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使用可见性图评估时间序列中的时间不可逆性。

Assessment of time irreversibility in a time series using visibility graphs.

作者信息

Andrzejewska Małgorzata, Żebrowski Jan J, Rams Karolina, Ozimek Mateusz, Baranowski Rafał

机构信息

Cardiovascular Physics Group, Physics of Complex Systems Division, Faculty of Physics, Warsaw University of Technology, Warszawa, Poland.

Institute of Cardiology, Warszawa, Poland.

出版信息

Front Netw Physiol. 2022 Oct 4;2:877474. doi: 10.3389/fnetp.2022.877474. eCollection 2022.

Abstract

In this paper, we studied the time-domain irreversibility of time series, which is a fundamental property of systems in a nonequilibrium state. We analyzed a subgroup of the databases provided by University of Rochester, namely from the THEW Project. Our data consists of LQTS (Long QT Syndrome) patients and healthy persons. LQTS may be associated with an increased risk of sudden cardiac death (SCD), which is still a big clinical problem. ECG-based artificial intelligence methods can identify sudden cardiac death with a high accuracy. It follows that heart rate variability contains information about the possibility of SCD, which may be extracted, provided that appropriate methods are developed for this purpose. Our aim was to assess the complexity of both groups using visibility graph (VG) methods. Multivariate analysis of connection patterns of graphs built from time series was performed using multiplex visibility graph methods. For univariate time series, time irreversibility of the ECG interval QT of patients with LQTS was lower than for the healthy. However, we did not observe statistically significant difference in the comparison of RR intervals time series of the two groups studied. The connection patterns retrieved from multiplex VGs have more similarity with each other in the case of LQTS patients. This observation may be used to develop better methods for SCD risk stratification.

摘要

在本文中,我们研究了时间序列的时域不可逆性,这是处于非平衡态系统的一个基本属性。我们分析了罗切斯特大学提供的数据库中的一个子组,即来自THEW项目的数据。我们的数据包括长QT综合征(LQTS)患者和健康人。LQTS可能与心脏性猝死(SCD)风险增加有关,这仍然是一个重大的临床问题。基于心电图的人工智能方法能够高精度地识别心脏性猝死。由此可见,心率变异性包含有关SCD可能性的信息,前提是为此开发出合适的方法,这些信息就可以被提取出来。我们的目的是使用可见性图(VG)方法评估两组的复杂性。使用多重可见性图方法对由时间序列构建的图的连接模式进行多变量分析。对于单变量时间序列,LQTS患者心电图QT间期的时间不可逆性低于健康人。然而,在对所研究的两组RR间期时间序列进行比较时,我们没有观察到统计学上的显著差异。在LQTS患者中,从多重可见性图中检索到的连接模式彼此之间具有更高的相似性。这一观察结果可用于开发更好的SCD风险分层方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5723/10013024/000fee15c26a/fnetp-02-877474-g001.jpg

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