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A new methodology for Functional Principal Component Analysis from scarce data. Application to stroke rehabilitation

机译:从稀缺数据中进行功能主成分分析的新方法。应用于中风康复

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Functional Principal Component Analysis (FPCA) is an increasingly used methodology for analysis of biomedical data. This methodology aims to obtain Functional Principal Components (FPCs) from Functional Data (time dependent functions). However, in biomedical data, the most common scenario of this analysis is from discrete time values. Standard procedures for FPCA require obtaining the functional data from these discrete values before extracting the FPCs. The problem appears when there are missing values in a non-negligible sample of subjects, especially at the beginning or the end of the study, because this approach can compromise the analysis due to the need to extrapolate or dismiss subjects with missing values. In this paper, we present an alternative methodology extracting the FPCs directly from the sampled data, avoiding the need to have functional data before extracting them. We demonstrate the feasibility of our approach from real data obtained from the analysis of balance recovery after stroke. Finally, we demonstrate that FPCA can obtain differences between groups when these differences are more related to the dynamics of the process than data values at given points.
机译:功能主成分分析(FPCA)是用于生物医学数据分析的越来越多的方法。此方法旨在从功能数据(与时间有关的功能)中获取功能主要组件(FPC)。但是,在生物医学数据中,此分析的最常见情况是来自离散时间值。 FPCA的标准程序要求在提取FPC之前从这些离散值获取功能数据。当在不可忽略的受试者样本中存在缺失值时,尤其是在研究开始或结束时,就会出现问题,因为这种方法可能会因需要推断或消除具有缺失值的受试者而损害分析。在本文中,我们提出了一种直接从采样数据中提取FPC的替代方法,从而避免了在提取前需要功能数据的情况。我们从中风后恢复平衡的真实数据中证明了我们方法的可行性。最后,我们证明,当FPCA与给定点的数据值相比,与流程的动态性更相关时,它们可以在组之间获得差异。

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