Enhancing Patient-Centric Communication: Leveraging LLMs to Simulate Patient Perspectives
Xinyao Ma, Rui Zhu, Zihao Wang, Jingwei Xiong, Qingyu Chen, Haixu, Tang, L. Jean Camp, Lucila Ohno-Machado

TL;DR
This study evaluates the potential of Large Language Models to simulate patient perspectives and improve personalized health communication, highlighting their capabilities and current limitations in clinical scenarios.
Contribution
It demonstrates how LLMs can effectively simulate diverse patient backgrounds and interpret discharge summaries, revealing both strengths and critical gaps for clinical application.
Findings
LLMs deliver 88% accurate medical guidance when primed with educational background.
Performance drops below random chance when other information is provided.
Straightforward query-response models may outperform tailored approaches.
Abstract
Large Language Models (LLMs) have demonstrated impressive capabilities in role-playing scenarios, particularly in simulating domain-specific experts using tailored prompts. This ability enables LLMs to adopt the persona of individuals with specific backgrounds, offering a cost-effective and efficient alternative to traditional, resource-intensive user studies. By mimicking human behavior, LLMs can anticipate responses based on concrete demographic or professional profiles. In this paper, we evaluate the effectiveness of LLMs in simulating individuals with diverse backgrounds and analyze the consistency of these simulated behaviors compared to real-world outcomes. In particular, we explore the potential of LLMs to interpret and respond to discharge summaries provided to patients leaving the Intensive Care Unit (ICU). We evaluate and compare with human responses the comprehensibility of…
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Taxonomy
MethodsADaptive gradient method with the OPTimal convergence rate
