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A foundation model for human-AI collaboration in medical literature mining

28 January 2025
Zifeng Wang
Lang Cao
Qiao Jin
Joey Chan
Nicholas Wan
Behdad Afzali
Hyun-Jin Cho
Chang-In Choi
Mehdi Emamverdi
Manjot K. Gill
Sun Kim
Yijia Li
Yi Liu
Hanley Ong
J. Rousseau
Irfan Sheikh
Jenny J. Wei
Ziyang Xu
Christopher M. Zallek
Kyungsang Kim
Yifan Peng
Zhiyong Lu
Jimeng Sun
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Abstract

Systematic literature review is essential for evidence-based medicine, requiring comprehensive analysis of clinical trial publications. However, the application of artificial intelligence (AI) models for medical literature mining has been limited by insufficient training and evaluation across broad therapeutic areas and diverse tasks. Here, we present LEADS, an AI foundation model for study search, screening, and data extraction from medical literature. The model is trained on 633,759 instruction data points in LEADSInstruct, curated from 21,335 systematic reviews, 453,625 clinical trial publications, and 27,015 clinical trial registries. We showed that LEADS demonstrates consistent improvements over four cutting-edge generic large language models (LLMs) on six tasks. Furthermore, LEADS enhances expert workflows by providing supportive references following expert requests, streamlining processes while maintaining high-quality results. A study with 16 clinicians and medical researchers from 14 different institutions revealed that experts collaborating with LEADS achieved a recall of 0.81 compared to 0.77 experts working alone in study selection, with a time savings of 22.6%. In data extraction tasks, experts using LEADS achieved an accuracy of 0.85 versus 0.80 without using LEADS, alongside a 26.9% time savings. These findings highlight the potential of specialized medical literature foundation models to outperform generic models, delivering significant quality and efficiency benefits when integrated into expert workflows for medical literature mining.

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