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Transient ST-segment episode detection for ECG beat classification

机译:短暂性ST段发作检测用于心电图心跳分类

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Sudden Cardiac Death (SCD) is an unexpected death caused by loss of heart function when the electrical impulses fired from the ventricles become irregular. Most common SCDs are caused by cardiac arrhythmias and coronary heart disease. They are mainly due to Acute Myocardial Infarction (AMI), myocardial ischaemia and cardiac arrhythmia. This paper aims at automating the recognition of ST-segment deviations and transient ST episodes which helps in the diagnosis of myocardial ischaemia and also classifying major cardiac arrhythmia. Our approach is based on the application of signal processing and artificial intelligence to the heart signal known as the ECG (Electrocardiogram). We propose an improved morphological feature vector including ST-segment information for heart beat classification by supervised learning using the support vector machine approach. Our system has been tested and yielded an accuracy of 93.33% for the ST episode detection on the European ST-T Database and 96.35% on MIT-BIH Arrhythmia Database for classifying six major groups, i.e. Normal, Ventricular, Atrial, Fusion, Right Bundle and Left Bundle Branch Block beats.
机译:当从心室发射的电脉冲变得不规则时,心源性猝死(SCD)是由心功能丧失引起的意外死亡。最常见的SCD是由心律不齐和冠心病引起的。它们主要是由于急性心肌梗塞(AMI),心肌缺血和心律不齐所致。本文旨在自动识别ST段偏差和短暂性ST发作,这有助于诊断心肌缺血并分类主要的心律不齐。我们的方法基于将信号处理和人工智能应用于称为ECG(心电图)的心脏信号。我们提出了一种改进的形态特征向量,其中包括用于通过使用支持向量机方法的监督学习进行心跳分类的ST段信息。我们的系统已经过测试,在欧洲ST-T数据库中对ST发作检测的准确性为93.33%,在MIT-BIH心律失常数据库上对9个主要类别进行分类的准确性为96.35%,即正常,心室,心房,融合,右束和左束支座节拍。

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