Feature Extraction of ECG Signals using NI LabVIEW Biomedical Workbench and Classification with Artificial Neural Network

Ebru Sayilgan, Savaş Şahin
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Abstract

In this study, a data set containing normal and different heart beat types recorded by the Massachusetts Institute of Technology-Beth Israel Hospital (MIT-BIH) was used for the detection of cardiac dysfunctions. In this data set, features were extracted using the LabVIEW Biomedical Workbench from the normal heartbeat and six different arrhythmia types. Obtained signals were evaluated by using Artificial Neural Network multiple classification method. Classification performances were compared before extracting the feature on the same data set. Classifier performances were evaluated by accuracy, sensitivity and selectivity performances criteria of classification. In the classifier performances, the "Normal" beat rate was found to be 99% accurate with the highest success compared to other arrhythmia types. As a result, both analysis methods are successful, but when the LabVIEW Biomedical Workbench is used, the classification results have achieved higher success.
基于NI LabVIEW生物医学工作台的心电信号特征提取及人工神经网络分类
在本研究中,使用麻省理工学院-贝斯以色列医院(MIT-BIH)记录的包含正常和不同心跳类型的数据集来检测心功能障碍。在该数据集中,使用LabVIEW生物医学工作台从正常心跳和六种不同类型的心律失常中提取特征。利用人工神经网络多重分类方法对获取的信号进行评价。在同一数据集上提取特征之前,比较分类性能。通过分类的准确性、灵敏度和选择性等性能指标来评价分类器的性能。在分类器性能中,与其他心律失常类型相比,发现“正常”心跳率准确率为99%,成功率最高。因此,两种分析方法都是成功的,但当使用LabVIEW Biomedical Workbench时,分类结果取得了更高的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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