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Recovering task fMRI signals from highly under-sampled data with low-rank and temporal subspace constraints

机译:从具有低秩和时间子空间约束的高度欠采样数据中恢复任务fMRI信号

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摘要

Recent developments in highly accelerated fMRI data acquisition have employed low-rank and/or sparsity constraints for image reconstruction, as an alternative to conventional, time-independent parallel imaging. When under-sampling factors are high or the signals of interest are low-variance, however, functional data recovery can be poor or incomplete. We introduce a method for improving reconstruction fidelity using external constraints, like an experimental design matrix, to partially orient the estimated fMRI temporal subspace. Combining these external constraints with low-rank constraints introduces a new image reconstruction model that is analogous to using a mixture of subspace-decomposition (PCA/ICA) and regression (GLM) models in fMRI analysis.We show that this approach improves fMRI reconstruction quality in simulations and experimental data, focusing on the model problem of detecting subtle 1-s latency shifts between brain regions in a block-design task-fMRI experiment. Successful latency discrimination is shown at acceleration factors up to R = 16 in a radial-Cartesian acquisition. We show that this approach works with approximate, or not perfectly informative constraints, where the derived benefit is commensurate with the information content contained in the constraints. The proposed method extends low-rank approximation methods for under-sampled fMRI data acquisition by leveraging knowledge of expected task-based variance in the data, enabling improvements in the speed and efficiency of fMRI data acquisition without the loss of subtle features.
机译:高度加速的fMRI数据采集的最新发展已采用低秩和/或稀疏性约束进行图像重建,以替代传统的与时间无关的并行成像。但是,当欠采样因子很高或感兴趣的信号是低方差时,功能数据恢复可能很差或不完整。我们介绍一种使用外部约束(例如实验设计矩阵)来提高重建保真度的方法,以部分定向估计的fMRI时间子空间。将这些外部约束与低秩约束相结合引入了一种新的图像重建模型,该模型类似于在fMRI分析中混合使用子空间分解(PCA / ICA)和回归(GLM)模型。在模拟和实验数据中,着重于在块设计任务功能磁共振成像实验中检测大脑区域之间微妙的1秒潜伏期变化的模型问题。在径向笛卡尔采集中,加速因子高达R = 16时,成功的潜伏期判别显示出来。我们表明,这种方法适用于近似的约束条件或信息约束条件不完全理想的情况,其中派生的利益与约束条件中包含的信息内容相对应。所提出的方法通过利用数据中基于任务的预期方差的知识,扩展了用于欠采样fMRI数据采集的低秩逼近方法,从而能够在不损失细微特征的情况下提高fMRI数据采集的速度和效率。

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