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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Enhancing the signal-to-noise ratio of ICA-based extracted ERPs
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Enhancing the signal-to-noise ratio of ICA-based extracted ERPs

机译:提高基于ICA的抽取式ERP的信噪比

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摘要

When decomposing single trial electroencephalography it is a challenge to incorporate prior physiological knowledge. Here, we develop a method that uses prior information about the phase-locking property of event-related potentials in a regularization framework to bias a blind source separation algorithm toward an improved separation of single-trial phase-locked responses in terms of an increased signal-to-noise ratio. In particular, we suggest a transformation of the data, using weighted average of the single trial and trial-averaged response, that redirects the focus of source separation methods onto the subspace of event-related potentials. The practical benefit with respect to an improved separation of such components from ongoing background activity and extraneous noise is first illustrated on artificial data and finally verified in a real-world application of extracting single-trial somatosensory evoked potentials from multichannel EEG-recordings.
机译:当分解单次试验脑电图时,要结合以前的生理知识是一个挑战。在这里,我们开发了一种方法,该方法使用有关正则化框架中事件相关电位的锁相特性的先验信息来使盲源分离算法偏向于根据增加的信号来改善单次试锁相响应的分离噪声比。特别是,我们建议使用单个试验的加权平均值和试验平均响应对数据进行转换,以将源分离方法的重点重定向到事件相关电位的子空间。首先从人工数据上说明了如何将此类成分与正在进行的背景活动和外部噪声更好地分离的实际好处,最后在从多通道EEG记录中提取单次试验体感诱发电位的实际应用中得到了验证。

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