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A mutual information‐based metric for evaluation of fMRI data‐processing approaches

机译:基于互信息的指标用于评估fMRI数据处理方法

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摘要

We propose a novel approach for evaluating the performance of activation detection in real (experimental) datasets using a new mutual information (MI)‐based metric and compare its sensitivity to several existing performance metrics in both simulated and real datasets. The proposed approach is based on measuring the approximate MI between the fMRI time‐series of a validation dataset and a calculated activation map (thresholded label map or continuous map) from an independent training dataset. The MI metric is used to measure the amount of information preserved during the extraction of an activation map from experimentally related fMRI time‐series. The processing method that preserves maximal information between the maps and related time‐series is proposed to be superior. The results on simulation datasets for multiple analysis models are consistent with the results of ROC curves, but are shown to have lower information content than for real datasets, limiting their generalizability. In real datasets for group analyses using the general linear model (GLM; FSL4 and SPM5), we show that MI values are (1) larger for groups of 15 versus 10 subjects and (2) more sensitive measures than reproducibility (for continuous maps) or Jaccard overlap metrics (for thresholded maps). We also show that (1) for an increasing fraction of nominally active voxels, both MI and false discovery rate (FDR) increase, and (2) at a fixed FDR, GLM using FSL4 tends to extract more voxels and more information than SPM5 using the default processing techniques in each package. Hum Brain Mapp, 2011. © 2010 Wiley‐Liss, Inc.
机译:我们提出了一种新的方法来评估使用新的基于互信息(MI)的指标在真实(实验)数据集中的激活检测性能,并将其敏感性与模拟和真实数据集中的几种现有性能指标进行比较。所提出的方法基于测量验证数据集的fMRI时间序列与来自独立训练数据集的计算的激活图(阈值标签图或连续图)之间的近似MI。 MI指标用于测量从实验相关的fMRI时间序列提取激活图期间保留的信息量。建议在地图和相关时间序列之间保留最大信息的处理方法是更好的。多个分析模型的模拟数据集上的结果与ROC曲线的结果一致,但是显示出的信息内容比真实数据集的信息含量低,从而限制了它们的通用性。在使用通用线性模型(GLM,FSL4和SPM5)进行分组分析的真实数据集中,我们显示MI值(1)针对15个对象与10个对象的组,以及(2)比重现性更高的敏感度(对于连续图)或Jaccard重叠指标(适用于阈值地图)。我们还表明(1)对于名义上活跃的体素的分数不断增加,MI和虚假发现率(FDR)都会增加,以及(2)在固定FDR下,使用FSL4的GLM倾向于比使用SSL5的SPM5提取更多的体素和更多信息每个程序包中的默认处理技术。嗡嗡的脑图,2011年。©2010 Wiley-Liss,Inc.

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