Literature DB >> 14566109

The worst injury predicts mortality outcome the best: rethinking the role of multiple injuries in trauma outcome scoring.

Patrick D Kilgo1, Turner M Osler, Wayne Meredith.   

Abstract

BACKGROUND: The prediction of outcome after injury must incorporate measures of injury severity, but there is no consensus on how many injuries should be used in calculating these measures. Initially, the single worst injury was used to predict outcome, but the introduction of the Injury Severity Score allowed up to three injuries to contribute to outcome prediction. Subsequently, other outcome prediction approaches used many (New Injury Severity Score [NISS]) or all (ICISS and Trauma Registry Abbreviated Injury Scale Score [TRAIS], which use International Classification of Diseases, Ninth Revision [ICD-9] and Abbreviated Injury Scale [AIS] survival risk ratios [SRRs], respectively) of a patient's injuries. The ability of only the most severe injury in predicting mortality has never been studied. Our objective was to determine the ability of a patient's worst injury to predict mortality.
METHODS: A 10-fold cross-validation design was used to compute six scores for each of 160,208 patients from a large trauma database (the National Trauma Data Bank [NTDB]). The scores were ICISS, TRAIS, ICISS1 (only a patient's worst ICD-9 SRR), TRAIS1 (only a patient's worst AIS SRR), NISS (sum of squares of worst three AIS severity measures), and MAXAIS (worst AIS severity measure). Discrimination was assessed using the area under the receiver operating characteristic curve. Logistic regression R2 gauged the proportion of variance each score explained. The Akaike information criterion, a deviance statistic (lower is better), assessed model fit.
RESULTS: The receiver operating characteristic curve, R2, and Akaike information criterion statistics (NC_ICISS and NC_ICDSRR1 represents scores derived from the original North Carolina Hospital Discharge Database SRRs) are summarized in tabular form in the Results section.
CONCLUSION: Regardless of scoring type (ICD/AIS SRRs or AIS severity), a patient's worst injury discriminates survival better, fits better, and explains more variance than currently used multiple injury scores.

Entities:  

Mesh:

Year:  2003        PMID: 14566109     DOI: 10.1097/01.TA.0000085721.47738.BD

Source DB:  PubMed          Journal:  J Trauma        ISSN: 0022-5282


  23 in total

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2.  Consensus or data-derived anatomical severity scoring?

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Journal:  Annu Proc Assoc Adv Automot Med       Date:  2006

3.  A New Method to Classify Injury Severity by Diagnosis: Validation Using Workers' Compensation and Trauma Registry Data.

Authors:  Jeanne M Sears; Stephen M Bowman; Mary Rotert; Sheilah Hogg-Johnson
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4.  Mortality-based Quantification of Injury Severity for Frequently Occurring Motor Vehicle Crash Injuries.

Authors:  Ashley A Weaver; Ryan T Barnard; Patrick D Kilgo; R Shayn Martin; Joel D Stitzel
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5.  Industrial Injury Hospitalizations Billed to Payers Other Than Workers' Compensation: Characteristics and Trends by State.

Authors:  Jeanne M Sears; Stephen M Bowman; Laura Blanar; Sheilah Hogg-Johnson
Journal:  Health Serv Res       Date:  2016-05-03       Impact factor: 3.402

6.  Association of initial CT findings with quality-of-life outcomes for traumatic brain injury in children.

Authors:  Jonathan O Swanson; Monica S Vavilala; Jin Wang; Sumit Pruthi; James Fink; Kenneth M Jaffe; Dennis Durbin; Thomas Koepsell; Nancy Temkin; Frederick P Rivara
Journal:  Pediatr Radiol       Date:  2012-03-21

7.  Injury hospitalization as a marker for emergency medical services use in elderly patients.

Authors:  Ross J Fleischman; K John McConnell; Annette L Adams; Jerris R Hedges; Craig D Newgard
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8.  Temporal trends and differences in mortality at trauma centres across Ontario from 2005 to 2011: a retrospective cohort study.

Authors:  David Gomez; Aziz S Alali; Barbara Haas; Wei Xiong; Homer Tien; Avery B Nathens
Journal:  CMAJ Open       Date:  2014-07-22

9.  Admission blood glucose is an independent predictive factor for hospital mortality in polytraumatised patients.

Authors:  Janett Kreutziger; Volker Wenzel; Andrea Kurz; Mihai Adrian Constantinescu
Journal:  Intensive Care Med       Date:  2009-02-24       Impact factor: 17.440

10.  Evaluating the validity of multiple imputation for missing physiological data in the national trauma data bank.

Authors:  Lynne Moore; James A Hanley; André Lavoie; Alexis Turgeon
Journal:  J Emerg Trauma Shock       Date:  2009-05
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