IEEE J Biomed Health Inform. 2023 Sep;27(9):4250-4260. doi: 10.1109/JBHI.2023.3291955. Epub 2023 Sep 6.
The current method for assessing pain in clinical practice is subjective and relies on self-reported scales. An objective and accurate method of pain assessment is needed for physicians to prescribe the proper medication dosage, which could reduce addiction to opioids. Hence, many works have used electrodermal activity (EDA) as a suitable signal for detecting pain. Previous studies have used machine learning and deep learning to detect pain responses, but none have used a sequence-to-sequence deep learning approach to continuously detect acute pain from EDA signals, as well as accurate detection of pain onset. In this study, we evaluated deep learning models including 1-dimensional convolutional neural networks (1D-CNN), long short-term memory networks (LSTM), and three hybrid CNN-LSTM architectures for continuous pain detection using phasic EDA features. We used a database consisting of 36 healthy volunteers who underwent pain stimuli induced by a thermal grill. We extracted the phasic component, phasic drivers, and time-frequency spectrum of the phasic EDA (TFS-phEDA), which was found to be the most discerning physiomarker. The best model was a parallel hybrid architecture of a temporal convolutional neural network and a stacked bi-directional and uni-directional LSTM, which obtained a F1-score of 77.8% and was able to correctly detect pain in 15-second signals. The model was evaluated using 37 independent subjects from the BioVid Heat Pain Database and outperformed other approaches in recognizing higher pain levels compared to baseline with an accuracy of 91.5%. The results show the feasibility of continuous pain detection using deep learning and EDA.
目前临床实践中评估疼痛的方法是主观的,依赖于自我报告的量表。医生需要一种客观准确的疼痛评估方法,以便开出适当的药物剂量,从而减少对阿片类药物的依赖。因此,许多研究都使用皮肤电活动(EDA)作为检测疼痛的合适信号。以前的研究已经使用机器学习和深度学习来检测疼痛反应,但没有一项研究使用序列到序列的深度学习方法来连续从 EDA 信号中检测急性疼痛,以及准确检测疼痛发作。在这项研究中,我们评估了深度学习模型,包括一维卷积神经网络(1D-CNN)、长短期记忆网络(LSTM)和三种混合 CNN-LSTM 架构,用于使用相位 EDA 特征连续检测疼痛。我们使用了一个由 36 名健康志愿者组成的数据库,这些志愿者接受了热格栅引起的疼痛刺激。我们提取了相位成分、相位驱动和相位 EDA 的时频谱(TFS-phEDA),结果发现这是最具辨别力的生理标志物。最好的模型是一个时间卷积神经网络和堆叠的双向和单向 LSTM 的并行混合架构,其 F1 得分为 77.8%,能够在 15 秒的信号中正确检测到疼痛。该模型使用来自 BioVid 热痛数据库的 37 个独立受试者进行了评估,与基线相比,在识别更高的疼痛水平方面表现优于其他方法,准确率为 91.5%。研究结果表明,使用深度学习和 EDA 进行连续疼痛检测是可行的。