Medicine and HealthJMIR Mental Health
Large Language Models for Mental Health Applications: Systematic Review
Z. Guo, A. Lai, et al.
Large language models (LLMs) show promise for early screening, digital interventions, and clinical support in mental health, but also pose risks such as inconsistent outputs, hallucinations, and ethical and privacy gaps. This systematic review synthesizes evidence on models, methodologies, data sources, and outcomes, concluding that LLMs are not substitutes for professional care but may serve as valuable clinical aids with further research. Research conducted by Authors present in <Authors> tag.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Medicine and Health
Systematic review of economic evaluations for internet- and mobile-based interventions for mental health problems
F. Kählke, C. Buntrock, et al.
Computer Science
Evaluation of large language models on mental health: from knowledge test to illness diagnosis
Y. Xu, Z. Fang, et al.
Computer Science
The Goldilocks paradigm: comparing classical machine learning, large language models, and few-shot learning for drug discovery applications
S. H. Snyder, P. A. Vignaux, et al.
Medicine and Health
Evaluation of large language models on mental health: from knowledge test to illness diagnosis
Y. Xu, Z. Fang, et al.

