Abstract

Electrocardiogram signal analysis is based on detecting a fiducial point consisting of the onset, offset, and peak of each waveform. The accurate diagnosis of arrhythmias depends on the accuracy of fiducial point detection. Detecting the onset and offset fiducial points is ambiguous because the feature values are similar to those of the surrounding sample. To improve the accuracy of this paper’s fiducial point detection, the signal is represented by a small number of vertices through a curvature-based vertex selection technique using polygonal approximation. The proposed method minimizes the number of candidate samples for fiducial point detection and emphasizes these sample’s feature values to enable reliable detection. It is also sensitive to the morphological changes of various QRS complexes by generating an accumulated signal of the amplitude change rate between vertices as an auxiliary signal. To verify the superiority of the proposed algorithm, error distribution is measured through comparison with the QT-DB annotation provided by Physionet. The mean and standard deviation of the onset and the offset were stable as ms and ms, respectively. The results show that proposed method using small number of vertices is acceptable in practical applications. We also confirmed that the proposed method is effective through the clustering of the QRS complex. Experiments on the arrhythmia data of MIT-BIH ADB confirmed reliable fiducial point detection results for various types of QRS complexes.

Highlights

  • Electrocardiogram (ECG) signals are electronically converted signals from the depolarization and repolarization of the atria and ventricle [1]

  • Signal analysis to diagnose arrhythmia has been widely used to recognize the deformation of the signal and analyze the feature value when arrhythmia occurs [4], and it is used for monitoring such as mental stress [5] and fear [6]

  • The signal analysis system can be divided into the noise removal step [7], fiducial point detection step [8,9,10], and feature value acquisition and arrhythmia classification step [11,12,13]

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Summary

Introduction

Electrocardiogram (ECG) signals are electronically converted signals from the depolarization and repolarization of the atria and ventricle [1]. Accurate detection methods of the fiducial points of the QRS complex other than the R-peak have been not clearly determined. Their low detection rate and inaccuracy are problematic due to signal deformation caused by various arrhythmias. We propose a curvature-based vertex selection technique to solve the ambiguity of the fiducial points in the QRS complex. The second stage is an incremental vertex selection using repetitive sequential polygonal approximation, and the third stage performs an additional vertex optimization step using dynamic programming These steps are applied for a missing case due to ambiguous curvature value.

Composition of ECG Signal
Polygonal Approximation of ECG Signal
Fiducial Point Detection Based on Polygonal Approximation
Generate the Cumulative Signal
Algorithm of Fiducial Point Detection
Amplitude Difference between R-Peak and Vertex
Time Difference between Reference Point and Vertex
Angles with Neighbor Vertices
Detecting the Fiducial Point
Experiment and Analysis of Results
Experiment in QT-DB
Method
Experiment in MIT-BIH ADB
Conclusions
Full Text
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