DFA作为支持任务表现的姿势动力学的窗口:步长选择重要吗?

Patric C Nordbeck, Valéria Andrade, Paula L Silva, Nikita A Kuznetsov
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摘要

摘要采用去趋势波动分析(DFA)对压力中心(CoP)时间序列的自相似性进行了研究。对于分数高斯噪声(fGn)信号,分析返回缩放指数DFA-α,其值表征时间相关性为持久、随机或反持久。在姿势控制的研究中,DFA在扩散图中显示了两个时间标度区域,一个在短期标度区域,一个在长期标度区域,表明不同类型的姿势动力学。对于最小和最大尺度的选择已经给予了大量的关注,但是在评估波动函数的窗口大小之间的间隔(步长)的选择也可能影响缩放指数的估计。这项研究的目的是双重的。首先,确定DFA是否可以揭示在可变需求下上肢任务的姿势调整支持性能。其次,比较两种不同步长(log2单位为0.5和1.0)的均匀间隔DFA应用于CoP时间序列。方法:我们分析了健康参与者在可变需求下执行顺序上肢任务的前后(AP)和中外侧(ML) CoP位移的时间序列。结果:DFA扩散图显示AP和ML CoP时间序列有两个标度区。短期标度区普遍表现为超弥漫性动态,长期标度区表现为轻度持续的ML方向动态和随机的AP方向动态。与1.0单位步长相比,0.5单位步长有较高的DFA-α估计值和较低的交叉点估计值的系统趋势。讨论:结果提供了证据,DFA-α捕获了AP和ML方向的姿势调整之间的任务相关差异。结果还表明,DFA-α估计和交叉点对步长很敏感。步长为0.5导致长期标度区域的DFA-α变量较小,短期标度区域的估计值较高,交叉点的估计值较低,并且在非常短的范围内揭示了异常估计值,这对最小窗口大小的选择有影响。因此,我们建议在类似于我们的CoP时间序列的等间隔dfa中使用0.5步长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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DFA as a window into postural dynamics supporting task performance: does choice of step size matter?

Introduction: Detrended Fluctuation Analysis (DFA) has been used to investigate self-similarity in center of pressure (CoP) time series. For fractional gaussian noise (fGn) signals, the analysis returns a scaling exponent, DFA-α, whose value characterizes the temporal correlations as persistent, random, or anti-persistent. In the study of postural control, DFA has revealed two time scaling regions, one at the short-term and one at the long-term scaling regions in the diffusion plots, suggesting different types of postural dynamics. Much attention has been given to the selection of minimum and maximum scales, but the choice of spacing (step size) between the window sizes at which the fluctuation function is evaluated may also affect the estimates of scaling exponents. The aim of this study is twofold. First, to determine whether DFA can reveal postural adjustments supporting performance of an upper limb task under variable demands. Second, to compare evenly-spaced DFA with two different step sizes, 0.5 and 1.0 in log2 units, applied to CoP time series. Methods: We analyzed time series of anterior-posterior (AP) and medial-lateral (ML) CoP displacement from healthy participants performing a sequential upper limb task under variable demand. Results: DFA diffusion plots revealed two scaling regions in the AP and ML CoP time series. The short-term scaling region generally showed hyper-diffusive dynamics and long-term scaling revealed mildly persistent dynamics in the ML direction and random-like dynamics in the AP direction. There was a systematic tendency for higher estimates of DFA-α and lower estimates for crossover points for the 0.5-unit step size vs. 1.0-unit size. Discussion: Results provide evidence that DFA-α captures task-related differences between postural adjustments in the AP and ML directions. Results also showed that DFA-α estimates and crossover points are sensitive to step size. A step size of 0.5 led to less variable DFA-α for the long-term scaling region, higher estimation for the short-term scaling region, lower estimate for crossover points, and revealed anomalous estimates at the very short range that had implications for choice of minimum window size. We, therefore, recommend the use of 0.5 step size in evenly spaced DFAs for CoP time series similar to ours.

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