Measuring synchronization in coupled simulation and coupled cardiovascular time series: A comparison of different cross entropy measures

•A new cross entropy measure, named cross fuzzy measure entropy (C-FuzzyMEn) was proposed to detect the synchronization of bivariate time series.•Its performances were tested using both coupled simulation models and clinical cardiovascular coupled signals, and were also compared with two existing cr...

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Bibliographic Details
Published inBiomedical signal processing and control Vol. 21; pp. 49 - 57
Main Authors Liu, Chengyu, Zhang, Chengqiu, Zhang, Li, Zhao, Lina, Liu, Changchun, Wang, Hongjun
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.08.2015
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Summary:•A new cross entropy measure, named cross fuzzy measure entropy (C-FuzzyMEn) was proposed to detect the synchronization of bivariate time series.•Its performances were tested using both coupled simulation models and clinical cardiovascular coupled signals, and were also compared with two existing cross entropy measures: cross sample entropy (C-SampEn) and cross fuzzy entropy (C-FuzzyEn).•Results showed that compared with C-SampEn, C-FuzzyEn and C-FuzzyMEn had better statistical stability and compared with C-FuzzyEn, C-FuzzyMEn had better discrimination ability. Synchronization provides an insight into underlying the interaction mechanisms among the bivariate time series and has recently become an increasing focus of interest. In this study, we proposed a new cross entropy measure, named cross fuzzy measure entropy (C-FuzzyMEn), to detect the synchronization of the bivariate time series. The performances of C-FuzzyMEn, as well as two existing cross entropy measures, i.e., cross sample entropy (C-SampEn) and cross fuzzy entropy (C-FuzzyEn), were first tested and compared using three coupled simulation models (i.e., coupled Gaussian noise, coupled MIX(p) and coupled Henon model) by changing the time series length, the threshold value for entropy and the coupling degree. The results from the simulation models showed that compared with C-SampEn, C-FuzzyEn and C-FuzzyMEn had better statistical stability and compared with C-FuzzyEn, C-FuzzyMEn had better discrimination ability. These three measures were then applied to a cardiovascular coupling problem, synchronization analysis for RR and pulse transit time (PTT) series in both the normal subjects and heart failure patients. The results showed that the heart failure group had lower cross entropy values than the normal group for all three cross entropy measures, indicating that the synchronization between RR and PTT time series increases in the heart failure group. Further analysis showed that there was no significant difference between the normal and heart failure groups for C-SampEn (normal 2.13±0.37 vs. heart failure 2.07±0.16, P=0.36). However, C-FuzzyEn had significant difference between two groups (normal 1.42±0.25 vs. heart failure 1.31±0.12, P<0.05). The statistical difference was larger for two groups when performing C-FuzzyMEn analysis (normal 2.40±0.26 vs. heart failure 2.15±0.13, P<0.01).
ISSN:1746-8094
DOI:10.1016/j.bspc.2015.05.005