
Connectivity strength‐weighted sparse group representation‐based brain network construction for M CI classification
Author(s) -
Yu Renping,
Zhang Han,
An Le,
Chen Xiaobo,
Wei Zhihui,
Shen Dinggang
Publication year - 2017
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.23524
Subject(s) - resting state fmri , artificial intelligence , computer science , sparse approximation , pattern recognition (psychology) , similarity (geometry) , representation (politics) , constraint (computer aided design) , machine learning , psychology , neuroscience , mathematics , politics , political science , law , geometry , image (mathematics)
Brain functional network analysis has shown great potential in understanding brain functions and also in identifying biomarkers for brain diseases, such as Alzheimer's disease (AD) and its early stage, mild cognitive impairment (MCI). In these applications, accurate construction of biologically meaningful brain network is critical. Sparse learning has been widely used for brain network construction; however, its l 1 ‐norm penalty simply penalizes each edge of a brain network equally , without considering the original connectivity strength which is one of the most important inherent linkwise characters. Besides, based on the similarity of the linkwise connectivity, brain network shows prominent group structure (i.e., a set of edges sharing similar attributes). In this article, we propose a novel brain functional network modeling framework with a “connectivity strength‐weighted sparse group constraint.” In particular, the network modeling can be optimized by considering both raw connectivity strength and its group structure, without losing the merit of sparsity. Our proposed method is applied to MCI classification, a challenging task for early AD diagnosis. Experimental results based on the resting‐state functional MRI, from 50 MCI patients and 49 healthy controls, show that our proposed method is more effective (i.e., achieving a significantly higher classification accuracy, 84.8%) than other competing methods (e.g., sparse representation, accuracy = 65.6%). Post hoc inspection of the informative features further shows more biologically meaningful brain functional connectivities obtained by our proposed method. Hum Brain Mapp 38:2370–2383, 2017 . © 2017 Wiley Periodicals, Inc.