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An Efficient Algorithm Based on Wavelet Transform to Reduce Powerline Noise From Electrocardiograms

机译:一种基于小波变换的有效降低心电图电力线噪声的算法

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Nowadays, the electrocardiogram (ECG) is still the most widely used signal for the diagnosis of cardiac pathologies. However, this recording is often disturbed by the powerline interference (PLI), its removal being mandatory to avoid misdiagnosis. Although a broad variety of methods have been proposed for that purpose, often they substantially alter the original signal morphology or are computationally expensive. Hence, the present work introduces a simple and efficient algorithm to suppress the PLI from the ECG. Briefly, the input signal is decomposed into four Wavelet levels and the resulting coefficients are thresholded to remove the PLI estimated from the TQ intervals. The denoised ECG signal is then reconstructed by computing the inverse Wavelet transform. The method has been validated making use of fifty 10-min length clean ECG segments obtained from the MIT-BIH Normal Sinus Rhythm database, which were contaminated with a sinusoidal signal of 50 Hz and variable harmonic content. Comparing the original and denoised ECG signals through a signed correlation index, improvements between 10-72% have been observed with respect to common adaptive notch filtering, implemented for comparison. These results suggest that the proposed method is featured by an enhanced trade-off between noise reduction and signal morphology preservation
机译:如今,心电图(ECG)仍是诊断心脏病的最广泛使用的信号。但是,此记录通常会受到电力线干扰(PLI)的干扰,必须删除该记录以避免误诊。尽管已经为此目的提出了各种各样的方法,但是它们通常会实质上改变原始信号的形态或在计算上昂贵。因此,本工作介绍了一种简单有效的算法来抑制ECG中的PLI。简而言之,将输入信号分解为四个小波电平,并对所得系数进行阈值处理,以去除从TQ间隔估计的PLI。然后通过计算逆小波变换来重建去噪的ECG信号。该方法已通过使用从MIT-BIH正常窦性心律数据库中获得的50个10分钟长的干净ECG片段进行了验证,这些片段被50 Hz的正弦信号和可变谐波含量所污染。通过带正负号的相关指数比较原始和降噪的ECG信号,相对于为进行比较而实施的通用自适应陷波滤波,已观察到10-72%的改善。这些结果表明,所提出的方法的特点是在降噪和信号形态保持之间的权衡得到了增强

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