首页> 外文期刊>Journal of Neuroscience Methods >A post-processing/region of interest (ROI) method for discriminating patterns of activity in statistical maps of fMRI data.
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A post-processing/region of interest (ROI) method for discriminating patterns of activity in statistical maps of fMRI data.

机译:一种后处理/感兴趣区域(ROI)方法,用于区分fMRI数据统计图中的活动模式。

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摘要

To combine functional neuroimaging studies across subjects, anatomical and functional data are typically either transformed to a common space or averaged across regions of interest (ROIs). However, if there are (1) anatomical variations within the subject pool (as in clinical or aging populations), (2) non-Gaussian distributions of task-related activity within a typical ROI or, (3) more ROIs than subjects, neither spatial transformation of the data to a common space nor averaging across all subjects' ROIs is suitable for standard discriminant analysis. To solve these problems, we describe a post-processing method that uses voxel-based statistics representing task-related activity (pooled within ROIs) to establish combinations of ROIs that maximally differentiate tasks across all subjects. The method involves randomized resampling from multiple ROIs within each subject, multivariate linear discriminant analysis across all subjects and validation with bootstrapping techniques. When applied to experimental data from healthy subjects performing two motor tasks, the method detected some brain regions, including the supplementary motor area (SMA), that participated in a distributed network differentially active between tasks. However there was not a significant difference in SMA activity when this region was examined in isolation. We suggest this method is a practical means to combine voxel-based statistics within anatomically defined ROIs across subjects.
机译:为了结合跨受试者的功能性神经影像学研究,通常将解剖学和功能性数据转换到公共空间或在感兴趣区域(ROI)之间求平均。但是,如果(1)对象库中的解剖结构发生变化(如在临床或老龄化人群中),(2)典型ROI中任务相关活动的非高斯分布,或者(3)比对象更多的ROI,则两者都不存在将数据进行空间转换到公共空间,或者对所有对象的ROI进行平均均适用于标准判别分析。为了解决这些问题,我们描述了一种后处理方法,该方法使用基于体素的统计信息来表示与任务相关的活动(集中在ROI中),以建立ROI组合,从而最大程度地区分所有主题之间的任务。该方法涉及从每个受试者中的多个ROI进行随机重采样,对所有受试者进行多变量线性判别分析以及使用自举技术进行验证。当该方法应用于来自执行两项运动任务的健康受试者的实验数据时,该方法会检测到一些大脑区域,包括辅助运动区域(SMA),这些区域参与了任务之间差异活跃的分布式网络。但是,单独检查该区域时,SMA活性没有显着差异。我们建议这种方法是一种实用的方法,可以将基于体素的统计信息结合到跨学科的解剖定义的ROI中。

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