TL;DR
This study systematically compares how different FHIR data serialisation strategies impact the performance of various LLMs in medication reconciliation, revealing that serialisation choice significantly affects accuracy and safety.
Contribution
It is the first to evaluate four FHIR serialisation methods across multiple open-weight models on a controlled synthetic benchmark, providing practical deployment recommendations.
Findings
Clinical Narrative outperforms Raw JSON for models up to 8B parameters.
Raw JSON achieves highest accuracy at 70B+ models.
Models tend to miss active medications more often than fabricating them.
Abstract
Medication reconciliation at clinical handoffs is a high-stakes, error-prone process. Large language models are increasingly proposed to assist with this task using FHIR-structured patient records, but a fundamental and largely unstudied variable is how the FHIR data is serialised before being passed to the model. We present the first systematic comparison of four FHIR serialisation strategies (Raw JSON, Markdown Table, Clinical Narrative, and Chronological Timeline) across five open-weight models (Phi-3.5-mini, Mistral-7B, BioMistral-7B, Llama-3.1-8B, Llama-3.3-70B) on a controlled benchmark of 200 synthetic patients, totalling 4,000 inference runs. We find that serialisation strategy has a large, statistically significant effect on performance for models up to 8B parameters: Clinical Narrative outperforms Raw JSON by up to 19 F1 points for Mistral-7B (r = 0.617, p < 10^{-10}). This…
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