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 integ
The evolving landscape of large language models and non-large language models in health care
Rui Yang·Nan Liu·Douglas Teodoro·Chuan Hong·Melissa Wong·Irene Li·Yifan Peng·Huitao Li·Yuhe Ke·Jimmy Ong·Kunyu Yu·Jingchi Liao·Xin Li·J.Y. Richard Liew·Sabarinath Vinod Nair·Daniel Shu Wei Ting
