2023
DOI: 10.1101/2023.01.05.522960
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Graph Convolutional Learning of Multimodal Brain Connectome Data for Schizophrenia Classification

Abstract: The long term goal of this work is to develop powerful tools for brain network analysis in order to study structural and functional connectivity abnormalities in psychiatric disorders like schizophrenia. Graph convolutional neural networks (GCNN) are quite effective for learning complex discriminate features in graph-structured data. Here, we explore the GCNN to learn the discriminating features in multimodal human brain connectomes for the purpose of schizophrenia disorder classification. In particular, we tr… Show more

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“…More and more studies have been conducted in recent years on using GCN networks to classify mental diseases. Besides Alzheimer's disease, GCN has also applied to classify other diseases such as Parkinson's disease [37][38][39], autism [40][41][42], major depression [43][44][45], schizophrenia [46][47][48], attention deficit hyperactivity disorder [49][50], and bipolar disorder [51][52].…”
Section: Relevant Researchmentioning
confidence: 99%
“…More and more studies have been conducted in recent years on using GCN networks to classify mental diseases. Besides Alzheimer's disease, GCN has also applied to classify other diseases such as Parkinson's disease [37][38][39], autism [40][41][42], major depression [43][44][45], schizophrenia [46][47][48], attention deficit hyperactivity disorder [49][50], and bipolar disorder [51][52].…”
Section: Relevant Researchmentioning
confidence: 99%