Lee J, Yoshizawa C, Wilkens L, Lee H P
Department of Community, Occupational and Family Medicine, National University of Singapore.
Comput Appl Biosci. 1992 Feb;8(1):23-7. doi: 10.1093/bioinformatics/8.1.23.
Cox's proportional hazards regression model is a useful statistical tool for the analysis of 'survival data' from longitudinal studies. This multivariate method compares the 'survival experience' between two or more exposure groups while allowing for simultaneous adjustment of confounding due to one or more covariates. In addition to the summary regression statistics, further insight on the exposure--response relationship can be gained by visually examining the covariates-adjusted survival curves in the respective comparison groups. Covariates-adjusted survival curves are usually computed by the 'average covariate method'. This method is, however, subject to potential drawbacks. A method that avoids these drawbacks is to estimate adjusted survival curves by the corrected group prognostic curves approach. We have written a computer program to construct survival curves by the latter method. The program is coded in the Interactive Matrix Language of SAS.
考克斯比例风险回归模型是一种用于分析纵向研究中“生存数据”的有用统计工具。这种多变量方法比较两个或多个暴露组之间的“生存经历”,同时允许对一个或多个协变量导致的混杂因素进行同步调整。除了汇总回归统计量外,通过直观检查各比较组中经协变量调整的生存曲线,还可以进一步深入了解暴露-反应关系。经协变量调整的生存曲线通常采用“平均协变量法”计算。然而,这种方法存在潜在的缺点。一种避免这些缺点的方法是通过校正组预后曲线法估计调整后的生存曲线。我们编写了一个计算机程序,通过后一种方法构建生存曲线。该程序用SAS的交互式矩阵语言编写。