Automatic generation of medical reports from X-ray images can assist radiologists to perform the time-consuming and yet important reporting task. Yet, achieving clinically accurate generated reports remains challenging. Modeling the underlying abnormalities using the knowledge graph approach has been found promising in enhancing the clinical accuracy. In this paper, we introduce a novel fined-grained knowledge graph structure called an attributed abnormality graph (ATAG). The ATAG consists of interconnected abnormality nodes and attribute nodes, allowing it to better capture the abnormality details. In contrast to the existing methods where the abnormality graph was constructed manually, we propose a methodology to automatically construct the fine-grained graph structure based on annotations, medical reports in X-ray datasets, and the RadLex radiology lexicon. We then learn the ATAG embedding using a deep model with an encoder-decoder architecture for the report generation. In particular, graph attention networks are explored to encode the relationships among the abnormalities and their attributes. A gating mechanism is adopted and integrated with various decoders for the generation. We carry out extensive experiments based on the benchmark datasets, and show that the proposed ATAG-based deep model outperforms the SOTA methods by a large margin and can improve the clinical accuracy of the generated reports.
翻译:从X射线图像自动生成医学报告有助于放射学家完成耗时且重要的报告任务。然而,实现临床准确生成的报告仍具有挑战性。使用知识图解方法模拟基本异常现象,在提高临床准确性方面大有希望。在本文中,我们引入了新型的精细微粒知识图结构,称为归因异常图(ATAG)。ATAG由相互连接的异常节点和属性节点组成,使其能够更好地捕捉异常细节。与目前手工制作异常图的方法不同,我们提出了一个方法,以根据说明、X射线数据集中的医学报告和RadLex放射学词汇,自动构建精细细的图表结构。我们随后学习了AATAG, 其嵌入了一个深度模型,为报告的生成提供了一种编码器解码解码结构。我们采用了一种格化机制,并与新一代的各种解析器进行了整合。我们根据说明、X射线数据集中的医学报告以及RadLex放射线学词汇表。我们根据基准数据集的精确性模型进行了广泛的实验,并展示了所生成的大型SOAG模型,并展示了所制作的模型。