适应性波束成形:从 TMS-EEG 数据中去除各类伪影的稳健而灵活的方法

IF 2.3 3区 医学 Q3 CLINICAL NEUROLOGY
Johanna Metsomaa, Yufei Song, Tuomas P. Mutanen, Pedro C. Gordon, Ulf Ziemann, Christoph Zrenner, Julio C. Hernandez-Pavon
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引用次数: 0

摘要

记录经颅磁刺激(TMS)反应的脑电图(EEG)可高度反映大脑皮层的反应性和连接性。可靠的脑电图解读需要去除伪像,因为 TMS 诱发的脑电图可能包含高振幅伪像。有几种方法可揭示干净的神经元脑电图反应。在实践中,确定针对不同类型的伪迹选择哪种方法往往很困难。在此,我们使用基于波束成形的统一数据清理框架来改进算法选择和对记录信号的适应性。波束成形的特性是众所周知的,因此可根据对伪影和数据的先验知识,为脑电图清洗提供定制方法。波束成形实施还包括但不限于流行的 TMS-EEG 净化方法:独立成分分析 (ICA)、信号空间投影 (SSP)、信号空间投影-源信息重建方法 (SSP-SIR)、源估计-利用噪声去除算法 (SOUND)、数据驱动的维纳滤波 (DDWiener) 和多源方法。除了这些成熟的方法外,波束成形还提供了一种灵活的方法,可通过考虑记录数据的属性来推导出新的伪影抑制算法。通过模拟和测量的 TMS-EEG 数据,我们展示了如何根据不同的数据和伪影类型(即 TMS 诱发的肌肉伪影、眼部伪影、TMS 相关的外周反应和信道噪声)调整基于波束成形的净化方法。重要的是,波束成形的实现速度很快:我们演示了 SOUND 算法如何通过波束成形实现数量级的速度提升。总之,基于波束成形的空间滤波框架可大大提高脑电图伪影去除的选择性、适应性和速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Adapted Beamforming: A Robust and Flexible Approach for Removing Various Types of Artifacts from TMS–EEG Data

Adapted Beamforming: A Robust and Flexible Approach for Removing Various Types of Artifacts from TMS–EEG Data

Electroencephalogram (EEG) recorded as response to transcranial magnetic stimulation (TMS) can be highly informative of cortical reactivity and connectivity. Reliable EEG interpretation requires artifact removal as the TMS-evoked EEG can contain high-amplitude artifacts. Several methods have been proposed to uncover clean neuronal EEG responses. In practice, determining which method to select for different types of artifacts is often difficult. Here, we used a unified data cleaning framework based on beamforming to improve the algorithm selection and adaptation to the recorded signals. Beamforming properties are well understood, so they can be used to yield customized methods for EEG cleaning based on prior knowledge of the artifacts and the data. The beamforming implementations also cover, but are not limited to, the popular TMS–EEG cleaning methods: independent component analysis (ICA), signal-space projection (SSP), signal-space-projection-source-informed-reconstruction method (SSP–SIR), the source-estimate-utilizing noise-discarding algorithm (SOUND), data-driven Wiener filter (DDWiener), and the multiple-source approach. In addition to these established methods, beamforming provides a flexible way to derive novel artifact suppression algorithms by considering the properties of the recorded data. With simulated and measured TMS–EEG data, we show how to adapt the beamforming-based cleaning to different data and artifact types, namely TMS-evoked muscle artifacts, ocular artifacts, TMS-related peripheral responses, and channel noise. Importantly, beamforming implementations are fast to execute: We demonstrate how the SOUND algorithm becomes orders of magnitudes faster via beamforming. Overall, the beamforming-based spatial filtering framework can greatly enhance the selection, adaptability, and speed of EEG artifact removal.

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来源期刊
Brain Topography
Brain Topography 医学-临床神经学
CiteScore
4.70
自引率
7.40%
发文量
41
审稿时长
3 months
期刊介绍: Brain Topography publishes clinical and basic research on cognitive neuroscience and functional neurophysiology using the full range of imaging techniques including EEG, MEG, fMRI, TMS, diffusion imaging, spectroscopy, intracranial recordings, lesion studies, and related methods. Submissions combining multiple techniques are particularly encouraged, as well as reports of new and innovative methodologies.
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