Department of Psychology, McGill University, 1205 Dr. Penfield Avenue, Montreal, QC, H3A 1B1 , Canada.
Kyoto University, Kyoto, Japan.
Psychometrika. 2017 Jun;82(2):427-441. doi: 10.1007/s11336-015-9478-5. Epub 2016 Feb 8.
Functional principal component analysis (FPCA) and functional multiple-set canonical correlation analysis (FMCCA) are data reduction techniques for functional data that are collected in the form of smooth curves or functions over a continuum such as time or space. In FPCA, low-dimensional components are extracted from a single functional dataset such that they explain the most variance of the dataset, whereas in FMCCA, low-dimensional components are obtained from each of multiple functional datasets in such a way that the associations among the components are maximized across the different sets. In this paper, we propose a unified approach to FPCA and FMCCA. The proposed approach subsumes both techniques as special cases. Furthermore, it permits a compromise between the techniques, such that components are obtained from each set of functional data to maximize their associations across different datasets, while accounting for the variance of the data well. We propose a single optimization criterion for the proposed approach, and develop an alternating regularized least squares algorithm to minimize the criterion in combination with basis function approximations to functions. We conduct a simulation study to investigate the performance of the proposed approach based on synthetic data. We also apply the approach for the analysis of multiple-subject functional magnetic resonance imaging data to obtain low-dimensional components of blood-oxygen level-dependent signal changes of the brain over time, which are highly correlated across the subjects as well as representative of the data. The extracted components are used to identify networks of neural activity that are commonly activated across the subjects while carrying out a working memory task.
功能主成分分析(FPCA)和功能多集典型相关分析(FMCCA)是用于以平滑曲线或函数形式在连续体(如时间或空间)上收集的功能数据的数据缩减技术。在 FPCA 中,从单个功能数据集提取低维成分,使得它们解释数据集的最大方差,而在 FMCCA 中,从多个功能数据集中的每一个获取低维成分,使得组件之间的关联在不同的集合中最大化。在本文中,我们提出了一种用于 FPCA 和 FMCCA 的统一方法。所提出的方法将这两种技术都作为特殊情况包含在内。此外,它允许在这两种技术之间进行折衷,使得从每个功能数据集获得组件以最大化它们在不同数据集之间的关联,同时很好地解释数据的方差。我们为所提出的方法提出了一个单一的优化标准,并开发了一种交替正则化最小二乘算法来最小化标准,同时结合函数的基函数逼近。我们进行了一项模拟研究,以基于合成数据研究所提出的方法的性能。我们还将该方法应用于多主体功能磁共振成像数据的分析,以获得大脑随时间变化的血氧水平依赖信号变化的低维成分,这些成分在受试者之间高度相关,并且代表了数据。提取的组件用于识别在执行工作记忆任务时在受试者之间共同激活的神经网络活动。