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Multiscale entropy based multiscale principal component analysis for multichannel ECG data reduction

机译:基于MultiScale熵的多尺度主成分分析,用于多渠道ECG数据减少

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In this work, multiscale principal component analysis (MSPCA) is applied to multichannel ECG signals. Multiresolution analysis of multichannel ECG data using L level Wavelet decomposition gives L + 1 subbands. Considering jthh subbands of all the channels of a standard 12 lead ECG signals, subband matrices are formed at multiscale levels. At Wavelet multiscale, principal component analysis (PCA) is applied to reduce the dimensions. For the selection of significant principal components at Wavelet subband matrices, multiscale entropy and eigenvalues are considered and a new method is proposed. The reconstructed signal fidelity is evaluated using qualitative and quantitative measures such as PRD, WWPRD & WEDD. A data reduction of 48.25% in terms of samples, is achieved with average percentage root mean square difference (PRD), Wavelet weighted PRD (WWPRD) and Wavelet energy based diagnostic distortion (WEDD) of 19.98, 31.84 & 10.07 respectively with acceptable signal quality.
机译:在这项工作中,多尺度主成分分析(MSPCA)应用于多通道ECG信号。利用L电平小波分解的多通道ECG数据的多分辨率分析给出了L + 1个子带。考虑到标准12引线ECG信号的所有通道的J TH子带,子带矩阵在多尺度水平上形成。在小波多尺度下,应用主成分分析(PCA)以减少尺寸。为了选择小波子带矩阵的重要主组件,考虑多尺度熵和特征值并提出了一种新方法。使用PRD,WWPRD&Wedd等定性和定量措施来评估重建信号保真度。在样品方面减少48.25%,以平均百分比均值(PRD),小波加权PRD(WWPRD)和小波能量的基于诊断失真(WEDD)为19.98,31.84和10.07分别具有可接受的信号质量。

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