Edna Bennett Pierce Prevention Research Center, The Pennsylvania State University, University Park, Pennsylvania, USA.
Communication, Stanford University, Stanford, California, USA.
Psychophysiology. 2024 Mar;61(3):e14499. doi: 10.1111/psyp.14499. Epub 2023 Dec 12.
Research utilizing event-related potential (ERP) methods is generally biased with regard to sample representativeness. Among the myriad of factors that contribute to sample bias are researchers' assumptions about the extent to which racial differences in hair texture, volume, and style impact electrode placement, and subsequently, study eligibility. The current study examines these impacts using data collected from n = 213 individuals ages 17-19 years, and offers guidance on collection of ERP data across the full spectrum of hair types. Individual differences were quantified for hair texture using a visual scale, and for hair volume by measuring the amount of gel used in cap preparation. Electroencephalography data quality was assessed with multiple metrics at the preprocessing, post-processing, and variable generation stages. Results indicate that hair volume is associated with small, but systematic differences in signal quality and signal amplitude. Such differences are highly problematic as they could be misattributed to cognitive differences among groups. However, inclusion of gel volume as a covariate to account for individual differences in hair volume significantly reduced, and in most cases eliminated, group differences. We discuss strategies for overcoming real and perceived technical barriers for researchers seeking to achieve greater inclusivity and representativeness in ERP research.
利用事件相关电位 (ERP) 方法的研究通常存在样本代表性的偏差。导致样本偏差的因素有很多,其中包括研究人员对于头发质地、体积和样式的种族差异对电极放置的影响程度的假设,以及随后对研究资格的影响。本研究使用从 213 名 17-19 岁个体中收集的数据来检验这些影响,并就全系列发型的 ERP 数据收集提供指导。使用视觉量表量化头发质地的个体差异,并通过测量帽子准备过程中使用的凝胶量来量化头发体积。在预处理、后处理和变量生成阶段使用多个指标评估脑电图数据质量。结果表明,头发体积与信号质量和信号幅度的小但系统的差异有关。这些差异是非常成问题的,因为它们可能被错误地归因于群体之间的认知差异。然而,将凝胶体积作为协变量纳入,以解释头发体积的个体差异,显著减少了,并且在大多数情况下消除了组间差异。我们讨论了研究人员在 ERP 研究中为实现更大的包容性和代表性而克服实际和感知的技术障碍的策略。