A Guideline-Aware AI Agent for Zero-Shot Target Volume Auto-Delineation
AI 摘要
OncoAgent无需训练即可将临床指南转化为3D肿瘤轮廓,优于传统深度学习方法。
主要贡献
- 提出了OncoAgent,一种指南感知的AI Agent框架
- 实现了零样本的肿瘤靶区自动勾画,性能媲美监督学习模型
- 在临床评估中,医生更倾向于使用OncoAgent
方法论
OncoAgent通过将文本临床指南转化为三维肿瘤轮廓,无需训练即可实现肿瘤靶区的自动勾画。
原文摘要
Delineating the clinical target volume (CTV) in radiotherapy involves complex margins constrained by tumor location and anatomical barriers. While deep learning models automate this process, their rigid reliance on expert-annotated data requires costly retraining whenever clinical guidelines update. To overcome this limitation, we introduce OncoAgent, a novel guideline-aware AI agent framework that seamlessly converts textual clinical guidelines into three-dimensional target contours in a training-free manner. Evaluated on esophageal cancer cases, the agent achieves a zero-shot Dice similarity coefficient of 0.842 for the CTV and 0.880 for the planning target volume, demonstrating performance highly comparable to a fully supervised nnU-Net baseline. Notably, in a blinded clinical evaluation, physicians strongly preferred OncoAgent over the supervised baseline, rating it higher in guideline compliance, modification effort, and clinical acceptability. Furthermore, the framework generalizes zero-shot to alternative esophageal guidelines and other anatomical sites (e.g., prostate) without any retraining. Beyond mere volumetric overlap, our agent-based paradigm offers near-instantaneous adaptability to alternative guidelines, providing a scalable and transparent pathway toward interpretability in radiotherapy treatment planning.