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Functional Connectivity in the Resting Brain: An Analysis Based on ICA

机译:静息大脑中的功能连接性:基于ICA的分析

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The functional connectivity of the resting state, or default mode, of the human brain has been a research focus, because it is reportedly altered in many neurological and psychiatric disorders. Among the methods to assess the functional connectivity of the resting brain, independent component analysis (ICA) has been very useful. But how to choose the optimal number of separated components and the best-fit component of default mode network are still problems left. In this paper, we used three different numbers of independent components to separate the fMRI data of resting brain and three criterions to choose the best-fit component. Furthermore, we proposed a new approach to get the best-fit component. The result of the new approach is consistent with the default-mode network.
机译:人脑的静止状态或默认模式的功能连通性一直是研究的重点,因为据报道在许多神经系统和精神病性疾病中它已改变。在评估静息大脑功能连接性的方法中,独立成分分析(ICA)非常有用。但是,如何选择默认组件网络的最佳分离组件数量和最适合组件仍然存在问题。在本文中,我们使用三种不同数量的独立成分来分离静息大脑的fMRI数据,并使用三个标准来选择最适合的成分。此外,我们提出了一种新方法来获取最适合的组件。新方法的结果与默认模式网络一致。

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