Thigpen Nina N, Kappenman Emily S, Keil Andreas
Center for the Study of Emotion & Attention, University of Florida, Gainesville, Florida, USA.
UC Davis Center for Mind & Brain, University of California, Davis, California, USA.
Psychophysiology. 2017 Jan;54(1):123-138. doi: 10.1111/psyp.12629.
ERPs are widely and increasingly used to address questions in psychophysiological research. As discussed in this special issue, a renewed focus on questions of reliability and stability marks the need for intuitive, quantitative descriptors that allow researchers to communicate the robustness of ERP measures used in a given study. This report argues that well-established indices of internal consistency and effect size meet this need and can be easily extracted from most ERP datasets, as demonstrated with example analyses using a representative dataset from a feature-based visual selective attention task. We demonstrate how to measure the internal consistency of three aspects commonly considered in ERP studies: voltage measurements for specific time ranges at selected sensors, voltage dynamics across all time points of the ERP waveform, and the distribution of voltages across the scalp. We illustrate methods for quantifying the robustness of experimental condition differences, by calculating effect size for different indices derived from the ERP. The number of trials contributing to the ERP waveform was manipulated to examine the relationship between signal-to-noise ratio (SNR), internal consistency, and effect size. In the present example dataset, satisfactory consistency (Cronbach's alpha > 0.7) of individual voltage measurements was reached at lower trial counts than were required to reach satisfactory effect sizes for differences between experimental conditions. Comparing different metrics of robustness, we conclude that the internal consistency and effect size of ERP findings greatly depend on the quantification strategy, the comparisons and analyses performed, and the SNR.
事件相关电位(ERPs)在心理生理学研究中被广泛且越来越多地用于解决各种问题。正如本期特刊所讨论的,对可靠性和稳定性问题的重新关注表明,需要直观的定量描述符,以便研究人员能够传达给定研究中所使用的ERP测量的稳健性。本报告认为,成熟的内部一致性指标和效应量指标满足了这一需求,并且可以很容易地从大多数ERP数据集中提取,这一点通过使用基于特征的视觉选择性注意任务的代表性数据集进行的示例分析得到了证明。我们展示了如何测量ERP研究中通常考虑的三个方面的内部一致性:选定传感器在特定时间范围内的电压测量、ERP波形所有时间点的电压动态以及头皮上的电压分布。我们通过计算从ERP得出的不同指标的效应量,说明了量化实验条件差异稳健性的方法。对构成ERP波形的试验次数进行了操纵,以检验信噪比(SNR)、内部一致性和效应量之间的关系。在本示例数据集中,与达到实验条件之间差异的满意效应量所需的试验次数相比,在较低的试验次数下就能实现单个电压测量的满意一致性(Cronbach's alpha>0.7)。比较不同的稳健性指标,我们得出结论,ERP研究结果的内部一致性和效应量在很大程度上取决于量化策略、所进行的比较和分析以及信噪比。