Using Large Language Models to identify social determinants of health to enhance healthcare services and equity

NIH RePORTER · AHRQ · R21 · $142,864 · view on reporter.nih.gov ↗

Abstract

PROJECT SUMMARY/ABSTRACT Social determinants of health are known to have a significant impact on patient outcomes. However, controversies exist on how to best capture this information in routine care. Most SDH information is captured in the form of a survey or unstructured free text or narrative and not regularly captured or screened for variety of factors (e.g., time constraints, clinician experience/comfort in asking, patient fears of sharing potentially stigmatizing information. This is a particularly rich and robust source of information, especially when trying to identify patients' goals of care, preferences, or behavioral/social challenges that may exist. In this proposal, we use natural language processing and generative AI models to capture SDH information from patients. We will then process this information into discrete data elements that can then be passed into the EHR and acted upon by clinical decision support system. We will pilot this intervention in a large academic medical center that provides care to an at-risk patient population and community.

Key facts

NIH application ID
10871560
Project number
1R21HS029991-01
Recipient
UNIVERSITY OF COLORADO DENVER
Principal Investigator
Foster R Goss
Activity code
R21
Funding institute
AHRQ
Fiscal year
2024
Award amount
$142,864
Award type
1
Project period
2024-09-01 → 2026-08-31