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Multi-label Thoracic Disease Image Classification with Cross-Attention Networks

机译:带有交叉注意网络的多标签胸腔疾病图像分类

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Automated disease classification of radiology images has been emerging as a promising technique to support clinical diagnosis and treatment planning. Unlike generic image classification tasks, a real-world radiology image classification task is significantly more challenging as it is far more expensive to collect the training data where the labeled data is in nature multi-label; and more seriously samples from easy classes often dominate; training data is highly class-imbalanced problem exists in practice as well. To overcome these challenges, in this paper, we propose a novel scheme of Cross-Attention Networks (CAN) for automated thoracic disease classification from chest x-ray images, which can effectively excavate more meaningful representation from data to boost the performance through cross-attention by only image-level annotations. We also design a new loss function that beyond cross entropy loss to help cross-attention process and is able to overcome the imbalance between classes and easy-dominated samples within each class. The proposed method achieves state-of-the-art results.
机译:放射影像的自动疾病分类已成为一种有前途的技术,可以支持临床诊断和治疗计划。与常规图像分类任务不同,现实世界的放射学图像分类任务更具挑战性,因为在标记数据本质上是多标签的情况下,收集训练数据要昂贵得多。更重要的是,来自简单班级的样本通常占主导地位;训练数据在实践中也是高度不平衡的问题。为了克服这些挑战,在本文中,我们提出了一种新的交叉注意网络(CAN)方案,可以根据胸部X射线图像对胸腔疾病进行自动分类,该方案可以有效地从数据中挖掘出更有意义的表示形式,从而通过交叉检查来提高性能仅关注图像级注释。我们还设计了一种新的损失函数,该函数超越了交叉熵损失,有助于交叉注意过程,并且能够克服类别与每个类别中易于控制的样本之间的不平衡。所提出的方法获得了最新的结果。

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