Flexible Weaving Constructed Self‐Powered Pressure Sensor Enabling Continuous Diagnosis of Cardiovascular Disease and Measurement of Cuffless Blood Pressure

Keyu Meng(Chongqing University), Jun Chen(Georgia Institute of Technology), Xiaoshi Li(Chongqing University), Yufen Wu(Chongqing Normal University), Wenjing Fan(Chongqing University), Zhihao Zhou(Chongqing University), Qiang He(Chongqing University), Xue Wang(Chongqing University), Xing Fan(Chongqing University), Yuxin Zhang(Chongqing University), Jin Yang(Chongqing University), Zhong Lin Wang(Georgia Institute of Technology)
Advanced Functional Materials
December 12, 2018
Cited by 406

Abstract

Abstract Pulse wave carries comprehensive information regarding the human cardiovascular system (CS), which is essential for directly capturing CS parameters. More importantly, cuffless blood pressure (BP) is one of the most critical markers in CS. Accurately measuring BP via the pulse wave for continuous and noninvasive diagnosis of a disease associated with hypertension remains a challenge and highly desirable. Here, a flexible weaving constructed self‐powered pressure sensor (WCSPS) is reported for measurement of the pulse wave and BP in a noninvasive manner. The WCSPS holds an ultrasensitivity of 45.7 mV Pa −1 with an ultrafast response time of less than 5 ms, and no performance degradation is observed after up to 40 000 motion cycles. Furthermore, a low power consumption sensor system is developed for precisely monitoring pulse wave from the fingertip, wrist, ear, and ankles. A practical measurement is performed with 100 people with ages spanning from 24 to 82 years and different health statuses. The discrepancy between the measured BP results using the WCSPS and that provided by the commercial cuff‐based device is about 0.87–3.65%. This work demonstrates an efficient and cost‐effective way for human health monitoring, which would be a competitive alternative to current complex cardiovascular monitoring systems.


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