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Decoding Semi-Constrained Brain Activity from fMRI Using Support Vector Machines and Gaussian Processes

机译:使用支持向量机和高斯过程从fMRI解码半约束的大脑活动

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摘要

Predicting a particular cognitive state from a specific pattern of fMRI voxel values is still a methodological challenge. Decoding brain activity is usually performed in highly controlled experimental paradigms characterized by a series of distinct states induced by a temporally constrained experimental design. In more realistic conditions, the number, sequence and duration of mental states are unpredictably generated by the individual, resulting in complex and imbalanced fMRI data sets. This study tests the classification of brain activity, acquired on 16 volunteers using fMRI, during mental imagery, a condition in which the number and duration of mental events were not externally imposed but self-generated. To deal with these issues, two classification techniques were considered (Support Vector Machines, SVM, and Gaussian Processes, GP), as well as different feature extraction methods (General Linear Model, GLM and SVM). These techniques were combined in order to identify the procedures leading to the highest accuracy measures. Our results showed that 12 data sets out of 16 could be significantly modeled by either SVM or GP. Model accuracies tended to be related to the degree of imbalance between classes and to task performance of the volunteers. We also conclude that the GP technique tends to be more robust than SVM to model unbalanced data sets.
机译:从fMRI体素值的特定模式预测特定的认知状态仍然是方法学上的挑战。大脑活动的解码通常在高度受控的实验范式中进行,该范式的特征是由时间受限的实验设计引起的一系列不同的状态。在更现实的条件下,精神状态的数量,顺序和持续时间是个人无法预测的,从而导致复杂且不平衡的fMRI数据集。这项研究测试了在精神成像过程中使用fMRI在16位志愿者身上获得的大脑活动的分类,在这种情况下,精神事件的数量和持续时间不是外部施加的,而是自我产生的。为了解决这些问题,考虑了两种分类技术(支持向量机,SVM和高斯过程,GP)以及不同的特征提取方法(通用线性模型,GLM和SVM)。结合使用这些技术来确定导致最高精度测量的程序。我们的结果表明,通过SVM或GP可以对16个数据集中的12个进行显着建模。模型的准确性往往与班级之间的不平衡程度以及志愿者的任务表现有关。我们还得出结论,GP技术倾向于比SVM更健壮,可以对不平衡数据集进行建模。

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