Zhu Wenchao, Lin Yingzi
Intelligent Human Machine Systems Laboratory, Department of Mechanical and Industrial Engineering, Northeastern University, Boston, MA 02155, USA.
Sensors (Basel). 2025 Mar 26;25(7):2086. doi: 10.3390/s25072086.
Chronic pain is prevalent and disproportionately impacts adults with a lower quality of life. Although subjective self-reporting is the "gold standard" for pain assessment, tools are needed to objectively monitor and account for inter-individual differences. This study introduced a novel framework to objectively classify pain intensity levels using physiological signals during Quantitative Sensory Testing sessions. Twenty-four participants participated in the study wearing physiological sensors (blood volume pulse (BVP), galvanic skin response (GSR), electromyography (EMG), respiration rate (RR), skin temperature (ST), and pupillometry). This study employed two analysis plans. Plan 1 utilized a grid search methodology with a 10-fold cross-validation framework to optimize time windows (1-5 s) and machine learning hyperparameters for pain classification tasks. The optimal time windows were identified as 3 s for the pressure session, 2 s for the pinprick session, and 1 s for the cuff session. Analysis Plan 2 implemented a leave-one-out design to evaluate the individual contribution of each sensor modality. By systematically excluding one sensor's features at a time, the performance of these sensor sets was compared to the full model using Wilcoxon signed-rank tests. BVP emerged as a critical sensor, significantly influencing performance in both pinprick and cuff sessions. Conversely, GSR, RR, and pupillometry demonstrated stimulus-specific sensitivity, significantly contributing to the cuff session but with limited influence in other sessions. EMG and ST showed minimal impact across all sessions, suggesting they are non-critical and suitable for reducing sensor redundancy. These findings advance the design of sensor configurations for personalized pain management. Future research will focus on refining sensor integration and addressing stimulus-specific physiological responses.
慢性疼痛普遍存在,对成年人的生活质量产生了不成比例的影响。尽管主观自我报告是疼痛评估的“金标准”,但仍需要工具来客观地监测并考虑个体差异。本研究引入了一种新颖的框架,用于在定量感觉测试期间使用生理信号客观地对疼痛强度水平进行分类。24名参与者佩戴生理传感器(血容量脉搏(BVP)、皮肤电反应(GSR)、肌电图(EMG)、呼吸频率(RR)、皮肤温度(ST)和瞳孔测量)参与了该研究。本研究采用了两种分析方案。方案1利用带有10折交叉验证框架的网格搜索方法来优化时间窗口(1 - 5秒)以及用于疼痛分类任务的机器学习超参数。确定最佳时间窗口为压力测试时3秒、针刺测试时2秒、袖带测试时1秒。分析方案2采用留一法设计来评估每种传感器模态的个体贡献。通过一次系统地排除一个传感器的特征,使用Wilcoxon符号秩检验将这些传感器集的性能与完整模型进行比较。BVP成为关键传感器,在针刺和袖带测试中均对性能有显著影响。相反,GSR、RR和瞳孔测量显示出刺激特异性敏感性,对袖带测试有显著贡献,但在其他测试中的影响有限。EMG和ST在所有测试中显示出最小影响,表明它们并非关键因素,适合用于减少传感器冗余。这些发现推动了用于个性化疼痛管理的传感器配置设计。未来的研究将集中于优化传感器集成以及解决刺激特异性生理反应。