Abstract
Large language models (LLMs) have demonstrated strong performance on isolated psychiatric tasks, including dialogue, diagnosis, and treatment planning. However, existing benchmarks seldom simulate complete psychiatric clinical encounters.
We introduce MentalHospital, a virtual evaluation environment for LLM-based psychiatric clinical encounters. MentalHospital instantiates the Subjective Interviewing, Objective Examination, Diagnostic Assessment, and Treatment Planning (S.O.A.P.) workflow, using skill-augmented standardized patients constructed from 1,193 de-identified psychiatric electronic health record (EHR) cases spanning all major ICD-11 categories and 76 disorders.
Each encounter is assessed through a dual-track protocol that combines objective comparison against EHR-derived references with subjective assessment of clinical process quality. To scale specialist judgment, we develop MentalEval, five domain-specific evaluators covering communication empathy, interviewing professionalism, clinical-note quality, diagnostic rigor, and treatment appropriateness, trained with rubric-grounded SFT and expert-guided DPO.
Survey responses from 22 clinicians support MentalHospital's clinical fidelity (3.88/5), while MentalEval achieves strong expert alignment with an average QWK of 0.944. Benchmarking shows that even the strongest LLM trails clinicians by 37.28 percentage points in objective psychiatric competence, with mental status assessment as a key bottleneck.
Blogger's Review: The launch of MentalHospital marks a significant advancement in psychiatric evaluation, addressing the practical application gap of LLMs in mental health by simulating real clinical encounters. Its dual-track assessment mechanism and development of domain-specific evaluators lay a solid foundation for future research, enhancing the quality of psychiatric diagnosis and treatment.