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Multivariate source prelocalization (MSP): use of functionally informed basis functions for better conditioning the MEG inverse problem.

机译:多元源预定位(MSP):使用功能强大的基础函数更好地处理MEG逆问题。

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摘要

Spatially characterizing and quantifying the brain electromagnetic response using MEG/EEG data still remains a critical issue since it requires solving an ill-posed inverse problem that does not admit a unique solution. To overcome this lack of uniqueness, inverse methods have to introduce prior information about the solution. Most existing approaches are directly based upon extrinsic anatomical and functional priors and usually attempt at simultaneously localizing and quantifying brain activity. By contrast, this paper deals with a preprocessing tool which aims at better conditioning the source reconstruction process, by relying only upon intrinsic knowledge (a forward model and the MEG/EEG data itself) and focusing on the key issue of localization. Based on a discrete and realistic anatomical description of the cortex, we first define functionally Informed Basis Functions (fIBF) that are subject specific. We then propose a multivariate method which exploits these fIBF to calculate a probability-like coefficient of activation associated with each dipolar source of the model. This estimated distribution of activation coefficients may then be used as an intrinsic functional prior, either by taking these quantities into account in a subsequent inverse method, or by thresholding the set of probabilities in order to reduce the dimension of the solution space. These two ways of constraining the source reconstruction process may naturally be coupled. We successively describe the proposed Multivariate Source Prelocalization (MSP) approach and illustrate its performance on both simulated and real MEG data. Finally, the better conditioning induced by the MSP process in a classical regularization scheme is extensively and quantitatively evaluated.
机译:使用MEG / EEG数据在空间上表征和量化大脑电磁响应仍然是一个关键问题,因为它需要解决不适当地提出的逆问题,而这并不是唯一的解决方案。为了克服这种独特性的不足,逆方法必须引入有关解决方案的先验信息。大多数现有方法直接基于外部解剖学和功能先验,并且通常尝试同时定位和量化大脑活动。相比之下,本文研究了一种预处理工具,旨在仅依靠内在知识(前向模型和MEG / EEG数据本身)并专注于本地化的关键问题,从而更好地调节源重构过程。基于对皮质的离散且现实的解剖描述,我们首先定义特定于受试者的功能知情基础函数(fIBF)。然后,我们提出了一种利用这些fIBF来计算与模型的每个偶极子源相关的类似概率的激活系数的多元方法。然后,可以通过在后续的逆方法中考虑这些数量,或者通过对概率集合进行阈值化以减小解空间的维数,将激活系数的这种估计分布用作固有函数。约束源重构过程的这两种方式自然可以耦合。我们先后描述了提出的多元源预定位(MSP)方法,并说明了其在模拟和实际MEG数据上的性能。最后,对MSP过程在经典正则化方案中引发的更好条件进行了广泛且定量的评估。

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