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Precision Physician Allocation System
0
Zitationen
3
Autoren
2025
Jahr
Abstract
Healthcare management operates in a dynamic and sensitive environment where efficiently allocating general practitioners remains a significant challenge. To address this, the Precision Physician Allocation System (PPAS) was developed to improve the matching of patients with appropriate physicians based on medical needs and staff availability. The system enhances patient experience by ensuring timely access to the right doctor while reducing the risk of ineffective treatment. PPAS shortens physician assignment time by approximately 2–3 minutes, enabling faster and more efficient care delivery. By integrating advanced data analytics, machine learning, and predictive modeling techniques using LLAMA, PPAS effectively aligns healthcare resources with demand. The system leverages diverse data sources, including chatbot interactions and physician profiles, to optimize real-time resource allocation. In an evolving healthcare landscape, PPAS provides a scalable and adaptive solution that improves operational efficiency, enhances care quality, and supports more accurate and effective healthcare service delivery.
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