Fine-Tuning a Local LLaMA-3 Large Language Model for Automated Privacy-Preserving Physician Letter Generation in Radiation Oncology
Yihao Hou, Christoph Bert, Ahmed Gomaa, Godehard Lahmer, Daniel, Hoefler, Thomas Weissmann, Raphaela Voigt, Philipp Schubert, Charlotte, Schmitter, Alina Depardon, Sabine Semrau, Andreas Maier, Rainer Fietkau,, Yixing Huang, Florian Putz

TL;DR
This study demonstrates that local fine-tuning of LLaMA-3 models using QLoRA enables effective, privacy-preserving automated physician letter generation in radiation oncology, with high clinical relevance and efficiency.
Contribution
It introduces a practical method for intra-institutional fine-tuning of LLaMA models for medical text generation using limited resources.
Findings
LLaMA-3 outperforms LLaMA-2 in ROUGE scores.
Fine-tuned models generate key clinical content accurately.
Clinical experts rate the generated letters highly.
Abstract
Generating physician letters is a time-consuming task in daily clinical practice. This study investigates local fine-tuning of large language models (LLMs), specifically LLaMA models, for physician letter generation in a privacy-preserving manner within the field of radiation oncology. Our findings demonstrate that base LLaMA models, without fine-tuning, are inadequate for effectively generating physician letters. The QLoRA algorithm provides an efficient method for local intra-institutional fine-tuning of LLMs with limited computational resources (i.e., a single 48 GB GPU workstation within the hospital). The fine-tuned LLM successfully learns radiation oncology-specific information and generates physician letters in an institution-specific style. ROUGE scores of the generated summary reports highlight the superiority of the 8B LLaMA-3 model over the 13B LLaMA-2 model. Further…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Data Quality and Management · Electronic Health Records Systems
MethodsLLaMA · Balanced Selection
