Design and Implementation of a Psychiatry Resident Training System Based on Large Language Models
Journal:
arXiv
Published Date:
Jan 24, 2025
Abstract
Mental disorders have become a significant global public health issue, while
the shortage of psychiatrists and inefficient training systems severely hinder
the accessibility of mental health services. This paper designs and implements
an artificial intelligence-based training system for psychiatrists. By
integrating technologies such as large language models, knowledge graphs, and
expert systems, the system constructs an intelligent and standardized training
platform. It includes six functional modules: case generation, consultation
dialogue, examination prescription, diagnostic decision-making, integrated
traditional Chinese and Western medicine prescription, and expert evaluation,
providing comprehensive support from clinical skill training to professional
level assessment.The system adopts a B/S architecture, developed using the
Vue.js and Node.js technology stack, and innovatively applies deep learning
algorithms for case generation and doctor-patient dialogue. In a clinical trial
involving 60 psychiatrists at different levels, the system demonstrated
excellent performance and training outcomes: system stability reached 99.95%,
AI dialogue accuracy achieved 96.5%, diagnostic accuracy reached 92.5%, and
user satisfaction scored 92.3%. Experimental data showed that doctors using the
system improved their knowledge mastery, clinical thinking, and diagnostic
skills by 35.6%, 28.4%, and 23.7%, respectively.The research results provide an
innovative solution for improving the efficiency of psychiatrist training and
hold significant importance for promoting the standardization and scalability
of mental health professional development.