Monitoring blood pressure and cardiac function without positioning via a deep learning–assisted strain sensor array

Author:

Li Shuo1ORCID,Wang Haomin1,Ma Wei2ORCID,Qiu Lin2,Xia Kailun1,Zhang Yong1,Lu Haojie1,Zhu Mengjia1,Liang Xiaoping1,Wu Xun-En1,Liang Huarun1,Zhang Yingying1ORCID

Affiliation:

1. Key Laboratory of Organic Optoelectronics and Molecular Engineering of the Ministry of Education, Department of Chemistry, Tsinghua University, Beijing 100084, PR China.

2. Department of Cardiovascular Disease, Peking University First Hospital, Beijing 100084, PR China.

Abstract

Continuous and reliable monitoring of blood pressure and cardiac function is of great importance for diagnosing and preventing cardiovascular diseases. However, existing cardiovascular monitoring approaches are bulky and costly, limiting their wide applications for early diagnosis. Here, we developed an intelligent blood pressure and cardiac function monitoring system based on a conformal and flexible strain sensor array and deep learning neural networks. The sensor has a variety of advantages, including high sensitivity, high linearity, fast response and recovery, and high isotropy. Experiments and simulation synergistically verified that the sensor array can acquire high-precise and feature-rich pulse waves from the wrist without precise positioning. By combining high-quality pulse waves with a well-trained deep learning model, we can monitor blood pressure and cardiac function parameters. As a proof of concept, we further constructed an intelligent wearable system for real-time and long-term monitoring of blood pressure and cardiac function, which may contribute to personalized health management, precise and early diagnosis, and remote treatment.

Publisher

American Association for the Advancement of Science (AAAS)

Subject

Multidisciplinary

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