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Unsupervised detection and removal of muscle artifacts from scalp EEG recordings using canonical correlation analysis, wavelets and random forests

机译:使用规范相关性分析,小波和随机森林从头皮EEG录制中无监督检测和去除肌肉伪影

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Highlights ? We present automatic unsupervised & supervised muscle artifact detection and rejection algorithms. ? Results from 10 patients with epilepsy show excellent performance, outperforming CCA and ICA. ? Our approach removes the need for expert marking, reference signal recording and visual inspection. Abstract Objective This paper proposes supervised and unsupervised algorithms for automatic muscle artifact detection and removal from long-term EEG recordings, which combine canonical correlation analysis (CCA) and wavelets with random forests (RF). Methods The proposed algorithms first perform CCA and continuous wavelet transform of the canonical components to generate a number of features which include component autocorrelation values and wavelet coefficient magnitude values. A subset of the most important features is subsequently selected using RF and labelled observations (supervised case) or synthetic data constructed from the original observations (unsupervised case). The proposed algorithms are evaluated using realistic simulation data as well as 30 min epochs of non-invasive EEG recordings obtained from ten patients with epilepsy. Results We assessed the performance of the proposed algorithms using classification performance and goodness-of-fit values for noisy and noise-free signal windows. In the simulation study, where the ground truth was known, the proposed algorithms yielded almost perfect performance. In the case of experimental data, where expert marking was performed, the results suggest that both the supervised and unsupervised algorithm versions were able to remove artifacts without affecting noise-free channels considerably, outperforming standard CCA, independent component analysis (ICA) and Lagged Auto-Mutual Information Clustering (LAMIC). Conclusion The proposed algorithms achieved excellent performance for both simulation and experimental data. Importantly, for the first time to our knowledge, we were able to perform entirely unsupervised artifact removal, i.e. without using already marked noisy data segments, achieving performance that is comparable to the supervised case. Significance Overall, the results suggest that the proposed algorithms yield significant future potential for improving EEG signal quality in research or clinical settings without the need for marking by expert neurophysiologists, EMG signal recording and user visual inspection. ]]>
机译:强调 ?我们展示了自动无人监督&监督肌肉工件检测和拒绝算法。还10例癫痫患者的结果表明,表现出色,表现优于CCA和ICA。还我们的方法消除了专家标记,参考信号记录和视觉检查的需求。摘要目的本文提出了用于自动肌肉伪影检测和从长期EEG记录中移除的监督和无监督算法,其将规范相关性分析(CCA)和随机森林(RF)的小波结合在一起。方法提出的算法首先执行规范组件的CCA和连续小波变换,以产生多个特征,包括组件自相关值和小波系数幅度值。随后使用RF和标记的观察(监督案例)或由原始观察(无监督)构成的合成数据来选择最重要的特征的子集。使用现实的模拟数据以及从10名癫痫患者获得的非侵入性EEG记录的30分钟的时期评估所提出的算法。结果我们使用分类性能和无噪声信号窗口的良好值评估所提出的算法的性能。在仿真研究中,在众所周知的基础事实之下,所提出的算法几乎完美的性能。在实验数据的情况下,在执行专家标记的情况下,结果表明,监督和无监督算法版本都能够显着地去除伪像,而不会显着影响无噪声通道,表现优于标准的CCA,独立分量分析(ICA)和滞后的自动 - 微量信息聚类(Lamic)。结论所提出的算法对模拟和实验数据进行了良好的性能。重要的是,首次涉及我们的知识,我们能够执行完全无监督的神器删除,即,不使用已经标记的嘈杂数据段,实现了与监督箱相当的性能。结果表明,结果表明,该算法产生了改善研究或临床环境中的EEG信号质量的显着未来可能性,而无需专业的神经生理学家,EMG信号记录和用户目视检查。 ]]>

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