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A probabilistic solution to the MEG inverse problem via MCMC methods: the reversible jump and parallel tempering algorithms

机译:通过MCMC方法解决MEG反问题的概率解决方案:可逆跳和并行回火算法

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摘要

We investigated the usefulness of probabilistic Markov chain Monte Carlo (MCMC) methods for solving the magnetoencephalography (MEG) inverse problem, by using an algorithm composed of the combination of two MCMC samplers: Reversible Jump (RJ) and Parallel Tempering (PT). The MEG inverse problem was formulated in a probabilistic Bayesian approach, and we describe how the RJ and PT algorithms are fitted to our application. This approach offers better resolution of the MEG inverse problem even when the number of source dipoles is unknown (RJ), and significant reduction of the probability of erroneous convergence to local modes (PT). First estimates of the accuracy and resolution of our composite algorithm are given from results of simulation studies obtained with an unknown number of sources, and with white and neuromagnetic noise. In contrast to other approaches, MCMC methods do not just give an estimation of a "single best" solution, but they provide confidence interval for the source localization, probability distribution for the number of fitted dipoles, and estimation of other almost equally likely solutions.
机译:我们研究了概率马尔可夫链蒙特卡罗(MCMC)方法通过使用由两个MCMC采样器(可逆跳(RJ)和平行回火(PT))组成的算法来解决磁脑图(MEG)反问题的有用性。 MEG逆问题是用概率贝叶斯方法制定的,我们描述了RJ和PT算法如何适合我们的应用。即使源偶极子的数量未知(RJ),这种方法也可以更好地解决MEG反问题,并大大降低了错误收敛到局部模式(PT)的可能性。我们的复合算法的准确性和分辨率的第一个估计是从使用未知数量的源以及白噪声和神经磁噪声获得的模拟研究结果得出的。与其他方法相比,MCMC方法不仅提供“最佳”解决方案的估计,而且提供源定位的置信区间,拟合偶极子数量的概率分布以及其他几乎同等可能的解决方案的估计。

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