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高空间分辨率下相关源稳健电磁脑成像的贝叶斯自适应波束形成器。

Bayesian Adaptive Beamformer for Robust Electromagnetic Brain Imaging of Correlated Sources in High Spatial Resolution.

出版信息

IEEE Trans Med Imaging. 2023 Sep;42(9):2502-2512. doi: 10.1109/TMI.2023.3256963. Epub 2023 Aug 31.

DOI:10.1109/TMI.2023.3256963
PMID:37028341
Abstract

Reconstructing complex brain source activity at a high spatiotemporal resolution from magnetoencephalography (MEG) or electroencephalography (EEG) remains a challenging problem. Adaptive beamformers are routinely deployed for this imaging domain using the sample data covariance. However adaptive beamformers have long been hindered by 1) high degree of correlation between multiple brain sources, and 2) interference and noise embedded in sensor measurements. This study develops a novel framework for minimum variance adaptive beamformers that uses a model data covariance learned from data using a sparse Bayesian learning algorithm (SBL-BF). The learned model data covariance effectively removes influence from correlated brain sources and is robust to noise and interference without the need for baseline measurements. A multiresolution framework for model data covariance computation and parallelization of the beamformer implementation enables efficient high-resolution reconstruction images. Results with both simulations and real datasets indicate that multiple highly correlated sources can be accurately reconstructed, and that interference and noise can be sufficiently suppressed. Reconstructions at 2-2.5mm resolution (  ∼  150K voxels) are possible with efficient run times of 1-3 minutes. This novel adaptive beamforming algorithm significantly outperforms the state-of-the-art benchmarks. Therefore, SBL-BF provides an effective framework for efficiently reconstructing multiple correlated brain sources with high resolution and robustness to interference and noise.

摘要

从脑磁图(MEG)或脑电图(EEG)重建高时空分辨率的复杂脑源活动仍然是一个具有挑战性的问题。自适应波束形成器通常使用样本数据协方差在该成像域中部署。然而,自适应波束形成器长期以来一直受到以下因素的限制:1)多个脑源之间高度相关,2)传感器测量中嵌入的干扰和噪声。本研究开发了一种新的最小方差自适应波束形成器框架,该框架使用稀疏贝叶斯学习算法(SBL-BF)从数据中学习模型数据协方差。学习到的模型数据协方差有效地消除了相关脑源的影响,并且对噪声和干扰具有鲁棒性,而无需进行基线测量。模型数据协方差的多分辨率计算框架和波束形成器实现的并行化使得高效的高分辨率重建图像成为可能。模拟和真实数据集的结果表明,可以准确地重建多个高度相关的源,并且可以充分抑制干扰和噪声。在 2-2.5mm 分辨率(约 150K 体素)下进行重建,运行时间效率为 1-3 分钟。这种新的自适应波束形成算法明显优于最先进的基准。因此,SBL-BF 为高效重建具有高分辨率和抗干扰噪声能力的多个相关脑源提供了有效的框架。

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