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Detrended Fluctuation Analysis and Adaptive Fractal Analysis of Stride Time Data in Parkinsons Disease: Stitching Together Short Gait Trials

机译:帕金森氏病跨步时间数据的去趋势波动分析和自适应分形分析:短步试验的拼接

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摘要

Variability indicates motor control disturbances and is suitable to identify gait pathologies. It can be quantified by linear parameters (amplitude estimators) and more sophisticated nonlinear methods (structural information). Detrended Fluctuation Analysis (DFA) is one method to measure structural information, e.g., from stride time series. Recently, an improved method, Adaptive Fractal Analysis (AFA), has been proposed. This method has not been applied to gait data before. Fractal scaling methods (FS) require long stride-to-stride data to obtain valid results. However, in clinical studies, it is not usual to measure a large number of strides (e.g., strides). Amongst others, clinical gait analysis is limited due to short walkways, thus, FS seem to be inapplicable. The purpose of the present study was to evaluate FS under clinical conditions. Stride time data of five self-paced walking trials ( strides each) of subjects with PD and a healthy control group (CG) was measured. To generate longer time series, stride time sequences were stitched together. The coefficient of variation (CV), fractal scaling exponents (DFA) and (AFA) were calculated. Two surrogate tests were performed: A) the whole time series was randomly shuffled; B) the single trials were randomly shuffled separately and afterwards stitched together. CV did not discriminate between PD and CG. However, significant differences between PD and CG were found concerning and . Surrogate version B yielded a higher mean squared error and empirical quantiles than version A. Hence, we conclude that the stitching procedure creates an artificial structure resulting in an overestimation of true . The method of stitching together sections of gait seems to be appropriate in order to distinguish between PD and CG with FS. It provides an approach to integrate FS as standard in clinical gait analysis and to overcome limitations such as short walkways.
机译:可变性表示电机控制干扰,适合识别步态病态。可以通过线性参数(幅度估计器)和更复杂的非线性方法(结构信息)对其进行量化。去趋势波动分析(DFA)是一种测量结构信息的方法,例如根据跨步时间序列。最近,提出了一种改进的方法,自适应分形分析(AFA)。此方法以前尚未应用于步态数据。分形缩放方法(FS)需要长跨步数据才能获得有效结果。然而,在临床研究中,通常不测量大量的步幅(例如,步幅)。其中,由于步道短,临床步态分析受到限制,因此,FS似乎不适用。本研究的目的是评估临床条件下的FS。测量了五项患有PD的受试者和健康对照组(CG)的自步步行试验(每个步幅)的步幅时间数据。为了生成更长的时间序列,将步幅时间序列缝合在一起。计算变异系数(CV),分形标度指数(DFA)和(AFA)。进行了两个替代测试:A)将整个时间序列随机洗牌; B)将单个试验分别随机洗净,然后缝合在一起。简历没有区分PD和CG。但是,关于和,PD和CG之间存在显着差异。替代版本B产生的均方误差和经验分位数均高于版本A。因此,我们得出结论:缝合过程创建了人为的结构,导致对true的高估。将步态的各个部分缝合在一起的方法似乎是合适的,以便区分PD和CG与FS。它提供了一种在临床步态分析中将FS集成为标准并克服诸如人行道短等限制的方法。

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