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A Parcellation Based Nonparametric Algorithm for Independent Component Analysis with Application to fMRI Data

机译:基于分类的非参数独立成分分析算法及其在fMRI数据中的应用

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摘要

Independent Component analysis (ICA) is a widely used technique for separating signals that have been mixed together. In this manuscript, we propose a novel ICA algorithm using density estimation and maximum likelihood, where the densities of the signals are estimated via p-spline based histogram smoothing and the mixing matrix is simultaneously estimated using an optimization algorithm. The algorithm is exceedingly simple, easy to implement and blind to the underlying distributions of the source signals. To relax the identically distributed assumption in the density function, a modified algorithm is proposed to allow for different density functions on different regions. The performance of the proposed algorithm is evaluated in different simulation settings. For illustration, the algorithm is applied to a research investigation with a large collection of resting state fMRI datasets. The results show that the algorithm successfully recovers the established brain networks.
机译:独立分量分析(ICA)是一种广泛使用的技术,用于分离混合在一起的信号。在这份手稿中,我们提出了一种使用密度估计和最大似然性的新颖ICA算法,其中信号的密度通过基于p样条的直方图平滑估计,而混合矩阵则使用优化算法进行估计。该算法极其简单,易于实现,并且对源信号的基本分布视而不见。为了放松密度函数中相同分布的假设,提出了一种改进的算法以允许在不同区域上使用不同的密度函数。在不同的仿真设置下评估了所提出算法的性能。为了说明起见,该算法被应用于具有大量静止状态fMRI数据集的研究调查。结果表明,该算法成功地恢复了已建立的脑网络。

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