基于空间平滑和边缘稀疏性(SISSES)的源成像方法及其在 OPM-MEG 中的应用

Wen Li;Nan An;Fuzhi Cao;Wenli Wang;Chunhui Wang;Weinan Xu;Yang Gao;Xiaolin Ning
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引用次数: 0

摘要

脑磁图(MEG)中的源估计涉及解决一个没有唯一解的高度不适定问题。准确估计震源的时间过程和空间范围对研究脑活动机制和术前功能定位具有重要意义。传统的方法往往产生小振幅扩散或大振幅聚焦源估计。近年来,基于结构化稀疏度的源成像算法已成为改进源幅值估计的一种最有前途的算法。然而,它受到明显的振幅偏差的影响。为了提高重构源的时空分辨率,提出了一种基于空间平滑和边缘稀疏的源成像方法(SISSES)。该方法利用一组时间基函数对源的时间动态进行建模,用一阶马尔可夫随机场(MRF)模型表示源的空间特征。特别地,在原始域和变异域对MRF模型残差施加了稀疏约束。数值模拟验证了SISSES的有效性。结果表明,SISSES在估计斑块源的时间过程、位置和范围方面优于基准方法。此外,使用31通道光泵磁强计MEG系统进行听觉和正中神经刺激实验,并将SISSES应用于这些数据的源成像。结果表明,SISSES能够正确识别不同时间发生脑反应的源区域,证明了其在各种实际应用中的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Source Imaging Method Based on Spatial Smoothing and Edge Sparsity (SISSES) and Its Application to OPM-MEG
Source estimation in magnetoencephalography (MEG) involves solving a highly ill-posed problem without a unique solution. Accurate estimation of the time course and spatial extent of the source is important for studying the mechanisms of brain activity and preoperative functional localization. Traditional methods tend to yield small-amplitude diffuse or large-amplitude focused source estimates. Recently, the structured sparsity-based source imaging algorithm has emerged as one of the most promising algorithms for improving source extent estimation. However, it suffers from a notable amplitude bias. To improve the spatiotemporal resolution of reconstructed sources, we propose a novel method called the source imaging method based on spatial smoothing and edge sparsity (SISSES). In this method, the temporal dynamics of sources are modeled using a set of temporal basis functions, and the spatial characteristics of the source are represented by a first-order Markov random field (MRF) model. In particular, sparse constraints are imposed on the MRF model residuals in the original and variation domains. Numerical simulations were conducted to validate the SISSES. The results demonstrate that SISSES outperforms benchmark methods for estimating the time course, location, and extent of patch sources. Additionally, auditory and median nerve stimulation experiments were performed using a 31-channel optically pumped magnetometer MEG system, and the SISSES was applied to the source imaging of these data. The results demonstrate that SISSES correctly identified the source regions in which brain responses occurred at different times, demonstrating its feasibility for various practical applications.
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