论文标题

迈向心脏人群的个性化医疗保健:可穿戴心电图监测系统的开发,ECG损耗的压缩模式和基于重新连接的A​​F检测器

Towards Personalized Healthcare in Cardiac Population: The Development of a Wearable ECG Monitoring System, an ECG Lossy Compression Schema, and a ResNet-Based AF Detector

论文作者

Yi, Wei-Ying, Liu, Peng-Fei, Lo, Sheung-Lai, Chan, Ya-Fen, Zhou, Yu, Leung, Yee, Woo, Kam-Sang, Lee, Alex Pui-Wai, Chen, Jia-Min, Leung, Kwong-Sak

论文摘要

心血管疾病(CVD)是全球死亡的第一大原因。尽管有越来越多的证据表明心房颤动(AF)与各种CVD有着密切的关联,但这种心律失常通常是使用心电图(ECG)诊断出来的,这是一种无风险,无风险,不受欢迎和具有成本效益的工具。在开发任何危及生命的疾病/疾病之前,不断和远程监视受试者的心电图信息迅速诊断和及时对AF进行预处理的潜力。最终,可以降低CVD相关的死亡率。在此手稿中,介绍了一个个性化的医疗保健系统的设计和实现,该系统体现了可穿戴的ECG设备,移动应用程序和后端服务器。该系统不断监视用户的心电图信息,以提供个性化的健康警告/反馈。用户能够通过该系统与他们的配对健康顾问进行远程诊断,干预措施等。已经评估了实施的可穿戴的ECG设备,并显示出极好的一致性(CVRMS = 5.5%),可接受的一致性(CVRMS = 12.1%),以及可忽略的RR Interval Errors(<1.4%)。为了提高可穿戴设备的电池寿命,提出了使用ECG信号的准周期特征实现压缩的有损压缩模式。与公认的模式相比,它在压缩效率和失真方面优于其他模式,并在MIT-BIH数据库中以ECG信号的某个PRD或RMSE达到了至少2倍Cr。为了在拟议系统中实现自动化AF诊断/筛查,开发了基于重新连接的A​​F检测器。对于2017年Physionet CINC挑战的ECG记录,该AF检测器获得了平均测试F1 = 85.10%和最佳测试F1 = 87.31%,表现优于最先进。

Cardiovascular diseases (CVDs) are the number one cause of death worldwide. While there is growing evidence that the atrial fibrillation (AF) has strong associations with various CVDs, this heart arrhythmia is usually diagnosed using electrocardiography (ECG) which is a risk-free, non-intrusive, and cost-efficient tool. Continuously and remotely monitoring the subjects' ECG information unlocks the potentials of prompt pre-diagnosis and timely pre-treatment of AF before the development of any life-threatening conditions/diseases. Ultimately, the CVDs associated mortality could be reduced. In this manuscript, the design and implementation of a personalized healthcare system embodying a wearable ECG device, a mobile application, and a back-end server are presented. This system continuously monitors the users' ECG information to provide personalized health warnings/feedbacks. The users are able to communicate with their paired health advisors through this system for remote diagnoses, interventions, etc. The implemented wearable ECG devices have been evaluated and showed excellent intra-consistency (CVRMS=5.5%), acceptable inter-consistency (CVRMS=12.1%), and negligible RR-interval errors (ARE<1.4%). To boost the battery life of the wearable devices, a lossy compression schema utilizing the quasi-periodic feature of ECG signals to achieve compression was proposed. Compared to the recognized schemata, it outperformed the others in terms of compression efficiency and distortion, and achieved at least 2x of CR at a certain PRD or RMSE for ECG signals from the MIT-BIH database. To enable automated AF diagnosis/screening in the proposed system, a ResNet-based AF detector was developed. For the ECG records from the 2017 PhysioNet CinC challenge, this AF detector obtained an average testing F1=85.10% and a best testing F1=87.31%, outperforming the state-of-the-art.

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