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30-Day In-hospital Trauma Mortality in Four Urban University Hospitals Using an Indian Trauma Registry

Abstract

Introduction

In India, half of the annual 200,000 road traffic deaths occur in hospitals, but the exact in-hospital trauma mortality rate remains unknown. A research consortium of universities, with a mandate to reduce trauma mortality, measured the baseline 30-day in-hospital mortality rate.

Methods

Between September 2013 and February 2015, trained data collectors collected on-admission demographic, physiological vital signs, and health service performance indicators (time of injury to admission, investigation, or intervention) on all patients with traumatic injuries admitted to four public university hospitals in three Indian megacities.

Results

Of the 11,202 hospitalized trauma patients, 21.4 % died within 30 days of hospitalization. The median age was 30 years for survivors and 37 years for non-survivors. The on-admission systolic blood pressure and Glasgow Coma Score was near-normal in survivors, but was significantly lower in non-survivors and associated with both early and late mortality (p = 0.001). In the absence of a trauma system, there were process-of-care delays from injury to reaching and being examined, investigated, or operated in the hospital.

Conclusion

Using a multi-institutional Indian registry, this study is the first to systematically document that the 30-day in-hospital trauma mortality was twice that found in similar registries from high-income countries. Physiological scoring of on-admission vitals was clinically useful to predict mortality. More research is needed to understand the causes of high mortality and time delays in the process of delivering trauma care in India, which has no prehospital or trauma system.

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Acknowledgments

The authors thank the TITCO trauma consortium for their participation, Prof. Max Petzold (KI) for statistical guidance, Siddarth David Daniels and Anita Gadgil for writing inputs, and Prof. T. Jayaraman, TISS for facilitating the project. Deepa K.V. calculated the ISS scores for all the patients in the database. The Swedish National Board of Health and Welfare and the Laederal foundation for emergency medicine funded this study.

Grant support

The Swedish National Board of Health and Welfare and the Laederal foundation for emergency medicine funded this study, for salary of data collectors at each site and PhD salary for Martin Gerdin.

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Correspondence to Nobhojit Roy.

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None of the authors have any conflict of interests to declare.

Ethical approval

The institutional ethics committee of all participating hospitals LTMGH (IEC/11/13 dated 26 Jul 2013), KEM (IEC(I)/out/222/14 dated 4 Mar 2014), SSKM (IEC/279 dated 21 Mar 2013), and Apex Delhi (IEC/NP-327/2013 RP-24/2013 dated 25 Sep 2013) individually approved the collation of the database and analysis.

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Roy, N., Gerdin, M., Ghosh, S. et al. 30-Day In-hospital Trauma Mortality in Four Urban University Hospitals Using an Indian Trauma Registry. World J Surg 40, 1299–1307 (2016). https://doi.org/10.1007/s00268-016-3452-y

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  • DOI: https://doi.org/10.1007/s00268-016-3452-y

Keywords

  • Glasgow Coma Scale
  • Trauma Care
  • Trauma Registry
  • Road Traffic Injury
  • Trauma Unit