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Using Image Stimuli to Drive fMRI Analysis

机译:使用图像刺激驱动功能磁共振成像分析

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We introduce a new unsupervised fMRI analysis method based on Kernel Canonical Correlation Analysis which differs from the class of supervised learning methods that are increasingly being employed in fMRI data analysis. Whereas SVM associates properties of the imaging data with simple specific categorical labels, KCCA replaces these simple labels with a label vector for each stimulus containing details of the features of that stimulus. We have compared KCCA and SVM analyses of an fMRI data set involving responses to emotionally salient stimuli. This involved first training the algorithm ( SVM, KCCA) on a subset of fMRI data and the corresponding labels/label vectors, then testing the algorithms on data withheld from the original training phase. The classification accuracies of SVM and KCCA proved to be very similar. However, the most important result arising from this study is that KCCA in able in part to extract many of the brain regions that SVM identifies as the most important in task discrimination blind to the categorical task labels.
机译:我们介绍一种基于核规范相关分析的无监督fMRI分析新方法,该方法不同于fMRI数据分析中越来越多地采用的监督学习方法。 SVM将成像数据的属性与简单的特定类别标签相关联,而KCCA将每个简单刺激的标签向量替换为这些简单标签,其中包含该刺激特征的详细信息。我们已经比较了fMRI数据集的KCCA和SVM分析,该数据集涉及对情绪显着刺激的反应。这涉及首先在fMRI数据的子集和相应的标记/标记向量上训练算法(SVM,KCCA),然后在原始训练阶段保留的数据上测试算法。 SVM和KCCA的分类精度被证明非常相似。但是,这项研究得出的最重要的结果是,KCCA能够部分提取SVM认为对分类任务标签无知的任务识别中最重要的许多大脑区域。

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