TY - JOUR
T1 - Comparison of prediction models for use of medical resources at urban auto-racing events
AU - Nable, Jose V.
AU - Margolis, Asa M.
AU - Lawner, Benjamin J.
AU - Hirshon, Jon Mark
AU - Perricone, Alexander J.
AU - Galvagno, Samuel M.
AU - Lee, Debra
AU - Millin, Michael G.
AU - Bissell, Richard A.
AU - Alcorta, Richard L.
N1 - Publisher Copyright:
© World Association for Disaster and Emergency Medicine 2014.
PY - 2014/9/26
Y1 - 2014/9/26
N2 - Introduction Predicting the number of patient encounters and transports during mass gatherings can be challenging. The nature of these events necessitates that proper resources are available to meet the needs that arise. Several prediction models to assist event planners in forecasting medical utilization have been proposed in the literature. Hypothesis/Problem The objective of this study was to determine the accuracy of the Arbon and Hartman models in predicting the number of patient encounters and transportations from the Baltimore Grand Prix (BGP), held in 2011 and 2012. It was hypothesized that the Arbon method, which utilizes regression model-derived equations to estimate, would be more accurate than the Hartman model, which categorizes events into only three discreet severity types. Methods This retrospective analysis of the BGP utilized data collected from an electronic patient tracker system. The actual number of patients evaluated and transported at the BGP was tabulated and compared to the numbers predicted by the two studied models. Several environmental features including weather, crowd attendance, and presence of alcohol were used in the Arbon and Hartman models. Results Approximately 130,000 spectators attended the first event, and approximately 131,000 attended the second. The number of patient encounters per day ranged from 19 to 57 in 2011, and the number of transports from the scene ranged from two to nine. In 2012, the number of patients ranged from 19 to 44 per day, and the number of transports to emergency departments ranged from four to nine. With the exception of one day in 2011, the Arbon model overpredicted the number of encounters. For both events, the Hartman model overpredicted the number of patient encounters. In regard to hospital transports, the Arbon model underpredicted the actual numbers whereas the Hartman model both overpredicted and underpredicted the number of transports from both events, varying by day. Conclusions These findings call attention to the need for the development of a versatile and accurate model that can more accurately predict the number of patient encounters and transports associated with mass-gathering events so that medical needs can be anticipated and sufficient resources can be provided.
AB - Introduction Predicting the number of patient encounters and transports during mass gatherings can be challenging. The nature of these events necessitates that proper resources are available to meet the needs that arise. Several prediction models to assist event planners in forecasting medical utilization have been proposed in the literature. Hypothesis/Problem The objective of this study was to determine the accuracy of the Arbon and Hartman models in predicting the number of patient encounters and transportations from the Baltimore Grand Prix (BGP), held in 2011 and 2012. It was hypothesized that the Arbon method, which utilizes regression model-derived equations to estimate, would be more accurate than the Hartman model, which categorizes events into only three discreet severity types. Methods This retrospective analysis of the BGP utilized data collected from an electronic patient tracker system. The actual number of patients evaluated and transported at the BGP was tabulated and compared to the numbers predicted by the two studied models. Several environmental features including weather, crowd attendance, and presence of alcohol were used in the Arbon and Hartman models. Results Approximately 130,000 spectators attended the first event, and approximately 131,000 attended the second. The number of patient encounters per day ranged from 19 to 57 in 2011, and the number of transports from the scene ranged from two to nine. In 2012, the number of patients ranged from 19 to 44 per day, and the number of transports to emergency departments ranged from four to nine. With the exception of one day in 2011, the Arbon model overpredicted the number of encounters. For both events, the Hartman model overpredicted the number of patient encounters. In regard to hospital transports, the Arbon model underpredicted the actual numbers whereas the Hartman model both overpredicted and underpredicted the number of transports from both events, varying by day. Conclusions These findings call attention to the need for the development of a versatile and accurate model that can more accurately predict the number of patient encounters and transports associated with mass-gathering events so that medical needs can be anticipated and sufficient resources can be provided.
KW - Emergency Medical Services
KW - auto-racing
KW - disaster planning
KW - mass-gathering events
UR - http://www.scopus.com/inward/record.url?scp=84907907808&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=84907907808&partnerID=8YFLogxK
U2 - 10.1017/S1049023X14001046
DO - 10.1017/S1049023X14001046
M3 - Article
C2 - 25256003
AN - SCOPUS:84907907808
SN - 1049-023X
VL - 29
SP - 608
EP - 613
JO - Prehospital and disaster medicine
JF - Prehospital and disaster medicine
IS - 6
ER -