TY - JOUR
T1 - MO-GCN
T2 - A multi-omics graph convolutional network for discriminative analysis of schizophrenia
AU - Wang, Haiyuan
AU - Peng, Runlin
AU - Huang, Yuanyuan
AU - Liang, Liqin
AU - Wang, Wei
AU - Zhu, Baoyuan
AU - Gao, Chenyang
AU - Guo, Minxin
AU - Zhou, Jing
AU - Li, Hehua
AU - Li, Xiaobo
AU - Ning, Yuping
AU - Wu, Fengchun
AU - Wu, Kai
N1 - Publisher Copyright:
© 2025
PY - 2025/2
Y1 - 2025/2
N2 - The methodology of machine learning with multi-omics data has been widely adopted in the discriminative analyses of schizophrenia, but most of these studies ignored the cooperative interactions and topological attributes of multi-omics networks. In this study, we constructed three types of brain graphs (BGs), three types of gut graphs (GGs), and nine types of brain-gut combined graphs (BGCGs) for each individual. We proposed a novel methodology of multi-omics graph convolutional network (MO-GCN) with an attention mechanism to construct a classification model by integrating all BGCGs. We also identified important brain and gut features using the Topk pooling layer and analyzed their correlations with the Positive and Negative Syndrome Scale (PANSS) and MATRICS Consensus Cognitive Battery (MCCB) scores. The results showed that the novel MO-GCN model using BGCGs outperformed the GCN models using either BGs or GGs. In particular, the accuracy of the best model by 5-fold cross-validation reached 84.0 %. Interpretability analysis revealed that the top 10 important brain features were primarily from the hippocampus, olfactory, fusiform and pallidum, which were involved in the brain systems of memory, learning and emotion. The top 10 important gut features were primarily from Dorea, Ruminococcus, Subdoligranulum and Clostridium, etc. Moreover, the important brain and gut features were significantly correlated with the PANSS and MCCB scores, respectively. In conclusion, the MO-GCN can effectively improve the classification performance and provide a potential gut microbiota-brain perspective for the understanding of schizophrenia.
AB - The methodology of machine learning with multi-omics data has been widely adopted in the discriminative analyses of schizophrenia, but most of these studies ignored the cooperative interactions and topological attributes of multi-omics networks. In this study, we constructed three types of brain graphs (BGs), three types of gut graphs (GGs), and nine types of brain-gut combined graphs (BGCGs) for each individual. We proposed a novel methodology of multi-omics graph convolutional network (MO-GCN) with an attention mechanism to construct a classification model by integrating all BGCGs. We also identified important brain and gut features using the Topk pooling layer and analyzed their correlations with the Positive and Negative Syndrome Scale (PANSS) and MATRICS Consensus Cognitive Battery (MCCB) scores. The results showed that the novel MO-GCN model using BGCGs outperformed the GCN models using either BGs or GGs. In particular, the accuracy of the best model by 5-fold cross-validation reached 84.0 %. Interpretability analysis revealed that the top 10 important brain features were primarily from the hippocampus, olfactory, fusiform and pallidum, which were involved in the brain systems of memory, learning and emotion. The top 10 important gut features were primarily from Dorea, Ruminococcus, Subdoligranulum and Clostridium, etc. Moreover, the important brain and gut features were significantly correlated with the PANSS and MCCB scores, respectively. In conclusion, the MO-GCN can effectively improve the classification performance and provide a potential gut microbiota-brain perspective for the understanding of schizophrenia.
KW - Brain network
KW - Classification
KW - Graph convolutional network
KW - Gut network
KW - Multi-omics
KW - Schizophrenia
UR - http://www.scopus.com/inward/record.url?scp=85214516279&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85214516279&partnerID=8YFLogxK
U2 - 10.1016/j.brainresbull.2025.111199
DO - 10.1016/j.brainresbull.2025.111199
M3 - Article
C2 - 39788459
AN - SCOPUS:85214516279
SN - 0361-9230
VL - 221
JO - Brain Research Bulletin
JF - Brain Research Bulletin
M1 - 111199
ER -