CLAIHCFeb 12

PatientHub: A Unified Framework for Patient Simulation

arXiv:2602.11684v10.262 citationsh-index: 12Has Code
AI Analysis25

This work addresses the need for standardized tools in patient simulation for training counselors and therapeutic assessment, though it appears incremental as it consolidates existing approaches rather than introducing fundamentally new methods.

The authors tackled the problem of fragmented patient simulation methods in AI-powered role-playing applications by introducing PatientHub, a unified framework that standardizes simulation definition, composition, and deployment, resulting in improved reproducibility and accelerated method development.

As Large Language Models increasingly power role-playing applications, simulating patients has become a valuable tool for training counselors and scaling therapeutic assessment. However, prior work is fragmented: existing approaches rely on incompatible, non-standardized data formats, prompts, and evaluation metrics, hindering reproducibility and fair comparison. In this paper, we introduce PatientHub, a unified and modular framework that standardizes the definition, composition, and deployment of simulated patients. To demonstrate PatientHub's utility, we implement several representative patient simulation methods as case studies, showcasing how our framework supports standardized cross-method evaluation and the seamless integration of custom evaluation metrics. We further demonstrate PatientHub's extensibility by prototyping two new simulator variants, highlighting how PatientHub accelerates method development by eliminating infrastructure overhead. By consolidating existing work into a single reproducible pipeline, PatientHub lowers the barrier to developing new simulation methods and facilitates cross-method and cross-model benchmarking. Our framework provides a practical foundation for future datasets, methods, and benchmarks in patient-centered dialogue, and the code is publicly available via https://github.com/Sahandfer/PatientHub.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes