Zhang Guanghui, Luck Steven J
Research Center of Brain and Cognitive Neuroscience, Liaoning Normal University, Dalian, Liaoning, China.
Key Laboratory of Brain and Cognitive Neuroscience, Liaoning Province, Dalian, China.
bioRxiv. 2025 Feb 25:2025.02.22.639684. doi: 10.1101/2025.02.22.639684.
Numerous studies have demonstrated that eyeblinks and other large artifacts can decrease the signal-to-noise ratio of EEG data, resulting in decreased statistical power for conventional univariate analyses. However, it is not clear whether eliminating these artifacts during preprocessing enhances the performance of multivariate pattern analysis (MVPA; ), especially given that artifact rejection reduces the number of trials available for training the decoder. This study aimed to evaluate the impact of artifact-minimization approaches on the decoding performance of support vector machines. Independent component analysis (ICA) was used to correct ocular artifacts, and artifact rejection was used to discard trials with large voltage deflections from other sources (e.g., muscle artifacts). We assessed decoding performance in relatively simple binary classification tasks using data from seven commonly-used event-related potential paradigms (N170, mismatch negativity, N2pc, P3b, N400, lateralized readiness potential, and error-related negativity), as well as more challenging multi-way decoding tasks, including stimulus location and stimulus orientation. The results indicated that the combination of artifact correction and rejection did not improve decoding performance in the vast majority of cases. However, artifact correction may still be essential to minimize artifact-related confounds that might artificially inflate decoding accuracy. Researchers who are decoding EEG data from paradigms, populations, and recording setups that are similar to those examined here may benefit from our recommendations to optimize decoding performance and avoid incorrect conclusions.
大量研究表明,眨眼及其他大的伪迹会降低脑电图(EEG)数据的信噪比,导致传统单变量分析的统计功效降低。然而,尚不清楚在预处理过程中消除这些伪迹是否能提高多变量模式分析(MVPA)的性能,特别是考虑到去除伪迹会减少可用于训练解码器的试验次数。本研究旨在评估伪迹最小化方法对支持向量机解码性能的影响。独立成分分析(ICA)用于校正眼部伪迹,去除伪迹用于丢弃来自其他来源(如肌肉伪迹)的具有大电压偏转的试验。我们使用来自七个常用事件相关电位范式(N170、失配负波、N2pc、P3b、N400、侧化准备电位和错误相关负波)的数据,以及更具挑战性的多向解码任务,包括刺激位置和刺激方向,评估了相对简单的二元分类任务中的解码性能。结果表明,在绝大多数情况下,伪迹校正和去除的组合并不能提高解码性能。然而,伪迹校正对于最小化可能人为提高解码准确性的与伪迹相关的混淆因素可能仍然至关重要。从与本文所研究的类似范式、人群和记录设置中解码EEG数据的研究人员,可能会从我们的建议中受益,以优化解码性能并避免得出错误结论。