Morphological Brain Networks of White Matter: Mapping, Evaluation, Characterization, and Application

Author:

Li Junle1ORCID,Jin Suhui1,Li Zhen1,Zeng Xiangli1,Yang Yuping1,Luo Zhenzhen1,Xu Xiaoyu23,Cui Zaixu3,Liu Yaou4,Wang Jinhui1567ORCID

Affiliation:

1. Institute for Brain Research and Rehabilitation South China Normal University Guangzhou 510631 China

2. State Key Laboratory of Cognitive Neuroscience and Learning Beijing Normal University Beijing 100875 China

3. Chinese Institute for Brain Research Beijing 102206 China

4. Department of Radiology Beijing Tiantan Hospital Beijing 100070 China

5. Key Laboratory of Brain Cognition and Education Sciences Ministry of Education Guangzhou 510631 China

6. Center for Studies of Psychological Application South China Normal University Guangzhou 510631 China

7. Guangdong Key Laboratory of Mental Health and Cognitive Science South China Normal University Guangzhou 510631 China

Abstract

AbstractAlthough white matter (WM) accounts for nearly half of adult brain, its wiring diagram is largely unknown. Here, an approach is developed to construct WM networks by estimating interregional morphological similarity based on structural magnetic resonance imaging. It is found that morphological WM networks showed nontrivial topology, presented good‐to‐excellent test‐retest reliability, accounted for phenotypic interindividual differences in cognition, and are under genetic control. Through integration with multimodal and multiscale data, it is further showed that morphological WM networks are able to predict the patterns of hamodynamic coherence, metabolic synchronization, gene co‐expression, and chemoarchitectonic covariance, and associated with structural connectivity. Moreover, the prediction followed WM functional connectomic hierarchy for the hamodynamic coherence, is related to genes enriched in the forebrain neuron development and differentiation for the gene co‐expression, and is associated with serotonergic system‐related receptors and transporters for the chemoarchitectonic covariance. Finally, applying this approach to multiple sclerosis and neuromyelitis optica spectrum disorders, it is found that both diseases exhibited morphological dysconnectivity, which are correlated with clinical variables of patients and are able to diagnose and differentiate the diseases. Altogether, these findings indicate that morphological WM networks provide a reliable and biologically meaningful means to explore WM architecture in health and disease.

Funder

National Social Science Fund of China

Publisher

Wiley

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