Applications of Large Language Models (LLMs) in Healthcare
Summary
In recent years, large language models (LLMs) have revolutionized language-related
applications across various fields. These powerful models, trained on massive datasets, can
understand and generate natural language for tasks like summarization, questionanswering,
and information extraction. One notable application of LLMs is their integration
into the healthcare sector. Although numerous clinical applications have been proposed,
from extracting medication information to providing patient support through chatbots,
widespread implementation is still in progress.
This review aimed to identify clinical tasks that make use of LLMs and can be applied within
the healthcare sector, from relevant literature. From the 1008 founded publications, a
random subset was included in this review. After thorough screening, 129 clinical tasks were
described within the resulting 89 publications. These clinical tasks were categorized into the
overarching tasks: ‘Clinical workflow’, ‘Patient education and communication’ or ‘Healthcare
management’. The categorization of these clinical tasks, as well as the identification of the
underlying classical NLP tasks, aimed to provide a comprehensive understanding on the
described clinical tasks and the potential capabilities of utilizing LLMs in healthcare.
Although many utilities of LLMs in healthcare were described, the majority was not yet
implemented within clinical settings. This indicates that the future holds promise for the
widespread implementation of these clinical tasks, but further development and validation
are essential for realizing their full potential in transforming healthcare services.