Healthcare Facility Assignment Using Real-Time Length-of-Stay Predictions: Queuing-Theoretic and Simulation-driven Machine Learning Approaches
Najiya Fatma, Varun Ramamohan

TL;DR
This paper introduces a novel healthcare facility assignment algorithm that uses real-time length-of-stay predictions generated through queuing theory and machine learning, aiming to optimize patient flow and resource utilization.
Contribution
It develops and compares two methodologies for real-time LOS prediction and demonstrates their effectiveness in improving healthcare facility operations and patient experience.
Findings
RT-HFA reduces patient wait times and LOS at congested facilities.
The algorithm improves resource utilization across the network.
Effectiveness depends on patient compliance with assignments.
Abstract
Longer stays at healthcare facilities, driven by uncertain patient load, inefficient patient flow, and lack of real-time information about medical care, pose significant challenges for patients and healthcare providers. Providing patients with estimates of their expected real-time length of stay (RT-LOS), generated as a function of the operational state of the healthcare facility at their anticipated time of arrival (as opposed to estimates of average LOS), can help them make informed decisions regarding which facility to visit within a network. In this study, we develop a healthcare facility assignment (HFA) algorithm that assigns healthcare facilities to patients using RT-LOS predictions at facilities within the network of interest. We describe the generation of RT-LOS predictions via two methodologies: (a) an analytical queuing-theoretic approach, and (b) a hybrid simulation-driven…
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Taxonomy
TopicsHealthcare Operations and Scheduling Optimization · Advanced Queuing Theory Analysis · Emergency and Acute Care Studies
