Estimating statistical power for event-related potential studies using the late positive potential
PSYCHOPHYSIOLOGY(2019)
摘要
The late positive potential (LPP) is a common measurement used to study emotional processes of subjects in event-related potential (ERP) paradigms. Despite its extensive use in affective neuroscience, there is presently no gold standard for how to appropriately power ERP studies using the LPP in within-subject and between-subjects experimental designs. The present study investigates how the number of trials, number of subjects, and magnitude of the effect size affect statistical power in analyses of the LPP. Using Monte Carlo simulations of ERP experiments with varying numbers of trials, subjects, and effect sizes, we measured the probability of obtaining a statistically significant effect in 1,489 different experiments repeated 1,000 times each. Predictably, our results showed that statistical power increases with increasing numbers of trials and subjects and at larger effect sizes. In addition, we found that higher levels of statistical power can be achieved with lower numbers of subjects and trials and at lower effect sizes in within-subject than in between-subjects designs. Furthermore, we found that, as subjects are added to an experiment, the slope of the relationship between effect size and statistical power increases and shifts to the left until the power asymptotes to nearly 100% at higher effect sizes. This suggests that adding more subjects greatly increases statistical power at lower effect sizes ( 1.5 microvolt) effect sizes.
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关键词
late positive potential,statistical methods,affect
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