Keywords: Functional Connectivity, fMRI (resting state)
Motivation: Parkinson's disease (PD) are difficult to diagnose and the mechanism of brain network alteration is unknown.
Goal(s): We aim to classify patients with PD and healthy individuals, and explore the alterations of brain networks in patients with PD.
Approach: We used BrainNetCNN+CL to classify resting-state functional magnetic resonance imaging (rs-fMRI) of patients with PD and healthy individuals.
Results: BrainNetCNN+CL had balanced accuracy of 0.78 and accuracy of 0.80. The default mode network, ventral attention network, and limbic network were altered in Parkinson's patients.
Impact: This study demonstrated the higher classification efficacy of BrainNetCNN+CL as well as the large-scale brain network alterations in PD patients.
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