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Automated feature extraction of ECG signal by position-index searching method

机译:利用位置索引搜索方法自动提取心电信号特征

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An automated ECG signal analysis is a progressively growing field to the researchers in recent years as it contains several features in itself which are clinically important to diagnose different cardiovascular diseases. This paper introduces a simple but reliable algorithm for automatic detection of different features in an ECG signal by position-indices searching method (PISM). In the first step, the digitized ECG signals is denoised by moving average method. A differential threshold value is adopted to detect the indices of the positions of the R-peaks of the signal. Then by omitting the baseline wandering, the amplitudes of R-peaks are detected. In each cycle of normal ECG, all the features in ECG signal, namely P, Q, S & T-peaks, have their own amplitudes and positions with respect to their corresponding R-peak positions. In next step by taking the R-peak as pivot point, the amplitudes and position-indices of these features are detected by PISM. This algorithm is tested on a number of normal ECG records from PTB Database of variant ages and sex. The suggested algorithm shows very high sensitivity and positive predictivity.
机译:近年来,自动ECG信号分析对研究人员来说是一个日益发展的领域,因为它本身具有一些功能,这些功能对于诊断不同的心血管疾病具有重要的临床意义。本文介绍了一种简单但可靠的算法,该算法可通过位置索引搜索方法(PISM)自动检测ECG信号中的不同特征。第一步,通过移动平均法对数字化的ECG信号进行消噪。采用差分阈值来检测信号的R峰值的位置的指标。然后,通过省略基线漂移,可以检测R峰的幅度。在正常ECG的每个周期中,ECG信号中的所有特征(即P,Q,S和T峰)相对于其相应的R峰位置都有自己的幅度和位置。在下一步中,以R峰为支点,通过PISM检测这些特征的振幅和位置指数。在来自不同年龄和性别的PTB数据库的许多正常ECG记录上测试了该算法。所提出的算法显示出很高的灵敏度和正预测性。

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