
Inferring functional interaction and transition patterns via dynamic bayesian variable partition models
Author(s) -
Zhang Jing,
Li Xiang,
Li Cong,
Lian Zhichao,
Huang Xiu,
Zhong Guocheng,
Zhu Dajiang,
Li Kaiming,
Jin Changfeng,
Hu Xintao,
Han Junwei,
Guo Lei,
Hu Xiaoping,
Li Lingjiang,
Liu Tianming
Publication year - 2014
Publication title -
human brain mapping
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.005
H-Index - 191
eISSN - 1097-0193
pISSN - 1065-9471
DOI - 10.1002/hbm.22404
Subject(s) - dynamic functional connectivity , multivariate statistics , computer science , bayesian probability , artificial intelligence , salient , dynamic bayesian network , piecewise , resting state fmri , pattern recognition (psychology) , machine learning , mathematics , psychology , neuroscience , mathematical analysis
Multivariate connectivity and functional dynamics have been of wide interest in the neuroimaging field, and a variety of methods have been developed to study functional interactions and dynamics. In contrast, the temporal dynamic transitions of multivariate functional interactions among brain networks, in particular, in resting state, have been much less explored. This article presents a novel dynamic Bayesian variable partition model (DBVPM) that simultaneously considers and models multivariate functional interactions and their dynamics via a unified Bayesian framework. The basic idea is to detect the temporal boundaries of piecewise quasi‐stable functional interaction patterns, which are then modeled by representative signature patterns and whose temporal transitions are characterized by finite‐state transition machines. Results on both simulated and experimental datasets demonstrated the effectiveness and accuracy of the DBVPM in dividing temporally transiting functional interaction patterns. The application of DBVPM on a post‐traumatic stress disorder (PTSD) dataset revealed substantially different multivariate functional interaction signatures and temporal transitions in the default mode and emotion networks of PTSD patients, in comparison with those in healthy controls. This result demonstrated the utility of DBVPM in elucidating salient features that cannot be revealed by static pair‐wise functional connectivity analysis. Hum Brain Mapp 35:3314–3331, 2014 . © 2013 Wiley Periodicals, Inc .