首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >Bayesian multi-dipole modelling of a single topography in MEG by adaptive sequential Monte Carlo samplers
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Bayesian multi-dipole modelling of a single topography in MEG by adaptive sequential Monte Carlo samplers

机译:自适应序贯蒙特卡洛采样器在MEG中对单个地形进行贝叶斯多偶极建模

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In this paper, we develop a novel Bayesian approach to the problem of estimating neural currents in the brain from a fixed distribution of magnetic field (called topography), measured by magnetoencephalography. Differently from recent studies that describe inversion techniques, such as spatio-temporal regularization/filtering, in which neural dynamics always plays a role, we face here a purely static inverse problem. Neural currents are modelled as an unknown number of current dipoles, whose state space is described in terms of a variable-dimension model. Within the resulting Bayesian framework, we set up a sequential Monte Carlo sampler to explore the posterior distribution. An adaptation technique is employed in order to effectively balance the computational cost and the quality of the sample approximation. Then, both the number and the parameters of the unknown current dipoles are simultaneously estimated. The performance of themethod is assessed bymeans of synthetic data, generated by source configurations containing up to four dipoles. Eventually, we describe the results obtained by analysing data from a real experiment, involving somatosensory evoked fields, and compare them to those provided by three other methods.
机译:在本文中,我们开发了一种新颖的贝叶斯方法,用于从通过脑磁图测量的固定磁场分布(称为地形)来估计大脑中的神经流问题。与描述反演技术(例如时空正则化/滤波)的最新研究不同,神经动力学一直在其中发挥作用,而在这里,我们面临的是纯粹的静态反问题。神经电流被建模为未知数量的电流偶极子,其状态空间用可变维数模型来描述。在由此产生的贝叶斯框架内,我们建立了一个顺序蒙特卡洛采样器来探索后验分布。为了有效地平衡计算成本和样本近似质量,采用了一种自适应技术。然后,同时估计未知电流偶极子的数量和参数。该方法的性能通过合成数据的方式进行评估,该合成数据由最多包含四个偶极子的源配置生成。最后,我们描述了通过分析实际实验中涉及体感诱发场的数据而获得的结果,并将它们与其他三种方法提供的结果进行了比较。

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