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一种用于识别心力衰竭低风险患者的预测规则。

A prediction rule to identify low-risk patients with heart failure.

作者信息

Auble Thomas E, Hsieh Margaret, Gardner William, Cooper Gregory F, Stone Roslyn A, McCausland Julie B, Yealy Donald M

机构信息

Department of Emergency Medicine, University of Pittsburgh, Pittsburgh, PA, USA.

出版信息

Acad Emerg Med. 2005 Jun;12(6):514-21. doi: 10.1197/j.aem.2004.11.026.

DOI:10.1197/j.aem.2004.11.026
PMID:15930402
Abstract

OBJECTIVES

To derive a prediction rule using data available in the emergency department (ED) to identify a group of patients hospitalized for the treatment of heart failure who are at low risk of death and serious complications.

METHODS

The authors analyzed data for all 33,533 patients with a primary hospital discharge diagnosis of heart failure in 1999 who were admitted from EDs in Pennsylvania. Candidate predictors were demographic and medical history variables and the most abnormal examination or diagnostic test values measured in the ED (vital signs only) or on the first day of hospitalization. The authors constructed classification trees to identify a subgroup of patients with an observed rate of death or serious medical complications before discharge < 2%; the tree that identified the subgroup with the lowest rate of this outcome and an inpatient mortality rate < 1% was chosen.

RESULTS

Within the entire cohort, 4.5% of patients died and 6.8% survived to hospital discharge after experiencing a serious medical complication. The prediction rule used 21 prognostic factors to classify 17.2% of patients as low risk; 19 (0.3%) died and 59 (1.0%) survived to hospital discharge after experiencing a serious medical complication.

CONCLUSIONS

This clinical prediction rule identified a group of patients hospitalized from the ED for the treatment of heart failure who were at low risk of adverse inpatient outcomes. Model performance needs to be examined in a cohort of patients with an ED diagnosis of heart failure and treated as outpatients or hospitalized.

摘要

目的

利用急诊科(ED)可得的数据推导一种预测规则,以识别一组因心力衰竭住院治疗且死亡和严重并发症风险较低的患者。

方法

作者分析了1999年宾夕法尼亚州从急诊科收治的所有33533例以心力衰竭为主要出院诊断患者的数据。候选预测因素包括人口统计学和病史变量,以及在急诊科(仅生命体征)或住院第一天测得的最异常检查或诊断测试值。作者构建分类树以识别出院前观察到的死亡或严重医疗并发症发生率<2%的患者亚组;选择识别该结局发生率最低且住院死亡率<1%的亚组的树。

结果

在整个队列中,4.5%的患者死亡,6.8%的患者在经历严重医疗并发症后存活至出院。该预测规则使用21个预后因素将17.2%的患者分类为低风险;19例(0.3%)死亡,59例(1.0%)在经历严重医疗并发症后存活至出院。

结论

该临床预测规则识别出一组从急诊科住院治疗心力衰竭且住院不良结局风险较低的患者。需要在急诊科诊断为心力衰竭并接受门诊治疗或住院治疗的患者队列中检验模型性能。

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