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Anatomically informed basis functions for EEG source localization: combining functional and anatomical constraints.

机译:脑电图源定位的解剖学基础功能:结合功能和解剖学约束。

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摘要

Distributed linear solutions have frequently been used to solve the source localization problem in EEG. Here we introduce an approach based on the weighted minimum norm (WMN) method that imposes constraints using anatomical and physiological information derived from other imaging modalities. The anatomical constraints are used to reduce the solution space a priori by modeling the spatial source distribution with a set of basis functions. These spatial basis functions are chosen in a principled way using information theory. The reduced problem is then solved with a classical WMN method. Further (functional) constraints can be introduced in the weighting of the solution using fMRI brain responses to augment spatial priors. We used simulated data to explore the behavior of the approach over a range of the model's hyperparameters. To assess the construct validity of our method we compared it with two established approaches to the source localization problem, a simple weighted minimum norm and a maximum smoothness (Loreta-like) solution. This involved simulations, using single and multiple sources that were analyzed under different levels of confidence in the priors.
机译:分布式线性解决方案经常被用来解决EEG中的源定位问题。在这里,我们介绍一种基于加权最小范数(WMN)方法的方法,该方法使用从其他成像模态得出的解剖和生理信息施加约束。通过使用一组基本函数对空间源分布进行建模,可以使用解剖学约束先验地减少解空间。这些空间基础函数是使用信息论以有原则的方式选择的。然后用经典的WMN方法解决简化的问题。可以使用fMRI脑部反应增加空间先验,在解决方案的权重中引入其他(功能)约束。我们使用模拟数据来探索该方法在模型的超参数范围内的行为。为了评估我们方法的构造有效性,我们将其与两种针对源定位问题的既定方法进行了比较,即简单的加权最小范数和最大平滑度(类似于洛雷塔)。这涉及使用单个和多个源进行的模拟,这些源在先验的不同置信度下进行了分析。

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