Comparison of the Injury Severity Score and ICD-9 diagnosis codes as predictors of outcome in injury: analysis of 44,032 patients.

INTRODUCTION Appropriate stratification of injury severity is a critical tool in the assessment of the treatment and the prevention of injury. Since its inception, the Injury Severity Score (ISS) has been the generally recognized "gold standard" for anatomic injury severity assessment. However, there is considerable time and expense involved in the collection of the information required to calculate an accurate ISS. In addition, the predictive power of the ISS has been shown to be limited. Previous work has demonstrated that the anatomic information about injury contained in the International Classification of Diseases Version 9 (ICD-9) can be a significant predictor of survival in trauma patients. The goal of this study was to utilize the San Diego County Trauma Registry (SDTR), one of the nation's leading trauma registries, to compare the predictive power of the ISS with the predictive power of the information contained in the injured patients' ICD-9 diagnoses codes. It was our primary hypothesis that survival risk ratios derived from patients' ICD-9 diagnoses codes would be equal or better predictors of survival than the Injury Severity Score. The implications of such a finding would have the potential for significant cost savings in the care of injured patients. METHODS Data for the test population were obtained from the SDTR, which contains data from 1985 through 1993 from five participating hospitals. Four data sources were utilized to estimate the expected survival rate/mortality rate for each ICD-9 code in the SDTR. These were (1) the SDTR patients themselves, (2) the North Carolina State Hospital Discharge Database, (3) the North Carolina Trauma Registry Database, and (4) the Agency for Health Care Policy Research's Health Care Utilization Project Database. Each of these data sources was separately utilized to develop a survival risk ratio (SRR) for each ICD-9 diagnoses code. The SRR was calculated by dividing the number of survivors for patients with each ICD-9 code by the total number of all patients with the particular ICD-9 diagnoses code. The four groups of SRRs derived from our four data sources were used as predictors of survival and the ability of the SRRs to predict survival was compared with the predictive power of the ISS using measures of accuracy, sensitivity, specificity, and receiver operator characteristic curves. RESULTS During the years 1985 through 1993, complete data were available for analysis on 44,032 patients. Of these, 2,848 patients died during their hospitalization (6%). Survival risk ratios were calculated for each of the diagnoses in the data base. Logistic regression, using the SAS System for statistical analysis, was used to assess the relative predictive power of the ISS and the survival risk ratios derived from the ICD-9 diagnoses codes from each of the four data bases. The analyses demonstrated that the regression models using the SRRs were generally as good or better than ISS as predictors of survival. The predictive power of the SRRs derived from the SDTR data, the North Carolina Trauma Registry data and the Health Care Utilization Report data were the best. In a subsequent analysis, the SRR values and the ISS were added to the patient's age and the revised Trauma Scores to create new predictive models in the mode of TRISS methodology. The analyses again indicated that the models using SRRs had as good or better predictive power than the model using the ISS. CONCLUSIONS The present study confirms previous work showing that survival risk ratios derived from injured patients' ICD-9 diagnoses codes are as good as or better than ISS as predictors of survival.

[1]  T. Osler,et al.  ICISS: an international classification of disease-9 based injury severity score. , 1996, The Journal of trauma.

[2]  S. Fakhry,et al.  A Statewide, Population‐Based Time‐Series Analysis of the Increasing Frequency of Nonoperative Management of Abdominal Solid Organ Injury , 1995, Annals of surgery.

[3]  D. Hoyt,et al.  Characteristics of repeat trauma patients, San Diego County. , 1995, American journal of public health.

[4]  D. Hoyt,et al.  Use of computed tomography of the head in the hypotensive blunt-trauma patient. , 1995, Annals of emergency medicine.

[5]  R. Rutledge,et al.  Injury severity and probability of survival assessment in trauma patients using a predictive hierarchical network model derived from ICD-9 codes. , 1995, The Journal of trauma.

[6]  D. Hoyt,et al.  The effect of cocaine and amphetamines on vital signs in trauma patients. , 1995, The Journal of emergency medicine.

[7]  D. Hoyt,et al.  Risk factors associated with pulmonary embolism despite routine prophylaxis: implications for improved protection. , 1994, The Journal of trauma.

[8]  S. Fakhry,et al.  Injury severity grading in trauma patients: a simplified technique based upon ICD-9 coding. , 1993, The Journal of trauma.

[9]  S. Fakhry,et al.  An Analysis of the Association of Trauma Centers with Per Capita Hospitalizations and Death Rates from Injury , 1993, Annals of surgery.

[10]  M. Rotondo,et al.  A new approach to probability of survival scoring for trauma quality assurance. , 1992, The Journal of trauma.

[11]  W. Messick,et al.  The association of advanced life support training and decreased per capita trauma death rates: an analysis of 12,417 trauma deaths. , 1992, The Journal of trauma.

[12]  F P Rivara,et al.  Effects of alcohol intoxication on the initial assessment of trauma patients. , 1992, Annals of emergency medicine.

[13]  T. Fabian,et al.  Correlation of abdominal trauma index and injury severity score with abdominal septic complications in penetrating and blunt trauma. , 1992, The Journal of trauma.

[14]  W. Copes,et al.  Should survivors with an injury severity score less than 10 be entered in a statewide trauma registry? , 1991, Journal of Trauma.

[15]  T. Rüedi,et al.  Five years' follow-up of severely injured ICU patients. , 1991, The Journal of trauma.

[16]  S. Fakhry,et al.  Acute Physiology and Chronic Health Evaluation (APACHE II) score and outcome in the surgical intensive care unit: An analysis of multiple intervention and outcome variables in 1,238 patients , 1991, Critical care medicine.

[17]  C. Cayten,et al.  Controlling for the severity of injuries in emergency medicine research. , 1990, The American journal of emergency medicine.

[18]  T Gennarelli,et al.  Progress in characterizing anatomic injury. , 1990, The Journal of trauma.

[19]  M. Sise,et al.  The effect of prehospital fluids on survival in trauma patients. , 1990, The Journal of trauma.

[20]  S. Streat,et al.  Injury scaling at autopsy: the comparison with premortem clinical data. , 1990, Accident; analysis and prevention.

[21]  T Gennarelli,et al.  A new characterization of injury severity. , 1990, The Journal of trauma.

[22]  I. Civil,et al.  The Abbreviated Injury Scale, 1985 revision: a condensed chart for clinical use. , 1988, The Journal of trauma.

[23]  H. Champion,et al.  The Injury Severity Score revisited. , 1988, The Journal of trauma.

[24]  G. A. Marshall,et al.  The Trauma Score as a triage tool in the prehospital setting. , 1986, JAMA.

[25]  P. Levy,et al.  Severity measurement in multiple trauma by use of ICDA conditions. , 1982, Statistics in medicine.

[26]  H. Champion,et al.  An anatomic index of injury severity. , 1980, The Journal of trauma.

[27]  W. Haddon,et al.  The injury severity score: a method for describing patients with multiple injuries and evaluating emergency care. , 1974, The Journal of trauma.