Julius Wolff Institute for Biomechanics and Musculoskeletal Regeneration, Charité - Universitätsmedizin Berlin, Philippstrasse 13, 10115, Berlin, Germany; Department of Biomedical Sciences, University of Copenhagen, Blegdamsvej 3B, 2200, Copenhagen N, Denmark.
Center for Research in Human Movement Variability, Department of Biomechanics, University of Nebraska at Omaha, 6160 University Drive, 68182-0860, Omaha, NE, USA.
Comput Biol Med. 2018 Dec 1;103:93-100. doi: 10.1016/j.compbiomed.2018.10.008. Epub 2018 Oct 10.
The present study aimed at identifying a suitable multiscale entropy (MSE) algorithm for assessment of complexity in a stride-to-stride time interval time series. Five different algorithms were included (the original MSE, refine composite multiscale entropy (RCMSE), multiscale fuzzy entropy, generalized multiscale entropy and intrinsic mode entropy) and applied to twenty iterations of white noise, pink noise, or a sine wave with added white noise. Based on their ability to differentiate the level of complexity in the three different generated signal types, and their sensitivity and parameter consistency, MSE and RCMSE were deemed most appropriate. These two algorithms were applied to stride-to-stride time interval time series recorded from fourteen healthy subjects during one hour of overground and treadmill walking. In general, acceptable sensitivity and good parameter consistency were observed for both algorithms; however, they were not able to differentiate the complexity of the stride-to-stride time interval time series between the two walking conditions. Thus, the present study recommends the use of either MSE or RCMSE for quantification of complexity in stride-to-stride time interval time series.
本研究旨在确定一种合适的多尺度熵(MSE)算法,以评估逐拍时间间隔时间序列中的复杂性。本研究纳入了五种不同的算法(原始 MSE、细化复合多尺度熵(RCMSE)、多尺度模糊熵、广义多尺度熵和固有模式熵),并将其应用于 20 次迭代的白噪声、粉红噪声或添加白噪声的正弦波。基于它们区分三种不同生成信号类型复杂性的能力,以及它们的灵敏度和参数一致性,MSE 和 RCMSE 被认为是最合适的。这两种算法应用于十四名健康受试者在一小时的地面和跑步机行走中记录的逐拍时间间隔时间序列。总的来说,两种算法都表现出了可接受的灵敏度和良好的参数一致性;然而,它们无法区分两种行走条件下逐拍时间间隔时间序列的复杂性。因此,本研究建议使用 MSE 或 RCMSE 来量化逐拍时间间隔时间序列中的复杂性。