Consensus Finding Among LLMs to Retrieve Information About Oncological Trials.
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BORIS DOI
Publisher DOI
PubMed ID
40775855
Description
Background
Automated classification of medical literature is increasingly vital, especially in oncology. As shown in previous work, LLMs can be used as part of a flexible framework to accurately classify biomedical literature and trials. In the present study, we aimed to explore to what extent a consensus-based approach could improve classification performance.Methods
The three LLMs Mixtral-8x7B, Meta-Llama-3.1-70B, and Qwen2.5-72B were used to classify oncological trials across four data sets with nine questions. Metrics (accuracy, precision, recall, F1-score) were assessed for individual models and consensus results.Results
Consensus was achieved in 93.93% of cases, improving accuracy (98.34%), precision (97.01%), recall (98.11%), and F1-score (97.55%) over individual models.Conclusions
The consensus-based LLM framework delivers high accuracy and adaptability for classifying oncological trials, with potential applications in biomedical research and trial management.
Automated classification of medical literature is increasingly vital, especially in oncology. As shown in previous work, LLMs can be used as part of a flexible framework to accurately classify biomedical literature and trials. In the present study, we aimed to explore to what extent a consensus-based approach could improve classification performance.Methods
The three LLMs Mixtral-8x7B, Meta-Llama-3.1-70B, and Qwen2.5-72B were used to classify oncological trials across four data sets with nine questions. Metrics (accuracy, precision, recall, F1-score) were assessed for individual models and consensus results.Results
Consensus was achieved in 93.93% of cases, improving accuracy (98.34%), precision (97.01%), recall (98.11%), and F1-score (97.55%) over individual models.Conclusions
The consensus-based LLM framework delivers high accuracy and adaptability for classifying oncological trials, with potential applications in biomedical research and trial management.
Date of Publication
2025-08-07
Publication Type
Article
Subject(s)
Keyword(s)
knowledge synthesis
•
large language models
•
natural language processing
•
oncology
•
text classification
Language(s)
en
Contributor(s)
Zink, Johannes | |
Shaheen, Ahmed | |
Gaio, Roberto | |
Aeppli, Stefanie | |
Hastings, Janna |
Additional Credits
Series
Studies in health technology and informatics
Publisher
IOS Press
ISSN
1879-8365
Access(Rights)
open.access