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利用增强型双芯 MEG 波束形成器对神经元源进行精确的时间相关性重建。

Accurate reconstruction of temporal correlation for neuronal sources using the enhanced dual-core MEG beamformer.

机构信息

Department of Radiology, University of California, San Diego, La Jolla, CA, USA.

出版信息

Neuroimage. 2011 Jun 15;56(4):1918-28. doi: 10.1016/j.neuroimage.2011.03.042. Epub 2011 Apr 5.

DOI:10.1016/j.neuroimage.2011.03.042
PMID:21443954
Abstract

Beamformer spatial filters are commonly used to explore the active neuronal sources underlying magnetoencephalography (MEG) recordings at low signal-to-noise ratio (SNR). Conventional beamformer techniques are successful in localizing uncorrelated neuronal sources under poor SNR conditions. However, the spatial and temporal features from conventional beamformer reconstructions suffer when sources are correlated, which is a common and important property of real neuronal networks. Dual-beamformer techniques, originally developed by Brookes et al. to deal with this limitation, successfully localize highly-correlated sources and determine their orientations and weightings, but their performance degrades at low correlations. They also lack the capability to produce individual time courses and therefore cannot quantify source correlation. In this paper, we present an enhanced formulation of our earlier dual-core beamformer (DCBF) approach that reconstructs individual source time courses and their correlations. Through computer simulations, we show that the enhanced DCBF (eDCBF) consistently and accurately models dual-source activity regardless of the correlation strength. Simulations also show that a multi-core extension of eDCBF effectively handles the presence of additional correlated sources. In a human auditory task, we further demonstrate that eDCBF accurately reconstructs left and right auditory temporal responses and their correlations. Spatial resolution and source localization strategies corresponding to different measures within the eDCBF framework are also discussed. In summary, eDCBF accurately reconstructs source spatio-temporal behavior, providing a means for characterizing complex neuronal networks and their communication.

摘要

波束形成器空间滤波器常用于在低信噪比 (SNR) 下探索脑磁图 (MEG) 记录的活跃神经元源。传统的波束形成器技术在 SNR 条件差的情况下成功定位了不相关的神经元源。然而,当源相关时,传统波束形成器重建的空间和时间特征会受到影响,这是真实神经元网络的常见和重要特性。Brookes 等人最初开发的双波束形成器技术旨在解决这一限制,成功定位了高度相关的源,并确定了它们的方向和权重,但在相关性较低时,其性能会下降。它们也缺乏产生单个时间过程的能力,因此无法量化源相关性。在本文中,我们提出了一种改进的双核波束形成器 (DCBF) 方法,该方法重建了单个源的时间过程及其相关性。通过计算机模拟,我们表明增强的 DCBF (eDCBF) 始终如一地准确模拟双源活动,无论相关性强度如何。模拟还表明,eDCBF 的多核扩展有效地处理了额外相关源的存在。在人类听觉任务中,我们进一步证明 eDCBF 可以准确重建左右听觉时间响应及其相关性。还讨论了与 eDCBF 框架内不同措施相对应的空间分辨率和源定位策略。总之,eDCBF 准确地重建了源的时空行为,为描述复杂的神经元网络及其通信提供了一种手段。

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