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基于属性匹配的检验前概率评估。

Pretest probability assessment derived from attribute matching.

作者信息

Kline Jeffrey A, Johnson Charles L, Pollack Charles V, Diercks Deborah B, Hollander Judd E, Newgard Craig D, Garvey J Lee

机构信息

Department of Emergency Medicine, Carolinas Medical Center, Charlotte, NC, USA.

出版信息

BMC Med Inform Decis Mak. 2005 Aug 11;5:26. doi: 10.1186/1472-6947-5-26.

Abstract

BACKGROUND

Pretest probability (PTP) assessment plays a central role in diagnosis. This report compares a novel attribute-matching method to generate a PTP for acute coronary syndrome (ACS). We compare the new method with a validated logistic regression equation (LRE).

METHODS

Eight clinical variables (attributes) were chosen by classification and regression tree analysis of a prospectively collected reference database of 14,796 emergency department (ED) patients evaluated for possible ACS. For attribute matching, a computer program identifies patients within the database who have the exact profile defined by clinician input of the eight attributes. The novel method was compared with the LRE for ability to produce PTP estimation <2% in a validation set of 8,120 patients evaluated for possible ACS and did not have ST segment elevation on ECG. 1,061 patients were excluded prior to validation analysis because of ST-segment elevation (713), missing data (77) or being lost to follow-up (271).

RESULTS

In the validation set, attribute matching produced 267 unique PTP estimates [median PTP value 6%, 1st-3rd quartile 1-10%] compared with the LRE, which produced 96 unique PTP estimates [median 24%, 1st-3rd quartile 10-30%]. The areas under the receiver operating characteristic curves were 0.74 (95% CI 0.65 to 0.82) for the attribute matching curve and 0.68 (95% CI 0.62 to 0.77) for LRE. The attribute matching system categorized 1,670 (24%, 95% CI = 23-25%) patients as having a PTP < 2.0%; 28 developed ACS (1.7% 95% CI = 1.1-2.4%). The LRE categorized 244 (4%, 95% CI = 3-4%) with PTP < 2.0%; four developed ACS (1.6%, 95% CI = 0.4-4.1%).

CONCLUSION

Attribute matching estimated a very low PTP for ACS in a significantly larger proportion of ED patients compared with a validated LRE.

摘要

背景

检验前概率(PTP)评估在诊断中起着核心作用。本报告比较了一种用于生成急性冠状动脉综合征(ACS)PTP的新型属性匹配方法。我们将该新方法与经过验证的逻辑回归方程(LRE)进行比较。

方法

通过对前瞻性收集的14796例因可能的ACS而在急诊科(ED)接受评估的患者的参考数据库进行分类和回归树分析,选择了8个临床变量(属性)。对于属性匹配,一个计算机程序会在数据库中识别出具有临床医生输入的8个属性所定义的精确特征的患者。在一个对8120例因可能的ACS接受评估且心电图上无ST段抬高的患者的验证集中,将该新方法与LRE在生成PTP估计值<2%的能力方面进行比较。在验证分析之前,有1061例患者因ST段抬高(713例)、数据缺失(77例)或失访(271例)而被排除。

结果

在验证集中,属性匹配产生了267个独特的PTP估计值[PTP中位数为6%,第1-3四分位数为1-10%],而LRE产生了96个独特的PTP估计值[中位数为24%,第1-3四分位数为10-30%]。受试者工作特征曲线下面积,属性匹配曲线为0.74(95%可信区间0.65至0.82),LRE曲线为0.68(95%可信区间0.62至0.77)。属性匹配系统将1670例(24%,95%可信区间=23-25%)患者分类为PTP<2.0%;28例发生ACS(1.7%,95%可信区间=1.1-2.4%)。LRE将244例(4%,95%可信区间=3-4%)分类为PTP<2.0%;4例发生ACS(1.6%,95%可信区间=0.4-4.1%)。

结论

与经过验证的LRE相比,属性匹配在显著更大比例的ED患者中估计出ACS的PTP非常低。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3485/1201143/320ba9bff1d0/1472-6947-5-26-1.jpg

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