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一种使用最小范数估计(MNE)计算脑电图源深度的简单方法。

A simple method for calculating the depth of EEG sources using minimum norm estimates (MNE).

作者信息

Pinto B, Silva C Quintão

机构信息

Faculty of Sciences and Technology, University of Algarve, Campus de Gambelas, Faro, Portugal.

出版信息

Med Biol Eng Comput. 2007 Jul;45(7):643-52. doi: 10.1007/s11517-007-0204-z. Epub 2007 Jun 23.

Abstract

Neural source localization using electroencephalographic data is usually performed using either dipolar models or minimum norm based techniques. While the former demands a priori information about the number of active sources and is particularly suitable for generators, which occupy small pieces of cortical tissue, the major drawbacks of the second approach are its dependence on the uncorrelated noise, and its tendency to localize the sources at the surface. In this paper, a simple mathematical procedure, based on the behavior of the dispersion of the minimum norm solutions, is introduced, in order to estimate the depth of the sources. The correct position of the active generators is obtained using successively deeper surfaces instead of the application of a regularization matrix, as is commonly described in the bibliography. The evaluation of this technique is performed using single and double dipolar simulated generators and two different models for the head: spherical and realistic. The results yield a mean accuracy of about 10 mm for the most disadvantageous situations studied and thus, this method seems to be very promising to handle the depth of the neural generators.

摘要

使用脑电图数据进行神经源定位通常采用偶极子模型或基于最小范数的技术。虽然前者需要关于活跃源数量的先验信息,并且特别适用于占据小块皮质组织的发生器,但后一种方法的主要缺点是它依赖于不相关噪声,并且倾向于将源定位在表面。本文介绍了一种基于最小范数解的离散行为的简单数学程序,以估计源的深度。通过连续使用更深的表面来获得活跃发生器的正确位置,而不是像参考文献中通常描述的那样应用正则化矩阵。使用单偶极子和双偶极子模拟发生器以及两种不同的头部模型(球形和真实模型)对该技术进行评估。对于所研究的最不利情况,结果产生的平均精度约为10毫米,因此,这种方法似乎在处理神经发生器深度方面非常有前景。

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