面部表情分析在临床疼痛评估中的应用

Karan Sikka
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引用次数: 17

摘要

疼痛评估是至关重要的有效的疼痛管理在临床设置。一般通过患者自述或观察员评估获得。这两种方法都有一些缺点,如无法获得自我报告、特殊使用和观察者偏见。这项工作旨在开发基于自动化机器学习的方法来估计临床环境中的疼痛。我们建议使用面部表情信息来完成当前的目标,因为之前的研究已经证明了面部行为和经历的疼痛之间的一致性。此外,随着计算机视觉的最新进展,可以设计算法来识别更自然条件下的自发表达,如疼痛。我们的重点是设计健壮的计算机视觉模型,用于估计包含患者面部行为的视频中的疼痛。在这方面,我们讨论了不同的研究问题,技术方法和需要解决的挑战。在这项工作中,我们特别强调了预测自我报告疼痛强度的问题,因为这个问题不仅更具挑战性,而且受到的关注也较少。我们还讨论了我们为验证这些方法而收集原位儿科疼痛数据集的努力。我们通过在UNBC Mc-Master疼痛数据集和儿科疼痛数据集上展示一些结果来总结本文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Expression Analysis for Estimating Pain in Clinical Settings
Pain assessment is vital for effective pain management in clinical settings. It is generally obtained via patient's self-report or observer's assessment. Both of these approaches suffer from several drawbacks such as unavailability of self-report, idiosyncratic use and observer bias. This work aims at developing automated machine learning based approaches for estimating pain in clinical settings. We propose to use facial expression information to accomplish current goals since previous studies have demonstrated consistency between facial behavior and experienced pain. Moreover, with recent advances in computer vision it is possible to design algorithms for identifying spontaneous expressions such as pain in more naturalistic conditions. Our focus is towards designing robust computer vision models for estimating pain in videos containing patient's facial behavior. In this regard we discuss different research problem, technical approaches and challenges that needs to be addressed. In this work we particularly highlight the problem of predicting self-report measures of pain intensity since this problem is not only more challenging but also received less attention. We also discuss our efforts towards collecting an in-situ pediatric pain dataset for validating these approaches. We conclude the paper by presenting some results on both UNBC Mc-Master Pain dataset and pediatric pain dataset.
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