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一种使用评分系统时评估结局概率不确定性的自举方法。

A bootstrap approach for assessing the uncertainty of outcome probabilities when using a scoring system.

机构信息

Department of Surgery and Bioengineering, University of Siena, Siena, Italy.

出版信息

BMC Med Inform Decis Mak. 2010 Aug 26;10:45. doi: 10.1186/1472-6947-10-45.

Abstract

BACKGROUND

Scoring systems are a very attractive family of clinical predictive models, because the patient score can be calculated without using any data processing system. Their weakness lies in the difficulty of associating a reliable prognostic probability with each score. In this study a bootstrap approach for estimating confidence intervals of outcome probabilities is described and applied to design and optimize the performance of a scoring system for morbidity in intensive care units after heart surgery.

METHODS

The bias-corrected and accelerated bootstrap method was used to estimate the 95% confidence intervals of outcome probabilities associated with a scoring system. These confidence intervals were calculated for each score and each step of the scoring-system design by means of one thousand bootstrapped samples. 1090 consecutive adult patients who underwent coronary artery bypass graft were assigned at random to two groups of equal size, so as to define random training and testing sets with equal percentage morbidities. A collection of 78 preoperative, intraoperative and postoperative variables were considered as likely morbidity predictors.

RESULTS

Several competing scoring systems were compared on the basis of discrimination, generalization and uncertainty associated with the prognostic probabilities. The results showed that confidence intervals corresponding to different scores often overlapped, making it convenient to unite and thus reduce the score classes. After uniting two adjacent classes, a model with six score groups not only gave a satisfactory trade-off between discrimination and generalization, but also enabled patients to be allocated to classes, most of which were characterized by well separated confidence intervals of prognostic probabilities.

CONCLUSIONS

Scoring systems are often designed solely on the basis of discrimination and generalization characteristics, to the detriment of prediction of a trustworthy outcome probability. The present example demonstrates that using a bootstrap method for the estimation of outcome-probability confidence intervals provides useful additional information about score-class statistics, guiding physicians towards the most convenient model for predicting morbidity outcomes in their clinical context.

摘要

背景

评分系统是一类非常有吸引力的临床预测模型,因为无需使用任何数据处理系统即可计算患者的评分。它们的弱点在于难以将可靠的预后概率与每个评分相关联。在这项研究中,描述了一种用于估计结局概率置信区间的自举方法,并将其应用于设计和优化心脏手术后重症监护病房发病率评分系统的性能。

方法

使用偏倚校正和加速自举方法来估计与评分系统相关的结局概率的 95%置信区间。通过一千个自举样本,为每个评分和评分系统设计的每个步骤计算这些置信区间。随机将 1090 例连续成年患者分为两组,每组大小相等,以便定义具有相等发病率百分比的随机训练和测试集。考虑了一组 78 个术前、术中及术后变量作为可能的发病率预测因子。

结果

根据预测概率的区分度、概括度和不确定性,比较了几种有竞争力的评分系统。结果表明,不同评分对应的置信区间经常重叠,因此方便了联合评分系统,从而减少了评分类别。将两个相邻的评分类别合并后,一个包含 6 个评分组的模型不仅在区分度和概括度之间达到了令人满意的折衷,而且还能够将患者分配到具有预后概率置信区间明显分离的类别。

结论

评分系统通常仅基于区分度和概括度特征进行设计,而牺牲了对可靠结局概率的预测。本示例表明,使用自举方法估算结局概率的置信区间,可以为评分类别统计数据提供有用的补充信息,有助于医生在其临床环境中选择最适合预测发病率结局的模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/195b/2940863/ad3cd331b70a/1472-6947-10-45-1.jpg

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