Abstract

With the advancement of the Internet of Medical Things technology, many vital sign-sensing devices are being developed. Among the diverse healthcare devices, portable electrocardiogram (ECG) measuring devices are being developed most actively with the recent development of sensor technology. These ECG measuring devices use different sampling rates according to the hardware conditions, which is the first variable to consider in the development of ECG analysis technology. Herein, we propose an R-point detection method using an adaptive median filter based on the sampling rate and analyze major arrhythmias using the signal characteristics. First, the sliding window and median filter size are determined according to the set sampling rate, and a wider median filter is applied to the QRS section with high variance within the sliding window. Then, the R point is detected by subtracting the filtered signal from the original signal. Methods for detecting major arrhythmias using the detected R point are proposed. Different types of ECG signals were used for a simulation, including ECG signals from the MIT-BIH arrhythmia database and MIT-BIH atrial fibrillation database, signals generated by a simulator, and actual measured signals with different sampling rates. The experimental results indicated the effectiveness of the proposed R-point detection method and arrhythmia analysis technique.

Highlights

  • The development of wearable medical devices has accelerated with the advancement of sensor technology

  • This paper proposes an R-point detection method using an adaptive median filter in which the sliding window and filter size are automatically adjusted according to the sampling rate of the measuring device

  • atrial fibrillation (AF) detection proposed in this paper proposed in this and visualize the severity of theECG

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Summary

Introduction

The development of wearable medical devices has accelerated with the advancement of sensor technology. Among the various biometric parameters, the electrocardiogram (ECG) is the most important biosignal. Diverse wearable and portable ECG devices have been commercialized. Biopatch is a wearable ambulatory cardiac monitoring device with a single lead and a sampling rate of 256 samples/s [1]. KardiaMobile from AliveCor is a finger-contact mini ECG measurement tool with a sampling rate of 300 samples/s [2]. The recently developed TLC5000 made by Contect is a 12-lead ECG system with a sampling rate of 10,000 samples/s [3].

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