利用不同的支持来源从神经磁数据定位神经活动

C. Campi
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引用次数: 0

摘要

脑磁图(MEG)和脑电图(EEG)分别以非侵入性的方式测量由大脑活动引起的磁场和电位。这些仪器具有出色的时间分辨率,记录的数据可以为神经电流的动态提供有趣的见解。为了从数据中获得未知神经电流的可靠信息,我们需要解决一个不适定逆问题:在连接神经活动和测量数据的模型的制定中涉及的算子使得反演问题的解不是唯一的,并且不连续依赖于数据。此外,源模型的选择深刻影响了解决方案的表示:神经电流的分布式模型可以包含复杂的、分散的大脑活动,但在表示局部大脑活动时可能不准确,而偶极源的表示不能正确表示皮层斑块产生的活动。在这项工作中,我们提出了迄今为止用于MEG数据分析的粒子滤波器的改进版本:在这种实现中,源的支持不再固定为偶极子,而是可以来回变化以分布,在时间样本中自适应到最佳配置。我们用特别的合成数据来测试该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization of neural activity from neuromagnetic data using varying-support sources
Magnetoencephalography (MEG) and Electroencephalography (EEG) measure in a non-invasive way the magnetic field and the electrical potential, respectively, induced by cerebral activity. These instruments have an outstanding temporal resolution and the recorded data could provide interesting insights of the dynamics of neural currents. In order to get reliable information on the unknown neural currents from the data, we need to solve a ill-posed inverse problem: the operator involved in the formulation of the model linking the neural activity and the measured data is such that the solution of the inversion problem is not unique and does not depend continuously on the data. Moreover, the choice of the model for the source deeply affects the representation of the solution: a distributed model for neural currents can encompass complex, spread brain activity but could be not accurate in the representation of focal brain activity, while the representation with dipolar sources could not represent properly the activity generated by patches of cortex. In this work we propose a modified version of the Particle Filter we employed so far for MEG data analysis: in this implementation the support of the sources is not more fixed to be a dipole but can change back and forth to be distributed, adapting itself among the time samples to the best configuration. We test the method with ad hoc synthetic data.
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