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Methodology to reliably measure preventable trauma death rate
  1. Stacy A Drake1,
  2. Dwayne A Wolf2,
  3. Janet C Meininger1,
  4. Stanley G Cron3,
  5. Thomas Reynold4,
  6. Charles E Wade5,
  7. John B Holcomb5
  1. 1 Systems Department, The University of Texas Health Science Center, School of Nursing, Houston, Texas, USA
  2. 2 Pathology Department, Harris County Institute of Forensic Sciences, Houston, Texas, USA
  3. 3 Center for Research, The University of Texas Health Science Center at Houston School of Nursing, Houston, Texas, USA
  4. 4 Institute for Health Policy, The University of Texas Health Science Center at Houston School of Public Health, Houston, Texas, USA
  5. 5 Surgery Department, The University of Texas Health Science Center, McGovern School of Medicine, Houston, Texas, USA
  1. Correspondence to Dr Stacy A Drake, The University of Texas Health Science Center School of Nursing, 6901 Bertner Ave., #748, Houston, Texas 77054, USA; Stacy.A.Drake{at}uth.tmc.edu

Abstract

This article describes a methodology to establish a trauma preventable death rate (PDR) in a densely populated county in the USA. Harris County has >4 million residents, encompasses a geographic area of 1777 square miles and includes the City of Houston, Texas. Although attempts have been made to address a national PDR, these studies had significant methodological flaws. There is no national consensus among varying groups of clinicians for defining preventability or documenting methods by which preventability is determined. Furthermore, although trauma centers routinely evaluate deaths within their hospital for preventability, few centers compare across regions, within the prehospital arena and even fewer have evaluated trauma deaths at non-trauma centers. Comprehensive population-based data on all trauma deaths within a defined region would provide a framework for effective prevention and intervention efforts at the regional and national levels. The authors adapted a military method recently used in Southwest Asia to determine the potential preventability of civilian trauma deaths occurring across a large and diverse population. The project design will allow a data-driven approach to improve services across the entire spectrum of trauma care, from prevention through rehabilitation.

  • trauma
  • preventable death rate
  • methods
  • medicolegal autopsy
  • consensus panel

This is an Open Access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/

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Footnotes

  • Contributors SAD: c

    onception and design of the study, interpretation of the data, acquisition of data and drafting and revising manuscript.

    DAW: a

    cquisition of data, interpretation of data and revising the manuscript.

    JCM: r

    evising the manuscript.

    SGC and TR: a

    nalysis of data and revising the manuscript.

    CEW: c

    onception of the study and revising the manuscript.

    JBH: c

    onception of the study, interpretation of the data and revising the manuscript.

    All authors approved the version of the manuscript being submitted.

  • Competing interests None declared.

  • Ethics approval The University of Texas Health Science Center and Baylor University.

  • Provenance and peer review Not commissioned; internally peer reviewed.

  • Author note The authors acknowledge Meghan Rock, scientific editor, for contributing to the artwork of Figure 3. Additionally, the authors wish to acknowledge Caitlin Thetford, Morgan Brock, and Lauren Myers for data abstraction.