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Analysis of multiple waveforms by means of functional principal component analysis: normal versus pathological patterns in sit-to-stand movement

机译:通过功能主成分分析来分析多个波形:从坐到站运动的正常模式与病理模式

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This paper presents an application of functional principal component analysis (FPCA) to describe the inter-subject variability of multiple waveforms. This technique was applied to the study of sit-to-stand movement in two groups of people, osteoarthritic patients and healthy subjects. Although STS movement has not been extensively applied to the study of knee osteoarthritis, it can provide relevant information about the effect of osteoarthritis on knee joint function. Two waveforms, knee flexion angle and flexion moment, were analysed simultaneously. Instead of using the common multivariate approach we used the functional one, which allows working with continuous functions with neither discretization nor time-scale normalization. The results show that time-scale normalization can alter the FPCA solution. Furthermore, FPCA presents better discriminatory power compared with the classical multivariate approach. This technique can, therefore, be applied as a functional assessment tool, allowing the identification of relevant variables to discriminate heterogeneous groups such as healthy and pathological subjects.
机译:本文介绍了功能主成分分析(FPCA)的应用,以描述多个波形的对象间变异性。该技术被用于研究两组人的坐姿运动,即骨关节炎患者和健康受试者。尽管STS运动尚未广泛应用于膝关节骨关节炎的研究,但它可以提供有关骨关节炎对膝关节功能的影响的相关信息。同时分析了膝盖弯曲角度和弯曲力矩这两个波形。代替使用通用的多元方法,我们使用函数式方法,该方法允许使用既不离散化也不进行时间标度归一化的连续函数。结果表明,时标归一化可以改变FPCA解决方案。此外,与经典多元方法相比,FPCA具有更好的区分能力。因此,该技术可以用作功能评估工具,从而允许识别相关变量以区分异类,例如健康和病理受试者。

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