通过图神经网络解码视觉类别的功能网络 / Decoding Functional Networks for Visual Categories via GNNs
1️⃣ 一句话总结
这项研究利用图神经网络分析大脑扫描数据,成功解码了大脑在处理不同视觉类别(如运动、食物、车辆)时形成的特定功能连接网络,揭示了视觉通路中可重复的、有生物学意义的子网络,从而将机器学习与神经科学联系起来。
Understanding how large-scale brain networks represent visual categories is fundamental to linking perception and cortical organization. Using high-resolution 7T fMRI from the Natural Scenes Dataset, we construct parcel-level functional graphs and train a signed Graph Neural Network that models both positive and negative interactions, with a sparse edge mask and class-specific saliency. The model accurately decodes category-specific functional connectivity states (sports, food, vehicles) and reveals reproducible, biologically meaningful subnetworks along the ventral and dorsal visual pathways. This framework bridges machine learning and neuroscience by extending voxel-level category selectivity to a connectivity-based representation of visual processing.
通过图神经网络解码视觉类别的功能网络 / Decoding Functional Networks for Visual Categories via GNNs
这项研究利用图神经网络分析大脑扫描数据,成功解码了大脑在处理不同视觉类别(如运动、食物、车辆)时形成的特定功能连接网络,揭示了视觉通路中可重复的、有生物学意义的子网络,从而将机器学习与神经科学联系起来。
源自 arXiv: 2603.28931