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计算机辅助面部表情分析评估儿童术后疼痛。

Assessment of postoperative pain in children with computer assisted facial expression analysis.

机构信息

Department of Nursing, Faculty of Health Science, Bursa Uludag University, 16000 Bursa, Turkey.

出版信息

J Pediatr Nurs. 2023 Jul-Aug;71:60-65. doi: 10.1016/j.pedn.2023.03.008. Epub 2023 Mar 31.

Abstract

PURPOSE

The present study was conducted to evaluate the use of computer-aided facial expression analysis to assess postoperative pain in children.

DESIGN AND METHODS

This was a methodological observational study. The study population consisted of patients in the age group of 7-18 years who underwent surgery in the pediatric surgery clinic of a university hospital. The study sample consisted of 83 children who agreed to participate and met the sample selection criteria. Data were collected by the researcher using the Wong Baker Faces pain rating scale and Visual Analog Scale. Data were collected from the child, mother, nurse, and one external observer. Facial action units associated with pain were used for machine estimation. OpenFace was used to analyze the child's facial action units and Python was used for machine learning algorithms. The intraclass correlation coefficient was used for statistical analysis of the data.

RESULTS

The pain score predicted by the machine and the pain score assessments of the child, mother, nurse, and observer were compared. The pain assessment closest to the self-reported pain score by the child was in the order of machine prediction, mother, and nurse.

CONCLUSIONS

The machine learning method used in pain assessment in children performed well in estimating pain severity.It can code facial expressions of children's pain and reliably measure pain-related facial action units from video recordings.

APPLICATION TO PRACTICE

The machine learning method for facial expression analysis assessed in this study can potentially be used as a scalable, standard, and valid pain assessment method for nurses in clinical practice.

摘要

目的

本研究旨在评估计算机辅助面部表情分析在评估儿童术后疼痛中的应用。

设计与方法

这是一项方法学观察性研究。研究人群为在大学医院小儿外科诊所接受手术的 7-18 岁患者。研究样本包括 83 名同意参与并符合样本选择标准的儿童。研究人员使用 Wong Baker 面部疼痛评分量表和视觉模拟评分法采集数据。数据来自儿童、母亲、护士和一名外部观察者。用于机器估计的与疼痛相关的面部动作单元。OpenFace 用于分析儿童的面部动作单元,Python 用于机器学习算法。采用组内相关系数对数据进行统计学分析。

结果

比较了机器预测的疼痛评分与儿童、母亲、护士和观察者的疼痛评分评估。与儿童自我报告的疼痛评分最接近的疼痛评估顺序为机器预测、母亲和护士。

结论

用于儿童疼痛评估的机器学习方法在评估疼痛严重程度方面表现良好。它可以对儿童疼痛的面部表情进行编码,并从视频记录中可靠地测量与疼痛相关的面部动作单元。

应用于实践

本研究中评估的面部表情分析机器学习方法有可能成为临床实践中护士进行可扩展、标准和有效的疼痛评估方法。

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