TITLE:
Improving Clinical Support through Retrieval-Augmented Generation Powered Virtual Health Assistants
AUTHORS:
Biju Baburajan Anandavally
KEYWORDS:
Retrieval-Augmented Generation (RAG), GPT-4, Healthcare Assistants, Artificial Intelligence
JOURNAL NAME:
Journal of Computer and Communications,
Vol.12 No.11,
November
18,
2024
ABSTRACT: This article examines the implementation of a virtual health assistant powered by Retrieval-Augmented Generation (RAG) and GPT-4, aimed at enhancing clinical support through personalized, real-time interactions with patients. The system is hypothesized to improve healthcare accessibility, operational efficiency, and patient outcomes by automating routine tasks and delivering accurate health information. The assistant leverages natural language processing and real-time data retrieval models to respond to patient inquiries, schedule appointments, provide medication reminders, assist with symptom triage, and answer insurance-related questions. By integrating RAG-based virtual care, the system reduces the burden on healthcare specialists and helps mitigate healthcare disparities, particularly in rural areas where traditional care is limited. Although the initial scope of testing did not validate all potential benefits, the results demonstrated high patient satisfaction and strong response accuracy, both critical for systems of this nature. These findings underscore the transformative potential of AI-driven virtual health assistants in enhancing patient engagement, streamlining operational workflows, and improving healthcare accessibility, ultimately contributing to better outcomes and more cost-effective care delivery.