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Evaluation of Denoising Strategies to Address Motion-Correlated Artifacts in Resting-State Functional Magnetic Resonance Imaging Data from the Human Connectome Project

机译:评估从人Connectome项目获得的静息状态功能磁共振成像数据中与运动相关的伪影的去噪策略的评估

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摘要

Like all resting-state functional connectivity data, the data from the Human Connectome Project (HCP) are adversely affected by structured noise artifacts arising from head motion and physiological processes. Functional connectivity estimates (Pearson's correlation coefficients) were inflated for high-motion time points and for high-motion participants. This inflation occurred across the brain, suggesting the presence of globally distributed artifacts. The degree of inflation was further increased for connections between nearby regions compared with distant regions, suggesting the presence of distance-dependent spatially specific artifacts. We evaluated several denoising methods: censoring high-motion time points, motion regression, the FMRIB independent component analysis-based X-noiseifier (FIX), and mean grayordinate time series regression (MGTR; as a proxy for global signal regression). The results suggest that FIX denoising reduced both types of artifacts, but left substantial global artifacts behind. MGTR significantly reduced global artifacts, but left substantial spatially specific artifacts behind. Censoring high-motion time points resulted in a small reduction of distance-dependent and global artifacts, eliminating neither type. All denoising strategies left differences between high- and low-motion participants, but only MGTR substantially reduced those differences. Ultimately, functional connectivity estimates from HCP data showed spatially specific and globally distributed artifacts, and the most effective approach to address both types of motion-correlated artifacts was a combination of FIX and MGTR.
机译:像所有休息状态功能连接性数据一样,来自人类Connectome项目(HCP)的数据也受到头部运动和生理过程产生的结构化噪声伪影的不利影响。对于高运动时间点和高运动参与者,功能连接性估计(Pearson相关系数)被夸大了。这种膨胀发生在整个大脑中,表明存在全球分布的伪影。与远处区域相比,附近区域之间的连接的充气程度进一步增加,表明存在距离相关的空间特定伪像。我们评估了几种降噪方法:检查高运动时间点,运动回归,基于FMRIB独立成分分析的X噪声消除器(FIX)和平均灰度时间序列回归(MGTR;作为全局信号回归的代理)。结果表明,FIX去噪减少了两种伪像,但留下了大量的全局伪像。 MGTR显着减少了全局伪像,但留下了大量空间特定的伪像。审查高运动时间点会导致与距离相关的假象和全局假象的减少,从而消除了这两种类型。所有降噪策略在高运动和低运动参与者之间都留下了差异,但只有MGTR才能大大减少这些差异。最终,根据HCP数据进行的功能连接估计显示出特定于空间和全局分布的伪影,而解决这两种与运动相关的伪影的最有效方法是FIX和MGTR的组合。

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