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时间序列谱分析理论的应用:心血管变异性信号分析

Application of time series spectral analysis theory: analysis of cardiovascular variability signals.

作者信息

Pinna G D, Maestri R, Di Cesare A

机构信息

Department of Biomedical Engineering, Medical Centre of Rehabilitation, Montescano, Italy.

出版信息

Med Biol Eng Comput. 1996 Mar;34(2):142-8. doi: 10.1007/BF02520019.

Abstract

The paper focuses on the most important application problems commonly encountered in spectral analysis of short-term (less than 10 min) recordings of cardiovascular variability signals (CVSs), critically analysing the different approaches to these problems presented in the literature and suggesting practical solutions based on sound theoretical and empirical considerations. The Blackman-Tukey (BT) and Burg methods have been selected as the most representative of classical and AR spectral estimators, respectively. For realistic simulations, 'synthetic' CVSs are generated as AR processes whose parameters are estimated on corresponding time series of normal, post-myocardial infarction and congestive heart failure subjects. The problem of resolution of spectral estimates is addressed, and an empirical method is proposed for model order selection in AR estimation. The issue of the understandability and interpretability of spectral shapes is discussed. The problem of non-stationarity and removing trends is dealt with. The important issue of identification and estimation of spectral components is discussed, and the main advantages and drawbacks of spectral decomposition algorithms are critically evaluated.

摘要

本文聚焦于心血管变异性信号(CVSs)短期(少于10分钟)记录的频谱分析中常见的最重要应用问题,批判性地分析了文献中针对这些问题提出的不同方法,并基于合理的理论和实证考量提出了切实可行的解决方案。分别选取了布莱克曼 - 图基(BT)法和伯格法作为经典谱估计器和自回归(AR)谱估计器中最具代表性的方法。为进行实际模拟,将“合成”CVSs生成为自回归过程,其参数根据正常、心肌梗死后和充血性心力衰竭受试者的相应时间序列进行估计。探讨了频谱估计分辨率问题,并提出了一种用于自回归估计中模型阶数选择的实证方法。讨论了频谱形状的可理解性和可解释性问题。处理了非平稳性和去除趋势的问题。讨论了频谱成分识别和估计的重要问题,并对频谱分解算法的主要优缺点进行了批判性评估。

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