Mezzetti M, Ferraroni M, Decarli A, La Vecchia C, Benichou J
Istituto di Statistica Medica e Biometria, Università degli Studi di Milano, Italy.
Comput Biomed Res. 1996 Feb;29(1):63-75. doi: 10.1006/cbmr.1996.0006.
The increasing interest in obtaining model-based estimates of attributable risk (AR) and corresponding confidence intervals, in particular when more than one risk factor and/or several confounding factors are jointly considered, led us to develop a program based on the procedure described by Benichou and Gail for case-control data. This program is structured as an SAS-macro. It is suited to analysis of the relationship between risk factors and disease in case-control studies with simple random sampling of controls, in terms of relative risks and ARs, by means of unconditional logistic regression analysis. The variance of the AR is obtained by the delta method and is based on three components, namely, (i) the variance-covariance matrix of the vector of the estimated probabilities of belonging to joint levels of the exposure and confounding factors conditional on being a case, (ii) the variance-covariance matrix of the odds ratio parameter estimates from the logistic model, and (iii) the covariances between these probability and parameter estimates. Only a limited number of commands is requested from the user (i.e., the name of the work file and the names of the variables considered). The estimated relative risks for all the factors included in the model, the attributable risk for the exposure factor under consideration, and the corresponding 95% confidence intervals are given as outputs by the macro. Computational problems, if any, may arise for large numbers of covariates because of the resulting large size of vectors and matrices. The macro was tested for reliability and consistency on published data sets of case-control studies.
人们越来越有兴趣获得基于模型的归因风险(AR)估计值及其相应的置信区间,特别是当同时考虑多个风险因素和/或几个混杂因素时,这促使我们基于贝尼乔和盖尔描述的病例对照数据程序开发了一个程序。该程序被构建为一个SAS宏。它适用于在具有简单随机抽样对照的病例对照研究中,通过无条件逻辑回归分析,从相对风险和归因风险的角度分析风险因素与疾病之间的关系。AR的方差通过德尔塔方法获得,它基于三个组成部分,即:(i)在给定为病例的条件下,属于暴露和混杂因素联合水平的估计概率向量的方差协方差矩阵;(ii)逻辑模型中比值比参数估计值的方差协方差矩阵;(iii)这些概率和参数估计值之间的协方差。用户只需输入有限数量的命令(即工作文件的名称以及所考虑变量的名称)。该宏会输出模型中包含的所有因素的估计相对风险、所考虑暴露因素的归因风险以及相应的95%置信区间。由于大量协变量会导致向量和矩阵规模过大,对于大量协变量可能会出现计算问题。该宏在已发表的病例对照研究数据集上进行了可靠性和一致性测试。