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Parcellation Schemes and Statistical Tests to Detect Active Regions on the Cortical Surface

机译:局部计划和统计测试检测皮质表面上的有源区

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Activation detection in functional Magnetic Resonance Imaging (fMRI) datasets is usually performed by thresholding activation maps in the brain volume or, better, on the cortical surface. However, basing the analysis on a site-by-site statistical decision may be detrimental both to the interpretation of the results and to the sensitivity of the analysis, because a perfect point-to-point correspondence of brain surfaces from multiple subjects cannot be guaranteed in practice. In this paper, we propose a new approach that first defines anatomical regions such as cortical gyri outlined on the cortical surface, and then segments these regions into functionally homogeneous structures using a parcellation procedure that includes an explicit between-subject variability model, i.e. random effects. We show that random effects inference can be performed in this framework. Our procedure allows an exact control of the specificity using permutation techniques, and we show that the sensitivity of this approach is higher than the sensitivity of voxel- or cluster-level random effects tests performed on the cortical surface.
机译:功能性磁共振成像(FMRI)数据集的激活检测通常通过阈值在脑体积中的激活图或更好地在皮质表面上进行。然而,基于现场统计决策的分析可能是对结果的解释和分析的敏感性的不利影响,因为无法保证来自多个受试者的脑表面的完美点对应对应在实践中。在本文中,我们提出了一种新的方法,首先将诸如皮质表面上概述的皮质吉尔等的新方法,然后使用包括显式可变性模型的局部变异模型,即随机效应的局部地区将这些区域分成功能均匀的结构。 。我们表明可以在本框架中执行随机效应推断。我们的程序允许使用置换技术确切地控制特异性,并且我们表明该方法的灵敏度高于对皮质表面执行的体素或群集随机效应测试的灵敏度。

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