Department of Bioengineering, Shinshu University, Japan.
J Biomech. 2013 Sep 27;46(14):2394-401. doi: 10.1016/j.jbiomech.2013.07.031. Epub 2013 Jul 31.
When investigating the dynamics of three-dimensional multi-body biomechanical systems it is often difficult to derive spatiotemporally directed predictions regarding experimentally induced effects. A paradigm of 'non-directed' hypothesis testing has emerged in the literature as a result. Non-directed analyses typically consist of ad hoc scalar extraction, an approach which substantially simplifies the original, highly multivariate datasets (many time points, many vector components). This paper describes a commensurately multivariate method as an alternative to scalar extraction. The method, called 'statistical parametric mapping' (SPM), uses random field theory to objectively identify field regions which co-vary significantly with the experimental design. We compared SPM to scalar extraction by re-analyzing three publicly available datasets: 3D knee kinematics, a ten-muscle force system, and 3D ground reaction forces. Scalar extraction was found to bias the analyses of all three datasets by failing to consider sufficient portions of the dataset, and/or by failing to consider covariance amongst vector components. SPM overcame both problems by conducting hypothesis testing at the (massively multivariate) vector trajectory level, with random field corrections simultaneously accounting for temporal correlation and vector covariance. While SPM has been widely demonstrated to be effective for analyzing 3D scalar fields, the current results are the first to demonstrate its effectiveness for 1D vector field analysis. It was concluded that SPM offers a generalized, statistically comprehensive solution to scalar extraction's over-simplification of vector trajectories, thereby making it useful for objectively guiding analyses of complex biomechanical systems.
在研究三维多体生物力学系统的动力学时,通常很难对实验引起的影响进行时空导向的预测。因此,文献中出现了一种“无导向”假设检验范式。无导向分析通常包括特定的标量提取,这种方法大大简化了原始的、高度多元数据集(许多时间点、许多向量分量)。本文提出了一种与标量提取相当的多元方法作为替代方法。该方法称为“统计参数映射”(SPM),它使用随机场理论客观地识别与实验设计显著协变的场区域。我们通过重新分析三个公开可用的数据集来比较 SPM 和标量提取:3D 膝关节运动学、十肌肉力系统和 3D 地面反作用力。标量提取被发现会对所有三个数据集的分析产生偏差,因为它没有考虑到数据集的足够部分,或者没有考虑到向量分量之间的协方差。SPM 通过在(大规模多元)向量轨迹水平上进行假设检验来克服这两个问题,同时随机场校正同时考虑时间相关性和向量协方差。虽然 SPM 已被广泛证明可有效分析 3D 标量场,但目前的结果是首次证明其可有效分析 1D 向量场分析。得出的结论是,SPM 为向量轨迹的标量提取过度简化提供了一种通用的、统计上全面的解决方案,从而使其可用于客观指导复杂生物力学系统的分析。