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Summary
This summary is machine-generated.

Retrieval-augmented generation (RAG) improves non-reasoning large language models (LLMs) in radiation oncology, but not reasoning models. RAG offers a cost-effective way to enhance clinical decision support with evidence-based explanations.

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Area of Science:

  • Artificial Intelligence in Medicine
  • Oncology
  • Medical Education

Background:

  • Large language models (LLMs) show potential in oncology but face challenges like hallucinations and outdated data.
  • Retrieval-augmented generation (RAG) addresses these limitations by integrating external, domain-specific knowledge.

Purpose of the Study:

  • To evaluate the impact of a RAG pipeline on the performance of various LLMs in radiation oncology.
  • To compare zero-shot LLM performance against RAG-augmented performance using a radiation oncology examination dataset.

Main Methods:

  • Fifteen LLMs were tested on 298 questions from the 2021 American College of Radiology in-training examination.
  • A RAG pipeline (Iridium Model) was implemented, querying a specialized radiation oncology database to augment prompts.
  • Performance was compared between zero-shot and RAG-augmented workflows.

Main Results:

  • Larger LLMs demonstrated higher zero-shot accuracy, with some outperforming graduating residents.
  • Reasoning models like GPT-4o achieved high accuracy without RAG; RAG did not improve their performance.
  • RAG enhanced performance for non-reasoning models, with domain-specific gains in clinical, biology, and physics knowledge areas.
  • Majority voting improved aggregate accuracy, while RAG and reasoning models increased computational costs.

Conclusions:

  • A radiation oncology-specific RAG pipeline boosts non-reasoning LLM performance by incorporating domain-specific evidence.
  • RAG does not enhance the performance of advanced reasoning models in this context.
  • RAG provides an efficient, cost-effective alternative to extensive model training for clinical decision support, offering citable explanations.