Research School of Computer Science, Australian National University, Canberra, ACT, Australia.
Department of Neurology, Canberra Hospital, Canberra, ACT, Australia.
Brain Behav. 2021 Jan;11(1):e01929. doi: 10.1002/brb3.1929. Epub 2020 Nov 4.
Postural sway may be useful as an objective measure of Parkinson's disease (PD). Existing studies have analyzed many different features of sway using different experimental paradigms. We aimed to determine what features have been used to measure sway and then to assess which feature(s) best differentiate PD patients from controls. We also aimed to determine whether any refinements might improve discriminative power and so assist in standardizing experimental conditions and analysis of data.
In this systematic review of the literature, effect size (ES) was calculated for every feature reported by each article and then collapsed across articles where appropriate. The influence of clinical medication status, visual state, and sampling rate on ES was also assessed.
Four hundred and forty-three papers were retrieved. 25 contained enough information for further analysis. The most commonly used features were not the most effective (e.g., PathLength, used 14 times, had ES of 0.47, while TotalEnergy, used only once, had ES of 1.78). Increased sampling rate was associated with increased ES (PathLength ES increased to 1.12 at 100 Hz from 0.40 at 10 Hz). Measurement during "OFF" clinical status was associated with increased ES (PathLength ES was 0.83 OFF compared to 0.21 ON).
This review identified promising features for analysis of postural sway in PD, recommending a sampling rate of 100 Hz and studying patients when OFF to maximize ES. ES complements statistical significance as it is clinically relevant and is easily compared across experiments. We suggest that machine learning is a promising tool for the future analysis of postural sway in PD.
姿势摆动可能是评估帕金森病(PD)的一种有用的客观指标。现有研究已经使用不同的实验范式分析了摆动的许多不同特征。我们旨在确定已用于测量摆动的特征,然后评估哪些特征(s)能最好地区分 PD 患者和对照组。我们还旨在确定是否有任何改进可以提高辨别力,从而有助于标准化实验条件和数据分析。
在对文献的系统回顾中,计算了每篇文章报告的每个特征的效应大小(ES),并在适当的情况下对文章进行了汇总。还评估了临床用药状态、视觉状态和采样率对 ES 的影响。
共检索到 443 篇论文。25 篇包含了进一步分析所需的足够信息。最常用的特征并不是最有效的(例如,路径长度,使用了 14 次,ES 为 0.47,而总能量,仅使用了一次,ES 为 1.78)。增加采样率与 ES 增加相关(路径长度的 ES 从 10Hz 时的 0.40 增加到 100Hz 时的 1.12)。在“OFF”临床状态下进行测量与 ES 增加相关(路径长度的 ES 在“OFF”时为 0.83,在“ON”时为 0.21)。
本综述确定了用于 PD 姿势摆动分析的有前途的特征,建议采样率为 100Hz,并在患者“OFF”时进行研究,以最大限度地提高 ES。ES 补充了统计显著性,因为它具有临床相关性,并且易于在实验之间进行比较。我们建议机器学习是 PD 姿势摆动未来分析的一种有前途的工具。