Multimodal Pain Recognition in Postoperative Patients: Machine Learning Approach.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2025-01-27 DOI:10.2196/67969
Ajan Subramanian, Rui Cao, Emad Kasaeyan Naeini, Seyed Amir Hossein Aqajari, Thomas D Hughes, Michael-David Calderon, Kai Zheng, Nikil Dutt, Pasi Liljeberg, Sanna Salanterä, Ariana M Nelson, Amir M Rahmani
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Abstract

Background: Acute pain management is critical in postoperative care, especially in vulnerable patient populations that may be unable to self-report pain levels effectively. Current methods of pain assessment often rely on subjective patient reports or behavioral pain observation tools, which can lead to inconsistencies in pain management. Multimodal pain assessment, integrating physiological and behavioral data, presents an opportunity to create more objective and accurate pain measurement systems. However, most previous work has focused on healthy subjects in controlled environments, with limited attention to real-world postoperative pain scenarios. This gap necessitates the development of robust, multimodal approaches capable of addressing the unique challenges associated with assessing pain in clinical settings, where factors like motion artifacts, imbalanced label distribution, and sparse data further complicate pain monitoring.

Objective: This study aimed to develop and evaluate a multimodal machine learning-based framework for the objective assessment of pain in postoperative patients in real clinical settings using biosignals such as electrocardiogram, electromyogram, electrodermal activity, and respiration rate (RR) signals.

Methods: The iHurt study was conducted on 25 postoperative patients at the University of California, Irvine Medical Center. The study captured multimodal biosignals during light physical activities, with concurrent self-reported pain levels using the Numerical Rating Scale. Data preprocessing involved noise filtering, feature extraction, and combining handcrafted and automatic features through convolutional and long-short-term memory autoencoders. Machine learning classifiers, including support vector machine, random forest, adaptive boosting, and k-nearest neighbors, were trained using weak supervision and minority oversampling to handle sparse and imbalanced pain labels. Pain levels were categorized into baseline and 3 levels of pain intensity (1-3).

Results: The multimodal pain recognition models achieved an average balanced accuracy of over 80% across the different pain levels. RR models consistently outperformed other single modalities, particularly for lower pain intensities, while facial muscle activity (electromyogram) was most effective for distinguishing higher pain intensities. Although single-modality models, especially RR, generally provided higher performance compared to multimodal approaches, our multimodal framework still delivered results that surpassed most previous works in terms of overall accuracy.

Conclusions: This study presents a novel, multimodal machine learning framework for objective pain recognition in postoperative patients. The results highlight the potential of integrating multiple biosignal modalities for more accurate pain assessment, with particular value in real-world clinical settings.

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术后患者的多模态疼痛识别:机器学习方法
背景:急性疼痛管理在术后护理中至关重要,特别是在那些可能无法有效自我报告疼痛水平的弱势患者群体中。目前的疼痛评估方法往往依赖于患者的主观报告或行为疼痛观察工具,这可能导致疼痛管理的不一致。多模式疼痛评估,整合生理和行为数据,提供了创造更客观和准确的疼痛测量系统的机会。然而,大多数先前的工作都集中在受控环境中的健康受试者身上,对现实世界的术后疼痛情景的关注有限。这一差距需要发展强大的、多模式的方法,能够解决与临床环境中评估疼痛相关的独特挑战,其中运动伪影、不平衡的标签分布和稀疏的数据等因素进一步使疼痛监测复杂化。目的:本研究旨在开发和评估一个基于多模态机器学习的框架,用于在真实临床环境中使用生物信号(如心电图、肌电图、皮电活动和呼吸频率(RR)信号)客观评估术后患者的疼痛。方法:对加州大学欧文分校医学中心的25例术后患者进行iHurt研究。该研究在轻度体育活动中捕获了多模态生物信号,同时使用数值评定量表自我报告疼痛水平。数据预处理包括噪声滤波、特征提取,以及通过卷积和长短期记忆自编码器结合手工和自动特征。机器学习分类器,包括支持向量机、随机森林、自适应增强和k近邻,使用弱监督和少数过采样进行训练,以处理稀疏和不平衡的疼痛标签。疼痛程度分为基线和3个疼痛强度等级(1-3)。结果:多模态疼痛识别模型在不同疼痛水平下的平均平衡准确率超过80%。RR模型一直优于其他单一模式,特别是对于较低的疼痛强度,而面部肌肉活动(肌电图)对于区分较高的疼痛强度最有效。尽管与多模态方法相比,单模态模型,尤其是RR,通常提供了更高的性能,但我们的多模态框架在总体精度方面仍然提供了超过大多数先前工作的结果。结论:本研究提出了一种新的、多模态的机器学习框架,用于术后患者的客观疼痛识别。结果强调了整合多种生物信号模式的潜力,以更准确地评估疼痛,在现实世界的临床环境中具有特别的价值。
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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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