Wearable ECG: History, Key Technologies and Future Challenges
Liu Chengyu1#*, Yang Meicheng1, Di Jianan1, Xing Yantao1, Li Yuwen1, Li Jianqing1,2
1(State Key Laboratory of Bioelectronics, School of Instrument Science and Engineering, Southeast University, Nanjing 210096, China) 2(School of Biomedical Engineering and Informatics, Nanjing Medical University, Nanjing 211166, China)
Abstract:With the rapid development of Internet of things (IoT), big data, cloud computing, artificial intelligence (AI) and other advanced technologies, dynamic ECG monitoring has made remarkable progress towards the direction of wearable, intelligent and convenient in recent years. Wearable ECG device can facilitate the individualized, real-time, long-term and continuous monitoring of ECG data, providing an important carrier and technical means for the new mode of smart healthcare. This paper firstly summarized the basic concept and development history of wearable ECG, and then reviewed the related key technologies and typical wearable ECG devices. Finally, the perspectives and challenges of wearable ECG are analyzed.
刘澄玉, 杨美程, 邸佳楠, 邢彦涛, 李钰雯, 李建清. 穿戴式心电:发展历程、核心技术与未来挑战[J]. 中国生物医学工程学报, 2019, 38(6): 641-652.
Liu Chengyu, Yang Meicheng, Di Jianan, Xing Yantao, Li Yuwen, Li Jianqing. Wearable ECG: History, Key Technologies and Future Challenges. Chinese Journal of Biomedical Engineering, 2019, 38(6): 641-652.
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