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Structural Connectivity Enriched Functional Brain Network Using Simplex Regression with GraphNet

机译:使用简单回归与GraphNet的结构连接富集功能性脑网络

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摘要

The connectivity analysis is a powerful technique for investigating a hard-wired brain architecture as well as flexible, functional dynamics tied to human cognition. Recent multi-modal connectivity studies had the challenge of combining functional and structural connectivity information into one integrated network. In this paper, we proposed a simplex regression model with graph-constrained Elastic Net (GraphNet) to estimate functional networks enriched by structural connectivity in a biologically meaningful way with a low model complexity. Our model constructed the functional networks using sparse simplex regression framework and enriched structural connectivity information based on GraphNet constraint. We applied our model on the real neu-roimaging datasets to show its ability for predicting a clinical score. Our results demonstrated that integrating multi-modal features could detect more sensitive and subtle brain biomarkers than using a single modality.
机译:连接性分析是一种强大的技术,用于调查硬连线的脑架构以及与人类认知相关的灵活功能动态。最近的多模态连接研究具有将功能和结构连接信息与一个集成网络结合成一个挑战。在本文中,我们提出了一种简单的回归模型,具有图形受限的弹性网(GraphNet),以通过具有低模型复杂性的生物学上有意义的方式来估计通过结构连通性富集的功能网络。我们的模型使用稀疏的单简回归框架构建了功能网络,并基于GraphNet约束富集的结构连接信息。我们在真正的Neu-Roimaging Datasets上应用了我们的模型,以显示其预测临床评分的能力。我们的结果表明,集成多模态特征可以检测比使用单个模态更敏感和微妙的脑生物标志物。

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