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Large Language Models for Cardiovascular Disease, Cancer, and Mental Disorders: A Review of Systematic Reviews
1
Zitationen
9
Autoren
2025
Jahr
Abstract
While LLMs show promise for screening, triage, decision support, and patient education-particularly in mental health-the current literature is descriptive and constrained by data, transparency, and safety gaps. We recommend prioritizing rigorous real-world evaluations, diverse benchmark datasets, bias-auditing, and governance frameworks before LLM clinical deployment and large adoption.
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