Comparison of three group ICA methods for multi-subject fMRI data analysis

Mingqi Hui, L. Yao, Zhi-ying Long
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引用次数: 1

Abstract

Since spatial independent component analysis (sICA) was introduced to fMRI data analysis of single subject by Mckeown (1998), several group ICA approaches including subject-specific ICA, across-subject averaging, temporal/spatial concatenation and tensor probabilistic ICA (PICA) have been proposed to generate group inference over a group of subjects. By far, the subject-specific ICA, temporal concatenation method and tensor PICA have been applied to fMRI data analysis. Among the three methods, both temporal concatenation method and tensor PICA are the most widely used. However, there hasn't been any comparison of subject-specific ICA, temporal concatenation method and tensor PICA. The current study aims at comparing the three group ICA methods at various noise levels. Simulated experiment based on human resting fMRI data revealed that tensor PICA provided the best overall performance due to the highest spatial detection power and relatively more accurate estimation of time course. Temporal concatenation method provided moderate performance in terms of relatively higher spatial detection power and simpler algorithm. Subject-specific method showed the worst spatial detection power and was the most time consuming in component selection.
三组ICA方法在多主体fMRI数据分析中的比较
自从Mckeown(1998)将空间独立分量分析(sICA)引入到单个受试者的fMRI数据分析中以来,已经提出了几种群体ICA方法,包括特定受试者ICA、跨受试者平均、时空连接和张量概率ICA (PICA),以对一组受试者进行群体推理。到目前为止,受试者特异性ICA、时间串联法和张量PICA已被应用于fMRI数据分析。在这三种方法中,时间级联法和张量PICA是应用最广泛的方法。然而,目前还没有对受试者特异性ICA、时间串联法和张量ICA进行比较。本研究旨在比较不同噪声水平下的三组ICA方法。基于人类静息fMRI数据的模拟实验表明,PICA张量具有最高的空间检测能力和相对更准确的时间过程估计,具有最佳的综合性能。时间级联方法具有较高的空间检测能力和较简单的算法,性能适中。受试者特异性方法的空间检测能力最差,且在成分选择上耗时最多。
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