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利用就诊时的数据通过统计模型识别病情进展中的冠状动脉综合征患者。

Identification of patients with evolving coronary syndromes by using statistical models with data from the time of presentation.

作者信息

Kennedy R L, Harrison R F

机构信息

Department of Medicine, James Cook University, Queensland, Australia.

出版信息

Heart. 2006 Feb;92(2):183-9. doi: 10.1136/hrt.2004.055293. Epub 2005 Jun 6.

Abstract

OBJECTIVE

To derive statistical models for the diagnosis of acute coronary syndromes by using clinical and ECG information at presentation and to assess performance, portability, and calibration of these models, as well as how they may be used with cardiac marker proteins.

DESIGN AND METHODS

Data from 3462 patients in four UK teaching hospitals were used. Inputs for 8, 14, 25, and 43 factor logistic regression models were selected by using log10 likelihood ratios (log10 LRs). Performance was analysed by receiver operating characteristic curves.

RESULTS

A 25 factor model derived from 1253 patients from one centre was selected for further study. On training data, 98.2% of ST elevation myocardial infarctions (STEMIs) and 96.2% of non-ST elevation myocardial infarctions (non-STEMIs) were correctly classified, whereas only 2.1% of non-cardiac cases were incorrectly classified. On data from three other centres, 97.3% of STEMIs and 91.9% of non-STEMIs were correctly classified. Differences in log10 LRs for individual inputs from different centres accounted for the decline in performance when models were applied to unseen data. Classification was improved when output was combined with either clinical opinion or marker proteins.

CONCLUSIONS

Logistic regression models based on data available at presentation can classify patients with chest pain with a high degree of accuracy, particularly when combined with clinical opinion or marker proteins.

摘要

目的

利用就诊时的临床和心电图信息推导急性冠状动脉综合征的诊断统计模型,并评估这些模型的性能、便携性和校准情况,以及它们如何与心脏标志物蛋白一起使用。

设计与方法

使用了来自英国四家教学医院的3462例患者的数据。通过使用对数10似然比(log10 LRs)选择8、14、25和43因素逻辑回归模型的输入变量。通过受试者工作特征曲线分析性能。

结果

从一个中心的1253例患者中推导的25因素模型被选作进一步研究。在训练数据上,98.2%的ST段抬高型心肌梗死(STEMI)和96.2%的非ST段抬高型心肌梗死(非STEMI)被正确分类,而只有2.1%的非心脏病例被错误分类。在其他三个中心的数据上,97.3%的STEMI和91.9%的非STEMI被正确分类。当模型应用于未见过的数据时,不同中心个体输入的log10 LRs差异导致了性能下降。当输出结果与临床意见或标志物蛋白相结合时,分类得到改善。

结论

基于就诊时可用数据的逻辑回归模型可以高度准确地对胸痛患者进行分类,特别是当与临床意见或标志物蛋白相结合时。

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