Title of article :
The Best Prediction Model for Trauma Outcomes of the Current Korean Population: a Comparative Study of Three Injury Severity Scoring Systems
Author/Authors :
Jung, Kyoungwon Department of Surgery - Ajou University School of Medicine - Suwon, Korea , Lee, John Cook-Jong Department of Surgery - Ajou University School of Medicine - Suwon, Korea , Park, Rae Woong Department of Biomedical Informatics - Ajou University School of Medicine - Suwon, Korea , Yoon, Dukyong Department of Biomedical Informatics - Ajou University School of Medicine - Suwon, Korea , Jung, Sungjae Department of Biomedical Informatics - Ajou University School of Medicine - Suwon, Korea , Kim, Younghwan Department of Surgery - Ajou University School of Medicine - Suwon, Korea , Moon, Jonghwan Department of Surgery - Ajou University School of Medicine - Suwon, Korea , Huh, Yo Department of Surgery - Ajou University School of Medicine - Suwon, Korea , Kwon, Junsik Department of Surgery - Ajou University School of Medicine - Suwon, Korea
Pages :
8
From page :
221
To page :
228
Abstract :
Background: Injury severity scoring systems that quantify and predict trauma outcomes have not been established in Korea. This study was designed to determine the best system for use in the Korean trauma population. Methods: We collected and analyzed the data from trauma patients admitted to our institution from January 2010 to December 2014. Injury Severity Score (ISS), Revised Trauma Score (RTS), and Trauma and Injury Severity Score (TRISS) were calculated based on the data from the enrolled patients. Area under the receiver operating characteristic (ROC) curve (AUC) for the prediction ability of each scoring system was obtained, and a pairwise comparison of ROC curves was performed. Additionally, the cut-off values were estimated to predict mortality, and the corresponding accuracy, positive predictive value, and negative predictive value were obtained. Results: A total of 7,120 trauma patients (6,668 blunt and 452 penetrating injuries) were enrolled in this study. The AUCs of ISS, RTS, and TRISS were 0.866, 0.894, and 0.942, respectively, and the prediction ability of the TRISS was significantly better than the others (p < 0.001, respectively). The cut-off value of the TRISS was 0.9082, with a sensitivity of 81.9% and specificity of 92.0%; mortality was predicted with an accuracy of 91.2%; its positive predictive value was the highest at 46.8%. Conclusions: The results of our study were based on the data from one institution and suggest that the TRISS is the best prediction model of trauma outcomes in the current Korean population. Further study is needed with more data from multiple centers in Korea.
Keywords :
Korea , injury severity score , mortality , prediction , trauma centers , outcomes
Journal title :
Acute and Critical Care
Serial Year :
2016
Full Text URL :
Record number :
2621578
Link To Document :
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