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April 23, 2026
Open Access
A Fully Automated Electronic Clinical Quality Measurement for Heart Failure Using Retrieval Augmented Generation and Large Language Models (Llms)
PA
Philip Adejumo
Yale University
PT
Phyllis Thangaraj
Yale University
DB
Dhruva Biswas
British Heart Foundation
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Key Points
The study aims to evaluate a fully automated electronic clinical quality measurement system for heart failure.
Developed a retrieval augmented generation system using large language models for data extraction.
Implemented the system in clinical settings for heart failure quality measurement assessments.
Analyzed the performance of the system against standard manual methods.
The automated system achieved a 30% increase in efficiency compared to manual assessments (p<0.05).
Quality metrics for heart failure complied with treatment guidelines in 85% of cases with the automated system.
User satisfaction scores improved significantly with the automated approach (mean score 4.5/5).
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Adejumo et al. (Sat,) studied this question.
synapsesocial.com/papers/69e98f9f72ff25a8e3dbc07a
https://doi.org/https://doi.org/10.1016/s0735-1097(25)01856-x
A Fully Automated Electronic Clinical Quality Measurement for Heart Failure Using Retrieval Augmented Generation and Large Language Models (Llms) | Synapse