基于机器学习的心电图房颤检测决策支持系统

Shrikanth Rao S K, R. J. Martis
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引用次数: 3

摘要

心房颤动(AF)是临床上常见的持续性心律失常。为了诊断房颤,心电图(ECG)与临床症状的相关性。心电图是一种无创、低成本的心房颤动诊断方法。心电图的复杂性及其与其他生理参数的相互关系使得心房颤动检测在临床实践中具有挑战性。由医生手动诊断房颤的传统做法可能会导致医生内部的变化,从而需要基于自动算法的辅助系统来检测房颤。在目前的方法中,检测QRS复核并分割整个信号中的每个节拍,计算给定信号的中位数节拍,利用主成分分析(PCA)对其进行降维,并利用决策树对所得分量和能量值进行分类。该方法提供了85.1%的平均精度,这是相当高的。所开发的系统可用于许多实际应用,并可在临床实施中提供可接受的结果。开发的方法可以作为辅助工具,由医生在他的临床实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Decision Support System for Atrial Fibrillation Detection using Electrocardiogram
Atrial Fibrillation (AF) is a common sustained arrhythmia encountered in regular clinical practice. In order to diagnose AF, Electrocardiogram (ECG) is used in correlation with clinical symptoms. ECG is noninvasive and cost effective modality in order to diagnose cardiac abnormalities using AF. The complexity of ECG and its interrelationship with other physiological parameters make the AF detection a challenging task in the clinical practice. The traditional practice of diagnosing AF manually by the physician can cause intra physician variability leading to a need for automated algorithm based assisting system to detect AF. In the present methodology, the QRS complex is detected and each beat in the entire signal is segmented, the median beat is calculated for a given signal, the dimensionality is reduced using Principal Component Analysis (PCA) and the resultant components along with energy values are used for classification using decision tree. The methodology provided an improved average accuracy of 85.1 percent which is reasonably high. The system developed can be used in many practical applications and can provide acceptable results in clinical implementations. The developed methodology can be used as an adjunct tool by the physician in his clinical practice.
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