Estimating the statistical power to detect set-size effects in contralateral delay activity

Psychophysiology. 2021 May;58(5):e13791. doi: 10.1111/psyp.13791. Epub 2021 Feb 10.

Abstract

The contralateral delay activity (CDA) is an event-related potential component commonly used to examine the online processes of visual working memory. Here, we provide a robust analysis of the statistical power that is needed to achieve reliable and reproducible results with the CDA. Using two very large EEG datasets that examined the contrast between CDA amplitude with set sizes 2 and 6 items and set sizes 2 and 4 items, we present a subsampling analysis that estimates the statistical power achieved with varying numbers of subjects and trials based on the proportion of significant tests in 10,000 iterations. We also generated simulated data using Bayesian multilevel modeling to estimate power beyond the bounds of the original datasets. The number of trials and subjects required depends critically on the effect size. Detecting the presence of the CDA-a reliable difference between contralateral and ipsilateral electrodes during the memory period-required only 30-50 clean trials with a sample of 25 subjects to achieve approximately 80% statistical power. However, for detecting a difference in CDA amplitude between two set sizes, a substantially larger number of trials and subjects were required; approximately 400 clean trials with 25 subjects to achieve 80% power. Thus, to achieve robust tests of how CDA activity differs across conditions, it is essential to be mindful of the estimated effect size. We recommend researchers designing experiments to detect set-size differences in the CDA collect substantially more trials per subject.

Keywords: EEG; ERPs; contralateral delay activity; statistical power; visual working memory.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Bayes Theorem
  • Computer Simulation
  • Electroencephalography
  • Evoked Potentials / physiology*
  • Functional Laterality
  • Humans
  • Memory, Short-Term / physiology*
  • Multilevel Analysis
  • Sample Size
  • Statistics as Topic*
  • Visual Perception / physiology*