Background: Depression has surged in Korea, with 933,481 patients in 2021, a 35.1% increase since 2017.Globally, 5% of adults suffer from depression, resulting in over 700,000 suicides annually.However, Korea has only 29.5 mental health workers per 100,000 people, below the OECD average of 97.1.This underscores the need for improved mental illness classification support systems.Medical artificial intelligence (AI) technology can help alleviate the burden of insufficient mental health resources and treatment overload. Methods:We developed an AI model for a clinical decision support system to determine depression severity using natural language data from patients in the Bundang CHA University Hospital Clinical Data Warehouse between 2018 and 2022.Among these, 169 patients had mild depressive episodes, and 460 had moderate depressive episodes.The control group used natural language datasets from the AI Hub platform.The final dataset included 460 patients with moderate depression, 169 with mild depression, and 123,690 normal conversation sessions.Results: Various algorithms were applied to diagnose depression severity based on reported symptoms, and XGBoost achieved the highest accuracy: 99.7% accuracy, 99.6% precision, 99.7% recall, and a 99.6% F1 score.The area under the curve was close to 1. Conclusion: Utilizing advanced AI and natural language processing technology in psychiatry can significantly aid in the precise, personalized assessment of depression severity based on patients' expressed symptoms.
Kim et al. (Thu,) studied this question.