利用蒙特卡罗模拟将加工参数不确定性传播到生物力学轨迹的统计分析中。

IF 0.9 4区 医学 Q4 NEUROSCIENCES
Motor Control Pub Date : 2023-01-01 DOI:10.1123/mc.2022-0016
Todd C Pataky
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引用次数: 0

摘要

在统计分析之前,生物力学轨迹通常要经过一系列处理步骤。由于处理参数值的变化会影响这些轨迹,因此在选择数据处理细节时需要谨慎。本研究报告的目的是展示一种简单的方法,将数据处理参数的不确定性传播到有关生物力学轨迹的统计推断中。作为实例应用,考虑了等速跑步机行走时足部接触时间与垂直地面反力之间的关系。在三个数据处理步骤中使用似然范围均匀分布对不确定性进行建模,并使用蒙特卡罗模拟来构建单个垂直地面反力测量和最终统计结果的概率表示。尽管初始的、合理的一组参数值产生了接触持续时间和后期垂直地面反作用力之间的显著相关性,但蒙特卡罗模拟显示出了很强的敏感性,在不到40%的模拟中达到了“显著性”,参数不确定性量级的净影响相对较小。这些结果表明,将处理参数的不确定性传播到统计结果中,可以促进对观察到的效果的谨慎、细致和稳健的看法。通过扩展,蒙特卡罗模拟可以在涉及数据处理不确定性的研究中产生更大的解释一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Monte Carlo Simulation to Propagate Processing Parameter Uncertainty to the Statistical Analyses of Biomechanical Trajectories.

Biomechanical trajectories are often routed through a chain of processing steps prior to statistical analysis. As changes in processing parameter values can affect these trajectories, care is required when choosing data processing specifics. The purpose of this Research Note was to demonstrate a simple way to propagate data processing parameter uncertainty to statistical inferences regarding biomechanical trajectories. As an example application, the correlation between foot contact duration and vertical ground reaction force during constant-speed treadmill walking was considered. Uncertainty was modeled using plausible-range uniform distributions in three data processing steps, and Monte Carlo simulation was used to construct probabilistic representations of both individual vertical ground reaction force measurements and the ultimate statistical results. Whereas an initial, plausible set of parameter values yielded a significant correlation between contact duration and late-stance vertical ground reaction force, Monte Carlo simulations revealed strong sensitivity, with "significance" being reached in fewer than 40% of simulations, with relatively little net effect of parameter uncertainty magnitude. These results indicate that propagating processing parameter uncertainty to statistical results promotes a cautious, nuanced, and robust view of observed effects. By extension, Monte Carlo simulations may yield greater interpretive consistency across studies involving data processing uncertainties.

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来源期刊
Motor Control
Motor Control 医学-神经科学
CiteScore
1.80
自引率
9.10%
发文量
48
审稿时长
>12 weeks
期刊介绍: Motor Control (MC), a peer-reviewed journal, provides a multidisciplinary examination of human movement across the lifespan. To keep you abreast of current developments in the field of motor control, it offers timely coverage of important topics, including issues related to motor disorders. This international journal publishes many types of research papers, from clinical experimental to modeling and theoretical studies. These papers come from such varied disciplines as biomechanics, kinesiology, neurophysiology, neuroscience, psychology, physical medicine, and rehabilitation. Motor Control, the official journal of the International Society of Motor Control, is designed to provide a multidisciplinary forum for the exchange of scientific information on the control of human movement across the lifespan, including issues related to motor disorders. Motor Control encourages submission of papers from a variety of disciplines including, but not limited to, biomechanics, kinesiology, neurophysiology, neuroscience, psychology, physical medicine, and rehabilitation. This peer-reviewed journal publishes a wide variety of types of research papers including clinical experimental, modeling, and theoretical studies. To be considered for publication, papers should clearly demonstrate a contribution to the understanding of control of movement. In addition to publishing research papers, Motor Control publishes review articles, quick communications, commentaries, target articles, and book reviews. When warranted, an entire issue may be devoted to a specific topic within the area of motor control.
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