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Disease-specific resting-state EEG network variations in schizophrenia revealed by the contrastive machine learning

Fali Li, Guangying Wang, Lin Jiang, Dezhong Yao, Peng Xu, Xuntai Ma, Debo Dong, Baoming He

2023Brain Research Bulletin8 citationsDOIOpen Access PDF

Abstract

Given a multitude of genetic and environmental factors, when investigating the variability in schizophrenia (SCZ) and the first-degree relatives (R-SCZ), latent disease-specific variation is usually hidden. To reliably investigate the mechanism underlying the brain deficits from the aspect of functional networks, we newly iterated a framework of contrastive variational autoencoders (cVAEs) applied in the contrasts among three groups, to disentangle the latent resting-state network patterns specified for the SCZ and R-SCZ. We demonstrated that the comparison in reconstructed resting-state networks among SCZ, R-SCZ, and healthy controls (HC) revealed network distortions of the inner-frontal hypoconnectivity and frontal-occipital hyperconnectivity, while the original ones illustrated no differences. And only the classification by adopting the reconstructed network metrics achieved satisfying performances, as the highest accuracy of 96.80% ± 2.87%, along with the precision of 95.05% ± 4.28%, recall of 98.18% ± 3.83%, and F1-score of 96.51% ± 2.83%, was obtained. These findings consistently verified the validity of the newly proposed framework for the contrasts among the three groups and provided related resting-state network evidence for illustrating the pathological mechanism underlying the brain deficits in SCZ, as well as facilitating the diagnosis of SCZ.

Topics & Concepts

Schizophrenia (object-oriented programming)Resting state fMRIMechanism (biology)Artificial intelligenceRecallPsychologyNeuroscienceComputer sciencePattern recognition (psychology)Cognitive psychologyPsychiatryPhilosophyEpistemologyFunctional Brain Connectivity StudiesNeural dynamics and brain functionMental Health Research Topics