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The evolving landscape of large language models and non-large language models in health care
0
Zitationen
16
Autoren
2026
Jahr
Abstract
Abstract We analyzed 19,123 natural language processing-related studies to explore the differences in task distributions and application contexts between large language models (LLMs) and non-LLM methods in health care. Through topic modeling analysis, we found that LLMs demonstrate advantages in open-ended tasks, while non-LLM methods dominate in information extraction tasks. These findings highlight the complementary strengths of the two technical paradigms and provide reference for their integration strategies in future health care applications.
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Autoren
Institutionen
- Duke-NUS Medical School(SG)
- University of Cambridge(GB)
- Singapore General Hospital(SG)
- Nanyang Technological University(SG)
- The University of Tokyo(JP)
- University of Geneva(CH)
- Duke University(US)
- Clinical Research Institute(US)
- Cornell University(US)
- Weill Cornell Medicine(US)
- SingHealth(SG)
- Singapore National Eye Center(SG)
- Singapore Eye Research Institute(SG)
- Stanford University(US)
- National University of Singapore(SG)