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Correlation-Weighted Sparse Group Representation for Brain Network Construction in MCI Classification

机译:MCI分类中脑网络构建的相关加权稀疏群表示

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Analysis of brain functional connectivity network (BFCN) has shown great potential in understanding brain functions and identifying biomarkers for neurological and psychiatric disorders, such as Alzheimer's disease and its early stage, mild cognitive impairment (MCI). In all these applications, the accurate construction of biologically meaningful brain network is critical. Due to the sparse nature of the brain network, sparse learning has been widely used for complex BFCN construction. However, the conventional Zi-norm penalty in the sparse learning equally penalizes each edge (or link) of the brain network, which ignores the link strength and could remove strong links in the brain network. Besides, the conventional sparse regularization often overlooks group structure in the brain network, i.e., a set of links (or connections) sharing similar attribute. To address these issues, we propose to construct BFCN by integrating both link strength and group structure information. Specifically, a novel correlation-weighted sparse group constraint is devised to account for and balance among (1) sparsity, (2) link strength, and (3) group structure, in a unified framework. The proposed method is applied to MCI classification using the resting-state fMRI from ADNI-2 dataset. Experimental results show that our method is effective in modeling human brain connectomics, as demonstrated by superior MCI classification accuracy of 81.8%. Moreover, our method is promising for its capability in modeling more biologically meaningful sparse brain networks, which will benefit both basic and clinical neuroscience studies.
机译:对脑功能连接网络(BFCN)的分析显示出在理解脑功能和识别神经系统疾病和精神疾病(例如阿尔茨海默氏病及其早期,轻度认知障碍(MCI))的生物标志物方面的巨大潜力。在所有这些应用中,生物学上有意义的大脑网络的准确构建至关重要。由于大脑网络的稀疏性质,稀疏学习已被广​​泛用于复杂的BFCN构建。但是,稀疏学习中的常规Zi-norm惩罚同样会惩罚大脑网络的每个边缘(或链接),这会忽略链接强度,并可能删除大脑网络中的强链接。此外,常规的稀疏正则化经常忽略大脑网络中的组结构,即,一组共享相似属性的链接(或连接)。为了解决这些问题,我们建议通过集成链接强度和组结构信息来构造BFCN。具体而言,在统一框架中,设计了一种新颖的相关加权稀疏组约束来解决和平衡(1)稀疏性,(2)链接强度和(3)组结构。所提出的方法适用于使用ADNI-2数据集中的静止状态fMRI进行MCI分类。实验结果表明,我们的方法可有效地建模人脑连接组学,MCI分类准确度高达81.8%证明了这一方法。此外,我们的方法因其具有建模更具生物学意义的稀疏大脑网络的能力而很有希望,这将有益于基础和临床神经科学研究。

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