a Department of Orthopaedics , Ningbo Medical Center, Lihuili Hospital , Ningbo , 315000 , China ;
b School of Medicine , Ningbo University , Ningbo , 315000 , China ;
Acta Orthop. 2019 Aug;90(4):394-400. doi: 10.1080/17453674.2019.1600125. Epub 2019 Apr 3.
Background and purpose - Artificial intelligence has rapidly become a powerful method in image analysis with the use of convolutional neural networks (CNNs). We assessed the ability of a CNN, with a fast object detection algorithm previously identifying the regions of interest, to detect distal radius fractures (DRFs) on anterior-posterior (AP) wrist radiographs. Patients and methods - 2,340 AP wrist radiographs from 2,340 patients were enrolled in this study. We trained the CNN to analyze wrist radiographs in the dataset. Feasibility of the object detection algorithm was evaluated by intersection of the union (IOU). The diagnostic performance of the network was measured by area under the receiver operating characteristics curve (AUC), accuracy, sensitivity, specificity, and Youden Index; the results were compared with those of medical professional groups. Results - The object detection model achieved a high average IOU, and none of the IOUs had a value less than 0.5. The AUC of the CNN for this test was 0.96. The network had better performance in distinguishing images with DRFs from normal images compared with a group of radiologists in terms of the accuracy, sensitivity, specificity, and Youden Index. The network presented a similar diagnostic performance to that of the orthopedists in terms of these variables. Interpretation - The network exhibited a diagnostic ability similar to that of the orthopedists and a performance superior to that of the radiologists in distinguishing AP wrist radiographs with DRFs from normal images under limited conditions. Further studies are required to determine the feasibility of applying our method as an auxiliary in clinical practice under extended conditions.
背景与目的 - 人工智能在使用卷积神经网络(CNN)的图像分析中迅速成为一种强大的方法。我们评估了一种 CNN 的能力,该 CNN 结合快速目标检测算法,可从前后(AP)腕射线照片上检测桡骨远端骨折(DRF)。
患者和方法 - 本研究纳入了 2340 名患者的 2340 张 AP 腕射线照片。我们训练 CNN 来分析数据集内的腕射线照片。通过并集交叠(IOU)评估目标检测算法的可行性。通过接收者操作特征曲线下的面积(AUC)、准确性、敏感性、特异性和 Youden 指数来衡量网络的诊断性能,并将结果与医学专业组进行比较。
结果 - 目标检测模型的平均 IOU 较高,且没有一个 IOU 值小于 0.5。该测试中 CNN 的 AUC 为 0.96。与一组放射科医生相比,该网络在区分有 DRF 的图像和正常图像方面具有更好的性能,在准确性、敏感性、特异性和 Youden 指数方面表现更佳。在这些变量方面,该网络与骨科医生的诊断性能相似。
解释 - 在有限条件下,该网络在区分有和无 DRF 的 AP 腕射线照片方面表现出与骨科医生相似的诊断能力,且在区分能力上优于放射科医生。需要进一步的研究来确定在扩展条件下将我们的方法应用于临床实践的辅助工具的可行性。