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Resting-State Brain Functional Hyper-Network Construction Based on Elastic Net and Group Lasso Methods

机译:基于弹性网和群套索方法的静止状态脑功能超网络构建

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摘要

Brain network analysis has been widely applied in neuroimaging studies. A hyper-network construction method was previously proposed to characterize the high-order relationships among multiple brain regions, where every edge is connected to more than two brain regions and can be represented by a hyper-graph. A brain functional hyper-network is constructed by a sparse linear regression model using resting-state functional magnetic resonance imaging (fMRI) time series, which in previous studies has been solved by the lasso method. Despite its successful application in many studies, the lasso method has some limitations, including an inability to explain the grouping effect. That is, using the lasso method may cause relevant brain regions be missed in selecting related regions. Ideally, a hyper-edge construction method should be able to select interacting brain regions as accurately as possible. To solve this problem, we took into account the grouping effect among brain regions and proposed two methods to improve the construction of the hyper-network: the elastic net and the group lasso. The three methods were applied to the construction of functional hyper-networks in depressed patients and normal controls. The results showed structural differences among the hyper-networks constructed by the three methods. The hyper-network structure obtained by the lasso was similar to that obtained by the elastic net method but very different from that obtained by the group lasso. The classification results indicated that the elastic net method achieved better classification results than the lasso method with the two proposed methods of hyper-network construction. The elastic net method can effectively solve the grouping effect and achieve better classification performance.
机译:脑网络分析已广泛应用于神经影像研究。先前提出了一种超网络构造方法来表征多个大脑区域之间的高阶关系,其中每个边缘都连接到两个以上的大脑区域,并且可以用超图表示。通过使用静止状态功能磁共振成像(fMRI)时间序列的稀疏线性回归模型构建脑功能超网络,在以前的研究中,这已通过套索方法解​​决。尽管套索方法已在许多研究中成功应用,但它仍然存在一些局限性,包括无法解释分组效果。也就是说,使用套索方法可能会导致在选择相关区域时错过相关的大脑区域。理想地,超边缘构造方法应该能够尽可能准确地选择相互作用的大脑区域。为了解决这个问题,我们考虑了大脑区域之间的分组效应,并提出了两种改进超网络构造的方法:弹性网和组套索。这三种方法被用于抑郁患者和正常对照者的功能性超网络的构建。结果表明,三种方法构建的超网络之间的结构差异。套索获得的超网络结构与通过弹性网法获得的超网络结构相似,但与组套索获得的超网络结构非常不同。分类结果表明,在提出的两种超网络构造方法中,弹性网法比套索法具有更好的分类效果。弹性网法可以有效解决分组效果,达到更好的分类性能。

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