正则化约束对FMRI脑网络源分解的影响

Quang D. D. Nguyen, An D. Le, Bao Q. Pham, Hien M. Nguyen
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引用次数: 0

摘要

借助1MRI技术可以可靠地研究人脑功能连接。脑功能网络分解可以通过具有独立性约束的独立分量分析(ICA)、具有空间分量稀疏性约束的KSVD字典更新形态学分量分析(MCA-KSVD)或无约束的PowerFactorization (PF)等方法来解决,但目前fMRI学界尚未应用这种方法。为了寻找分析1MRI功能网络的有效方法,本研究探讨了ICA MCA-KSVD和PF方法中使用的各种约束对所得分解网络的影响。实验中观察到的独立性和极端稀疏性约束的相互作用表明,这两个约束之间存在联系。具体来说,在极端情况下,稀疏性约束产生空间独立的分量。
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Effects of regularizaron constraints on FMRI brain network source decomposition
Human brain functional connectivity can be reliably studied with the aid of 1MRI technology. Brain functional network decomposition can be solved by available methods such as Independent Component Analysis (ICA) with independence constraint, Morphological Component Analysis with KSVD dictionary update (MCA-KSVD) with sparsity constraint on spatial components, or constraint-free method PowerFactorization (PF) that has not been applied and known to the fMRI community so far. In the quest for finding methods that are effective for analyzing 1MRI functional networks, this study investigates the effects of various constraints used in the ICA MCA-KSVD and PF methods on the resulting decomposed networks. The observed mutual effects of independence and extreme sparsity constraints experimentally suggest that there is a connection between the two constraints. Specifically, the sparsity constraint in extreme case yields spatially independent components.
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