types of noninvasive biosensors and physiological signals collected are categorized and summarized. Then machine learning algorithms adopted in subsequent data processing are introduced and their practical applications in biosensors are reviewed. Finally, the challenges faced by machine learning-reinforced biosensors are raised, including data privacy and adaptive learning capability, and their prospects in real-time monitoring, out-of-clinic diagnosis, and onsite food safety detection are proposed. |
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School of Materials Science and Engineering |
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School of Materials Science and Engineering Zhang, Kaiyi Wang, Jianwu Liu, Tianyi Luo, Yifei Loh, Xian Jun Chen, Xiaodong |
format |
Article |
author |
Zhang, Kaiyi Wang, Jianwu Liu, Tianyi Luo, Yifei Loh, Xian Jun Chen, Xiaodong |
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Zhang, Kaiyi |
title |
Machine learning-reinforced noninvasive biosensors for healthcare |
title_short |
Machine learning-reinforced noninvasive biosensors for healthcare |
title_full |
Machine learning-reinforced noninvasive biosensors for healthcare |
title_fullStr |
Machine learning-reinforced noninvasive biosensors for healthcare |
title_full_unstemmed |
Machine learning-reinforced noninvasive biosensors for healthcare |
title_sort |
machine learning-reinforced noninvasive biosensors for healthcare |
publishDate |
2022 |
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https://hdl.handle.net/10356/156384 |
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1773551240296267776 |