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MICA—A toolbox for masked independent component analysis of fMRI data

机译:MICA-用于fMRI数据的屏蔽独立成分分析的工具箱

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摘要

Independent component analysis (ICA) is a widely used technique for investigating functional connectivity (fc) in functional magnetic resonance imaging data. Masked independent component analysis (mICA), that is, ICA restricted to a defined region of interest, has been shown to detect local fc networks in particular brain regions, including the cerebellum, brainstem, posterior cingulate cortex, operculo‐insular cortex, hippocampus, and spinal cord. Here, we present the mICA toolbox, an open‐source GUI toolbox based on FSL command line tools that performs mICA and related analyses in an integrated way. Functions include automated mask generation from atlases, essential preprocessing, mICA‐based parcellation, back‐reconstruction of whole‐brain fc networks from local ones, and reproducibility analysis. Automated slice‐wise calculation and cropping are additional functions that reduce computational time and memory requirements for large analyses. To validate our toolbox, we tested these different functions on the cerebellum, hippocampus, and brainstem, using resting‐state and task‐based data from the Human Connectome Project. In the cerebellum, mICA detected six local networks together with their whole‐brain counterparts, closely replicating previous results. MICA‐based parcellation of the hippocampus showed a longitudinally discrete configuration with greater heterogeneity in the anterior hippocampus, consistent with animal and human literature. Finally, brainstem mICA detected motor and sensory nuclei involved in the motor task of tongue movement, thereby replicating and extending earlier results. . ©
机译:独立成分分析(ICA)是一种广泛使用的技术,用于研究功能性磁共振成像数据中的功能连接性(fc)。蒙版独立成分分析(mICA),即仅限于指定目标区域的ICA,已显示可检测特定大脑区域的局部fc网络,包括小脑,脑干,后扣带回皮层,小脑岛皮层,海马,和脊髓。在这里,我们介绍了mICA工具箱,这是一个基于FSL命令行工具的开源GUI工具箱,它以集成方式执行mICA和相关分析。功能包括从地图集自动生成蒙版,进行必要的预处理,基于mICA的分割,从本地对全脑fc网络进行反向重建以及可重复性分析。自动切片计算和裁剪是附加功能,可减少大型分析的计算时间和内存需求。为了验证我们的工具箱,我们使用了来自人类Connectome项目的静止状态和基于任务的数据,测试了小脑,海马和脑干的这些不同功能。在小脑中,mICA检测到六个本地网络及其全脑对应网络,与以前的结果非常相似。基于云母的海马碎片显示出纵向离散的构型,前海马具有更大的异质性,与动物和人类文献一致。最终,脑干mICA检测到运动和感觉核参与了舌头运动的运动任务,从而复制并扩展了早期的结果。 。 ©

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