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Wavelet Packet Analysis of Disease-Altered Recurrence Dynamics in the Long-Term Spatiotemporal Vectorcardiogram (VCG) Signals

机译:长期时滞血管瓣膜心电图(VCG)信号中疾病改变疾病复发动态的小波包分析

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Vectorcardiogram (VCG) signals contain a wealth of dynamic information pertinent to space-time cardiac electrical activities. However, few, if any, previous investigations have studied disease-altered nonlinear dynamics in the spatiotemporal VCG signals. Most previous nonlinear dynamic methods considered the time-delay reconstructed state space from a single ECG trace. This paper presents a novel multiscale recurrence approach to not only explore VCG recurrence dynamics but also resolve the issue of recurrence computation for the large-scale datasets. As opposed to the traditional single-scale recurrence analysis, we characterize and quantify the recurrence behaviours in multiple wavelet scales. In addition, wavelet dyadic subsampling enables the large-scale recurrence analysis, but it is used to be highly expensive for a long-term time series. The classification experiments show that multiscale recurrence analysis detects the myocardial infarctions from 3-lead VCG with an average sensitivity of 96.8% and specificity of 92.8%, which show superior performance (i.e., 5.6% improvements) to the single-scale recurrence analysis.
机译:VectorCAdiogram(VCG)信号包含与时空心脏电气活动有关的大量动态信息。然而,很少的,如果有的话,先前的调查已经研究了时尚VCG信号中的疾病改变的非线性动力学。最先前的非线性动态方法认为是来自单个ECG轨迹的时滞重建状态空间。本文介绍了一种新型多尺度复发方法,不仅可以探索VCG复发动态,还可以解决大规模数据集的复发计算问题。与传统的单级复发分析相反,我们在多个小波尺度中表征和量化复发行为。此外,小波致电分子采样使大规模复发分析能够进行大规模的复发分析,但它用于长期时间序列的高度昂贵。分类实验表明,多尺度复发分析检测3-铅Vcg的心肌梗塞,平均灵敏度为96.8%,特异性为92.8%,其表现出卓越的性能(即5.6%,改善)对单级复发分析。

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