The accurate localization of inserted medical tubes and parts of human anatomy is a common problem when analyzing chest radiographs and something deep neural networks could potentially automate. However, many foreign objects like tubes and various anatomical structures are small in comparison to the entire chest X-ray, which leads to severely unbalanced data and makes training deep neural networks difficult. In this paper, we present a simple yet effective `Only-One-Object-Exists' (OOOE) assumption to improve the deep network's ability to localize small landmarks in chest radiographs. The OOOE enables us to recast the localization problem as a classification problem and we can replace commonly used continuous regression techniques with a multi-class discrete objective. We validate our approach using a large scale proprietary dataset of over 100K radiographs as well as publicly available RANZCR-CLiP Kaggle Challenge dataset and show that our method consistently outperforms commonly used regression-based detection models as well as commonly used pixel-wise classification methods. Additionally, we find that the method using the OOOE assumption generalizes to multiple detection problems in chest X-rays and the resulting model shows state-of-the-art performance on detecting various tube tips inserted to the patient as well as patient anatomy.
翻译:插入医疗管和人体解剖部分的准确本地化是分析胸部射线仪和深神经网络可能自动化的一个常见常见问题,然而,许多外国物体,如管子和各种解剖结构,与整个胸部X射线相比,规模很小,导致数据严重失衡,培训深神经网络十分困难。在本文中,我们提出了一个简单而有效的“单一个物体外科医生”假设,目的是提高深网络在胸腔射线仪中将小型地标定位的能力。OOOOOE使我们能够将本地化问题重新定位为分类问题,我们可以用多级离散目标取代常用的持续回归技术。我们用100公里以上射线仪的大规模专有数据组以及公开提供的RANZCR-CLIP Kagle挑战数据集验证了我们的方法,并表明我们的方法始终超越了在胸前射线中常用的基于回归的检测模型,以及常用的像素分解方法。此外,我们发现,用OOE模型作为多级分解剖式的诊断模型,用以检测各种先质测试。