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Post-ICA phase de-noising for resting-state complex-valued FMRI data

机译:静止状态复数值FMRI数据的ICA后相位去噪

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Magnitude-only resting-state fMRI data have been largely investigated via independent component analysis (ICA) for exacting spatial maps (SMs) and time courses. However, the native complex-valued fMRI data have rarely been studied. Motivated by the significant improvements achieved by ICA of complex-valued task fMRI data than magnitude-only task fMRI data, we present an efficient method for de-noising SM estimates which makes full use of complex-valued resting-state fMRI data. Our two main contributions include: (1) The first application of a post-ICA phase de-noising method, originally proposed for task fMRI data, to resting-state data, which recognizes voxels within a specific phase range as desired voxels. (2) A new phase range detection strategy for a specific SM component based on correlation with its reference. We continuously change the phase range within a larger range, and compute a set of correlation coefficients between each de-noised SM and its reference. The phase range with the maximal correlation determines the final selection. The detected results by the proposed approach confirm the correctness of the post-ICA phase de-noising method in the analysis of resting-state complex-valued fMRI data.
机译:仅幅度静息状态的fMRI数据已通过独立成分分析(ICA)进行了严格的空间图(SM)和时程分析。然而,很少研究天然的复数值fMRI数据。 ICA使得复杂值任务fMRI数据比仅幅度任务fMRI数据有了显着改善,因此,我们提出了一种有效的SM估计值去噪方法,该方法充分利用了复杂值静止状态fMRI数据。我们的两个主要贡献包括:(1)最初针对任务fMRI数据提出的ICA后相位降噪方法的首次应用到静止状态数据,该静止状态数据将特定相位范围内的体素识别为所需体素。 (2)基于与参考相关的特定SM组件的新相位范围检测策略。我们在更大的范围内连续改变相位范围,并计算每个降噪后的SM及其参考之间的一组相关系数。具有最大相关性的相位范围决定了最终选择。所提出的方法检测到的结果证实了ICA后相位去噪方法在静止状态复值fMRI数据分析中的正确性。

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