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Radiology-Llama2: Best-in-Class Large Language Model for Radiology

29 August 2023
Zheng Liu
Yiwei Li
Peng Shu
Aoxiao Zhong
Longtao Yang
Chao Ju
Zihao Wu
Chong Ma
Jie Luo
Cheng Chen
Sekeun Kim
Jiang Hu
Haixing Dai
Lin Zhao
Dajiang Zhu
Jun Liu
W. Liu
Dinggang Shen
Tianming Liu
Quanzheng Li
Xiang Li
    LM&MA
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Abstract

This paper introduces Radiology-Llama2, a large language model specialized for radiology through a process known as instruction tuning. Radiology-Llama2 is based on the Llama2 architecture and further trained on a large dataset of radiology reports to generate coherent and clinically useful impressions from radiological findings. Quantitative evaluations using ROUGE metrics on the MIMIC-CXR and OpenI datasets demonstrate that Radiology-Llama2 achieves state-of-the-art performance compared to other generative language models, with a Rouge-1 score of 0.4834 on MIMIC-CXR and 0.4185 on OpenI. Additional assessments by radiology experts highlight the model's strengths in understandability, coherence, relevance, conciseness, and clinical utility. The work illustrates the potential of localized language models designed and tuned for specialized domains like radiology. When properly evaluated and deployed, such models can transform fields like radiology by automating rote tasks and enhancing human expertise.

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