Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5102488 | Physica A: Statistical Mechanics and its Applications | 2018 | 27 Pages |
Abstract
Multiscale entropy analysis has become a prevalent complexity measurement and been successfully applied in various fields. However, it only takes into account the information of mean values (first moment) in coarse-graining procedure. Then generalized multiscale entropy (MSEn) considering higher moments to coarse-grain a time series was proposed and MSEÏ2 has been implemented. However, the MSEÏ2 sometimes may yield an imprecise estimation of entropy or undefined entropy, and reduce statistical reliability of sample entropy estimation as scale factor increases. For this purpose, we developed the refined model, RMSEÏ2, to improve MSEÏ2. Simulations on both white noise and 1âf noise show that RMSEÏ2 provides higher entropy reliability and reduces the occurrence of undefined entropy, especially suitable for short time series. Besides, we discuss the effect on RMSEÏ2 analysis from outliers, data loss and other concepts in signal processing. We apply the proposed model to evaluate the complexity of heartbeat interval time series derived from healthy young and elderly subjects, patients with congestive heart failure and patients with atrial fibrillation respectively, compared to several popular complexity metrics. The results demonstrate that RMSEÏ2 measured complexity (a) decreases with aging and diseases, and (b) gives significant discrimination between different physiological/pathological states, which may facilitate clinical application.
Related Topics
Physical Sciences and Engineering
Mathematics
Mathematical Physics
Authors
Yunxiao Liu, Youfang Lin, Jing Wang, Pengjian Shang,