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Group ICA of resting-state data: A comparison

机译:静止状态数据的ICA组:比较

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Objective: Independent component analysis (ICA) has proven its applicability in both standard and resting-state fMRI. While there is consensus on single-subject ICA methodology, the extension to group ICA is more complex and a number of approaches have been suggested. Currently, two software packages are most frequently used for ICA group analysis: (1) GIFT introduced by Calhoun et al. [7], and (2) PICA, proposed by Beckmann et al. [3]. Both methods are based on the assumption of statistical independence of the extracted component maps ("spatial ICA"). Group maps are estimated via ICA on pre-calculated group data sets. Material and Methods: In this study, we applied the two analysis approaches to a group of fMRI resting-state data sets obtained from twenty-eight healthy subjects. Default implementations were used and the number of components was restricted to 5, 10, 15, 20, 25, 30, and 35. The performance of GIFT and PICA was assessed with respect to the number of resting-state networks detected at different component estimation levels and computational load. Results: At low component estimation levels GIFT analysis resulted in more RSNs than PICA, while for individually determined component levels both approaches obtained the same RSNs. Although component maps show some variability across the two methods, spatial and temporal comparison using correlation coefficients resulted in no significant differences between the RSNs detected across the different analyses Conclusion: Our results show that both approaches provide an adequate way of group ICA obtaining a comparable number of RSNs differing mainly in calculation times.
机译:目的:独立成分分析(ICA)已证明其在标准功能磁共振成像和静息功能磁共振成像中的适用性。尽管在单对象ICA方法论上已达成共识,但对ICA组的扩展更为复杂,并提出了许多方法。当前,两种软件包最常用于ICA组分析:(1)Calhoun等人介绍的GIFT。 [7]和(2)Beckman等人提出的PICA。 [3]。两种方法都基于提取的分量图(“空间ICA”)的统计独立性的假设。通过ICA在预先计算的组数据集上估算组图。材料和方法:在这项研究中,我们将两种分析方法应用于从28位健康受试者获得的一组fMRI静止状态数据集。使用默认实现,组件数限制为5、10、15、20、25、30和35。GIFT和PICA的性能是根据在不同组件估计下检测到的静止状态网络数进行评估的级别和计算负荷。结果:在低组分估计水平下,GIFT分析产生的RSN比PICA多,而对于单独确定的组分水平,两种方法均获得相同的RSN。尽管分量图在两种方法之间显示出一定的可变性,但使用相关系数进行时空比较在不同分析中检测到的RSN之间没有显着差异。结论:我们的结果表明,两种方法都为ICA组获得可比较的数量提供了充分的方法。 RSN的差异主要在于计算时间上的差异。

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