Coughlin S S, Trock B, Criqui M H, Pickle L W, Browner D, Tefft M C
Department of Medicine, Georgetown University School of Medicine, Washington, D.C.
J Clin Epidemiol. 1992 Jan;45(1):1-7. doi: 10.1016/0895-4356(92)90180-u.
A method is described for modeling the sensitivity, specificity, and positive and negative predictive values of a diagnostic test. To model sensitivity and specificity, the dependent variable (Y) is defined to be the dichotomous results of the screening test, and the presence or absence of disease, as defined by the "gold standard", is included as a binary explanatory variable (X1), along with variables used to define the subgroups of interest. The sensitivity of the screening test may then be estimated using logistic regression procedures. Modeled estimates of the specificity and predictive values of the screening test may be similarly derived. Using data from a population-based study of peripheral arterial disease, the authors demonstrated empirically that this method may be useful for obtaining smoothed estimates of sensitivity, specificity, and predictive values. As an extension of this method, an approach to the modeling of the relative sensitivity of two screening tests is described, using data from a study of screening procedures for colorectal disease as an example.
本文描述了一种用于对诊断试验的灵敏度、特异度以及阳性和阴性预测值进行建模的方法。为了对灵敏度和特异度进行建模,将因变量(Y)定义为筛查试验的二分结果,并且将由“金标准”定义的疾病存在或不存在作为二元解释变量(X1),同时纳入用于定义感兴趣亚组的变量。然后可以使用逻辑回归程序估计筛查试验的灵敏度。筛查试验特异度和预测值的建模估计也可以类似地得出。作者利用基于人群的外周动脉疾病研究数据,通过实证证明该方法可能有助于获得灵敏度、特异度和预测值的平滑估计。作为该方法的扩展,本文还描述了一种利用两项筛查试验相对灵敏度建模的方法,并以一项结直肠癌筛查程序研究的数据为例进行说明。