离散小波变换在心电特征提取与分类中的应用

Swati Banerjee, M. Mitra
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引用次数: 30

摘要

本文提出了一种基于离散小波变换(DWT)的十二导联心电图特征提取方法。该方法的第一步是利用小波变换技术对信号进行降噪。多分辨率方法和阈值法用于检测每次心跳的R -峰。然后,检测其他基点(Q和S),并确定QRS起始点和偏移点。检测基线,计算R、Q、S波高度。该算法使用PTB诊断数据库进行验证,灵敏度为99.6%,MITDB心律失常的灵敏度为99.8%。计算了正常人和房间隔心肌梗死患者的QRS载体,并进行了比较研究。因此,我们发现通过计算QRS向量可以对法向和AS MI进行分类。并为此建立了一个简单的分类规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECG feature extraction and classification of anteroseptal myocardial infarction and normal subjects using discrete wavelet transform
In this paper, a novel methodology, based on discrete wavelet transform (DWT) is developed for extraction of characteristic features from twelve - lead Electrocardiogram recordings. The first step of this method is to denoise the signal using DWT technique. A multiresolution approach along with thresholding is used for the detection of R - Peaks in each cardiac beats. Followed, by this other fiducial points (Q and S) are detected and QRS onset and offset points are identified. Baseline is also detected and heights of R, Q, S waves are calculated. This, algorithm was validated using PTB diagnostic database giving a sensitivity of 99.6% and MITDB Arrhythmia, giving a sensitivity of 99.8%. The QRS vectors are calculated for normal and patients with Anteroseptal MI and a comparative study is presented. Accordingly, it has been found that classification of normal and AS MI is possible by computing the QRS vector. And a simple classification rule is established for this purpose.
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