Department of Psychology, University of South Florida, Tampa, FL, United States of America.
Department of Psychology, Florida State University, Tallahassee, FL, United States of America.
Int J Psychophysiol. 2021 Jul;165:121-136. doi: 10.1016/j.ijpsycho.2021.04.004. Epub 2021 Apr 24.
Event-related brain potentials (ERPs) represent direct measures of neural activity that are leveraged to understand cognitive, affective, sensory, and motor processes. Every ERP researcher encounters the obstacle of determining whether measurements are precise or psychometrically reliable enough for an intended purpose. In this primer, we review three types of measurements metrics: data quality, group-level internal consistency, and subject-level internal consistency. Data quality estimates characterize the precision of ERP scores but provide no inherent information about whether scores are precise enough for examining individual differences. Group-level internal consistency characterizes the ratio of between-person differences to the precision of those scores, and provides a single internal consistency estimate for an entire group of participants that risks masking low internal consistency for some individuals. Subject-level internal consistency considers the precision of an ERP score for a person relative to between-person differences for a group, and an estimate is yielded for each individual. We apply each metric to published error-related negativity (ERN) and reward positivity (RewP) data and demonstrate how failing to consider data quality and internal consistency can undermine statistical inferences. We conclude with general comments on how these estimates may be used to improve measurement quality and methodological transparency. Subject-level internal consistency computation is implemented within the ERP Reliability Analysis (ERA) Toolbox.
事件相关脑电位(ERPs)代表了对神经活动的直接测量,可用于理解认知、情感、感觉和运动过程。每个 ERP 研究人员都会遇到这样的障碍:确定测量结果是否足够精确和心理测量可靠,以达到预期目的。在本入门指南中,我们将回顾三种类型的测量指标:数据质量、组内内部一致性和个体内部一致性。数据质量评估可衡量 ERP 得分的精确性,但无法提供有关得分是否足够精确以检查个体差异的固有信息。组内内部一致性可衡量个体间差异与这些得分精确性的比率,并为整个参与者群体提供单一的内部一致性估计,但存在一些个体的内部一致性低的风险。个体内部一致性考虑了一个人相对于一组个体间差异的 ERP 得分的精确性,并且为每个人提供了一个估计值。我们将每个指标应用于已发表的错误相关负波(ERN)和奖励正波(RewP)数据,并展示了不考虑数据质量和内部一致性如何会破坏统计推断。最后,我们对这些估计值如何用于提高测量质量和方法透明度进行了一般性评论。个体内部一致性计算在 ERP 可靠性分析(ERA)工具箱中实现。