Utilization of Spatial Coherence in Functional Neuroimage-Based Classification

Pinaki S. Mitra, Vanathi Gopalakrishnan, R. McNamee
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Abstract

Functional magnetic resonance imaging provides a non-invasive mechanism for monitoring brain activity of subjects during performance of a task. While this approach has been used extensively for human brain mapping activities, automated classification of subjects based on neural activation patterns is also of interest. However, due to the high dimensionality of the image data, classification accuracy is highly dependent upon the adequacy of the features used in the models. In this work 1 , we present a new feature refinement strategy that uses spatial coherence information to eliminate irrelevant features from consideration. For a neurobehavioral disinhibition dataset, we show that this new approach for feature selection using spatially coherent voxels (SCV) outperforms conventional methods.
空间相干性在功能性神经图像分类中的应用
功能磁共振成像提供了一种非侵入性机制来监测受试者在执行任务时的大脑活动。虽然这种方法已广泛用于人脑映射活动,但基于神经激活模式的主题自动分类也很有趣。然而,由于图像数据的高维,分类精度高度依赖于模型中使用的特征的充分性。在这项工作中,我们提出了一种新的特征细化策略,该策略使用空间相干信息来消除不相关的特征。对于神经行为去抑制数据集,我们表明这种使用空间相干体素(SCV)进行特征选择的新方法优于传统方法。
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