RadOnc-GPT: A Large Language Model for Radiation Oncology (2309.10160v3)
Abstract: This paper presents RadOnc-GPT, a LLM specialized for radiation oncology through advanced tuning methods. RadOnc-GPT was finetuned on a large dataset of radiation oncology patient records from the Mayo Clinic in Arizona. The model employs instruction tuning on three key tasks - generating radiotherapy treatment regimens, determining optimal radiation modalities, and providing diagnostic descriptions/ICD codes based on patient diagnostic details. Evaluations conducted by comparing RadOnc-GPT outputs to general LLM outputs showed higher ROUGE scores in these three tasks. The study demonstrated the potential of using LLMs fine-tuned using domain-specific knowledge like RadOnc-GPT to achieve transformational capabilities in highly specialized healthcare fields such as radiation oncology. However, our model's clinical relevance requires confirmation, and it specializes in only the aforementioned three specific tasks and lacks broader applicability. Furthermore, its evaluation through ROUGE scores might not reflect the true semantic and clinical accuracy - challenges we intend to address in future research.
- Zhengliang Liu (91 papers)
- Peilong Wang (16 papers)
- Yiwei Li (107 papers)
- Jason Holmes (19 papers)
- Peng Shu (34 papers)
- Lian Zhang (32 papers)
- Chenbin Liu (8 papers)
- Ninghao Liu (98 papers)
- Dajiang Zhu (68 papers)
- Xiang Li (1002 papers)
- Quanzheng Li (122 papers)
- Samir H. Patel (9 papers)
- Terence T. Sio (6 papers)
- Tianming Liu (161 papers)
- Wei Liu (1135 papers)