Technical Papers
Jul 3, 2018

Saving Lives through Faster Emergency Unit Response Times: Role of Accessibility and Environmental Factors

Publication: Journal of Transportation Engineering, Part A: Systems
Volume 144, Issue 9

Abstract

Road crash fatalities and debilitating injuries are preventable, both before and after the crash occurrence. The provision of medical care in cases of road crashes is among the most defining elements in trauma handling, with the care provided within the first hour (a period frequently termed as the golden hour) significantly decreasing mortality. As a result, the reduction in response times often represents one of the top priorities, especially for large-scale urban conglomerations. In this research, response times in cases of road crash emergencies in urban networks were investigated, particularly correlating important features that affect them, such as location accessibility, type of emergency or crash, and environmental conditions (in this case weather). Besides the response times, all other data came from opportunistic data sources, available for any region in the world. The methodological framework leverages advances from the field of spatial econometric modeling, which explicitly take spatial relationships into consideration. Incorporating the spatial dimension, in turn, may capture location-specific relationships, weather effects, or other significant elements and provide detailed results on response times for alternative cases of emergency. The application was performed over a suitable metropolis case, namely, the urban area of Riyadh, Saudi Arabia, while the results offer valuable insight that can be exploited for a meta-analysis aiming at improving the system’s performance. Results suggest that besides accident severity and distance from the central business district (CBD) and points of interest, visibility and wind play a role in modeling emergency crew response times for the case of Riyadh.

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Go to Journal of Transportation Engineering, Part A: Systems
Journal of Transportation Engineering, Part A: Systems
Volume 144Issue 9September 2018

History

Received: Jul 23, 2016
Accepted: Mar 9, 2018
Published online: Jul 3, 2018
Published in print: Sep 1, 2018
Discussion open until: Dec 3, 2018

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Authors

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Loukas Dimitriou [email protected]
Head, Laboratory for Transport Engineering, Dept. of Civil and Environmental Engineering, Univ. of Cyprus, 5 Kallipoleos St., P.O. Box 20537, 1678 Nicosia, Cyprus (corresponding author). Email: [email protected]
Dimitrios Efthymiou [email protected]
Postdoctoral Research Associate, Chair of Transportation Systems Engineering, Dept. of Civil, Geo and Environmental Engineering, Technical Univ. of Munich, Arcisstrasse 21, 80333 München, Germany. Email: [email protected]
Constantinos Antoniou [email protected]
Professor, Chair of Transportation Systems Engineering, Dept. of Civil, Geo and Environmental Engineering, Technical Univ. of Munich, Arcisstrasse 21, D-80333 Munich, Germany. Email: [email protected]

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