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Artifact removal in the context of group ICA: A comparison of single-subject and group approaches

机译:ICA组中的伪像去除:单对象和组方法的比较

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Independent component analysis (ICA) has been widely applied to identify intrinsic brain networks from fMRI data. Group ICA computes group-level components from all data and subsequently estimates individual-level components to recapture intersubject variability. However, the best approach to handle artifacts, which may vary widely among subjects, is not yet clear. In this work, we study and compare two ICA approaches for artifacts removal. One approach, recommended in recent work by the Human Connectome Project, first performs ICA on individual subject data to remove artifacts, and then applies a group ICA on the cleaned data from all subjects. We refer to this approach as Individual ICA based artifacts Removal Plus Group ICA (IRPG). A second proposed approach, called Group Information Guided ICA (GIG-ICA), performs ICA on group data, then removes the group-level artifact components, and finally performs subject-specific ICAs using the group-level non-artifact components as spatial references. We used simulations to evaluate the two approaches with respect to the effects of data quality, data quantity, variable number of sources among subjects, and spatially unique artifacts. Resting-state test-retest datasets were also employed to investigate the reliability of functional networks. Results from simulations demonstrate GIG-ICA has greater performance compared with IRPG, even in the case when single-subject artifacts removal is perfect and when individual subjects have spatially unique artifacts. Experiments using test-retest data suggest that GIG-ICA provides more reliable functional networks. Based on high estimation accuracy, ease of implementation, and high reliability of functional networks, we find GIG-ICA to be a promising approach. Hum Brain Mapp 37:1005-1025, 2016. (c) 2015 Wiley Periodicals, Inc.
机译:独立成分分析(ICA)已被广泛应用于从fMRI数据中识别内在的大脑网络。组ICA根据所有数据计算组级别的组成部分,然后估计单个级别的组成部分以重新捕获对象间的可变性。但是,处理工件的最佳方法尚不明确,因为工件之间的差异可能很大。在这项工作中,我们研究和比较了两种ICA去除伪影的方法。 Human Connectome Project在最近的工作中建议使用一种方法,该方法首先对单个主题数据执行ICA以去除伪影,然后对所有主题的清除数据应用ICA组。我们将此方法称为基于单个ICA的工件去除加组ICA(IRPG)。第二种提议的方法称为组信息引导ICA(GIG-ICA),它对组数据执行ICA,然后删除组级别的伪像成分,最后使用组级别的非伪像成分作为空间参考来执行特定于主题的ICA。 。我们使用模拟方法来评估这两种方法的效果,这些方法涉及数据质量,数据量,主题之间可变数量的源以及空间上唯一的伪影的影响。静止状态重测数据集也被用来研究功能网络的可靠性。仿真结果表明,即使在单对象伪影去除效果理想且单个对象在空间上具有唯一伪影的情况下,GIG-ICA的性能也比IRPG高。使用重测数据的实验表明,GIG-ICA提供了更可靠的功能网络。基于高估计精度,易于实现和功能网络的高可靠性,我们发现GIG-ICA是一种很有前途的方法。嗡嗡声大脑Mapp 37:1005-1025,2016.(c)2015 Wiley Periodicals,Inc.

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