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Information-Theoretic Based Feature Selection for Multi-Voxel Pattern Analysis of fMRI Data

机译:基于信息论的fMRI数据多体素模式分析特征选择

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Multi-voxel pattern analysis (MVPA) of functional magnetic resonance imaging (fMRI) data is an emerging approach for probing the neural correlates of cognition. MVPA allows cognitive representations and processing to be modeled as distributed patterns of neural activity, which can be used to build a classification model to partition activity patterns according to stimulus conditions. In machine learning, MVPA is a very challenging classification problem because the number of voxels (features) greatly exceeds the number of data instances. Thus, there is a need to select informative voxels before building a classification model. We introduce a feature selection method based on mutual information (MI), which is used to quantify the statistical dependency between features and stimulus conditions. To evaluate the utility of our approach, we employed severed linear classification algorithms on a publicly available fMRI data set that has been widely used to benchmark MVPA performance [1], The computational results suggest that feature selection based on the MI ranking can drastically improve the classification accuracy. Additionally, high-ranked features provide meaningful insights into the functional-anatomic relationship of neural activity and the associated tasks.
机译:功能磁共振成像(FMRI)数据的多体素图案分析(MVPA)是探测认知神经相关性的新出现方法。 MVPA允许以神经活动的分布式模式建模的认知表示和处理,其可用于根据刺激条件构建分类模型以分配活动模式。在机器学习中,MVPA是一个非常具有挑战性的分类问题,因为体素(特征)的数量大大超过了数据实例的数量。因此,需要在构建分类模型之前选择信息体素。我们介绍了一种基于互信息(MI)的特征选择方法,用于量化特征和刺激条件之间的统计依赖性。为了评估我们的方法的效用,我们在公开的FMRI数据集上使用了断开的线性分类算法,该算法已被广泛用于基准MVPA性能[1],计算结果表明基于MI排名的特征选择可以大大改善分类准确性。此外,高级功能提供了有意义的洞察神经活动和相关任务的功能性解剖关系。

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