Multi-label chest X-ray (CXR) recognition involves simultaneously diagnosing and identifying multiple labels for different pathologies. Since pathological labels have rich information about their relationship to each other, modeling the co-occurrence dependencies between pathological labels is essential to improve recognition performance. However, previous methods rely on state variable coding and attention mechanisms-oriented to model local label information, and lack learning of global co-occurrence relationships between labels. Furthermore, these methods roughly integrate image features and label embedding, ignoring the alignment and compactness problems in cross-modal vector fusion.To solve these problems, a Bi-modal Bridged Graph Convolutional Network (BB-GCN) model is proposed. This model mainly consists of a backbone module, a pathology Label Co-occurrence relationship Embedding (LCE) module, and a Transformer Bridge Graph (TBG) module. Specifically, the backbone module obtains image visual feature representation. The LCE module utilizes a graph to model the global co-occurrence relationship between multiple labels and employs graph convolutional networks for learning inference. The TBG module bridges the cross-modal vectors more compactly and efficiently through the GroupSum method.We have evaluated the effectiveness of the proposed BB-GCN in two large-scale CXR datasets (ChestX-Ray14 and CheXpert). Our model achieved state-of-the-art performance: the mean AUC scores for the 14 pathologies were 0.835 and 0.813, respectively.The proposed LCE and TBG modules can jointly effectively improve the recognition performance of BB-GCN. Our model also achieves satisfactory results in multi-label chest X-ray recognition and exhibits highly competitive generalization performance.
翻译:多标签胸X射线(CXR)的识别同时涉及对不同病理的多标签进行分解和识别。由于病理标签对彼此的关系有着丰富的信息,因此在病理标签之间建模共同依赖性关系对于提高识别性能至关重要。然而,以往的方法依赖州变量编码和关注机制来模拟本地标签信息,缺乏对标签之间全球共同关系的理解。此外,这些方法大致上结合了图像特征和标签嵌入,忽略了跨模式的传感媒介融合中的校正和紧凑问题。为了解决这些问题,提出了双模式双模式双模式桥图变动网络(BB-GCN)模型模型。这个模型主要包括一个主干模块、一个病理标签共振动关系嵌入式(LCE)模块,以及一个变压式桥图模型获得了图像图像特征的体现。LCEEB-C-CRVC模块也利用了一个图表来模拟全球共振荡关系。在多式标签和高压的CLEV-C-C-C-R-Mal-Mal-Mal-BMal Bal 模块中,通过高估化的预化的成绩和高估化方法,可以实现B-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-C-