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Remodeling Pearson's Correlation for Functional Brain Network Estimation and Autism Spectrum Disorder Identification

Authors
Li, WeikaiWang, ZhengxiaZhang, LimeiQiao, LishanShen, Dinggang
Issue Date
31-8월-2017
Publisher
FRONTIERS MEDIA SA
Keywords
functional brain network; functional magnetic resonance imaging; Pearson' s correlation; sparse representation; scale-free; autism spectrum disorder
Citation
FRONTIERS IN NEUROINFORMATICS, v.11
Indexed
SCIE
SCOPUS
Journal Title
FRONTIERS IN NEUROINFORMATICS
Volume
11
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/82507
DOI
10.3389/fninf.2017.00055
ISSN
1662-5196
Abstract
Functional brain network (FBN) has been becoming an increasingly important way to model the statistical dependence among neural time courses of brain, and provides effective imaging biomarkers for diagnosis of some neurological or psychological disorders. Currently, Pearson's Correlation (PC) is the simplest and most widely-used method in constructing FBNs. Despite its advantages in statistical meaning and calculated performance, the PC tends to result in a FBN with dense connections. Therefore, in practice, the PC-based FBN needs to be sparsified by removing weak (potential noisy) connections. However, such a scheme depends on a hard-threshold without enough flexibility. Different from this traditional strategy, in this paper, we propose a new approach for estimating FBNs by remodeling PC as an optimization problem, which provides a way to incorporate biological/physical priors into the FBNs. In particular, we introduce an L1-norm regularizer into the optimization model for obtaining a sparse solution. Compared with the hard-threshold scheme, the proposed framework gives an elegantmathematical formulation for sparsifying PC-based networks. More importantly, it provides a platform to encode other biological/ physical priors into the PC-based FBNs. To further illustrate the flexibility of the proposed method, we extend the model to a weighted counterpart for learning both sparse and scale-free networks, and then conduct experiments to identify autismspectrumdisorders (ASD) fromnormal controls (NC) based on the constructed FBNs. Consequently, we achieved an 81.52% classification accuracy which outperforms the baseline and state-of-the-art methods.
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