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Connectivity Strength-Weighted Sparse Group Representation-Based Brain Network Construction for MCI Classification

机译:连接强度加权稀疏组表示的MCI分类脑网络施工

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Brain functional network analysis has shown great potential in understanding brain functions and also in identifying biomarkers for brain diseases, such as Alzheimer's disease (AD) and its early stage, mild cognitive impairment (MCI). In these applications, accurate construction of biologically meaningful brain network is critical. Sparse learning has been widely used for brain network construction; however, its l(1)-norm penalty simply penalizes each edge of a brain network equally, without considering the original connectivity strength which is one of the most important inherent linkwise characters. Besides, based on the similarity of the linkwise connectivity, brain network shows prominent group structure (i.e., a set of edges sharing similar attributes). In this article, we propose a novel brain functional network modeling framework with a "connectivity strength-weighted sparse group constraint." In particular, the network modeling can be optimized by considering both raw connectivity strength and its group structure, without losing the merit of sparsity. Our proposed method is applied to MCI classification, a challenging task for early AD diagnosis. Experimental results based on the resting-state functional MRI, from 50 MCI patients and 49 healthy controls, show that our proposed method is more effective (i.e., achieving a significantly higher classification accuracy, 84.8%) than other competing methods (e.g., sparse representation, accuracy -65.6%). Post hoc inspection of the informative features further shows more biologically meaningful brain functional connectivities obtained by our proposed method. (C) 2017 Wiley Periodicals, Inc.
机译:脑功能网络分析表现出巨大的潜力在了解脑功能以及识别脑病的生物标志物,例如阿尔茨海默病(AD)及其早期阶段,轻度认知障碍(MCI)。在这些应用中,精确构建生物有意义的脑网络是至关重要的。稀疏学习已广泛用于脑网络建设;但是,它的L(1)-norm惩罚只是惩罚大脑网络的每个边缘,而不考虑原始连接力,这是最重要的固有连接字符之一。此外,基于链接连接的相似性,脑网络显示突出的群体结构(即,一组边缘共享类似属性)。在本文中,我们提出了一种具有“连接强度加权稀疏组约束”的新型大脑功能网络建模框架。特别地,可以通过考虑原始连接强度及其组结构来优化网络建模,而不会失去稀疏性的优点。我们提出的方法适用于MCI分类,是早期广告诊断的具有挑战性的任务。基于静静态官能体MRI的实验结果,来自50例MCI患者和49例健康对照,表明我们所提出的方法比其他竞争方法更有效(即,达到明显较高的分类准确度,84.8%)(例如,稀疏表示,精度-65.6%)。信息性质的后HOC检查进一步展示了我们所提出的方法获得的更具生物学意义的脑功能性连接性。 (c)2017 Wiley期刊,Inc。

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