Abstract

The current study examined the effects of variability on infant event-related potential (ERP) data editing methods. A widespread approach for analyzing infant ERPs is through a trial-by-trial editing process. Researchers identify electroencephalogram (EEG) channels containing artifacts and reject trials that are judged to contain excessive noise. This process can be performed manually by experienced researchers, partially automated by specialized software, or completely automated using an artifact-detection algorithm. Here, we compared the editing process from four different editors-three human experts and an automated algorithm-on the final ERP from an existing infant EEG dataset. Findings reveal that agreement between editors was low, for both the numbers of included trials and of interpolated channels. Critically, variability resulted in differences in the final ERP morphology and in the statistical results of the target ERP that each editor obtained. We also analyzed sources of disagreement by estimating the EEG characteristics that each human editor considered for accepting an ERP trial. In sum, our study reveals significant variability in ERP data editing pipelines, which has important consequences for the final ERP results. These findings represent an important step toward developing best practices for ERP editing methods in infancy research.

Highlights

  • Event-related potentials (ERPs) measure brain responses related to external stimuli without the need for overt behavioral responses, making the event-related potential (ERP) method an especially valuable tool for research with infants

  • ERP waveforms; in other words, how important is consistency within the editing process? We examined the effects of variability among editors on the final ERP morphology of two ERP components: the Negative Central (Nc) and the N1

  • We found low agreement among editors in the number of participants included in the final sample, the trials accepted for further analysis and the channels marked for interpolation

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Summary

Introduction

Event-related potentials (ERPs) measure brain responses related to external stimuli without the need for overt behavioral responses, making the ERP method an especially valuable tool for research with infants. Over the last two decades, there has been a dramatic rise in the number of published studies using an ERP approach. These studies have illuminated many aspects of infant cognitive and perceptual development (De Haan, 2007; Thierry, 2005). One known challenge is that the automatic processing algorithms typically used to detect artifacts in the adult electroencephalogram (EEG) are often not suitable for infant EEG. To overcome this challenge, a common approach is to manually edit the EEG on a trial-bytrial basis to select artifact-free data for inclusion in the final dataset

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