2018
DOI: 10.1159/000490581
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Geospatial Visualization of Mobile Stroke Unit Dispatches: A Method to Optimize Service Performance

Abstract: Background: Timely treatment of acute ischemic stroke is crucial to optimize outcomes. Mobile stroke units (MSU) have demonstrated ultrafast treatment compared to standard emergency care. Geospatial analysis of the distribution of MSU cases to optimize service delivery has not been reported. Methods: We aggregated all first-year MSU dispatch occurrences and all cases classified by clinical teams as true stroke by zip code and calculated dispatch and true stroke incidence rates. We mapped dispatch and stroke ca… Show more

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Cited by 10 publications
(5 citation statements)
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“…MSU operation is influenced strongly by setting—be it urban or rural, or high- or low-income. In metropolitan settings, factors such as traffic congestion and existing emergency response configurations as well as geo- and socio-spatial determinants of emergency service utilization impact transport modeling (122). In LMIC, road conditions impact both transport planning and may necessitate physical upgrades to the MSU vehicle.…”
Section: Improving Prehospital Stroke Care In Low and Middle-income Cmentioning
confidence: 99%
“…MSU operation is influenced strongly by setting—be it urban or rural, or high- or low-income. In metropolitan settings, factors such as traffic congestion and existing emergency response configurations as well as geo- and socio-spatial determinants of emergency service utilization impact transport modeling (122). In LMIC, road conditions impact both transport planning and may necessitate physical upgrades to the MSU vehicle.…”
Section: Improving Prehospital Stroke Care In Low and Middle-income Cmentioning
confidence: 99%
“…These works play a more supportive role by augmenting EMS with decision support tools to better respond to emergencies [16]. Visualizations are used for various purposes, such as training and simulation [34,35], real-time management [36][37][38], and decision support [39,40]. On the knowledge discovery front, valuable data-driven insights are extracted from emergency response data.…”
Section: Related Workmentioning
confidence: 99%
“…Al Fatah et al (2018) use agent-based simulation to evaluate two stroke transport policies, i.e., nearest hospital and nearest hospital towards the stroke center, concerning where to transport potential stroke patients for diagnosis. Sarraj et al (2020) introduce two optimization models, which they deploy in four states of the USA, in order to assess the same policies that Al Fatah et al study. There are some recent studies on the optimal placement of an MSU in a geographical region, where the impact of placing an MSU for inhabitants of urban (Phan et al, 2019;Rhudy Jr. et al, 2018) or rural areas (Mathur et al, 2019) are investigated. Rhudy et al (2018) optimize emergency service delivery for stroke patients in the city of Memphis, USA, using geospatial analysis of the distribution of stroke cases.…”
Section: Related Workmentioning
confidence: 99%
“…Sarraj et al (2020) introduce two optimization models, which they deploy in four states of the USA, in order to assess the same policies that Al Fatah et al study. There are some recent studies on the optimal placement of an MSU in a geographical region, where the impact of placing an MSU for inhabitants of urban (Phan et al, 2019;Rhudy Jr. et al, 2018) or rural areas (Mathur et al, 2019) are investigated. Rhudy et al (2018) optimize emergency service delivery for stroke patients in the city of Memphis, USA, using geospatial analysis of the distribution of stroke cases. Phan et al (2019) employ the ggmap interface with the Google Maps API to identify the optimal placement of an MSU in Sydney, Australia.…”
Section: Related Workmentioning
confidence: 99%