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Response time optimization for drone-delivered automated external defibrillators

Authors :
Boutilier, Justin J.
Chan, Timothy C. Y.
Publication Year :
2019

Abstract

Out-of-hospital cardiac arrest (OHCA) claims over 400,000 lives each year in North America and is one of the most time-sensitive medical emergencies. Drone-delivered automated external defibrillators (AEDs) have the potential to be a transformative innovation in the provision of emergency care for OHCA. In this paper, we propose a simulation-optimization framework to minimize the total number of drones required to meet a pre-specified response time goal, while guaranteeing a sufficient number of drones are located at each base. To do this, we develop a location-queuing model that is based on the p-median architecture, where each base constitutes an explicit M/M/d queue, and that incorporates estimated baseline response times to the demand points. We then develop a reformulation technique that exploits the baseline response times, allowing us to solve real-world instances to optimality using an off-the-shelf solver. To test our model, we develop a two-stage machine learning approach to simulate both the locations and baseline response times for future OHCAs. We demonstrate the application of our framework using eight years of real data from an area covering 26,000 square kilometres around Toronto, Canada. A modest number of drones are required to significantly reduce response times in all regions. Furthermore, an objective function focused on improving the 90th percentile is well-suited for use in practice because the model reduces the entire response time distribution, while providing equitable coverage in both cities and rural areas. Overall, this paper provides a realistic framework that can be leveraged by healthcare providers seeking to implement a drone network.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1908.00149
Document Type :
Working Paper