Machine learning-based dispatch of drone-delivered defibrillators for out-of-hospital cardiac arrest

Drone-delivered defibrillators have the potential to significantly reduce response time for out-of-hospital cardiac arrest (OHCA). However, optimal policies for the dispatch of such drones are not yet known. We sought to develop dispatch rules for a network of defibrillator-carrying drones. We ident...

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Veröffentlicht in:Resuscitation 2021-05, Vol.162, p.120-127
Hauptverfasser: Chu, Jamal, Leung, K.H. Benjamin, Snobelen, Paul, Nevils, Gordon, Drennan, Ian R., Cheskes, Sheldon, Chan, Timothy C.Y.
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Sprache:eng
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Zusammenfassung:Drone-delivered defibrillators have the potential to significantly reduce response time for out-of-hospital cardiac arrest (OHCA). However, optimal policies for the dispatch of such drones are not yet known. We sought to develop dispatch rules for a network of defibrillator-carrying drones. We identified all suspected OHCAs in Peel Region, Ontario, Canada from Jan. 2015 to Dec. 2019. We developed drone dispatch rules based on the difference between a predicted ambulance response time to a calculated drone response time for each OHCA. Ambulance response times were predicted using linear regression and neural network models, while drone response times were calculated using drone specifications from recent pilot studies and the literature. We evaluated the dispatch rules based on response time performance and dispatch decisions, comparing them to two baseline policies of never dispatching and always dispatching drones. A total of 3573 suspected OHCAs were included in the study with median and mean historical ambulance response times of 5.8 and 6.2 min. All machine learning-based dispatch rules significantly reduced the median response time to 3.9 min and mean response time to 4.1–4.2 min (all P 
ISSN:0300-9572
1873-1570
DOI:10.1016/j.resuscitation.2021.02.028