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AtlasGPT: a language model grounded in neurosurgery with domain-specific data and document retrieval
4
Zitationen
21
Autoren
2025
Jahr
Abstract
AtlasGPT demonstrates the potential of subspecialty-focused LLMs to outperform general models, exhibit robustness to misinformation, and generate high-quality explanations. Domain-specific LLMs may improve medical knowledge, decision-making, and educational materials in complex fields like neurosurgery.
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