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Research and Application of Large Language Models in HealthcareCurrent Development of Large Language Models in the Healthcare FieldA Framework for Applying Large Language Models and the Opportunities and Challenges of Large Language Models in Healthcare: A Framework for Applying Large Language Models and the Opportunities and Challenges of Large Language Models in Healthcare
2
Zitationen
4
Autoren
2023
Jahr
Abstract
The burgeoning field of Large Language Models (LLM) within the realm of medical research has garnered significant attention. However, there exists a noticeable dearth of scholarly exploration concerning the practical utility of LLM in addressing substantive task-oriented issues within specific medical domains. In light of this lacuna, the present study endeavors to furnish a comprehensive examination and evaluation of the framework underpinning LLM applications and their corresponding research and implementation within the medical domain.Commencing with a concise explication of the foundational tenets of the LLM application framework, the paper proceeds to expound upon the evolutionary trajectory of LLM and their current research landscape within the medical sphere. Subsequently, it delves into the prospective avenues for LLM application within the medical field. Lastly, the study scrutinizes the multifaceted challenges confronting LLM in the medical domain and offers prescriptive insights aimed at mitigating these impediments.This scholarly endeavor not only serves as a foundational cornerstone for the development of a practical business system predicated on LLM by elucidating the architectural intricacies of their application but also furnishes a comprehensive overview of the research and deployment of LLM in the medical domain, thereby affording invaluable points of reference for future endeavors within this domain.
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