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严重脓毒症患者死亡的决定因素。

Determinants of mortality in patients with severe sepsis.

作者信息

Johnston Joseph A

机构信息

Lilly Research Laboratories, Indianapolis, IN 46285, USA.

出版信息

Med Decis Making. 2005 Jul-Aug;25(4):374-86. doi: 10.1177/0272989X05278933.

Abstract

OBJECTIVE

To evaluate the relative importance of predictors of in-hospital mortality in severe sepsis and compare the performance of generic and disease-specific mortality prediction models.

METHODS

The author used data from all 826 patients receiving placebo in the Recombinant Human Activated Protein C Worldwide Evaluation in Severe Sepsis (PROWESS) trial. After a variety of clinical factors were examined for their univariate association with in-hospital mortality, logistic regression models incorporating successively more inclusive sets of predictors were created and compared. For each model, discrimination was assessed and the relative contribution of each model component to overall model explanatory power evaluated. The accuracy of using the Acute Physiology and Chronic Health Evaluation (APACHE) II score in isolation as an indicator of "high risk" was assessed by comparing model predictions from APACHE-only models to those of disease-specific models.

RESULTS

Age, a number of laboratory values, and APACHE II score were significant univariate predictors of mortality. In multivariable models, age and laboratory values contributed the most information to model predictions; the contribution of the APACHE II score, in particular, the acute physiology component, was modest at best. A risk model including only the total APACHE II score had a c-statistic of 0.686, whereas the best performing disease-specific model had a c-statistic of 0.787. Use of the APACHE II score alone to establish high risk versus low risk resulted in misclassification of 26% of patients.

CONCLUSIONS

Individual severe sepsis patient outcomes depend on an array of clinical predictors. Models incorporating sepsis disease-specific risk factors may predict mortality more accurately than generic ICU severity measures.

摘要

目的

评估严重脓毒症患者院内死亡预测因素的相对重要性,并比较通用型和疾病特异性死亡预测模型的性能。

方法

作者使用了严重脓毒症重组人活化蛋白C全球评估(PROWESS)试验中所有接受安慰剂治疗的826例患者的数据。在检查了各种临床因素与院内死亡率的单变量关联后,创建并比较了依次纳入更多预测因素集的逻辑回归模型。对于每个模型,评估其区分度,并评估每个模型组件对整体模型解释力的相对贡献。通过比较仅使用急性生理与慢性健康状况评估(APACHE)II评分作为“高风险”指标的模型预测与疾病特异性模型的预测,评估单独使用APACHE II评分的准确性。

结果

年龄、多项实验室检查值和APACHE II评分是死亡率的显著单变量预测因素。在多变量模型中,年龄和实验室检查值对模型预测贡献的信息最多;APACHE II评分,尤其是急性生理部分的贡献充其量只是适度的。仅包含APACHE II总分的风险模型的c统计量为0.686,而表现最佳的疾病特异性模型的c统计量为0.787。单独使用APACHE II评分来确定高风险与低风险导致26%的患者分类错误。

结论

个体严重脓毒症患者的预后取决于一系列临床预测因素。纳入脓毒症疾病特异性风险因素的模型可能比通用的重症监护病房严重程度指标更准确地预测死亡率。

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