论文标题
程序镇静期间蒙面面孔的疼痛检测
Pain Detection in Masked Faces during Procedural Sedation
论文作者
论文摘要
疼痛监测对于接受镇静剂医疗程序的患者的护理质量至关重要。一种用于检测疼痛的自动化机制可以改善镇静剂量滴定。先前关于面部疼痛检测的研究表明,计算机视觉方法在检测未熟悉面孔的疼痛方面具有生存能力。但是,接受手术的患者面孔通常会被医疗设备和口罩所部分遮住。先前一项关于人为遮住面孔疼痛检测的初步研究表明,一种可行的方法,可检测眼睛周围狭窄带的疼痛。这项研究从介入放射学部门的14名接受程序的患者的面孔中收集了视频数据,并使用此数据集培训了一个深度学习模型。该模型能够准确地检测疼痛的表达,并在因果时间平滑之后达到0.72的平均精度(AP),而接收器操作特征曲线(AUC)下的面积为0.82。这些结果的表现优于基线模型,并且显示了计算机视觉方法在程序镇静过程中疼痛检测的疼痛。当在公开可用的数据集中培训模型并在镇静视频上测试模型时,还检查了跨数据库的性能。在定性检查两个数据集中疼痛表达不同的方式。
Pain monitoring is essential to the quality of care for patients undergoing a medical procedure with sedation. An automated mechanism for detecting pain could improve sedation dose titration. Previous studies on facial pain detection have shown the viability of computer vision methods in detecting pain in unoccluded faces. However, the faces of patients undergoing procedures are often partially occluded by medical devices and face masks. A previous preliminary study on pain detection on artificially occluded faces has shown a feasible approach to detect pain from a narrow band around the eyes. This study has collected video data from masked faces of 14 patients undergoing procedures in an interventional radiology department and has trained a deep learning model using this dataset. The model was able to detect expressions of pain accurately and, after causal temporal smoothing, achieved an average precision (AP) of 0.72 and an area under the receiver operating characteristic curve (AUC) of 0.82. These results outperform baseline models and show viability of computer vision approaches for pain detection of masked faces during procedural sedation. Cross-dataset performance is also examined when a model is trained on a publicly available dataset and tested on the sedation videos. The ways in which pain expressions differ in the two datasets are qualitatively examined.