Literature DB >> 19091533

Classification tree modeling to identify severe and moderate vehicular injuries in young and middle-aged adults.

Linda J Scheetz1, Juan Zhang, John Kolassa.   

Abstract

OBJECTIVES: Motor vehicle crashes are a leading cause of mortality and morbidity worldwide. Even though trauma centers provide the gold standard of care for motor vehicle crash patients with life- or limb-threatening injuries, many whose lives might be saved by trauma center care are treated instead at non-trauma center hospitals. Triage algorithms, designed to identify patients with life- or limb-threatening injuries who should be transported to a trauma center, lack appropriate sensitivity to many of these injuries. The challenge to the trauma community is differentiating patients with life- or limb-threatening injuries from those with less severe injuries at the crash scene so that the patients can be transported to the most appropriate level of care. The purpose of this study was to use crash scene data available to emergency responders to classify adults with moderate and severe injuries. These classifiers might be useful to guide triage decision making. METHODS AND MATERIAL: Records of 74,626 adults, age 18-64 years, from the National Automotive Sampling System Crashworthiness Data Systems database were analyzed using classification and regression trees (CART) analysis. Both CART models (moderate injury and severe injury) included 13 predictor variables. The response variables were the targeted injury severity score cut points for moderate and severe injury. Two final classification trees were developed: one that classified occupants based on moderate injury and the other on severe injury. Misclassification costs were manipulated to achieve the best model fit for each tree.
RESULTS: The moderate injury classification tree had three splitters: police-estimated injury severity, restraint use, and number of persons injured. The severe injury classification tree had four splitters: police-estimated injury severity, manner of collision, number of persons injured in the crash, and age. Sensitivity and specificity of the classification trees were 93.70%, 77.53% (moderate) and 99.18%, 73.96% (severe), respectively.
CONCLUSIONS: CART analysis can be used to classify injury severity using crash scene information that is available to emergency responders. This procedure offers an opportunity to examine alternative methods of identifying injury severity that might assist emergency responders to differentiate more accurately persons who should receive trauma center care from those who can be treated safely at a non-trauma center hospital.

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Year:  2008        PMID: 19091533     DOI: 10.1016/j.artmed.2008.11.002

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  3 in total

1.  The role of chronic kidney disease as a predictor of outcome after revascularisation of the ulcerated diabetic foot.

Authors:  M Venermo; F Biancari; E Arvela; M Korhonen; M Söderström; K Halmesmäki; A Albäck; M Lepäntalo
Journal:  Diabetologia       Date:  2011-08-16       Impact factor: 10.122

2.  Identification of novel diagnostic serum biomarkers for Chagas' disease in asymptomatic subjects by mass spectrometric profiling.

Authors:  Momar Ndao; Terry W Spithill; Rebecca Caffrey; Hongshan Li; Vladimir N Podust; Regis Perichon; Cynthia Santamaria; Alberto Ache; Mark Duncan; Malcolm R Powell; Brian J Ward
Journal:  J Clin Microbiol       Date:  2010-01-13       Impact factor: 5.948

3.  Multi-objective semi-supervised clustering to identify health service patterns for injured patients.

Authors:  Hadi Akbarzadeh Khorshidi; Uwe Aickelin; Gholamreza Haffari; Behrooz Hassani-Mahmooei
Journal:  Health Inf Sci Syst       Date:  2019-08-29
  3 in total

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