论文标题
提取和利用结节特征,并在肺部灌溉局部特征增强
Extracting and Leveraging Nodule Features with Lung Inpainting for Local Feature Augmentation
论文作者
论文摘要
胸部X射线(CXR)是快速检测肺异常的最常见检查。最近,已经开发了自动化算法来对CXR扫描中多种疾病和异常进行分类。但是,由于包含结节的扫描的可用性有限,CXR中结节的微妙特性,因此最新的方法在结节分类方面表现不佳。为了为培训过程创建其他数据,应用了标准增强技术。但是,这些方法引入的差异受到限制,因为图像通常在全球范围内进行修改。在本文中,我们通过使用生成涂层网络提取本地结节特征来提出一种局部特征增强的方法。该网络用于在包含结节的斑块中生成逼真的健康组织和结构。结节完全被删除。结节特征的提取是通过从结节贴片中删除的贴片贴片来处理的。随着在不同CXR扫描中提取的结节的任意位移,在训练过程中进行了进一步的局部修改,我们大大提高了结节分类性能和优于最先进的增强方法。
Chest X-ray (CXR) is the most common examination for fast detection of pulmonary abnormalities. Recently, automated algorithms have been developed to classify multiple diseases and abnormalities in CXR scans. However, because of the limited availability of scans containing nodules and the subtle properties of nodules in CXRs, state-of-the-art methods do not perform well on nodule classification. To create additional data for the training process, standard augmentation techniques are applied. However, the variance introduced by these methods are limited as the images are typically modified globally. In this paper, we propose a method for local feature augmentation by extracting local nodule features using a generative inpainting network. The network is applied to generate realistic, healthy tissue and structures in patches containing nodules. The nodules are entirely removed in the inpainted representation. The extraction of the nodule features is processed by subtraction of the inpainted patch from the nodule patch. With arbitrary displacement of the extracted nodules in the lung area across different CXR scans and further local modifications during training, we significantly increase the nodule classification performance and outperform state-of-the-art augmentation methods.