Identifying and locating diseases in chest X-rays are very challenging, due to the low visual contrast between normal and abnormal regions, and distortions caused by other overlapping tissues. An interesting phenomenon is that there exist many similar structures in the left and right parts of the chest, such as ribs, lung fields and bronchial tubes. This kind of similarities can be used to identify diseases in chest X-rays, according to the experience of broad-certificated radiologists. Aimed at improving the performance of existing detection methods, we propose a deep end-to-end module to exploit the contralateral context information for enhancing feature representations of disease proposals. First of all, under the guidance of the spine line, the spatial transformer network is employed to extract local contralateral patches, which can provide valuable context information for disease proposals. Then, we build up a specific module, based on both additive and subtractive operations, to fuse the features of the disease proposal and the contralateral patch. Our method can be integrated into both fully and weakly supervised disease detection frameworks. It achieves 33.17 AP50 on a carefully annotated private chest X-ray dataset which contains 31,000 images. Experiments on the NIH chest X-ray dataset indicate that our method achieves state-of-the-art performance in weakly-supervised disease localization.
翻译:在胸前X射线中发现和定位疾病非常困难,因为正常和异常区域之间的视觉差异较低,其他重叠组织也造成了扭曲,一个有趣的现象是,胸部左侧和右侧都存在许多类似的结构,如肋骨、肺田和支气管。根据广泛认证的放射学家的经验,这种相似性可用于查明胸前X射线中的疾病。为了改进现有检测方法的性能,我们提议了一个深端到端模块,利用对照背景信息加强疾病建议的特征表现。首先,在脊柱线的指导下,空间变压器网络用于提取地方的反向部分,可为疾病建议提供宝贵的背景信息。然后,我们根据添加和减缩操作的经验,建立一个特定的模块,以结合疾病建议和反向补补补的特征。我们的方法可以完全和薄弱地纳入现有的疾病检测框架。在仔细注释的私人胸部X射线中实现了AP50,在仔细的私人胸透射线下,使用了空间变压器网络来提取本地的反向补补补板,这可以为疾病提议提供31 000个高的磁度图像。