Department of Mathematics and Statistics, University of Victoria, Victoria BC V8W 2Y2, Canada.
Stat Methods Med Res. 2013 Aug;22(4):398-423. doi: 10.1177/0962280212448973. Epub 2012 May 28.
In this article, we consider methods for Bayesian computation within the context of brain imaging studies. In such studies, the complexity of the resulting data often necessitates the use of sophisticated statistical models; however, the large size of these data can pose significant challenges for model fitting. We focus specifically on the neuroelectromagnetic inverse problem in electroencephalography, which involves estimating the neural activity within the brain from electrode-level data measured across the scalp. The relationship between the observed scalp-level data and the unobserved neural activity can be represented through an underdetermined dynamic linear model, and we discuss Bayesian computation for such models, where parameters represent the unknown neural sources of interest. We review the inverse problem and discuss variational approximations for fitting hierarchical models in this context. While variational methods have been widely adopted for model fitting in neuroimaging, they have received very little attention in the statistical literature, where Markov chain Monte Carlo is often used. We derive variational approximations for fitting two models: a simple distributed source model and a more complex spatiotemporal mixture model. We compare the approximations to Markov chain Monte Carlo using both synthetic data as well as through the analysis of a real electroencephalography dataset examining the evoked response related to face perception. The computational advantages of the variational method are demonstrated and the accuracy associated with the resulting approximations are clarified.
本文考虑了在脑成像研究背景下的贝叶斯计算方法。在这类研究中,复杂的数据通常需要使用复杂的统计模型;然而,这些数据的庞大规模为模型拟合带来了巨大的挑战。我们特别关注脑电图中的神经电磁逆问题,该问题涉及从头皮上测量的电极级数据中估计大脑内的神经活动。观测到的头皮级数据与未观测到的神经活动之间的关系可以通过欠定动态线性模型来表示,我们讨论了此类模型的贝叶斯计算,其中参数表示感兴趣的未知神经源。我们回顾了逆问题,并讨论了在此背景下为拟合分层模型而采用的变分近似方法。虽然变分方法已被广泛应用于神经影像学中的模型拟合,但在统计文献中,它们几乎没有受到关注,而马尔可夫链蒙特卡罗方法通常被用于解决此类问题。我们推导了两种模型的变分近似:一个简单的分布式源模型和一个更复杂的时空混合模型。我们使用合成数据和分析涉及面部感知诱发反应的真实脑电图数据集来比较近似值和马尔可夫链蒙特卡罗方法,以验证变分方法的计算优势,并阐明结果近似值的准确性。