Chest X-ray (CXR) is the most typical radiological exam for diagnosis of various diseases. Due to the expensive and time-consuming annotations, detecting anomalies in CXRs in an unsupervised fashion is very promising. However, almost all of the existing methods consider anomaly detection as a one-class classification (OCC) problem. They model the distribution of only known normal images during training and identify the samples not conforming to normal profile as anomalies in the testing phase. A large number of unlabeled images containing anomalies are thus ignored in the training phase, although they are easy to obtain in clinical practice. In this paper, we propose a novel strategy, Dual-distribution Discrepancy for Anomaly Detection (DDAD), utilizing both known normal images and unlabeled images. The proposed method consists of two modules. During training, one module takes both known normal and unlabeled images as inputs, capturing anomalous features from unlabeled images in some way, while the other one models the distribution of only known normal images. Subsequently, inter-discrepancy between the two modules, and intra-discrepancy inside the module that is trained on only normal images are designed as anomaly scores to indicate anomalies. Experiments on three CXR datasets demonstrate that the proposed DDAD achieves consistent, significant gains and outperforms state-of-the-art methods. Code is available at https://github.com/caiyu6666/DDAD.
翻译:切斯特X射线(CXR)是诊断各种疾病的最典型的放射检查。由于昂贵和耗时的注释,发现CXR的异常非常有希望。然而,几乎所有现有方法都把异常检测视为单级分类(OCC)问题。它们模拟培训期间仅传播已知的正常图像,并将不符合正常配置的样本作为测试阶段的异常点。在培训阶段,大量含有异常点的未贴标签图像被忽略,尽管在临床实践中很容易获得。在本文件中,我们提出了一个新颖战略,即利用已知的正常图像和未贴标签图像来检测非异常点的双重分配不一致性。拟议方法由两个模块组成。在培训期间,一个模块将已知的正常和未贴标签图像作为投入,以某种方式从未贴标签的图像中捕捉出异常特征,而另一个模型则只传播已知的正常图像。随后,两个模块之间的差异,以及内部不协调的D型检测(DDD)中,使用已知的双向异常点,使用已知的正常图像中,仅对正常/DR-deformas 进行持续分析。