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Main Authors: Wang, Zhonghai, Jiang, Jie, Zhan, Yibing, Zhou, Bohao, Li, Yanhong, Zhang, Chong, Ding, Liang, Jin, Hua, Peng, Jun, Lin, Xu, Liu, Weifeng
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.02742
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author Wang, Zhonghai
Jiang, Jie
Zhan, Yibing
Zhou, Bohao
Li, Yanhong
Zhang, Chong
Ding, Liang
Jin, Hua
Peng, Jun
Lin, Xu
Liu, Weifeng
author_facet Wang, Zhonghai
Jiang, Jie
Zhan, Yibing
Zhou, Bohao
Li, Yanhong
Zhang, Chong
Ding, Liang
Jin, Hua
Peng, Jun
Lin, Xu
Liu, Weifeng
contents Medical large language models (LLMs) have gained popularity recently due to their significant practical utility. However, most existing research focuses on general medicine, and there is a need for in-depth study of LLMs in specific fields like anesthesiology. To fill the gap, we introduce Hypnos, a Chinese Anesthesia model built upon existing LLMs, e.g., Llama. Hypnos' contributions have three aspects: 1) The data, such as utilizing Self-Instruct, acquired from current LLMs likely includes inaccuracies. Hypnos implements a cross-filtering strategy to improve the data quality. This strategy involves using one LLM to assess the quality of the generated data from another LLM and filtering out the data with low quality. 2) Hypnos employs a general-to-specific training strategy that starts by fine-tuning LLMs using the general medicine data and subsequently improving the fine-tuned LLMs using data specifically from Anesthesiology. The general medical data supplement the medical expertise in Anesthesiology and enhance the effectiveness of Hypnos' generation. 3) We introduce a standardized benchmark for evaluating medical LLM in Anesthesiology. Our benchmark includes both publicly available instances from the Internet and privately obtained cases from the Hospital. Hypnos outperforms other medical LLMs in anesthesiology in metrics, GPT-4, and human evaluation on the benchmark dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2403_02742
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Towards Training A Chinese Large Language Model for Anesthesiology
Wang, Zhonghai
Jiang, Jie
Zhan, Yibing
Zhou, Bohao
Li, Yanhong
Zhang, Chong
Ding, Liang
Jin, Hua
Peng, Jun
Lin, Xu
Liu, Weifeng
Computation and Language
Medical large language models (LLMs) have gained popularity recently due to their significant practical utility. However, most existing research focuses on general medicine, and there is a need for in-depth study of LLMs in specific fields like anesthesiology. To fill the gap, we introduce Hypnos, a Chinese Anesthesia model built upon existing LLMs, e.g., Llama. Hypnos' contributions have three aspects: 1) The data, such as utilizing Self-Instruct, acquired from current LLMs likely includes inaccuracies. Hypnos implements a cross-filtering strategy to improve the data quality. This strategy involves using one LLM to assess the quality of the generated data from another LLM and filtering out the data with low quality. 2) Hypnos employs a general-to-specific training strategy that starts by fine-tuning LLMs using the general medicine data and subsequently improving the fine-tuned LLMs using data specifically from Anesthesiology. The general medical data supplement the medical expertise in Anesthesiology and enhance the effectiveness of Hypnos' generation. 3) We introduce a standardized benchmark for evaluating medical LLM in Anesthesiology. Our benchmark includes both publicly available instances from the Internet and privately obtained cases from the Hospital. Hypnos outperforms other medical LLMs in anesthesiology in metrics, GPT-4, and human evaluation on the benchmark dataset.
title Towards Training A Chinese Large Language Model for Anesthesiology
topic Computation and Language
url https://arxiv.org/abs/2403.02742