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Temporal patterns in the dependency structures of the cardiovascular time series

机译:心血管时间序列依赖性结构中的时间模式

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摘要

Copula density is a function that quantifies the level of dependency between two, or more, related time series, and also visualizes their (non)linear dependency structures. This paper aims to analyze and compare different methods for copula density estimation: local (naive) estimation, kernel estimation, K nearest neighbors, Markov state approach, histograms, and Voronoi decomposition. The methods are compared by mapping the copula density into a time series (dependency level time series) and applying Sample Entropy estimates over the range of parameters. Application examples include systolic blood pressure and pulse interval signals recorded from conscious laboratory rats, treated either with vasopressin selective V1a and V2 receptor antagonists (100 ng and 500 ng) or with saline (control group). The signals are analyzed using composite multiscale entropy. It is shown that each estimation method suffers from bias, but, for each case, a stable working region can be found. It was also shown that the analysis of the dependency level time series could reveal the information that could not be extracted from the classical beat-to-beat time series, and that the copula density, transformed to real signals domain, visualizes the regions where the dependency of cardiovascular signals is exhibited the most, reflecting their mutual relationship and providing the possibility for further research.
机译:Copula密度是一种函数,其定量两个或多个相关时间序列之间的依赖性,并且还可视化其(非)线性依赖结构。本文旨在分析和比较Copula密度估计的不同方法:本地(天真)估计,内核估计,k最近邻居,马尔可夫状态方法,直方图和Voronoi分解。通过将Copula密度映射到时间序列(依赖级时间序列)并在参数范围内施加样本熵估计来进行比较。应用实例包括从有意识的实验室大鼠记录的收缩压和脉冲间隔信号,用VasoPressin选择性V1A和V2受体拮抗剂(100ng和500ng)或盐水(对照组)处理。使用复合多尺度熵分析信号。结果表明,每个估计方法遭受偏差,但是,对于每种情况,可以找到稳定的工作区。还表明,依赖级时间序列的分析可以揭示无法从经典节拍时间序列中提取的信息,并且将Copula密度转换为实际信号域,可视化其中的区域心血管信号的依赖性是最多的,反映了它们的相互关系并提供进一步研究的可能性。

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