基于电磁源成像的脑磁图传感器时间序列鲁棒插值。

Chang Cai, Xinbao Qi, Yuanshun Long, Zheyuan Zhang, Jing Yan, Huicong Kang, Wei Wu, Srikantan S Nagarajan
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摘要

目的:脑电图(EEG)和脑磁图(MEG)是临床和认知神经科学中广泛使用的无创技术。然而,低空间分辨率测量、某些传感器阵列的部分大脑覆盖以及噪声传感器可能导致传感器地形扭曲,从而导致对潜在大脑动力学的不准确重建。解决这些问题一直是一项具有挑战性的任务,本文提出了一种基于电磁源成像的鲁棒框架,用于插值未知或质量较差的EEG/MEG测量。方法:该框架包括两个步骤:1)使用鲁棒逆算法和可用的良好传感器的导场矩阵估计脑源活动,以及2)使用未知或质量差的传感器的导场矩阵使用重建的脑源插值未知或质量差的EEG/MEG测量。我们通过模拟和几个真实数据集评估了所提出的框架,并将其性能与两种流行的基准-邻域插值(NI)和球面样条插值(SSI)算法进行了比较。结果:在模拟和真实的EEG/MEG测量中,我们展示了与基准测试相比的几个优势,它们对高度相关的大脑活动、低信噪比数据和准确估计皮层动态具有鲁棒性。意义:这些结果展示了一个严格的平台,可以提高脑电和脑磁图的空间分辨率,克服脑电/脑磁图传感器阵列部分覆盖的局限性,特别是与低通道计数光泵磁强计(OPM)阵列相关的局限性,并在一定程度上基于其他良好传感器的可用测量来估计差/噪声传感器的活动。该框架的实施将提高脑电图和脑磁图的质量,从而扩大这些模式的潜在应用。
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Robust interpolation of EEG/MEG sensor time-series via electromagnetic source imaging.

Objective.electroencephalography (EEG) and magnetoencephalography (MEG) are widely used non-invasive techniques in clinical and cognitive neuroscience. However, low spatial resolution measurements, partial brain coverage by some sensor arrays, as well as noisy sensors could result in distorted sensor topographies resulting in inaccurate reconstructions of underlying brain dynamics. Solving these problems has been a challenging task. This paper proposes a robust framework based on electromagnetic source imaging for interpolation of unknown or poor quality EEG/MEG measurements.Approach.This framework consists of two steps: (1) estimating brain source activity using a robust inverse algorithm along with the leadfield matrix of available good sensors, and (2) interpolating unknown or poor quality EEG/MEG measurements using the reconstructed brain sources using the leadfield matrices of unknown or poor quality sensors. We evaluate the proposed framework through simulations and several real datasets, comparing its performance to two popular benchmarks-neighborhood interpolation and spherical spline interpolation algorithms.Results.In both simulations and real EEG/MEG measurements, we demonstrate several advantages compared to benchmarks, which are robust to highly correlated brain activity, low signal-to-noise ratio data and accurately estimates cortical dynamics.Significance.These results demonstrate a rigorous platform to enhance the spatial resolution of EEG and MEG, to overcome limitations of partial coverage of EEG/MEG sensor arrays that is particularly relevant to low-channel count optically pumped magnetometer arrays, and to estimate activity in poor/noisy sensors to a certain extent based on the available measurements from other good sensors. Implementation of this framework will enhance the quality of EEG and MEG, thereby expanding the potential applications of these modalities.

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