Locally-Optimized Inter-Subject Alignment of Functional Cortical Regions

M. C. Iordan, Armand Joulin, D. Beck, Li Fei-Fei
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引用次数: 4

Abstract

Inter-subject registration of cortical areas is necessary in functional imaging (fMRI) studies for making inferences about equivalent brain function across a population. However, many high-level visual brain areas are defined as peaks of functional contrasts whose cortical position is highly variable. As such, most alignment methods fail to accurately map functional regions of interest (ROIs) across participants. To address this problem, we propose a locally optimized registration method that directly predicts the location of a seed ROI on a separate target cortical sheet by maximizing the functional correlation between their time courses, while simultaneously allowing for non-smooth local deformations in region topology. Our method outperforms the two most commonly used alternatives (anatomical landmark-based AFNI alignment and cortical convexity-based FreeSurfer alignment) in overlap between predicted region and functionally-defined LOC. Furthermore, the maps obtained using our method are more consistent across subjects than both baseline measures. Critically, our method represents an important step forward towards predicting brain regions without explicit localizer scans and deciphering the poorly understood relationship between the location of functional regions, their anatomical extent, and the consistency of computations those regions perform across people.
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功能性皮质区域局部优化的主体间对齐
在功能成像(fMRI)研究中,受试者间皮质区域的登记是必要的,以推断整个人群的等效脑功能。然而,许多高级视觉脑区被定义为功能对比的峰值,其皮质位置是高度可变的。因此,大多数对齐方法不能准确地映射参与者的兴趣功能区(roi)。为了解决这个问题,我们提出了一种局部优化配准方法,该方法通过最大化其时间过程之间的函数相关性,直接预测种子ROI在单独目标皮质片上的位置,同时允许区域拓扑中的非光滑局部变形。我们的方法在预测区域和功能定义LOC之间的重叠方面优于两种最常用的替代方法(基于解剖地标的AFNI对齐和基于皮质凸度的FreeSurfer对齐)。此外,使用我们的方法获得的地图在受试者之间比基线测量更一致。至关重要的是,我们的方法代表了在没有明确定位扫描的情况下预测大脑区域的重要一步,并破译了功能区域的位置,其解剖范围以及这些区域在人与人之间执行的计算一致性之间鲜为人知的关系。
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