Abstract

In order to detect Electrocardiograph (E.C.G.) signals in people's daily life accurately, in this study, a wearable real-time dynamic E.C.G. signal detection system based on the Internet of things technology was designed and implemented. Under the STM32 WeChat processor, a flexible fabric was used as the base of the sensor. It can process the collected E.C.G. signal through amplification and filtering of signal conditioning module, so as to satisfy the conversion of A/D. The E.C.G. signal acquisition front end and other hardware and software were designed based on AD8232 chip. And then an adaptive filter was designed based on standardized LMS algorithm (N.L.M.S.). E.C.G. signal in MIT-BIH database was used to detect the accuracy of R wave detection. In order to detect the restraining effect of baseline drift and motion artifact in E.C.G. after filtering, the accuracy of R wave detection in different movements of healthy personnel was tested. The results showed that after using the N.L.M.S. algorithm's adaptive filter to detect E.C.G. signals in MIT-BIH database, the accuracy (De%), sensitivity (Se%), and specificity (Sp%) calculated by the R-wave were all above 99%. It was then worn on the experimenter's chest and the E.C.G. signals were detected while experimenters sat still. It is found that it can restrain baseline drift in E.C.G. signal acquisition. In addition, when the experimenter did static standing, walking slowly, squatting and chest expansion, the detection rate of R wave was above 95%. Therefore, the designed system can monitor E.C.G. signals quickly and accurately.

Highlights

  • Cardiovascular diseases are common diseases of the blood circulation system, with high mortality

  • Biswas et al compared the effectiveness of adaptive filter based on LMS and N.L.M.S. in removing noise in E.C.G. signals, and the results showed that adaptive N.L.M.S. filter is an excellent E.C.G. signal denoising method [9]

  • In this study, a wearable E.C.G. signal monitoring system was built based on STM32 by taking a fabric electrode with good toughness as the sensor carrier, and a signal adjustment module including signal acquisition, amplification, and filtering was designed

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Summary

Introduction

Cardiovascular diseases are common diseases of the blood circulation system, with high mortality. With the rapid development of electronic information media and Internet of things technology, the world has entered the information age. The emergence of mobile medicine shows that it is possible to use personal wireless LAN to realize telemedicine in mobile state [1]. The research and application of wearable computing devices have become a hot topic. The most typical application of wearable computing is health and medical monitoring and daily movement monitoring of the elderly, which is a more miniaturized and more user-friendly technology for monitoring.

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