多模态成像数据复杂依赖关系的统计推断

Statistical Inferences for Complex Dependence of Multimodal Imaging Data

Journal of the American Statistical Association · 2023
被引 5
ABS 4

中文导读

针对多模态成像数据的高维性和复杂依赖结构,提出统计检验方法,用于检验脑区与模态间的独立性,并通过HCP研究中的多任务fMRI数据验证。

Abstract

Statistical analysis of multimodal imaging data is a challenging task, since the data involves high-dimensionality, strong spatial correlations and complex data structures. In this paper, we propose rigorous statistical testing procedures for making inferences on the complex dependence of multimodal imaging data. Motivated by the analysis of multitask fMRI data in the Human Connectome Project (HCP) study, we particularly address three hypothesis testing problems: (a) testing independence among imaging modalities over brain regions, (b) testing independence between brain regions within imaging modalities, and (c) testing independence between brain regions across different modalities. Considering a general form for all the three tests, we develop a global testing procedure and a multiple testing procedure controlling the false discovery rate. We study theoretical properties of the proposed tests and develop a computationally efficient distributed algorithm. The proposed methods and theory are general and relevant for many statistical problems of testing independence structure among the components of high-dimensional random vectors with arbitrary dependence structures. We also illustrate our proposed methods via extensive simulations and analysis of five task fMRI contrast maps in the HCP study.

统计推断多模态成像功能磁共振成像高维数据分析