Attribute Prototype-guided Iterative Scene Graph for Explainable Radiology Report Generation.

Ke Zhang, Yan Yang, Jun Yu, Jianping Fan, Hanliang Jiang, Qingming Huang, Weidong Han
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Abstract

The potential of automated radiology report generation in alleviating the time-consuming tasks of radiologists is increasingly being recognized in medical practice. Existing report generation methods have evolved from using image-level features to the latest approach of utilizing anatomical regions, significantly enhancing interpretability. However, directly and simplistically using region features for report generation compromises the capability of relation reasoning and overlooks the common attributes potentially shared across regions. To address these limitations, we propose a novel region-based Attribute Prototype-guided Iterative Scene Graph generation framework (AP-ISG) for report generation, utilizing scene graph generation as an auxiliary task to further enhance interpretability and relational reasoning capability. The core components of AP-ISG are the Iterative Scene Graph Generation (ISGG) module and the Attribute Prototype-guided Learning (APL) module. Specifically, ISSG employs an autoregressive scheme for structural edge reasoning and a contextualization mechanism for relational reasoning. APL enhances intra-prototype matching and reduces inter-prototype semantic overlap in the visual space to fully model the potential attribute commonalities among regions. Extensive experiments on the MIMIC-CXR with Chest ImaGenome datasets demonstrate the superiority of AP-ISG across multiple metrics.

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属性原型指导下的迭代场景图,用于生成可解释的放射学报告。
在医疗实践中,人们越来越认识到自动生成放射报告在减轻放射医师耗时工作方面的潜力。现有的报告生成方法已从使用图像级特征发展到最新的利用解剖区域的方法,大大提高了可解释性。然而,直接简单地使用区域特征生成报告,会损害关系推理的能力,并忽略区域之间可能共享的共同属性。为了解决这些局限性,我们提出了一种新颖的基于区域属性原型引导的迭代场景图生成框架(AP-ISG)来生成报告,利用场景图生成作为辅助任务,进一步提高可解释性和关系推理能力。AP-ISG 的核心组件是迭代场景图生成(ISSG)模块和属性原型指导学习(APL)模块。具体来说,ISSG 采用自回归方案进行结构边缘推理,并采用上下文机制进行关系推理。APL 增强了视觉空间中的原型内匹配,减少了原型间的语义重叠,从而为区域间潜在的属性共性建立了完整的模型。利用胸部 ImaGenome 数据集在 MIMIC-CXR 上进行的大量实验证明了 AP-ISG 在多个指标上的优越性。
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