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Inferring Human Brain Structural Connectivity Based on Neural Networks

机译:基于神经网络的人脑结构连通性推断

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A central and fundamental issue in cognitive neuroscience is to comprehend the relationship between human brain functional and structural connectivity. Previous studies normally focus on the relationship by predicting functional connectivity from structural connectivity and show there is a cohesive correlation between the two types of networks. In this paper, we investigate the relation by revealing the true anatomical connections from the functional correlations using multi-layer neural networks, which is trained to learn the intrinsic mapping mechanism and recover some missed connections with diffusion magnetic resonance imaging (dMRI) tractography, particularly the cross-hemispheric homotopic connections. We execute the method to a dataset with 246 brain areas acquired from 147 subjects. The results show that around 65% of the average intrahemispheric structural connections are correctly inferred.
机译:认知神经科学的核心和基本问题是理解人脑功能与结构连接性之间的关系。以前的研究通常通过预测结构连接的功能连接来关注这种关系,并表明这两种类型的网络之间存在内聚的关联。在本文中,我们通过使用多层神经网络揭示功能相关性的真实解剖联系来研究这种关系,训练该神经网络以学习其固有的映射机制并利用扩散磁共振成像(dMRI)影像学来恢复某些错过的联系,特别是跨半球同位连接。我们对从147个受试者中获得的246个大脑区域的数据集执行该方法。结果表明,正确地推断出平均大约半球内结构连接的65%。

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