Hospitals, especially their emergency services, receive a high number of wrist fracture cases. For correct diagnosis and proper treatment of these, images obtained from various medical equipment must be viewed by physicians, along with the patients medical records and physical examination. The aim of this study is to perform fracture detection by use of deep learning on wrist Xray images to support physicians in the diagnosis of these fractures, particularly in the emergency services. Using SABL, RegNet, RetinaNet, PAA, Libra R_CNN, FSAF, Faster R_CNN, Dynamic R_CNN and DCN deep learning based object detection models with various backbones, 20 different fracture detection procedures were performed on Gazi University Hospitals dataset of wrist Xray images. To further improve these procedures, five different ensemble models were developed and then used to reform an ensemble model to develop a unique detection model, wrist fracture detection_combo (WFD_C). From 26 different models for fracture detection, the highest detection result obtained was 0.8639 average precision (AP50) in the WFD-C model. Huawei Turkey R&D Center supports this study within the scope of the ongoing cooperation project coded 071813 between Gazi University, Huawei and Medskor. Code is available at https://github.com/fatihuysal88/wrist-d
翻译:为了正确诊断和适当治疗这些疾病,医生必须查看从各种医疗设备中获得的图像,以及病人的医疗记录和身体检查。这项研究的目的是利用手腕X光图像的深层学习,用手腕X光图像进行骨折检测,支持医生诊断这些骨折,特别是在紧急服务方面。利用SABL、RegNet、RetinaNet、PAAA、Libra R_CNN、FSAF、FSAF、FAF、Pearth R_CNN、R_CNN、动态R_CNN和DCN以各种脊椎为主的深学习物体检测模型,在Gazi大学医院的手腕X光图像数据集上进行了20种不同的骨折检测程序。为了进一步改进这些程序,开发了5种不同的共通型模型,然后用于改革一个全套模型,以开发一个独特的检测模型、腕骨折检测_combo(WFD_C)。在WFD-C模型中,最高检测结果为0.8639平均精确度(AP50)。Hubeir Tirian R&D中心支持Gmas 0718 正在合作项目的范围。