论文标题

深度学习模型的敏感性和特异性评估,用于检测胸部X光片上气肺的气动性模型

Sensitivity and Specificity Evaluation of Deep Learning Models for Detection of Pneumoperitoneum on Chest Radiographs

论文作者

Goyal, Manu, Austin-Strohbehn, Judith, Sun, Sean J., Rodriguez, Karen, Sin, Jessica M., Cheung, Yvonne Y., Hassanpour, Saeed

论文摘要

背景:深度学习具有巨大的潜力,可以协助检测和分类关键发现,例如在医学图像上的气旋。为了在临床上有用,该技术的性能仍需要得到验证,以跨不同类型的成像系统的普遍性。材料和方法:这项回顾性研究包括1,287张胸部X射线X射线图像,这些患者在2011年至2019年之间在13家不同的医院进行了初始胸部X射线照相。在此数据集的一个子集上对最先进的深度学习模型(RESNET101,InceptionV3,Densenet161和Resnext101)进行了培训,并通过测量每个模型的AUC,灵敏度和特定性来评估数据集的自动分类性能。此外,通过根据使用的成像系统的类型对测试数据集进行分层来评估这些深度学习模型的普遍性。结果:所有深度学习模型在识别射线照相仪的情况下表现良好,而Densenet161的AUC最高为95.7%,特异性为89.9%,灵敏度为91.6%。 Densenet161模型能够准确地对不同成像系统(准确性:90.8%)的X光片进行分类,同时在单个机构的特定成像系统中捕获的图像进行了训练。该结果表明,我们模型在胸部X射线图像中学习显着特征的模型可以检测到与成像系统无关的气动性。

Background: Deep learning has great potential to assist with detecting and triaging critical findings such as pneumoperitoneum on medical images. To be clinically useful, the performance of this technology still needs to be validated for generalizability across different types of imaging systems. Materials and Methods: This retrospective study included 1,287 chest X-ray images of patients who underwent initial chest radiography at 13 different hospitals between 2011 and 2019. The chest X-ray images were labelled independently by four radiologist experts as positive or negative for pneumoperitoneum. State-of-the-art deep learning models (ResNet101, InceptionV3, DenseNet161, and ResNeXt101) were trained on a subset of this dataset, and the automated classification performance was evaluated on the rest of the dataset by measuring the AUC, sensitivity, and specificity for each model. Furthermore, the generalizability of these deep learning models was assessed by stratifying the test dataset according to the type of the utilized imaging systems. Results: All deep learning models performed well for identifying radiographs with pneumoperitoneum, while DenseNet161 achieved the highest AUC of 95.7%, Specificity of 89.9%, and Sensitivity of 91.6%. DenseNet161 model was able to accurately classify radiographs from different imaging systems (Accuracy: 90.8%), while it was trained on images captured from a specific imaging system from a single institution. This result suggests the generalizability of our model for learning salient features in chest X-ray images to detect pneumoperitoneum, independent of the imaging system.

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