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Fast Random Permutation Tests Enable Objective Evaluation of Methods for Single-Subject fMRI Analysis

机译:快速随机排列测试可对单对象fMRI分析方法进行客观评估

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摘要

Parametric statistical methods, such as Z-, t-, and F-values, are traditionally employed in functional magnetic resonance imaging (fMRI) for identifying areas in the brain that are active with a certain degree of statistical significance. These parametric methods, however, have two major drawbacks. First, it is assumed that the observed data are Gaussian distributed and independent; assumptions that generally are not valid for fMRI data. Second, the statistical test distribution can be derived theoretically only for very simple linear detection statistics. With nonparametric statistical methods, the two limitations described above can be overcome. The major drawback of non-parametric methods is the computational burden with processing times ranging from hours to days, which so far have made them impractical for routine use in single-subject fMRI analysis. In this work, it is shown how the computational power of cost-efficient graphics processing units (GPUs) can be used to speed up random permutation tests. A test with 10000 permutations takes less than a minute, making statistical analysis of advanced detection methods in fMRI practically feasible. To exemplify the permutation-based approach, brain activity maps generated by the general linear model (GLM) and canonical correlation analysis (CCA) are compared at the same significance level.
机译:在功能磁共振成像(fMRI)中,传统上采用参数统计方法(例如Z值,t值和F值)来识别大脑中具有一定统计意义的活动区域。但是,这些参数化方法有两个主要缺点。首先,假设观测数据是高斯分布且独立的。通常对于fMRI数据无效的假设。第二,理论上只能从非常简单的线性检测统计数据中得出统计检验分布。使用非参数统计方法,可以克服上述两个限制。非参数方法的主要缺点是处理时间从数小时到数天不等的计算负担,到目前为止,这使它们在常规的单对象fMRI分析中不切实际。在这项工作中,展示了如何使用具有成本效益的图形处理单元(GPU)的计算能力来加快随机排列测试的速度。具有10000个排列的测试只需不到一分钟的时间,因此对fMRI中先进的检测方法进行统计分析实际上是可行的。为了举例说明基于置换的方法,在相同的显着性水平下比较了由一般线性模型(GLM)和规范相关分析(CCA)生成的大脑活动图。

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