Locating helicopter emergency medical service bases to optimise population coverage versus average response time

被引:18
|
作者
Garner, Alan A. [1 ]
van den Berg, Pieter L. [2 ]
机构
[1] CareFlight, Northmead, NSW, Australia
[2] Rotterdam Sch Management, Rotterdam, Netherlands
来源
BMC EMERGENCY MEDICINE | 2017年 / 17卷
关键词
Helicopter; Bases; Modelling; Optimization; Coverage; Response; Population;
D O I
10.1186/s12873-017-0142-5
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Background: New South Wales (NSW), Australia has a network of multirole retrieval physician staffed helicopter emergency medical services (HEMS) with seven bases servicing a jurisdiction with population concentrated along the eastern seaboard. The aim of this study was to estimate optimal HEMS base locations within NSW using advanced mathematical modelling techniques. Methods: We used high resolution census population data for NSW from 2011 which divides the state into areas containing 200-800 people. Optimal HEMS base locations were estimated using the maximal covering location problem facility location optimization model and the average response time model, exploring the number of bases needed to cover various fractions of the population for a 45 min response time threshold or minimizing the overall average response time to all persons, both in green field scenarios and conditioning on the current base structure. We also developed a hybrid mathematical model where average response time was optimised based on minimum population coverage thresholds. Results: Seven bases could cover 98% of the population within 45 mins when optimised for coverage or reach the entire population of the state within an average of 21 mins if optimised for response time. Given the existing bases, adding two bases could either increase the 45 min coverage from 91% to 97% or decrease the average response time from 21mins to 19 mins. Adding a single specialist prehospital rapid response HEMS to the area of greatest population concentration decreased the average state wide response time by 4 mins. The optimum seven base hybrid model that was able to cover 97.75% of the population within 45 mins, and all of the population in an average response time of 18 mins included the rapid response HEMS model. Conclusions: HEMS base locations can be optimised based on either percentage of the population covered, or average response time to the entire population. We have also demonstrated a hybrid technique that optimizes response time for a given number of bases and minimum defined threshold of population coverage. Addition of specialized rapid response HEMS services to a system of multirole retrieval HEMS may reduce overall average response times by improving access in large urban areas.
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页数:11
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