Pain Action Unit Detection in Critically Ill Patients.

Subhash Nerella, Julie Cupka, Matthew Ruppert, Patrick Tighe, Azra Bihorac, Parisa Rashidi
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引用次数: 3

Abstract

Existing pain assessment methods in the intensive care unit rely on patient self-report or visual observation by nurses. Patient self-report is subjective and can suffer from poor recall. In the case of non-verbal patients, behavioral pain assessment methods provide limited granularity, are subjective, and put additional burden on already overworked staff. Previous studies have shown the feasibility of autonomous pain expression assessment by detecting Facial Action Units (AUs). However, previous approaches for detecting facial pain AUs are historically limited to controlled environments. In this study, for the first time, we collected and annotated a pain-related AU dataset, Pain-ICU, containing 55,085 images from critically ill adult patients. We evaluated the performance of OpenFace, an open-source facial behavior analysis tool, and the trained AU R-CNN model on our Pain-ICU dataset. Variables such as assisted breathing devices, environmental lighting, and patient orientation with respect to the camera make AU detection harder than with controlled settings. Although OpenFace has shown state-of-the-art results in general purpose AU detection tasks, it could not accurately detect AUs in our Pain-ICU dataset (F1-score 0.42). To address this problem, we trained the AU R-CNN model on our Pain-ICU dataset, resulting in a satisfactory average F1-score 0.77. In this study, we show the feasibility of detecting facial pain AUs in uncontrolled ICU settings.

Abstract Image

危重病人疼痛作用单元检测。
重症监护室现有的疼痛评估方法依赖于患者自述或护士目视观察。患者的自我报告是主观的,可能会出现记忆力差的情况。对于非语言患者,行为疼痛评估方法提供的粒度有限,是主观的,并且给已经超负荷工作的工作人员增加了额外的负担。先前的研究表明,通过检测面部动作单元(AUs)来自主评估疼痛表情是可行的。然而,以前检测面部疼痛AUs的方法历史上仅限于受控环境。在这项研究中,我们首次收集并注释了一个与疼痛相关的AU数据集Pain-ICU,其中包含来自危重成人患者的55,085张图像。我们在Pain-ICU数据集上评估了OpenFace(一个开源的面部行为分析工具)和训练好的AU R-CNN模型的性能。辅助呼吸装置、环境照明和患者相对于相机的方向等变量使得AU检测比受控设置更难。尽管OpenFace在通用AU检测任务中显示了最先进的结果,但它不能准确地检测我们的Pain-ICU数据集中的AU (F1-score 0.42)。为了解决这个问题,我们在Pain-ICU数据集上训练AU R-CNN模型,得到了令人满意的平均f1得分0.77。在这项研究中,我们展示了在无控制的ICU环境中检测面部疼痛AUs的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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