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首页> 外文期刊>NeuroImage >Combining multivariate voxel selection and support vector machines for mapping and classification of fMRI spatial patterns.
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Combining multivariate voxel selection and support vector machines for mapping and classification of fMRI spatial patterns.

机译:结合多元体素选择和支持向量机进行fMRI空间模式的映射和分类。

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In functional brain mapping, pattern recognition methods allow detecting multivoxel patterns of brain activation which are informative with respect to a subject's perceptual or cognitive state. The sensitivity of these methods, however, is greatly reduced when the proportion of voxels that convey the discriminative information is small compared to the total number of measured voxels. To reduce this dimensionality problem, previous studies employed univariate voxel selection or region-of-interest-based strategies as a preceding step to the application of machine learning algorithms. Here we employ a strategy for classifying functional imaging data based on a multivariate feature selection algorithm, Recursive Feature Elimination (RFE) that uses the training algorithm (support vector machine) recursively to eliminate irrelevant voxels and estimate informative spatial patterns. Generalization performances on test data increases while features/voxels are pruned based on their discrimination ability. In this article we evaluate RFE in terms of sensitivity of discriminative maps (Receiver Operative Characteristic analysis) and generalization performances and compare it to previously used univariate voxel selection strategies based on activation and discrimination measures. Using simulated fMRI data, we show that the recursive approach is suitable for mapping discriminative patterns and that the combination of an initial univariate activation-based (F-test) reduction of voxels and multivariate recursive feature elimination produces the best results, especially when differences between conditions have a low contrast-to-noise ratio. Furthermore, we apply our method to high resolution (2 x 2 x 2 mm(3)) data from an auditory fMRI experiment in which subjects were stimulated with sounds from four different categories. With these real data, our recursive algorithm proves able to detect and accurately classify multivoxel spatial patterns, highlighting the role of the superior temporal gyrus in encoding the information of sound categories. In line with the simulation results, our method outperforms univariate statistical analysis and statistical learning without feature selection.
机译:在功能性大脑映射中,模式识别方法可以检测大脑激活的多体素模式,这些模式对于受检者的知觉或认知状态是有益的。但是,当传递区分性信息的体素的比例小于所测量体素的总数时,这些方法的灵敏度会大大降低。为了减少此维数问题,先前的研究采用单变量体素选择或基于兴趣区域的策略作为应用机器学习算法的前提。在这里,我们采用基于多元特征选择算法(递归特征消除(RFE))的功能性成像数据分类策略,该算法以递归方式使用训练算法(支持向量机)消除不相关的体素并估计信息性空间模式。根据要素的辨别能力修剪要素/体素时,测试数据的泛化性能会提高。在本文中,我们根据判别图的敏感性(接收者操作特征分析)和泛化性能评估了RFE,并将其与基于激活和区分措施的以前使用的单变量体素选择策略进行了比较。使用模拟的fMRI数据,我们证明了递归方法适合于映射判别模式,并且初始基于单变量激活的(F-test)体素减少和多变量递归特征消除的组合产生了最佳结果,尤其是当情况下对比度对比度低。此外,我们将我们的方法应用于来自听觉fMRI实验的高分辨率(2 x 2 x 2 mm(3))数据,在该实验中,对象受到来自四个不同类别的声音的刺激。利用这些真实数据,我们的递归算法证明能够检测并准确地对多体素空间模式进行分类,从而突出了上级颞回在编码声音类别信息中的作用。与仿真结果一致,我们的方法优于不进行特征选择的单变量统计分析和统计学习。

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