Abstract

Introduction:Effective out-of-hospital administration of naloxone in opioid overdoses is dependent on timely arrival of naloxone. Delays in emergency medical services (EMS) response time could potentially be overcome with drones to deliver naloxone efficiently to the scene for bystander use. Our objective was to evaluate a mathematical optimization simulation for geographical placement of drone bases in reducing response time to opioid overdose.

Methods: Using retrospective data from a single EMS system from January 2016–February 2019, we created a geospatial drone-network model based on current technological specifications and potential base locations. Genetic optimization was then used to maximize county coverage by drones and the number of overdoses covered per drone base. From this model, we identified base locations that minimize response time and the number of drone bases required.

Results:In a drone network model with 2,327 opioid overdoses, as the number of modeled drone bases increased the calculated response time decreased. In a geospatially optimized drone network with four drone bases, response time compared to ambulance arrival was reduced by 4 minutes 38 seconds and covered 64.2% of the county.

Conclusion: In our analysis we found that in a mathematical model for geospatial optimization, implementing four drone bases could reduce response time of 9–1–1 calls for opioid overdoses. Therefore, drones could theoretically improve time to naloxone delivery.

Details

Title
Optimizing a Drone Network to Respond to Opioid Overdoses
Author
Cox, Daniel; Ye, Jinny J; Zhang Chixiang; Lee, Van Vleet; Nickenig Vissoci João R; Buckland, Daniel M
Section
Behavioral Health
Publication year
2023
Publication date
2023
Publisher
University of California Digital Library - eScholarship
ISSN
1936900X
e-ISSN
19369018
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2866631399
Copyright
© 2023. Notwithstanding the ProQuest Terms and conditions, you may use this content in accordance with the associated terms available at https://creativecommons.org/licenses/by/4.0/