4.7 Article

A dynamic graph convolutional neural network framework reveals new insights into connectome dysfunctions in ADHD

期刊

NEUROIMAGE
卷 246, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.118774

关键词

Graph convolutional networks; Resting-state fMRI; Brain networks; Precision diagnosis; Attention deficit hyperactivity disorder

资金

  1. Lehigh University
  2. NSF [2019035]
  3. NIH [R01MH123610, RF1MH116920, R01MH111886]

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The dynamic graph convolutional network (dGCN) improves the diagnostic performance of Attention Deficit Hyperactivity Disorder (ADHD) by learning informative features in brain functional connectome. Visualization of functional abnormal regions and connectivity reveals important brain areas related to ADHD and a positive correlation with symptom severity. The proposed dGCN model shows great potential for precision diagnosis of ADHD and broader applications in studying mental disorders based on brain connectome.
The pathological mechanism of attention deficit hyperactivity disorder (ADHD) is incompletely specified, which leads to difficulty in precise diagnosis. Functional magnetic resonance imaging (fMRI) has emerged as a common neuroimaging technique for studying the brain functional connectome. Most existing methods that have either ignored or simply utilized graph structure, do not fully leverage the potentially important topological information which may be useful in characterizing brain disorders. There is a crucial need for designing novel and efficient approaches which can capture such information. To this end, we propose a new dynamic graph convolutional network (dGCN), which is trained with sparse brain regional connections from dynamically calculated graph features. We also develop a novel convolutional readout layer to improve graph representation. Our extensive experimental analysis demonstrates significantly improved performance of dGCN for ADHD diagnosis compared with existing machine learning and deep learning methods. Visualizations of the salient regions of interest (ROIs) and connectivity based on informative features learned by our model show that the identified functional abnormalities mainly involve brain regions in temporal pole, gyrus rectus, and cerebellar gyri from temporal lobe, frontal lobe, and cerebellum, respectively. A positive correlation was further observed between the identified connectomic abnormalities and ADHD symptom severity. The proposed dGCN model shows great promise in providing a functional network-based precision diagnosis of ADHD and is also broadly applicable to brain connectome-based study of mental disorders.

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