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损伤严重度评分(ISS)与创伤和损伤严重度评分(TRISS)的终结:ICISS,一种基于国际疾病分类第九版的预测工具,在预测创伤患者的生存率、住院费用和住院时间方面优于ISS和TRISS。

The end of the Injury Severity Score (ISS) and the Trauma and Injury Severity Score (TRISS): ICISS, an International Classification of Diseases, ninth revision-based prediction tool, outperforms both ISS and TRISS as predictors of trauma patient survival, hospital charges, and hospital length of stay.

作者信息

Rutledge R, Osler T, Emery S, Kromhout-Schiro S

机构信息

Department of Surgery, University of North Carolina at Chapel Hill, 27599-7210, USA.

出版信息

J Trauma. 1998 Jan;44(1):41-9. doi: 10.1097/00005373-199801000-00003.

Abstract

INTRODUCTION

Since their inception, the Injury Severity Score (ISS) and the Trauma and Injury Severity Score (TRISS) have been suggested as measures of the quality of trauma care. In concept, they are designed to accurately assess injury severity and predict expected outcomes. ICISS, an injury severity methodology based on International Classification of Diseases, Ninth Revision, codes, has been demonstrated to be superior to ISS and TRISS. The purpose of the present study was to compare the ability of TRISS to ICISS as predictors of survival and other outcomes of injury (hospital length of stay and hospital charges). It was our hypothesis that ICISS would outperform ISS and TRISS in each of these outcome predictions.

METHODS

"Training" data for creation of ICISS predictions were obtained from a state hospital discharge data base. "Test" data were obtained from a state trauma registry. ISS, TRISS, and ICISS were compared as predictors of patient survival. They were also compared as indicators of resource utilization by assessing their ability to predict patient hospital length of stay and hospital charges. Finally, a neural network was trained on the ICISS values and applied to the test data set in an effort to further improve predictive power. The techniques were compared by comparing each patient's outcome as predicted by the model to the actual outcome.

RESULTS

Seven thousand seven hundred five patients had complete data available for analysis. The ICISS was far more likely than ISS or TRISS to accurately predict every measure of outcome of injured patients tested, and the neural network further improved predictive power.

CONCLUSION

In addition to predicting mortality, quality tools that can accurately predict resource utilization are necessary for effective trauma center quality-improvement programs. ICISS-derived predictions of survival, hospital charges, and hospital length of stay consistently outperformed those of ISS and TRISS. The neural network-augmented ICISS was even better. This and previous studies demonstrate that TRISS is a limited technique in predicting survival resource utilization. Because of the limitations of TRISS, it should be superseded by ICISS.

摘要

引言

自创伤严重度评分(ISS)和创伤与损伤严重度评分(TRISS)问世以来,它们一直被视为衡量创伤护理质量的指标。从概念上讲,它们旨在准确评估损伤严重程度并预测预期结果。基于国际疾病分类第九版编码的损伤严重度方法——国际疾病分类损伤严重度评分(ICISS),已被证明优于ISS和TRISS。本研究的目的是比较TRISS和ICISS作为预测生存及其他损伤结局(住院时间和住院费用)指标的能力。我们的假设是,在这些结局预测方面,ICISS将优于ISS和TRISS。

方法

用于创建ICISS预测的“训练”数据来自一个州医院出院数据库。“测试”数据来自一个州创伤登记处。比较ISS、TRISS和ICISS作为患者生存预测指标的情况。还通过评估它们预测患者住院时间和住院费用的能力,将它们作为资源利用指标进行比较。最后,基于ICISS值训练一个神经网络,并将其应用于测试数据集,以进一步提高预测能力。通过将模型预测的每位患者结局与实际结局进行比较来比较这些技术。

结果

7705例患者有可供分析的完整数据。ICISS比ISS或TRISS更有可能准确预测所测试的受伤患者的各项结局指标,并且神经网络进一步提高了预测能力。

结论

除了预测死亡率外,有效实施创伤中心质量改进计划还需要能够准确预测资源利用的质量工具。源自ICISS的生存、住院费用和住院时间预测始终优于ISS和TRISS。经神经网络增强的ICISS表现更佳。本研究及之前的研究表明,TRISS在预测生存资源利用方面是一种有限的技术。由于TRISS存在局限性,它应由ICISS取代。

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