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Voxel Selection Framework in Multi-Voxel Pattern Analysis of fMRI Data for Prediction of Neural Response to Visual Stimuli

机译:fMRI数据的多体素模式分析中的体素选择框架,用于预测视觉刺激的神经反应

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摘要

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 states to be modeled as distributed patterns of neural activity and classified according to stimulus conditions. In practice, building a robust, generalizable classification model can be challenging because the number of voxels (features) far exceeds the number of stimulus instances/data observations. To avoid model overfitting, there is a need to select informative voxels before building a classification model. In this paper, we propose a robust feature (voxel) selection framework using mutual information (MI) and partial least square regression (PLS) to establish an informativeness index for prioritizing selection of voxels based on the degree of their association to the experimental conditions. We evaluated the robustness of our proposed framework by assessing performance of standard classification algorithms, when combined with our feature selection approach, in a publicly-available fMRI dataset of object-level representation widely used to benchmark MVPA performance (Haxby, 2001). The computational results suggest that our feature selection framework based on MI and PLS drastically improves the classification accuracy relative to those previously reported in the literature. Our results also suggest that highly informative voxels may provide meaningful insight into the functional-anatomic relationship of brain activity and stimulus conditions.
机译:功能磁共振成像(fMRI)数据的多体素模式分析(MVPA)是一种新兴的探索认知神经相关性的方法。 MVPA允许将认知状态建模为神经活动的分布式模式,并根据刺激条件进行分类。在实践中,建立一个强大的,可概括的分类模型可能具有挑战性,因为体素(特征)的数量远远超过了刺激实例/数据观察的数量。为避免模型过度拟合,需要在建立分类模型之前选择信息丰富的体素。在本文中,我们提出了一个健壮的特征(体素)选择框架,该框架使用互信息(MI)和偏最小二乘回归(PLS)来建立信息量指数,以根据体素与实验条件的关联程度来优先选择体素。我们通过评估标准分类算法的性能(与我们的特征选择方法结合使用),在广泛用于对MVPA性能进行基准测试的对象级别表示的公共可用fMRI数据集中,评估了我们提出的框架的鲁棒性(Haxby,2001)。计算结果表明,相对于先前在文献中报道的,基于MI和PLS的特征选择框架大大提高了分类精度。我们的研究结果还表明,信息量很高的体素可能为大脑活动和刺激条件的功能-解剖关系提供有意义的见解。

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