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Predicting the cognitive states of the subjects in functional magnetic resonance imaging signals using the combination of feature selection strategies.

机译:使用特征选择策略的组合预测功能性磁共振成像信号中对象的认知状态。

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The functional magnetic resonance imaging (fMRI) provides very useful information about the activities from different brain areas during a task. This information can be used to train a classifier and predict the sensory and motor functions and also different mental states of the subject's brain in a particular task. Using a high resolution fMRI, normally the activities from many voxels are obtained with respect to time and not all of these voxels involve actively in a particular task. Here we propose a combination of feature selection strategies using an evolutionary computation algorithm and the support vector machines to find out those feature dimensions that are actively involved in representing the brain activities in a particular task. We show that using this lower dimensional space we can predict the cognitive state of the subjects in a particular task more accurately.
机译:功能磁共振成像(fMRI)提供了有关任务期间来自不同大脑区域的活动的非常有用的信息。该信息可用于训练分类器,并预测特定任务中受试者的感觉和运动功能以及大脑的不同精神状态。使用高分辨率fMRI,通常就时间获得了来自许多体素的活动,并且并非所有这些体素都积极参与了特定任务。在这里,我们提出了一种使用进化计算算法和支持向量机的特征选择策略的组合,以找出那些积极参与代表特定任务中的大脑活动的特征尺寸。我们表明,使用此较低维度的空间,我们可以更准确地预测特定任务中受试者的认知状态。

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