Acal Christian, Aguilera Ana M
Granada, Spain Department of Statistics and Operations Research and IMAG, University of Granada.
Adv Data Anal Classif. 2023;17(2):291-321. doi: 10.1007/s11634-022-00500-y. Epub 2022 Apr 9.
The methodological contribution in this paper is motivated by biomechanical studies where data characterizing human movement are waveform curves representing joint measures such as flexion angles, velocity, acceleration, and so on. In many cases the aim consists of detecting differences in gait patterns when several independent samples of subjects walk or run under different conditions (repeated measures). Classic kinematic studies often analyse discrete summaries of the sample curves discarding important information and providing biased results. As the sample data are obviously curves, a Functional Data Analysis approach is proposed to solve the problem of testing the equality of the mean curves of a functional variable observed on several independent groups under different treatments or time periods. A novel approach for Functional Analysis of Variance (FANOVA) for repeated measures that takes into account the complete curves is introduced. By assuming a basis expansion for each sample curve, two-way FANOVA problem is reduced to Multivariate ANOVA for the multivariate response of basis coefficients. Then, two different approaches for MANOVA with repeated measures are considered. Besides, an extensive simulation study is developed to check their performance. Finally, two applications with gait data are developed.
本文的方法学贡献源自生物力学研究,在这些研究中,表征人体运动的数据是波形曲线,代表诸如关节角度、速度、加速度等关节测量值。在许多情况下,目标是检测在不同条件下(重复测量)多个独立样本的受试者行走或跑步时步态模式的差异。经典运动学研究通常分析样本曲线的离散汇总,从而丢弃重要信息并得出有偏差的结果。由于样本数据显然是曲线,因此提出了一种功能数据分析方法,以解决在不同处理或时间段下对多个独立组观察到的功能变量的平均曲线进行相等性检验的问题。引入了一种考虑完整曲线的重复测量的功能方差分析(FANOVA)新方法。通过为每个样本曲线假设一个基展开,双向FANOVA问题简化为基系数多元响应的多元方差分析。然后,考虑了两种不同的重复测量多元方差分析方法。此外,还开展了广泛的模拟研究以检验它们的性能。最后,给出了两个步态数据的应用实例。