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Removal of Gross Artifacts of Transcranial Alternating Current Stimulation in Simultaneous EEG Monitoring ?

机译:在同步脑电图监测中去除经颅交流电刺激的毛重伪影?

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Transcranial electrical stimulation is a widely used non-invasive brain stimulation approach. To date, EEG has been used to evaluate the effect of transcranial Direct Current Stimulation (tDCS) and transcranial Alternating Current Stimulation (tACS), but most studies have been limited to exploring changes in EEG before and after stimulation due to the presence of stimulation artifacts in the EEG data. This paper presents two different algorithms for removing the gross tACS artifact from simultaneous EEG recordings. These give different trade-offs in removal performance, in the amount of data required, and in their suitability for closed loop systems. Superposition of Moving Averages and Adaptive Filtering techniques are investigated, with significant emphasis on verification. We present head phantom testing results for controlled analysis, together with on-person EEG recordings in the time domain, frequency domain, and Event Related Potential (ERP) domain. The results show that EEG during tACS can be recovered free of large scale stimulation artifacts. Previous studies have not quantified the performance of the tACS artifact removal procedures, instead focusing on the removal of second order artifacts such as respiration related oscillations. We focus on the unresolved challenge of removing the first order stimulation artifact, presented with a new multi-stage validation strategy.
机译:经颅电刺激是一种广泛使用的非侵入性脑刺激方法。迄今为止,脑电图已用于评估经颅直流电刺激(tDCS)和经颅交流电刺激(tACS)的效果,但是由于存在刺激伪影,大多数研究仅限于探索刺激前后脑电图的变化。在脑电数据中。本文提出了两种不同的算法,可从同时进行的EEG记录中去除总的tACS伪像。这些在清除性能,所需数据量以及它们对闭环系统的适用性方面给出了不同的权衡。研究了移动平均线和自适应滤波技术的叠加,其中重点是验证。我们提供了用于控制分析的头部模型测试结果,以及时域,频域和事件相关电位(ERP)域中的人脑电图记录。结果表明,tACS期间的脑电图可以无大规模刺激伪影地恢复。先前的研究并未量化tACS伪影去除程序的性能,而是集中在诸如呼吸相关振荡之类的二阶伪影的去除上。我们专注于去除一阶刺激伪像的未解决挑战,并提出了一种新的多阶段验证策略。

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