학술논문

Automated Pain Assessment using Electrodermal Activity Data and Machine Learning
Document Type
article
Source
Subject
Information and Computing Sciences
Biomedical and Clinical Sciences
Clinical Sciences
Neurosciences
Pain Research
Chronic Pain
Algorithms
Galvanic Skin Response
Humans
Machine Learning
Pain
Pain Measurement
Sensitivity and Specificity
Language
Abstract
Objective pain assessment is required for appropriate pain management in the clinical setting. However, clinical gold standard pain assessment is based on subjective methods. Automated pain detection from physiological data may provide important objective information to better standardize pain assessment. Specifically, electrodermal activity (EDA) can identify features of stress and anxiety induced by varying pain levels. However, notable variability in EDA measurement exists and research to date has demonstrated sensitivity but lack of specificity in pain assessment. In this paper, we use timescale decomposition (TSD) to extract salient features from EDA signals to identify an accurate and automated EDA pain detection algorithm to sensitively and specifically distinguish pain from no-pain conditions.