Université de Lorraine, CRAN, UMR 7039, 54500 Vandœuvre-lès-Nancy, France; CNRS, CRAN, UMR, 7039, France.
Université de Lorraine, CRAN, UMR 7039, 54500 Vandœuvre-lès-Nancy, France; CNRS, CRAN, UMR, 7039, France.
Neuroimage. 2017 Jun;153:1-15. doi: 10.1016/j.neuroimage.2017.03.030. Epub 2017 Mar 18.
Electromagnetic brain source localization consists in the inversion of a forward model based on a limited number of potential measurements. A wide range of methods has been developed to regularize this severely ill-posed problem and to reduce the solution space, imposing spatial smoothness, anatomical constraint or sparsity of the activated source map. This last criteria, based on physiological assumptions stating that in some particular events (e.g., epileptic spikes, evoked potential) few focal area of the brain are simultaneously actives, has gained more and more interest. Bayesian approaches have the ability to provide sparse solutions under adequate parametrization, and bring a convenient framework for the introduction of priors in the form of probabilistic density functions. However the quality of the forward model is rarely questioned while this parameter has undoubtedly a great influence on the solution. Its construction suffers from numerous approximation and uncertainties, even when using realistic numerical models. In addition, it often encodes a coarse sampling of the continuous solution space due to the computational burden its inversion implies. In this work we propose an empirical Bayesian approach to take into account the uncertainties of the forward model by allowing constrained variations around a prior physical model, in the particular context of SEEG measurements. We demonstrate on simulations that the method enhance the accuracy of the source time-course estimation as well as the sparsity of the resulting source map. Results on real signals prove the applicability of the method in real contexts.
电磁脑源定位是基于有限数量的潜在测量值对正向模型进行反演。已经开发了广泛的方法来正则化这个严重不适定的问题,并减少解空间,施加空间平滑度、解剖约束或激活源图的稀疏性。后一种准则基于生理假设,即在某些特定事件(例如癫痫尖峰、诱发电位)中,大脑的少数几个焦点区域同时活跃,因此越来越受到关注。贝叶斯方法有能力在适当的参数化下提供稀疏解,并为以概率密度函数形式引入先验提供了一个方便的框架。然而,正向模型的质量很少受到质疑,而这个参数无疑对解有很大的影响。即使使用现实的数值模型,它的构建也会受到许多近似和不确定性的影响。此外,由于其反转需要计算负担,它通常编码了连续解空间的粗略采样。在这项工作中,我们提出了一种经验贝叶斯方法,通过允许在先验物理模型周围进行约束变化,来考虑正向模型的不确定性,特别是在 SEEG 测量的情况下。我们通过模拟证明了该方法可以提高源时程估计的准确性和源图的稀疏性。真实信号的结果证明了该方法在实际情况下的适用性。