首页> 外文会议>Advances in Computing, Control, amp; Telecommunication Technologies, 2009. ACT '09 >Denoising of ECG by Statistical Adaptative Thresholding and Detection of T-Wave Alternans Using Principal Component Analysis
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Denoising of ECG by Statistical Adaptative Thresholding and Detection of T-Wave Alternans Using Principal Component Analysis

机译:通过统计自适应阈值对心电图进行降噪,并使用主成分分析法检测T波交替信号

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One of the most important tasks in the delineation of the ECG is the detection of the spikes in noisy recordings and to estimate TWA in the ECG on a single-lead basis. The wavelet transform is a very appropriate pre-filtering step prior to the thresholding of coefficients in order to locate spikes. However, regardless of the great performances, it depends on the setting of empirical parameters. Thus to avoid the dependence of empirical parameters, an algorithm has been developed to automatically estimate optimal parameters from the data for signal filtering and denoising of ECG is performed by PCA and adaptative thresholding. From the obtained denoised signal TWA alternans has been detected and estimated by spectral method.
机译:描绘ECG时最重要的任务之一是检测噪声记录中的尖峰,并以单导联的方式估算ECG中的TWA。为了定位尖峰,小波变换是在系数阈值确定之前非常合适的预滤波步骤。但是,无论性能如何,都取决于经验参数的设置。因此,为了避免依赖经验参数,已经开发了一种算法,可以从数据中自动估计最佳参数,以进行信号过滤,并通过PCA和自适应阈值对ECG进行降噪。从获得的去噪信号中,TWA交替素已被检测并通过频谱方法进行了估计。

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