Abstract

Background and objectiveElectrodermal activity (EDA) has gained popularity in recent years for diverse applications such as emotion and stress recognition; assessment of pain, fatigue, and sleepiness; and diagnosis of depression and epilepsy. However, presence of motion artifacts (MA) hinders accurate analysis of EDA signals. This study presents a machine learning framework for automatic motion artifact detection on electrodermal activity signals. MethodsWe extracted several statistical and time frequency features from EDA and investigated machine learning algorithms to automatically detect noisy EDA segments. To avoid incorrect adjudication due to the aperiodic nature of EDA signals, we collected both clean and MA-corrupted EDA from immobile and moving hands, respectively. The MA-corrupted EDA data were annotated by three experts as either MA-corrupted or clean using the criteria recommended in the literature, as well as the correlation between MA and the reference EDA. ResultsWe performed a subject-independent validation strategy to evaluate the performance of the machine learning models. The best-performing model classified the MA and clean EDA segments with 94.7% accuracy. A comparison of our motion artifact detection approach with two previously published methods showed that our best performing method outperformed them and retained its accuracy on entirely different, unseen data from a separate study, indicating the method’s generalizability. ConclusionsThe current work can provide accurate and autonomous adjudication of MA-corrupted EDA signals. Given the lack of accurate MA detection methods for EDA signals, this work may lead to more applications of EDA as a physio-marker.

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