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A Novel Sparse Overlapping Modularized Gaussian Graphical Model for Functional Connectivity Estimation

机译:一种用于功能连通性估计的新型稀疏重叠模块化高斯图形模型

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Neural mechanisms underlying brain functional systems remain poorly understood, the problem of estimating statistically robust and biologically meaningful functional connectivity by limited functional magnetic resonance imaging (fMRl) time series containing complex noises remains an open field. Addressing this issue, motivated by recent studies, which have highlighted that brain existing functional overlapping modularized patterns, we propose a novel sparse overlapping modularized Gaussian graphical model (SOMGGM) that estimates functional connectivity by modularizing the connection patterns and allowing each brain region belonging to multiple modules. Extensive experimental results demonstrate that the proposed SOMGGM not only has more power to accurately estimate functional connectivity network structure, but also improves feature extraction and enhances the performance in the brain neurological disease diagnosis task. Additionally, SOMGGM can help to find the brain regions assigned to multiple network modules which are likely important hub nodes. In general, the proposed SOMGGM offers a new computational methodology for brain functional connectivity estimation.
机译:大脑功能系统背后的神经机制仍然知之甚少,通过包含复杂噪声的有限功能磁共振成像(fMR1)时间序列估算具有统计学上鲁棒性和生物学意义的功能连接性的问题仍然是一个开放领域。为解决这一问题,根据最近的研究表明,大脑存在功能重叠的模块化模式,我们提出了一种新颖的稀疏重叠的模块化高斯图形模型(SOMGGM),该模型通过对连接模式进行模块化并允许每个大脑区域属于多个来估计功能连通性。模块。大量的实验结果表明,所提出的SOMGGM不仅具有更准确地估计功能连接网络结构的能力,而且还改进了特征提取功能,并增强了脑神经疾病诊断任务的性能。此外,SOMGGM可以帮助查找分配给可能是重要集线器节点的多个网络模块的大脑区域。一般而言,提出的SOMGGM为脑功能连通性估计提供了一种新的计算方法。

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