Trauma models to identify major trauma and mortality in the prehospital setting

Author:

Sewalt C A1ORCID,Venema E12,Wiegers E J A1,Lecky F E34,Schuit S C E56,den Hartog D7,Steyerberg E W18,Lingsma H F1

Affiliation:

1. Department of Public Health, Erasmus MC University Medical Centre, Rotterdam, the Netherlands

2. Department of Neurology, Erasmus MC University Medical Centre, Rotterdam, the Netherlands

3. School of Health and Related Research, Sheffield University, Salford Royal NHS Foundation Trust, Salford, UK

4. Trauma Audit and Research Network, University of Manchester, Salford, UK

5. Department of Emergency Medicine, Erasmus MC University Medical Centre, Rotterdam, the Netherlands

6. Department of Internal Medicine, Erasmus MC University Medical Centre, Rotterdam, the Netherlands

7. Trauma Research Unit, Department of Surgery, Erasmus MC University Medical Centre, Rotterdam, the Netherlands

8. Department of Biomedical Data Sciences, Leiden University Medical Centre, Leiden, the Netherlands

Abstract

Abstract Background Patients with major trauma might benefit from treatment in a trauma centre, but early identification of major trauma (Injury Severity Score (ISS) over 15) remains difficult. The aim of this study was to undertake an external validation of existing prognostic models for injured patients to assess their ability to predict mortality and major trauma in the prehospital setting. Methods Prognostic models were identified through a systematic literature search up to October 2017. Injured patients transported by Emergency Medical Services to an English hospital from the Trauma Audit and Research Network between 2013 and 2016 were included. Outcome measures were major trauma (ISS over 15) and in-hospital mortality. The performance of the models was assessed in terms of discrimination (concordance index, C-statistic) and net benefit to assess the clinical usefulness. Results A total of 154 476 patients were included to validate six previously proposed prediction models. Discriminative ability ranged from a C-statistic value of 0·602 (95 per cent c.i. 0·596 to 0·608) for the Mechanism, Glasgow Coma Scale, Age and Arterial Pressure model to 0·793 (0·789 to 0·797) for the modified Rapid Emergency Medicine Score (mREMS) in predicting in-hospital mortality (11 882 patients). Major trauma was identified in 52 818 patients, with discrimination from a C-statistic value of 0·589 (0·586 to 0·592) for mREMS to 0·735 (0·733 to 0·737) for the Kampala Trauma Score in predicting major trauma. None of the prediction models met acceptable undertriage and overtriage rates. Conclusion Currently available prehospital trauma models perform reasonably in predicting in-hospital mortality, but are inadequate in identifying patients with major trauma. Future research should focus on which patients would benefit from treatment in a major trauma centre.

Publisher

Oxford University Press (OUP)

Subject

Surgery

Reference29 articles.

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