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Contrast-Attentive Thoracic Disease Recognition With Dual-Weighting Graph Reasoning

机译:与双重加权图推理的对比 - 细心的胸疾病识别

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Automatic thoracic disease diagnosis is a rising research topic in the medical imaging community, with many potential applications. However, the inconsistent appearances and high complexities of various lesions in chest X-rays currently hinder the development of a reliable and robust intelligent diagnosis system. Attending to the high-probability abnormal regions and exploiting the priori of a related knowledge graph offers one promising route to addressing these issues. As such, in this paper, we propose two contrastive abnormal attention models and a dual-weighting graph convolution to improve the performance of thoracic multi-disease recognition. First, a left-right lung contrastive network is designed to learn intra-attentive abnormal features to better identify the most common thoracic diseases, whose lesions rarely appear in both sides symmetrically. Moreover, an inter-contrastive abnormal attention model aims to compare the query scan with multiple anchor scans without lesions to compute the abnormal attention map. Once the intra- and inter-contrastive attentions are weighted over the features, in addition to the basic visual spatial convolution, a chest radiology graph is constructed for dual-weighting graph reasoning. Extensive experiments on the public NIH ChestX-ray and CheXpert datasets show that our model achieves consistent improvements over the state-of-the-art methods both on thoracic disease identification and localization.
机译:自动胸部疾病诊断是医学影像社区的崛起研究课题,具有许多潜在的应用。然而,胸部X射线中各种病变的不一致外观和高复杂性目前阻碍了可靠且坚固智能诊断系统的开发。参加高概率异常区域并利用相关知识图的先验,提供了一个有望的路线来解决这些问题。因此,在本文中,我们提出了两个对比的异常注意模型和双重加权图卷积,以提高胸多疾病识别的性能。首先,左右肺对比网络旨在学习细心的异常特征,以更好地识别最常见的胸疾病,其病变很少对称出现在两侧。此外,对比间的异常注意力模型旨在将查询扫描与多个锚扫描进行比较,而不会损伤来计算异常注意图。一旦在特征上加权和对比度和对比度的关注,除了基本的视觉空间卷积之外,胸部放射线图是用于双加权图推理的构建。关于公共NIH Chestx-Ray和Chexpert数据集的广泛实验表明,我们的模型在胸部疾病鉴定和本地化上实现了最先进的方法的一致性。

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