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Weakly-Supervised Segmentation for Disease Localization in Chest X-Ray Images

机译:胸部X射线图像中疾病定位的弱监督分割

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Deep Convolutional Neural Networks have proven effective in solving the task of semantic segmentation. However, their efficiency heavily relies on the pixel-level annotations that are expensive to get and often require domain expertise, especially in medical imaging. Weakly supervised semantic segmentation helps to overcome these issues and also provides explainable deep learning models. In this paper, we propose a novel approach to the semantic segmentation of medical chest X-ray images with only image-level class labels as supervision. We improve the disease localization accuracy by combining three approaches as consecutive steps. First, we generate pseudo segmentation labels of abnormal regions in the training images through a supervised classification model enhanced with a regularization procedure. The obtained activation maps are then post-processed and propagated into a second classification model-Inter-pixel Relation Network, which improves the boundaries between different object classes. Finally, the resulting pseudo-labels are used to train a proposed fully supervised segmentation model. We analyze the robustness of the presented method and test its performance on two distinct datasets: PASCAL VOC 2012 and SIIM-ACR Pneumothorax. We achieve significant results in the segmentation on both datasets using only image-level annotations. We show that this approach is applicable to chest X-rays for detecting an anomalous volume of air in the pleural space between the lung and the chest wall. Our code has been made publicly available.
机译:深度卷积神经网络已经证明有效地解决了语义细分的任务。然而,它们的效率严重依赖于获得昂贵的像素级注释,并且通常需要域专业知识,特别是在医学成像中。弱监督的语义细分有助于克服这些问题,并提供可解释的深度学习模型。在本文中,我们提出了一种新颖的方法对医疗胸部X射线图像的语义分割,只有图像级类标签作为监督。我们通过将三种方法与连续步骤相结合来提高疾病定位准确性。首先,我们通过具有正则化过程的监督分类模型在训练图像中生成异常区域的伪分割标签。然后将所获得的激活映射后处理并传播到第二分类模型 - 像素间关系网络中,这改善了不同对象类之间的边界。最后,由此产生的伪标签用于训练提出的完全监督的分割模型。我们分析了呈现方法的稳健性,并在两个不同的数据集中测试其性能:Pascal VOC 2012和Siim-ACR气胸。我们只使用图像级注释在两个数据集的分段中获得了显着的结果。我们表明这种方法适用于胸部X射线,用于检测肺部和胸壁之间的胸膜间空气中的异常空气量。我们的代码已公开可用。

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