Validity of the EDA-Explorer as a means for artifact rejection and peak detection in electro dermal activity data-analysis
Hemmelmann, J.H. (2018)
The recent increase in wearable technology and their application in scientific studies as well as in everyday life is calling for new ways of analyzing the data retrieved. In a psychological framework the combination of wearables with automated analysis software could make real-time biofeedback significantly more accessible to health care professionals. The Massachusetts Institute for Technology has developed the EDA-Explorer, a tool which promises to relieve the often unskilled professional from manually finding peaks and disturbances - so called artifacts - in the data sets of laboratory and ambulatory research. This study aims to validate this tool by comparing its output against the ‘golden standard’ for electrodermal activity (EDA) analysis. In a laboratory experiment, participants were asked to complete three tasks that would stress-test the Empatica E4, a measurement device for electrodermal activity. Peak detection and the artifact rejection were then performed by both the EDA-Explorer and Ledalab and Visual Inspection respectively. The EDA-Explorer’s Through-To-Peak method for identifying peaks could be shown to be accurate to the point of outperforming both Ledalab’s Through-To-Peak and Compulsive-Decomposition-Analysis method. Artifact rejection on the other hand is still in the early stages of development. The EDA-Explorer's binary and multiclass method should not be used in an ambulatory setting. All findings are discussed on the background of ambulatory studies, contrasting alternative tooling and starting a discussion on how to define artifacts for electrodermal activity data analysis. Additionally, this paper offers a short summary of issues discovered in using the Empatica E4 as a measurement device.
Hemmelmann_MA_HFE.pdf