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Improving MEG source localizations: An automated method for complete artifact removal based on independent component analysis

机译:提高MEG源本地化:基于独立分量分析的完整伪影删除的自动化方法

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摘要

The major limitation for the acquisition of high-quality magnetoencephalography (MEG) recordings is the presence of disturbances of physiological and technical origins: eye movements, cardiac signals, muscular contractions, and environmental noise are serious problems for MEG signal analysis. In the last years, multi-channel MEG systems have undergone rapid technological developments in terms of noise reduction, and many processing methods have been proposed for artifact rejection. Independent component analysis (ICA) has already shown to be an effective and generally applicable technique for concurrently removing artifacts and noise from the MEG recordings. However, no standardized automated system based on ICA has become available so far, because of the intrinsic difficulty in the reliable categorization of the source signals obtained with this technique. In this work, approximate entropy (ApEn), a measure of data regularity, is successfully used for the classification of the signals produced by ICA, allowing for an automated artifact rejection. The proposed method has been tested using MEG data sets collected during somatosensory, auditory and visual stimulation. It was demonstrated to be effective in attenuating both biological artifacts and environmental noise, in order to reconstruct clear signals that can be used for improving brain source localizations.
机译:收购高质量磁性脑图(MEG)录音的主要限制是存在生理和技术问题的干扰:眼部运动,心脏信号,肌肉收缩和环境噪声是MEG信号分析的严重问题。在过去几年中,多通道MEG系统在降噪方面经历了快速的技术发展,并且已经提出了许多处理方法的伪影抑制。独立的分量分析(ICA)已经证明是一种有效且通常适用的技术,用于同时消除MEG录像的伪影和噪声。然而,到目前为止,没有基于ICA的标准化自动化系统,因为在通过该技术获得的源信号的可靠分类中的内在难度。在这项工作中,近似熵(apen),数据规律性的量度,成功用于ICA产生的信号的分类,允许自动伪像抑制。已经使用在躯体感,听觉和视觉刺激期间收集的MEG数据集进行了测试。它被证明是有效地衰减生物伪影和环境噪声,以重建可用于改善脑源本地化的清晰信号。

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