DocLens: Multi-aspect Fine-grained Evaluation for Medical Text Generation (2311.09581v3)
Abstract: Medical text generation aims to assist with administrative work and highlight salient information to support decision-making. To reflect the specific requirements of medical text, in this paper, we propose a set of metrics to evaluate the completeness, conciseness, and attribution of the generated text at a fine-grained level. The metrics can be computed by various types of evaluators including instruction-following (both proprietary and open-source) and supervised entailment models. We demonstrate the effectiveness of the resulting framework, DocLens, with three evaluators on three tasks: clinical note generation, radiology report summarization, and patient question summarization. A comprehensive human study shows that DocLens exhibits substantially higher agreement with the judgments of medical experts than existing metrics. The results also highlight the need to improve open-source evaluators and suggest potential directions.
- Yiqing Xie (22 papers)
- Sheng Zhang (212 papers)
- Hao Cheng (190 papers)
- Zelalem Gero (5 papers)
- Cliff Wong (14 papers)
- Tristan Naumann (41 papers)
- Hoifung Poon (61 papers)
- Pengfei Liu (191 papers)
- Carolyn Rose (32 papers)