A hypergraph transformer method for brain disease diagnosis
A hypergraph transformer method for brain disease diagnosis
Blog Article
ObjectiveTo address the high-order correlation modeling and fusion challenges between functional and structural brain networks.MethodThis paper proposes a hypergraph transformer method for modeling high-order correlations between functional and structural brain networks.By utilizing hypergraphs, we can effectively capture the high-order correlations within brain networks.The Transformer model provides robust feature extraction and integration capabilities that are capable Brides of handling complex multimodal brain imaging.
ResultsThe proposed method is evaluated on the ABIDE and ADNI datasets.It outperforms all the comparison methods, including traditional and graph-based methods, in diagnosing different types of brain diseases.The experimental results demonstrate its potential and application Scanner3D prospects in clinical practice.ConclusionThe proposed method provides new tools and insights for brain disease diagnosis, improving accuracy and aiding in understanding complex brain network relationships, thus laying a foundation for future brain science research.