Rethinking the Efficiency and Effectiveness of Reinforcement Learning for Radiology Report Generation
Zilin Lu, Ruifeng Yuan, Weiwei Cao, Wanxing Chang, Zhongyu Wei, Sinuo Wang, Yong Xia, Ling Zhang, Jianpeng Zhang

TL;DR
This paper enhances reinforcement learning for radiology report generation by emphasizing data quality, introducing a diagnostic token-weighted optimization method, and achieving state-of-the-art results with fewer samples.
Contribution
It proposes a diagnostic token-weighted policy optimization approach and a data sampling strategy, improving RL efficiency and clinical accuracy in radiology report generation.
Findings
Data quality impacts RL performance more than quantity.
DiTPO improves clinical accuracy by prioritizing critical tokens.
Achieves SOTA results with only 20% of training samples.
Abstract
Radiologists highly desire fully automated AI for radiology report generation (R2G), yet existing approaches fall short in clinical utility. Reinforcement learning (RL) holds potential to address these shortcomings, but its adoption in this task remains underexplored. In this paper, we revisit RL in terms of data efficiency and optimization effectiveness for R2G tasks. First, we explore the impact of data quantity and quality on the performance of RL in medical contexts, revealing that data quality plays a more critical role than quantity. To this end, we propose a diagnostic diversity-based data sampling strategy that enables comparable performance with fewer samples. Second, we observe that the majority of tokens in radiology reports are template-like and diagnostically uninformative, whereas the low frequency of clinically critical tokens heightens the risk of being overlooked during…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Radiology practices and education · Topic Modeling
