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LLM-assisted systematic review of large language models in clinical medicine
0
Zitationen
12
Autoren
2026
Jahr
Abstract
Clinical evaluations of large language models (LLMs) have rapidly expanded since 2022, yet their evidence base remains opaque. The overwhelming volume of studies creates challenges for manual curation and review. However, LLMs themselves offer the scalability and capability to evaluate the ever-growing evidence base. This LLM-assisted review identified 4,609 peer-reviewed studies in clinical medicine between January 2022 and September 2025, equating to roughly 3.2 papers per day. Only 1,048 studies used real-world patient data and of these only 19 were prospective randomized trials; most addressed simulated scenarios (n = 1,857) or exam-style tasks (n = 1,704). ChatGPT and related OpenAI models constitute 65.7% of evaluated models, with Gemini/Bard a distant second constituting 13.1% of evaluated models. Patient-facing communication and education comprised 17% of tasks, followed by knowledge retrieval, and education and assessment simulation. Across 1,046 head-to-head comparisons, LLMs outperformed humans in 33% of comparisons, with a strong dependency on task realism and level of training. At least 25% of studies had sample sizes less than 30. Despite the growth of LLMs in medicine, rigorous, patient-centered evidence remains scarce, underscoring the need for larger prospective trials before clinical adoption.
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Autoren
Institutionen
- Duke University(US)
- Washington University in St. Louis(US)
- NYU Langone Health(US)
- Médecins Sans Frontières(US)
- Columbia University(US)
- University of Georgia(US)
- Augusta University Health(US)
- Ochsner Health System(US)
- Ochsner Medical Center(US)
- Johns Hopkins University(US)
- New York University(US)
- Courant Institute of Mathematical Sciences(US)