Entropy characteristics of heart rate wavelet multiscale components in epileptic children before and after seizures

2020 11th Conference of the European Study Group on Cardiovascular Oscillations (ESGCO)(2020)

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摘要
In this work, we analyze the information content of the multiple time scale components of heart rate variability (HRV) in children with focal epilepsy. HRV components are extracted from 30 pediatric patients, monitored 10 min and 10 s before and after focal epileptic seizures, using wavelet multiscale decomposition (with 5, 15, 30, 60, 120, 180 s time scale), and then characterized computing Entropy (E), permutation entropy (PE), conditional entropy (CE) and information storage (IS). Moving from preictal to postictal windows, we find statistically significant differences in the CE and IS values of HRV components at short time scales, which reflect autonomic imbalance and appear as potential candidates of descriptive features for HRV monitoring in epilepsy.
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关键词
autonomic imbalance,postictal windows,heart rate wavelet multiscale components,permutation entropy,conditional entropy,HRV monitoring,short time scales,information storage,wavelet multiscale decomposition,focal epileptic seizures,pediatric patients,HRV components,heart rate variability,multiple time scale components,epileptic children,time 10.0 s,time 10.0 min,time 180.0 s,time 5 s,time 15 s,time 30 s,time 60 s
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