Kufel Jakub, Bargieł-Łączek Katarzyna, Koźlik Maciej, Czogalik Łukasz, Dudek Piotr, Magiera Mikołaj, Bartnikowska Wiktoria, Lis Anna, Paszkiewicz Iga, Kocot Szymon, Cebula Maciej, Gruszczyńska Katarzyna, Nawrat Zbigniew
Department of Biophysics, Faculty of Medical Sciences in Zabrze, Medical University of Silesia, Jordana 19, 41-808 Zabrze, Poland.
Paediatric Radiology Students' Scientific Association at the Division of Diagnostic Imaging, 40-752 Katowice, Poland.
J Clin Med. 2023 Sep 8;12(18):5841. doi: 10.3390/jcm12185841.
Diagnostic imaging has become an integral part of the healthcare system. In recent years, scientists around the world have been working on artificial intelligence-based tools that help in achieving better and faster diagnoses. Their accuracy is crucial for successful treatment, especially for imaging diagnostics. This study used a deep convolutional neural network to detect four categories of objects on digital chest X-ray images. The data were obtained from the publicly available National Institutes of Health (NIH) Chest X-ray (CXR) Dataset. In total, 112,120 CXRs from 30,805 patients were manually checked for foreign objects: vascular port, shoulder endoprosthesis, necklace, and implantable cardioverter-defibrillator (ICD). Then, they were annotated with the use of a computer program, and the necessary image preprocessing was performed, such as resizing, normalization, and cropping. The object detection model was trained using the You Only Look Once v8 architecture and the Ultralytics framework. The results showed not only that the obtained average precision of foreign object detection on the CXR was 0.815 but also that the model can be useful in detecting foreign objects on the CXR images. Models of this type may be used as a tool for specialists, in particular, with the growing popularity of radiology comes an increasing workload. We are optimistic that it could accelerate and facilitate the work to provide a faster diagnosis.
诊断成像已成为医疗保健系统不可或缺的一部分。近年来,世界各地的科学家一直在致力于开发基于人工智能的工具,以帮助实现更好、更快的诊断。其准确性对于成功治疗至关重要,尤其是对于影像诊断。本研究使用深度卷积神经网络在数字化胸部X光图像上检测四类物体。数据来自公开可用的美国国立卫生研究院(NIH)胸部X光(CXR)数据集。总共对来自30805名患者的112120张胸部X光片进行了人工检查,以查找异物:血管端口、肩部假体、项链和植入式心脏复律除颤器(ICD)。然后,使用计算机程序对它们进行标注,并进行必要的图像预处理,如调整大小、归一化和裁剪。目标检测模型使用YOLOv8架构和Ultralytics框架进行训练。结果表明,不仅在胸部X光片上获得的异物检测平均精度为0.815,而且该模型在检测胸部X光图像上的异物方面可能会很有用。这种类型的模型可以作为专家的工具,特别是随着放射学越来越普及,工作量也在增加。我们乐观地认为,它可以加速并促进工作,以提供更快的诊断。