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Is fMRI noise really noise? Resting state nuisance regressors remove variance with network structure

机译:fMRI噪声真的是噪声吗?静息状态扰动回归函数可消除网络结构的差异

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摘要

Noise correction is a critical step towards accurate mapping of resting state BOLD fMRI connectivity. Noise sources related to head motion or physiology are typically modelled by nuisance regressors, and a generalised linear model is applied to regress out the associated signal variance. In this study, we use independent component analysis (ICA) to characterise the data variance typically discarded in this pre-processing stage in a cohort of 12 healthy volunteers. The signal variance removed by 24, 12, 6, or only 3 head motion parameters demonstrated network structure typically associated with functional connectivity, and certain networks were discernable in the variance extracted by as few as 2 physiologic regressors. Simulated nuisance regressors, unrelated to the true data noise, also removed variance with network structure, indicating that any group of regressors that randomly sample variance may remove highly structured “signal” as well as “noise.” Furthermore, to support this we demonstrate that random sampling of the original data variance continues to exhibit robust network structure, even when as few as 10% of the original volumes are considered. Finally, we examine the diminishing returns of increasing the number of nuisance regressors used in pre-processing, showing that excessive use of motion regressors may do little better than chance in removing variance within a functional network. It remains an open challenge to understand the balance between the benefits and confounds of noise correction using nuisance regressors.
机译:噪声校正是精确绘制静止状态BOLD fMRI连接性的关键步骤。与头部运动或生理相关的噪声源通常由讨厌的回归模型建模,并且应用广义线性模型来回归相关的信号方差。在这项研究中,我们使用独立成分分析(ICA)来表征12名健康志愿者在此预处理阶段通常丢弃的数据差异。通过24、12、6或仅3个头部运动参数去除的信号方差显示出通常与功能连通性相关的网络结构,并且某些网络可以通过少至2个生理回归提取出的方差即可辨别。与真实数据噪声无关的模拟干扰回归变量也消除了网络结构的方差,表明随机采样方差的任何回归变量组都可能消除高度结构化的“信号”和“噪声”。此外,为证明这一点,我们证明了对原始数据方差的随机采样仍然表现出稳健的网络结构,即使仅考虑原始量的10%时也是如此。最后,我们研究了预处理中使用的讨厌的回归器数量增加带来的收益递减,表明过度使用运动回归器可能比消除功能网络中的方差机会要好。理解使用滋扰回归器进行噪声校正的好处和缺点之间的平衡仍然是一个公开的挑战。

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