Garden of forking paths in ERP research – Effects of varying pre‐processing and analysis steps in an N400 experiment

Author:

Šoškić Anđela12ORCID,Styles Suzy J.34ORCID,Kappenman Emily S.5ORCID,Ković Vanja2ORCID

Affiliation:

1. Faculty of Education University of Belgrade Belgrade Serbia

2. Laboratory for Neurocognition and Applied Cognition, Department of Psychology, Faculty of Philosophy University of Belgrade Belgrade Serbia

3. Psychology, School of Social Sciences Nanyang Technological University Singapore Singapore

4. Centre for Research and Development on Learning (CRADLE) Nanyang Technological University Singapore Singapore

5. Department of Psychology San Diego State University San Diego California USA

Abstract

AbstractThis study tackles the Garden of Forking Paths, as a challenge for replicability and reproducibility of ERP studies. Here, we applied a multiverse analysis to a sample ERP N400 dataset, donated by an independent research team. We analyzed this dataset using 14 pipelines selected to showcase the full range of methodological variability found in the N400 literature using systematic review approach. The selected pipelines were compared in depth by looking into statistical test outcomes, descriptive statistics, effect size, data quality, and statistical power. In this way we provide a worked example of how analytic flexibility can impact results in research fields with high dimensionality such as ERP, when analyzed using standard null‐hypothesis significance testing. Out of the methodological decisions that were varied, high‐pass filter cut‐off, artifact removal method, baseline duration, reference, measurement latency and locations, and amplitude measure (peak vs. mean) were all shown to affect at least some of the study outcome measures. Low‐pass filtering was the only step which did not notably influence any of these measures. This study shows that even some of the seemingly minor procedural deviations can influence the conclusions of an ERP study. We demonstrate the power of multiverse analysis in both identifying the most reliable effects in a given study, and for providing insights into consequences of methodological decisions.

Funder

National Research Foundation Singapore

Ministarstvo Prosvete, Nauke i Tehnološkog Razvoja

Publisher

Wiley

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