Structured Insight from Unstructured Data: Large Language Models for SDOH-Driven Diabetes Risk Prediction
Sasha Ronaghi, Prerit Choudhary, David H Rehkopf, Bryant Lin

TL;DR
This study demonstrates how large language models can extract structured social determinants of health information from unstructured patient narratives to improve diabetes risk prediction models.
Contribution
It introduces a novel approach using LLMs to convert unstructured patient stories into structured SDOH data for enhanced risk assessment.
Findings
LLMs achieved 60% accuracy in predicting diabetes control levels.
Structured SDOH data improved risk prediction when combined with traditional biomarkers.
Unstructured narratives can be effectively translated into actionable clinical insights.
Abstract
Social determinants of health (SDOH) play a critical role in Type 2 Diabetes (T2D) management but are often absent from electronic health records and risk prediction models. Most individual-level SDOH data is collected through structured screening tools, which lack the flexibility to capture the complexity of patient experiences and unique needs of a clinic's population. This study explores the use of large language models (LLMs) to extract structured SDOH information from unstructured patient life stories and evaluate the predictive value of both the extracted features and the narratives themselves for assessing diabetes control. We collected unstructured interviews from 65 T2D patients aged 65 and older, focused on their lived experiences, social context, and diabetes management. These narratives were analyzed using LLMs with retrieval-augmented generation to produce concise,…
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Taxonomy
TopicsMachine Learning in Healthcare · Food Security and Health in Diverse Populations · Chronic Disease Management Strategies
