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Common functional principal components analysis: a new approach to analyzing human movement data.

机译:通用功能主成分分析:一种分析人体运动数据的新方法。

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In many human movement studies angle-time series data on several groups of individuals are measured. Current methods to compare groups include comparisons of the mean value in each group or use multivariate techniques such as principal components analysis and perform tests on the principal component scores. Such methods have been useful, though discard a large amount of information. Functional data analysis (FDA) is an emerging statistical analysis technique in human movement research which treats the angle-time series data as a function rather than a series of discrete measurements. This approach retains all of the information in the data. Functional principal components analysis (FPCA) is an extension of multivariate principal components analysis which examines the variability of a sample of curves and has been used to examine differences in movement patterns of several groups of individuals. Currently the functional principal components (FPCs) for each group are either determined separately (yielding components that are group-specific), or by combining the data for all groups and determining the FPCs of the combined data (yielding components that summarize the entire data set). The group-specific FPCs contain both within and between group variation and issues arise when comparing FPCs across groups when the order of the FPCs alter in each group. The FPCs of the combined data may not adequately describe all groups of individuals and comparisons between groups typically use t-tests of the mean FPC scores in each group. When these differences are statistically non-significant it can be difficult to determine how a particular intervention is affecting movement patterns or how injured subjects differ from controls. In this paper we aim to perform FPCA in a manner allowing sensible comparisons between groups of curves. A statistical technique called common functional principal components analysis (CFPCA) is implemented. CFPCA identifies the common sources of variation evident across groups but allows the order of each component to change for a particular group. This allows for the direct comparison of components across groups. We use our method to analyze a biomechanical data set examining the mechanisms of chronic Achilles tendon injury and the functional effects of orthoses.
机译:在许多人类运动研究中,测量了几组个体的角度时间序列数据。当前用于比较组的方法包括比较每个组中的平均值,或使用多元技术(例如主成分分析)并对主成分评分进行测试。尽管会丢弃大量信息,但此类方法很有用。功能数据分析(FDA)是人类运动研究中一种新兴的统计分析技术,该技术将角度时间序列数据视为函数,而不是一系列离散测量。这种方法将所有信息保留在数据中。功能主成分分析(FPCA)是多变量主成分分析的扩展,它检查曲线样本的变异性,并已用于检查几组个体的运动模式的差异。当前,每个组的功能主要组件(FPC)要么单独确定(特定于组的生产组件),要么通过组合所有组的数据并确定组合数据的FPC(对整个数据集进行汇总的生产组件) )。特定于组的FPC包​​含组内和组间变化,并且当在每个组中更改FPC的顺序时,在跨组比较FPC时会出现问题。组合数据的FPC可能无法充分描述个体的所有组,并且组之间的比较通常使用每组中FPC平均得分的t检验。当这些差异在统计上不显着时,可能难以确定特定干预措施如何影响运动方式或受伤受试者与对照组的差异。在本文中,我们旨在以允许对曲线组之间进行合理比较的方式执行FPCA。实现了一种称为通用功能主成分分析(CFPCA)的统计技术。 CFPCA识别出各组之间明显的常见变异源,但允许特定组中每个组件的顺序更改。这允许跨组直接比较组件。我们使用我们的方法来分析生物力学数据集,以检查慢性跟腱损伤机制和矫形器的功能作用。

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