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Clustering Continuous Wavelet Transform Characteristics of Heart Rate Variability through Unsupervised Learning

机译:通过无监督学习聚类连续小波变换心率变异性的特点

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The analysis and interpretation of physiological signals acquired non-invasively are increasingly important in Smart Health, precision medicine, and medical research. However, this analysis is hampered due to the length, complexity, and inter-subject variation of these signals, and, consequently, dimensionality reduction and clustering offer substantial benefits. Machine learning, used widely in biomedicine, is increasingly being applied to physiological time series. Among the applications of unsupervised learning, clustering is one of the most important. In this paper, an unsupervised autoen-coder architecture, deep convolutional embedded clustering, is presented as a data-driven approach to study time-frequency characteristics of heart rate variability records. An autoen-coder network is trained on continuous wavelet transforms of heart rate variability signals calculated from publicly-available annotated ECG records with a wide variety of conditions. The latent variables learned by the clustering autoencoder are low-dimensional representations of wavelet transform characteristics that can be visualized and further analyzed. The results indicate that the learned clusters correspond to beat morphologies in the electrocardiogram in many cases, but also that the reduced dimensions of the time-frequency features can potentially provide additional insights into cardiac activity and the autonomic nervous system.
机译:分析和生理信号的演绎获得的非侵入性的日益重要的智能医疗,精密医学和医学研究。然而,这种分析是阻碍由于这些信号的长度,复杂性,和受试者间变化,并因此降维聚类和提供实质性的好处。机器学习,生物医药中广泛使用,越来越多地被应用到生理的时间序列。在无监督学习的应用,集群是最重要的一个。在本文中,无监督AUTOEN编码器架构,深卷积嵌入式集群,是作为一个数据驱动的方法的心脏心率变异记录学习时间,频率特性。一个AUTOEN编码器网络从公开可用的注解心电图记录有各种各样的条件下计算出的心脏心率变异信号的连续小波变换训练。通过聚类自动编码学到的潜在变量是小波的低维表示变换可以可视化和进一步分析的特点。结果表明,所学群对应的节拍形态的心电图在许多情况下,也认为的时频特征的尺寸减小有可能提供额外的见解心脏活动和自主神经系统。

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