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Effect of trial-to-trial variability on optimal event-related fMRI design: Implications for Beta-series correlation and multi-voxel pattern analysis

机译:试验间差异对最佳事件相关功能磁共振成像设计的影响:对Beta系列相关性和多体素模式分析的影响

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Functional magnetic resonance imaging (fMRI) studies typically employ rapid, event-related designs for behavioral reasons and for reasons associated with statistical efficiency. Efficiency is calculated from the precision of the parameters (Betas) estimated from a General Linear Model (GLM) in which trial onsets are convolved with a Hemodynamic Response Function (HRF). However, previous calculations of efficiency have ignored likely variability in the neural response from trial to trial, for example due to attentional fluctuations, or different stimuli across trials. Here we compare three GLMs in their efficiency for estimating average and individual Betas across trials as a function of trial variability, scan noise and Stimulus Onset Asynchrony (SOA): "Least Squares All" (LSA), "Least Squares Separate" (LSS) and "Least Squares Unitary" (LSU). Estimation of responses to individual trials in particular is important for both functional connectivity using "Beta-series correlation" and "multi-voxel pattern analysis" (MVPA). Our simulations show that the ratio of trial-to-trial variability to scan noise impacts both the optimal SOA and optimal GLM, especially for short SOAs < 5 s: LSA is better when this ratio is high, whereas LSS and LSU are better when the ratio is low. For MVPA, the consistency across voxels of trial variability and of scan noise is also critical. These findings not only have important implications for design of experiments using Beta-series regression and MVPA, but also statistical parametric mapping studies that seek only efficient estimation of the mean response across trials. (C) 2015 Published by Elsevier Inc.
机译:功能磁共振成像(fMRI)研究通常出于行为原因以及与统计效率相关的原因而采用与事件相关的快速设计。效率是根据一般线性模型(GLM)估计的参数(Beta)的精度计算得出的,在该模型中,试验开始与血流动力学响应函数(HRF)进行了卷积。但是,以前的效率计算忽略了试验之间神经反应的可能差异,例如由于注意力波动或试验间不同的刺激。在这里,我们比较了三种GLM的效率,这些效率是根据试验变异性,扫描噪声和刺激发作异步性(SOA)来估计试验中的平均Beta和单个Beta的:“所有最小二乘”(LSA),“最小二乘”(LSS)和“最小二乘法(LSU)”。对于使用“ Beta系列相关性”和“多体素模式分析”(MVPA)的功能连接而言,对各个试验的反应评估尤其重要。我们的模拟结果显示,试验与试验的变异性与扫描噪声之比会影响最佳SOA和最佳GLM,特别是对于<5 s的短SOA:当该比率较高时,LSA更好,而当SOA <5 s时,LSS和LSU更好。比率低。对于MVPA,跨试验体素和扫描噪声的体素的一致性也很关键。这些发现不仅对使用Beta系列回归和MVPA进行实验设计具有重要意义,而且对仅寻求有效评估整个试验平均应答的统计参数作图研究也具有重要意义。 (C)2015年由Elsevier Inc.出版

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