When the Domain Expert Has No Time and the LLM Developer Has No Clinical Expertise: Real-World Lessons from LLM Co-Design in a Safety-Net Hospital
Avni Kothari, Patrick Vossler, Jean Digitale, Mohammad Forouzannia, Elise Rosenberg, Michele Lee, Jennee Bryant, Melanie Molina, James Marks, Lucas Zier, Jean Feng

TL;DR
This paper presents a novel co-design framework for developing LLM applications in resource-constrained healthcare settings, emphasizing attribute decomposition and multi-tier validation to overcome limited domain expert access.
Contribution
It introduces a new co-design methodology that enables effective LLM application development with minimal domain expert involvement in underserved communities.
Findings
Careful specification of information surfaces improves LLM accuracy
Attribute decomposition facilitates targeted refinement
Multi-tier validation ensures comprehensive and reliable outputs
Abstract
Large language models (LLMs) have the potential to address social and behavioral determinants of health by transforming labor intensive workflows in resource-constrained settings. Creating LLM-based applications that serve the needs of underserved communities requires a deep understanding of their local context, but it is often the case that neither LLMs nor their developers possess this local expertise, and the experts in these communities often face severe time/resource constraints. This creates a disconnect: how can one engage in meaningful co-design of an LLM-based application for an under-resourced community when the communication channel between the LLM developer and domain expert is constrained? We explored this question through a real-world case study, in which our data science team sought to partner with social workers at a safety net hospital to build an LLM application that…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Machine Learning in Healthcare · Topic Modeling
