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通过重新构建年龄类别和增加合并症来改进创伤和损伤严重度评分(TRISS)方法。

Improving the TRISS methodology by restructuring age categories and adding comorbidities.

作者信息

Bergeron Eric, Rossignol Michel, Osler Turner, Clas David, Lavoie Andre

机构信息

Department of Social and Preventive Medicine, University of Montreal, Montreal, Quebec, Canada.

出版信息

J Trauma. 2004 Apr;56(4):760-7. doi: 10.1097/01.ta.0000119199.52226.c0.

Abstract

BACKGROUND

The Trauma and Injury Severity Score (TRISS) methodology was developed to predict the probability of survival after trauma. Despite many criticisms, this methodology remains in common use. The purpose of this study was to show that improving the stratification for age and adding an adjustment for comorbidity significantly increases the predictive accuracy of the TRISS model.

METHODS

The trauma registry and the hospital administrative database of a regional trauma center were used to identify all blunt trauma patients older than 14 years of age admitted with International Classification of Diseases, Ninth Revision codes 800 to 959 from April 1993 to March 2001. Each individual medical record was then reviewed to ascertain the Revised Trauma Score, the Injury Severity Score, the age of the patients, and the presence of eight comorbidities. The outcome variable was the status at discharge: alive or dead. The study population was divided into two subsamples of equal size using a random sampling method. Logistic regression was used to develop models on the first subsample; a second subsample was used for cross-validation of the models. The original TRISS and three TRISS-derived models were created using different categorizations of Revised Trauma Score, Injury Severity Score, and age. A new model labeled TRISSCOM was created that included an additional term for the presence of comorbidity.

RESULTS

There were 5,672 blunt trauma patients, 2,836 in each group. For original TRISS, the Hosmer-Lemeshow statistic (HL) was 179.1 and the area under the receiver operating characteristic (AUROC) curve was 0.873. Sensitivity and specificity were 99.0% and 27.8%, respectively. For the best modified TRISS model, the HL statistic was 20.35, the AUROC curve was 0.902, the sensitivity was 99.0%, and the specificity was 27.8%. For TRISSCOM, the HL statistic was 14.95 and the AUROC curve was 0.918. Sensitivity and specificity were 99.0% and 29.7%, respectively. The difference between the two models almost reached statistical significance (p = 0.086). When TRISSCOM was applied to the cross-validation group, the HL statistic was 10.48 and the AUROC curve was 0.914. The sensitivity was 98.6% and the specificity was 34.9%.

CONCLUSION

TRISSCOM can predict survival more accurately than models that do not include comorbidity. A better categorization of age and the inclusion of comorbid conditions in the logistic model significantly improves the predictive performance of TRISS.

摘要

背景

创伤和损伤严重程度评分(TRISS)方法旨在预测创伤后的生存概率。尽管受到诸多批评,但该方法仍被广泛使用。本研究的目的是表明,改进年龄分层并增加合并症调整可显著提高TRISS模型的预测准确性。

方法

利用某地区创伤中心的创伤登记册和医院管理数据库,识别出1993年4月至2001年3月期间因国际疾病分类第九版编码800至959入院的所有14岁以上钝性创伤患者。随后对每份病历进行审查,以确定修订创伤评分、损伤严重程度评分、患者年龄以及八种合并症的存在情况。结局变量为出院状态:存活或死亡。采用随机抽样方法将研究人群分为两个规模相等的子样本。使用逻辑回归在第一个子样本上建立模型;第二个子样本用于模型的交叉验证。使用修订创伤评分、损伤严重程度评分和年龄的不同分类创建了原始TRISS和三个源自TRISS的模型。创建了一个名为TRISSCOM的新模型,该模型纳入了合并症存在情况的附加项。

结果

共有5672例钝性创伤患者,每组2836例。对于原始TRISS,Hosmer-Lemeshow统计量(HL)为179.1,受试者工作特征(AUROC)曲线下面积为0.873。敏感性和特异性分别为99.0%和27.8%。对于最佳改良TRISS模型,HL统计量为20.35,AUROC曲线为0.902,敏感性为99.0%,特异性为27.8%。对于TRISSCOM,HL统计量为14.95,AUROC曲线为0.918。敏感性和特异性分别为99.0%和29.7%。两个模型之间的差异几乎达到统计学显著性(p = 0.086)。当将TRISSCOM应用于交叉验证组时,HL统计量为10.48,AUROC曲线为0.914。敏感性为98.6%,特异性为34.9%。

结论

与不包括合并症的模型相比,TRISSCOM能更准确地预测生存情况。年龄的更好分类以及在逻辑模型中纳入合并症情况可显著提高TRISS的预测性能。

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