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Classifying Normal Sinus Rhythm and Cardiac Arrhythmias in ECG Signals Using Statistical Features in Temporal Domain

机译:使用时域统计特征对心电图信号中的正常窦性心律和心律失常进行分类

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Any morphological abnormality or atypical group of conditions in a cardiac rhythm indicates a typical class of arrhythmias. ECG plays a vital role in diagnosis of many such cardiac disorders. Some arrhythmias including ventricular fibrillation and premature ventricular contraction can be fatal if not dealt on time. Clinical analysis of ECGs by physicians may result into an inaccurate as well as a time-consuming analysis of a critically serious arrhythmia patient mostly involving measuring the ECG statistics from calipers. Considering the importance of morphological shapes and statistics of ECG signals in arrhythmia diagnosis, these features are input to a dedicated system which act as key markers to categorize various arrhythmias automatically. This paper highlights the development of an algorithm for classifying 15 different cardiac arrhythmias using a novel statistical feature set of ECG signals in time domain. Rhythm annotations from the bench mark MIT-BIH Cardiac Arrhythmia database have been used to organize the data as rhythms. The proposed method has been simulated and tested in MATLAB and results have been discussed in detail.
机译:心律不齐的任何形态异常或非典型组情况都代表典型的心律失常。心电图在许多此类心脏疾病的诊断中起着至关重要的作用。如果不及时处理,一些心律不齐包括心室纤颤和心室过早收缩可能是致命的。医师对ECG的临床分析可能导致对重度严重心律失常患者的分析不准确且耗时,主要涉及通过卡尺测量ECG统计数据。考虑到心电图信号的形态形态和统计数据在心律失常诊断中的重要性,这些功能被输入到专用系统中,该系统充当关键标记以自动对各种心律失常进行分类。本文重点介绍了一种使用时域上新颖的ECG信号统计特征集对15种不同的心律不齐进行分类的算法的开发。基准MIT-BIH心律失常数据库中的节奏注释已用于将数据组织为节奏。所提出的方法已在MATLAB中进行了仿真和测试,并对结果进行了详细讨论。

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