CLAIMar 31, 2025

Integrating Large Language Models with Human Expertise for Disease Detection in Electronic Health Records

arXiv:2504.00053v18 citationsh-index: 7Comput. Biol. Medicine
Originality Synthesis-oriented
AI Analysis

This work addresses the need for efficient disease surveillance in healthcare by automating condition detection from clinical notes, though it is incremental as it applies existing LLM methods to a specific domain.

This study tackled the problem of labor-intensive disease detection from electronic health records by developing a pipeline using large language models to identify acute myocardial infarction, diabetes, and hypertension, achieving sensitivities ranging from 88% to 94% and outperforming ICD code-based methods in sensitivity and negative predictive value.

Objective: Electronic health records (EHR) are widely available to complement administrative data-based disease surveillance and healthcare performance evaluation. Defining conditions from EHR is labour-intensive and requires extensive manual labelling of disease outcomes. This study developed an efficient strategy based on advanced large language models to identify multiple conditions from EHR clinical notes. Methods: We linked a cardiac registry cohort in 2015 with an EHR system in Alberta, Canada. We developed a pipeline that leveraged a generative large language model (LLM) to analyze, understand, and interpret EHR notes by prompts based on specific diagnosis, treatment management, and clinical guidelines. The pipeline was applied to detect acute myocardial infarction (AMI), diabetes, and hypertension. The performance was compared against clinician-validated diagnoses as the reference standard and widely adopted International Classification of Diseases (ICD) codes-based methods. Results: The study cohort accounted for 3,088 patients and 551,095 clinical notes. The prevalence was 55.4%, 27.7%, 65.9% and for AMI, diabetes, and hypertension, respectively. The performance of the LLM-based pipeline for detecting conditions varied: AMI had 88% sensitivity, 63% specificity, and 77% positive predictive value (PPV); diabetes had 91% sensitivity, 86% specificity, and 71% PPV; and hypertension had 94% sensitivity, 32% specificity, and 72% PPV. Compared with ICD codes, the LLM-based method demonstrated improved sensitivity and negative predictive value across all conditions. The monthly percentage trends from the detected cases by LLM and reference standard showed consistent patterns.

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