Abstract
This review paper presents a comprehensive examination of the current
and future landscape of Natural Language Processing (NLP) in healthcare,
with a particular focus on the integration and potential of generative
AI and GPT-3 technologies. The research delves into the transformative
applications of NLP in clinical documentation, patient feedback
analysis, and the burgeoning field of AI-driven virtual health
assistants. It highlights how these advanced technologies can streamline
healthcare data management, enhance patient engagement, and facilitate
innovative research methodologies. The paper also critically examines
the challenges and limitations inherent in the application of NLP within
healthcare. These include ensuring the accuracy and reliability of
AI-generated information, addressing privacy and ethical concerns
related to patient data, and integrating these technologies into
existing healthcare infrastructures. The research underscores the need
for rigorous standards and ethical considerations in the development and
implementation of NLP tools in healthcare. Looking ahead, the paper
discusses the potential future directions for NLP in healthcare,
emphasizing the role of generative AI models like GPT-3 in advancing
patient care, medical documentation, and healthcare research. This
review serves as a foundational analysis for future research in this
field, advocating for continuous innovation and ethical implementation
of NLP and AI technologies in healthcare.