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A SPATIOTEMPORAL NONPARAMETRIC BAYESIAN MODEL OF MULTI-SUBJECT FMRI DATA

机译:多主题功能磁共振成像数据的时空非参数贝叶斯模型

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In this paper we propose a unified, probabilistically coherent framework for the analysis of task-related brain activity in multi-subject fMRI experiments. This is distinct from two-stage "group analysis" approaches traditionally considered in the fMRI literature, which separate the inference on the individual fMRI time courses from the inference at the population level. In our modeling approach we consider a spatiotemporal linear regression model and specifically account for the between-subjects heterogeneity in neuronal activity via a spatially informed multi-subject nonparametric variable selection prior. For posterior inference, in addition to Markov chain Monte Carlo sampling algorithms, we develop suitable variational Bayes algorithms. We show on simulated data that variational Bayes inference achieves satisfactory results at more reduced computational costs than using MCMC, allowing scalability of our methods. In an application to data collected to assess brain responses to emotional stimuli our method correctly detects activation in visual areas when visual stimuli are presented.
机译:在本文中,我们提出了一个统一的,概率上一致的框架,用于在多主题功能磁共振成像实验中分析与任务相关的大脑活动。这与功能磁共振成像文献中传统上考虑的两阶段“群体分析”方法不同,后者将对各个功能磁共振成像时间进程的推论与总体水平的推论分开。在我们的建模方法中,我们考虑时空线性回归模型,并通过先于空间告知的多对象非参数变量选择来专门说明神经元活动中对象间的异质性。对于后验推断,除了马尔可夫链蒙特卡洛采样算法外,我们还开发了合适​​的变分贝叶斯算法。我们在模拟数据上显示,与使用MCMC相比,变分贝叶斯推理以更低的计算成本获得了令人满意的结果,从而使我们的方法具有可扩展性。在对收集的数据进行评估以评估大脑对情绪刺激的反应的应用中,当呈现视觉刺激时,我们的方法可以正确检测视觉区域的激活。

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