Zurich Institute of Forensic Medicine, University of Zurich, Winterthurerstrasse 190/52, CH-8057, Zurich, Switzerland.
3D Centre Zurich, University of Zurich, Winterthurerstrasse 190/52, CH-8057, Zurich, Switzerland.
Forensic Sci Med Pathol. 2024 Jun;20(2):443-451. doi: 10.1007/s12024-023-00668-5. Epub 2023 Jun 28.
In forensic medical investigations, physical injuries are documented with photographs accompanied by written reports. Automatic segmentation and classification of wounds on these photographs could provide forensic pathologists with a tool to improve the assessment of injuries and accelerate the reporting process. In this pilot study, we trained and compared several preexisting deep learning architectures for image segmentation and wound classification on forensically relevant photographs in our database. The best scores were a mean pixel accuracy of 69.4% and a mean intersection over union (IoU) of 48.6% when evaluating the trained models on our test set. The models had difficulty distinguishing the background from wounded areas. As an example, image pixels showing subcutaneous hematomas or skin abrasions were assigned to the background class in 31% of cases. Stab wounds, on the other hand, were reliably classified with a pixel accuracy of 93%. These results can be partially attributed to undefined wound boundaries for some types of injuries, such as subcutaneous hematoma. However, despite the large class imbalance, we demonstrate that the best trained models could reliably distinguish among seven of the most common wounds encountered in forensic medical investigations.
在法医医学调查中,通过附有书面报告的照片来记录身体损伤。对这些照片上的伤口进行自动分割和分类,可以为法医病理学家提供一种工具,以改善对损伤的评估并加快报告过程。在这项初步研究中,我们针对数据库中与法医学相关的照片,训练和比较了几种现有的深度学习架构,以进行图像分割和伤口分类。在对我们的测试集进行评估时,最佳得分为平均像素准确率为 69.4%,平均交并比(IoU)为 48.6%。这些模型难以区分背景与受伤区域。例如,在 31%的情况下,显示皮下血肿或皮肤擦伤的图像像素被分配到背景类。另一方面,刺伤可以可靠地分类,像素准确率为 93%。这些结果部分归因于某些类型损伤的未定义伤口边界,例如皮下血肿。然而,尽管存在很大的类别不平衡,我们证明,经过最佳训练的模型可以可靠地区分法医医学调查中最常见的七种伤口。