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Performance of complex-valued ICA algorithms for fMRI analysis: Importance of taking full diversity into account

机译:fMRI分析的复值ICA算法的性能:充分考虑多样性的重要性

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Independent component analysis (ICA) has been effectively used for the analysis of functional magnetic resonance imaging (fMRI) data, and recently for the analysis of fMRI data in its native complex-valued form. When performing complex ICA of fMRI analysis, it is desirable to take all three types of diversity - statistical property - that are present in the complex fMRI data into account: non-Gaussianity, sample dependence and noncircularity. In this paper, we study the performance of complex ICA by entropy rate bound minimization (CERBM) algorithm for fMRI analysis that takes all these three types of diversity into account. We perform a thorough comparison of its performance with that of complex Infomax (CInfomax) and complex ICA by entropy bound minimization (CEBM), two other important choices. While evaluating the performance of ICA algorithms for fMRI analysis, there are a number of challenges, including the lack of ground truth of fMRI data and inconsistent estimates due to the iterative nature of ICA algorithms. In this work, we also propose a statistical framework that utilizes an objective criterion to evaluate consistency of ICA algorithms. Using this framework, we show that CERBM leads to significant improvement in the estimations of components of interest in terms of providing lower mutual information rate, higher active scores and more numbers of activated voxels than those of CInfomax and CEBM, and the corresponding time courses present best task-relatedness with the paradigm.
机译:独立成分分析(ICA)已有效地用于功能性磁共振成像(fMRI)数据的分析,最近还用于分析其天然复数值形式的fMRI数据。当执行功能磁共振成像分析的复杂ICA时,最好考虑到复杂功能磁共振成像数据中存在的所有三种多样性-统计特性-非高斯性,样本依赖性和非圆形性。在本文中,我们通过熵速率限制最小化(CERBM)算法研究了复杂ICA的性能,该算法将所有这三种类型的多样性都考虑在内,用于fMRI分析。我们通过熵限制最小化(CEBM)(另外两个重要选择)对它与复杂Infomax(CInfomax)和复杂ICA的性能进行了彻底的比较。在评估ICA算法用于功能磁共振成像分析的性能时,存在许多挑战,包括缺乏功能磁共振成像数据的真实性以及由于ICA算法的迭代性质而导致的估计不一致。在这项工作中,我们还提出了一个利用客观标准评估ICA算法一致性的统计框架。使用此框架,我们显示,与提供CInfomax和CEBM相比,CERBM与CInfomax和CEBM相比,提供更低的互信息率,更高的活动评分和更多的激活体素,从而显着改善了感兴趣的组件的估计。与范例的最佳任务相关性。

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