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Grouped sparse Bayesian learning for voxel selection in multivoxel pattern analysis of fMRI data

机译:用于FMRI数据的多种式模式分析中的Voxel选择分组稀疏贝叶斯学习

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Multivoxel pattern analysis (MVPA) methods have been widely applied in recent years to classify human brain states in functional magnetic resonance imaging (fMRI) data analysis. Voxel selection plays an important role in MVPA studies not only because it can improve decoding accuracy but also because it is useful for understanding brain functions. There are many voxel selection methods that have been proposed in fMRI literature. However, most of these methods either overlook the structure information of fMRI data or require additional crossvalidation procedures to determine the hyperparameters of the models. In the present work, we proposed a voxel selection method for binary brain decoding called group sparse Bayesian logistic regression (GSBLR). This method utilizes the group sparse property of fMRI data by using a grouped automatic relevance determination (GARD) as a prior for model parameters. All the parameters in the GSBLR can be estimated automatically, thereby avoiding additional cross-validation. Experimental results based on two publicly available fMRI datasets and simulated datasets demonstrate that GSBLR achieved better classification accuracies and yielded more stable solutions than several state-of-the-art methods.
机译:近年来,多种多变素图案分析(MVPA)方法已被广泛应用于在功能磁共振成像(FMRI)数据分析中对人脑状态进行分类。 Voxel选择在MVPA研究中起重要作用,不仅是因为它可以提高解码精度,而且因为它对于理解大脑功能是有用的。 FMRI文献中有许多体素选择方法。但是,这些方法中的大多数都可以忽略FMRI数据的结构信息,或者需要额外的跨验证程序来确定模型的超参数。在本作工作中,我们提出了一种称为群体稀疏贝叶斯逻辑回归(GSBLR)的二进制脑解码的体素选择方法。该方法通过使用分组的自动相关性确定(Gard)作为模型参数之前使用FMRI数据的组稀疏性。 GSBLR中的所有参数都可以自动估计,从而避免额外的交叉验证。基于两个可公开的FMRI数据集和模拟数据集的实验结果表明,GSBLR实现了更好的分类精度,并比几种最先进的方法产生了更稳定的解决方案。

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