RaTEScore:放射学报告生成指标

Weike Zhao, Chaoyi Wu, Xiaoman Zhang, Ya Zhang, Yanfeng Wang, Weidi Xie
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摘要

本文介绍了一种新颖的实体感知度量方法,称为放射报告(文本)评估(RaTEScore),用于评估人工智能模型生成的医疗报告的质量。RaTEScore 强调诊断结果和解剖细节等关键医学实体,对复杂的医学同义词具有鲁棒性,对否定表达也很敏感。在技术上,我们开发了一个全面的医学 NER 数据集 RaTE-NER,并专门为此训练了一个 NER 模型。该模型可将复杂的放射报告分解为组成医疗实体。该指标本身是通过比较从语言模型中获得的实体嵌入的相似性而得出的,其依据是实体的类型和与临床意义的相关性。我们的评估结果表明,与现有指标相比,RaTEScore 更符合人类的偏好,这一点在已有的公共基准和我们新提出的 RaTE-Eval 基准上都得到了验证。
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RaTEScore: A Metric for Radiology Report Generation
This paper introduces a novel, entity-aware metric, termed as Radiological Report (Text) Evaluation (RaTEScore), to assess the quality of medical reports generated by AI models. RaTEScore emphasizes crucial medical entities such as diagnostic outcomes and anatomical details, and is robust against complex medical synonyms and sensitive to negation expressions. Technically, we developed a comprehensive medical NER dataset, RaTE-NER, and trained an NER model specifically for this purpose. This model enables the decomposition of complex radiological reports into constituent medical entities. The metric itself is derived by comparing the similarity of entity embeddings, obtained from a language model, based on their types and relevance to clinical significance. Our evaluations demonstrate that RaTEScore aligns more closely with human preference than existing metrics, validated both on established public benchmarks and our newly proposed RaTE-Eval benchmark.
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