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Critical Care Volume 10 Issue 6 |
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ResearchHow emergency departments might alert for prehospital heat-related excess mortality?Yann-Erick Claessens1 , Pierre Taupin2 , Gérald Kierzek3 , Jean-Louis Pourriat3 , Michel Baud3 , Christine Ginsburg1 , Jean-Philippe Jais2 , Eric Jougla4 , Bruno Riou* 5 , Jean-François Dhainaut* 1 and Paul Landais* 2  1Paris Descartes University, Faculty of Medicine, Assistance Publique – Hôpitaux de Paris, Department of Emergency Medicine, Hôpital Cochin, 27 rue du Faubourg Saint-Jacques, F-75679 Paris Cedex 14, France 2Paris Descartes University, Faculty of Medicine, Assistance Publique – Hôpitaux de Paris, Department of Biostatistics, Hôpital Necker Enfants Malades, 149 rue de Sèvres, F-75007 Paris, France 3Paris Descartes University, Faculty of Medicine, Department of Emergency Medicine, Hôtel-Dieu, 1 place du Parvis Notre-Dame, F-75001 Paris, France 4Centre d'épidémiologie sur les causes médicales de décès, CepiDC Inserm, 78116 Le Vésinet, France 5Department of Emergency Medicine, CHU Pitié-Salpétrière, Assistance Publique Hôpitaux de Paris, Université Pierre et Marie Curie (Paris VI), boulevard de l'Hôpital, F-75013 Paris, France author email corresponding author email* Contributed equally
Critical Care 2006,
10:R156doi:10.1186/cc5092
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| Published: |
10 November 2006 |
Abstract
Introduction
A major issue raised by the public health consequences of a heat wave is the difficulty of detecting its direct consequences on patient outcome, particularly because of the delay in obtaining definitive mortality results. Since emergency department (ED) activity reflects the global increase of patients' health problems during this period, the profile of patients referred to EDs might be a basis to detect an excess mortality in the catchment area. Our objective was to develop a real-time surveillance model based on ED data to detect excessive heat-related mortality as early as possible.
Methods
A day-to-day composite indicator was built using simple and easily obtainable variables related to patients referred to the ED during the 2003 heat-wave period. The design involved a derivation and validation study based on a real-time surveillance system of two EDs at Cochin Hospital and Hôtel-Dieu Hospital, Paris, France. The participants were 99,976 adult patients registered from 1 May to 30 September during 2001, 2002 and 2003. Among these participants, 3,297, 3,580 and 3,851 patients were referred to the EDs from 3 August to 19 August for 2001, 2002 and 2003, respectively. Variables retained for the indicator were selected using the receiver operating characteristic curve methodology and polynomial regression.
Results
The indicator was composed of only three variables: the percentage of patients older than 70 years, the percentage of patients with body temperature above 39°C, and the percentage of patients admitted to or who died in the ED. The curve of the indicator with time appropriately fitted the overall mortality that occurred in the region of interest.
Conclusion
A composite and simple index based on real-time surveillance was developed according to the profile of patients who visited the ED. It appeared suitable for determining the overall mortality in the corresponding region submitted to the 2003 heat wave. This index should help early warning of excessive mortality and monitoring the efficacy of public health interventions. |