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机器学习辅助的用于健康监测的柔性电子器件。

Soft Electronics for Health Monitoring Assisted by Machine Learning.

作者信息

Qiao Yancong, Luo Jinan, Cui Tianrui, Liu Haidong, Tang Hao, Zeng Yingfen, Liu Chang, Li Yuanfang, Jian Jinming, Wu Jingzhi, Tian He, Yang Yi, Ren Tian-Ling, Zhou Jianhua

机构信息

School of Biomedical Engineering, Shenzhen Campus of Sun Yat-sen University, No. 66, Gongchang Road, Guangming District, Shenzhen, 518107, People's Republic of China.

Key Laboratory of Sensing Technology and Biomedical Instruments of Guangdong Province, School of Biomedical Engineering, Sun Yat-sen University, Guangzhou, 510275, People's Republic of China.

出版信息

Nanomicro Lett. 2023 Mar 15;15(1):66. doi: 10.1007/s40820-023-01029-1.

Abstract

Due to the development of the novel materials, the past two decades have witnessed the rapid advances of soft electronics. The soft electronics have huge potential in the physical sign monitoring and health care. One of the important advantages of soft electronics is forming good interface with skin, which can increase the user scale and improve the signal quality. Therefore, it is easy to build the specific dataset, which is important to improve the performance of machine learning algorithm. At the same time, with the assistance of machine learning algorithm, the soft electronics have become more and more intelligent to realize real-time analysis and diagnosis. The soft electronics and machining learning algorithms complement each other very well. It is indubitable that the soft electronics will bring us to a healthier and more intelligent world in the near future. Therefore, in this review, we will give a careful introduction about the new soft material, physiological signal detected by soft devices, and the soft devices assisted by machine learning algorithm. Some soft materials will be discussed such as two-dimensional material, carbon nanotube, nanowire, nanomesh, and hydrogel. Then, soft sensors will be discussed according to the physiological signal types (pulse, respiration, human motion, intraocular pressure, phonation, etc.). After that, the soft electronics assisted by various algorithms will be reviewed, including some classical algorithms and powerful neural network algorithms. Especially, the soft device assisted by neural network will be introduced carefully. Finally, the outlook, challenge, and conclusion of soft system powered by machine learning algorithm will be discussed.

摘要

由于新型材料的发展,在过去二十年中,柔性电子技术取得了飞速进展。柔性电子技术在体征监测和医疗保健方面具有巨大潜力。柔性电子技术的一个重要优势是能与皮肤形成良好的界面,这可以扩大用户群体规模并提高信号质量。因此,构建特定数据集很容易,这对于提高机器学习算法的性能非常重要。同时,在机器学习算法的辅助下,柔性电子技术变得越来越智能,能够实现实时分析和诊断。柔性电子技术与机器学习算法相得益彰。毫无疑问,在不久的将来,柔性电子技术将引领我们进入一个更健康、更智能的世界。因此,在本综述中,我们将详细介绍新型柔性材料、柔性器件检测的生理信号以及机器学习算法辅助的柔性器件。将讨论一些柔性材料,如二维材料、碳纳米管、纳米线、纳米网和水凝胶。然后,将根据生理信号类型(脉搏、呼吸、人体运动、眼压、发声等)讨论柔性传感器。之后,将综述各种算法辅助的柔性电子技术,包括一些经典算法和强大的神经网络算法。特别地,将详细介绍神经网络辅助的柔性器件。最后,将讨论由机器学习算法驱动的柔性系统的前景、挑战和结论。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/273e/10014647/9d274f1237f7/40820_2023_1029_Fig1_HTML.jpg

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