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An evaluation of independent component analyses with an application to resting-state fMRI.

机译:独立成分分析的评估及其在静息态功能磁共振成像中的应用。

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We examine differences between independent component analyses (ICAs) arising from different assumptions, measures of dependence, and starting points of the algorithms. ICA is a popular method with diverse applications including artifact removal in electrophysiology data, feature extraction in microarray data, and identifying brain networks in functional magnetic resonance imaging (fMRI). ICA can be viewed as a generalization of principal component analysis (PCA) that takes into account higher-order cross-correlations. Whereas the PCA solution is unique, there are many ICA methods-whose solutions may differ. Infomax, FastICA, and JADE are commonly applied to fMRI studies, with FastICA being arguably the most popular. Hastie and Tibshirani (2003) demonstrated that ProDenICA outperformed FastICA in simulations with two components. We introduce the application of ProDenICA to simulations with more components and to fMRI data. ProDenICA was more accurate in simulations, and we identified differences between biologically meaningful ICs from ProDenICA versus other methods in the fMRI analysis. ICA methods require nonconvex optimization, yet current practices do not recognize the importance of, nor adequately address sensitivity to, initial values. We found that local optima led to dramatically different estimates in both simulations and group ICA of fMRI, and we provide evidence that the global optimum from ProDenICA is the best estimate. We applied a modification of the Hungarian (Kuhn-Munkres) algorithm to match ICs from multiple estimates, thereby gaining novel insights into how brain networks vary in their sensitivity to initial values and ICA method.
机译:我们检查了独立组件分析(ICA)之间的差异,这些差异是由不同的假设,依赖性的度量以及算法的起点引起的。 ICA是一种具有多种应用程序的流行方法,包括电生理数据中的伪影去除,微阵列数据中的特征提取以及功能磁共振成像(fMRI)中的大脑网络识别。 ICA可以看作是考虑了高阶互相关的主成分分析(PCA)的概括。尽管PCA解决方案是独特的,但有许多ICA方法-两种解决方案可能有所不同。 Infomax,FastICA和JADE通常用于功能磁共振成像研究,其中FastICA无疑是最受欢迎的。 Hastie和Tibshirani(2003)在两个方面的仿真中证明ProDenICA优于FastICA。我们将ProDenICA的应用介绍给具有更多组件的仿真和fMRI数据。 ProDenICA在仿真中更加准确,我们在功能磁共振成像分析中确定了ProDenICA具有生物学意义的IC与其他方法之间的差异。 ICA方法需要非凸优化,但是当前的实践并未认识到初始值的重要性,也没有充分解决其敏感性。我们发现,局部最优导致fMRI的模拟和ICA组的估计存在显着差异,并且我们提供了证据表明ProDenICA的全局最优是最佳估计。我们对匈牙利(Kuhn-Munkres)算法进行了修改,以匹配来自多个估计值的IC,从而获得了关于大脑网络对初始值和ICA方法的敏感性如何变化的新颖见解。

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