基于深度学习的面部疼痛识别模型在术后疼痛评估中的应用

IF 5.1 2区 医学 Q1 ANESTHESIOLOGY
Ji-Tuo Zhang , Xiao-Yi Hu , Wen Duan , Mu-Huo Ji (Ph.D) , Jian-Jun Yang (Ph.D)
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引用次数: 0

摘要

背景术后疼痛是影响患者康复和医疗质量的一个常见而复杂的问题。传统的疼痛评估方法——主要基于自我报告和临床观察——往往是不充分的,特别是对有沟通障碍的患者。深度学习技术为自动疼痛评估提供了新的机会。然而,这一领域的进展受到高质量临床数据集的有限可用性和针对现实世界模型部署的研究的缺乏的阻碍。这种实验室研究与临床应用之间的差距需要进一步研究。方法本研究构建了两个不同的数据集来捕捉临床和实验室场景。临床疼痛数据集(CPD)包括来自503名术后患者的3411张面部疼痛图像,而模拟疼痛数据集(SPD)包含来自51名志愿者的1038张图像。将这两个数据集组合起来形成组合数据集(combined Dataset, CD)。使用预训练的VGG16模型进行训练和验证。使用受试者工作特征曲线下面积(AUROC)和F1评分来评估模型在不同数据集和疼痛水平上的性能。结果在CPD和CD中,该模型对重度疼痛的识别效果最好,AUROC值分别为0.898 (95% CI,0.877 ~ 0.917)和0.867 (95% CI,0.844 ~ 0.889)。综合评价,重度疼痛分类中,cpd组(0.898 [95% CI: 0.877-0.917])和cd组(0.917 [95% CI: 0.883-0.948])的AUROC值最高。在此基础上,开发了基于该模型的面部疼痛识别软件,为临床疼痛识别提供了新的选择。研究结果表明,利用面部表情分析的深度学习模型在临床环境中识别不同程度的疼痛,特别是严重疼痛方面具有巨大的潜力。未来,它们可以帮助麻醉师实时监测术后患者的疼痛程度,从而提高医疗服务质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of deep learning-based facial pain recognition model for postoperative pain assessment

Background

Postoperative pain is a common and complex issue that affects patients' recovery and the quality of healthcare. Traditional pain assessment methods—primarily based on self-reporting and clinical observation—are often inadequate, particularly for patients with communication impairments. Deep learning technology offers new opportunities for automatic pain assessment. However, progress in this area is hindered by the limited availability of high-quality clinical datasets and a paucity of studies addressing real-world model deployment. This gap between laboratory research and clinical application requires further study.

Methods

The study constructed two distinct datasets to capture both clinical and laboratory scenarios. The Clinical Pain Dataset (CPD) includes 3411 facial pain images from 503 postoperative patients, while Simulated Pain Dataset (SPD) contains 1038 images from 51 volunteers. The two datasets were combined to form the Combined Dataset (CD). A pre-trained VGG16 model was used for training and validation. The model's performance on different datasets and pain levels was evaluated using area under the receiver operating characteristic curve (AUROC) and F1 scores.

Results

In the CPD and CD, the model demonstrated its highest performance in identifying severe pain, achieving AUROC values of 0.898 (95 %CI,0.877–0.917) and 0.867 (95 %CI,0.844–0.889), respectively. For overall evaluation, the highest AUROC values were observed in CPD-train (0.898 [95 % CI: 0.877–0.917]) and CD-train (0.917 [95 % CI: 0.883–0.948]) for severe pain classification. Building on these results, a facial pain recognition software was developed based on the model, offering a new option for clinical pain identification.

Conclusions

The findings indicate that deep learning models leveraging facial expression analysis hold significant potential to recognize varying degrees of pain in clinical settings, especially severe pain. In the future, they could help anesthesiologists monitor postoperative patients' pain levels in real-time, enhancing the quality of medical services.
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来源期刊
CiteScore
7.40
自引率
4.50%
发文量
346
审稿时长
23 days
期刊介绍: The Journal of Clinical Anesthesia (JCA) addresses all aspects of anesthesia practice, including anesthetic administration, pharmacokinetics, preoperative and postoperative considerations, coexisting disease and other complicating factors, cost issues, and similar concerns anesthesiologists contend with daily. Exceptionally high standards of presentation and accuracy are maintained. The core of the journal is original contributions on subjects relevant to clinical practice, and rigorously peer-reviewed. Highly respected international experts have joined together to form the Editorial Board, sharing their years of experience and clinical expertise. Specialized section editors cover the various subspecialties within the field. To keep your practical clinical skills current, the journal bridges the gap between the laboratory and the clinical practice of anesthesiology and critical care to clarify how new insights can improve daily practice.
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