利用深度学习和皮肤电活动实现持续急性疼痛检测

J. Arenas, Hugo F. Posada-Quintero
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引用次数: 0

摘要

客观地测量疼痛,即基于生理信号而不是自我报告的测量,对于更好地治疗慢性疼痛患者是非常有价值的。量化疼痛的黄金标准的主观性是基于受试者使用数字或视觉量表自我报告的评估,这使得疼痛管理极其复杂,在许多情况下,导致了止痛药的滥用。皮电活动(EDA)是一种高度敏感的交感神经活动测量方法,已越来越多地用于客观评估疼痛。在这项研究中,我们评估了卷积神经网络(CNN)和长短期记忆(LSTM)架构在连续检测疼痛任务中的作用。此外,我们测试了皮电活动相分量的时间频谱的使用,作为这项任务的特征。我们使用了一个由36名健康受试者组成的合并数据库,这些受试者通过热烤架进行热痛刺激。在F1-Score上,LSTM模型比CNN模型的表现好3%以上。此外,堆叠的双向和单向LSTM结构达到了最好的性能,f1得分为75.3%,能够准确地检测EDA疼痛反应的开始和结束。使用深度学习的连续客观疼痛检测有助于持续监测疼痛感觉,并减少当前疼痛评估方法的主观性的后果。
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Towards Continuous Acute Pain Detection using Deep Learning and Electrodermal Activity
Measuring pain objectively, namely, based on physiological signals instead of self-reported measures, would be highly valuable for better treating people with chronic pain. The subjectivity of the gold standard to quantify pain, which is based upon subjects' self-reported assessment using numerical or visual scales, makes pain management extremely complicated and, in many cases, has led to abuse of pain medication. Electrodermal activity (EDA) is a highly sensitive measure of sympathetic activity and has been increasingly used to objectively assess pain. In this study, we evaluated convolutional neural networks (CNN) and long short-term memory (LSTM) architectures for the task of detecting pain continuously. Additionally, we tested the use of the time-frequency spectrum of the phasic component of the electrodermal activity, as feature for this task. We used a merged database composed of thirty-six healthy subjects that underwent heat pain stimuli by means of a thermal grill. The LSTM models obtained better performance than the CNN ones by more of 3% in the F1-Score. Moreover, the best performance was achieved by a stacked bi- and uni-directional LSTM architecture, with 75.3% F1-Score, being able to accurately detect the onset and end of the pain response on EDA. Continuous objective pain detection using deep learning can contribute to continuous monitoring pain sensation and to reduce the consequences of subjectiveness of current pain assessment methods.
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