Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:3842-3845. doi: 10.1109/EMBC46164.2021.9630340.
Lung nodules are commonly missed in chest radiographs. We propose and evaluate P-AnoGAN, an unsupervised anomaly detection approach for lung nodules in radiographs. P-AnoGAN modifies the fast anomaly detection generative adversarial network (f-AnoGAN) by utilizing a progressive GAN and a convolutional encoder-decoder-encoder pipeline. Model training uses only unlabelled healthy lung patches extracted from the Indiana University Chest X-Ray Collection. External validation and testing are performed using healthy and unhealthy patches extracted from the ChestX-ray14 and Japanese Society for Radiological Technology datasets, respectively. Our model robustly identifies patches containing lung nodules in external validation and test data with ROC-AUC of 91.17% and 87.89%, respectively. These results show unsupervised methods may be useful in challenging tasks such as lung nodule detection in radiographs.
肺结节在胸部 X 光片中经常被漏诊。我们提出并评估了 P-AnoGAN,这是一种用于 X 光片中肺结节的无监督异常检测方法。P-AnoGAN 通过利用渐进式 GAN 和卷积编解码器管道修改了快速异常检测生成对抗网络(f-AnoGAN)。模型训练仅使用从印第安纳大学胸部 X 射线数据集提取的未标记的健康肺斑块。外部验证和测试分别使用从 ChestX-ray14 和日本放射技术学会数据集提取的健康和不健康斑块进行。我们的模型在外部验证和测试数据中稳健地识别出包含肺结节的斑块,ROC-AUC 分别为 91.17%和 87.89%。这些结果表明,无监督方法在肺结节检测等具有挑战性的任务中可能很有用。