Hu P, Tsiatis A A, Davidian M
Department of Biostatistics, Harvard School of Public Health, Boston, Massachusetts 02115, USA.
Biometrics. 1998 Dec;54(4):1407-19.
The Cox proportional hazards model is commonly used to model survival data as a function of covariates. Because of the measuring mechanism or the nature of the environment, covariates are often measured with error and are not directly observable. A naive approach is to use the observed values of the covariates in the Cox model, which usually produces biased estimates of the true association of interest. An alternative strategy is to take into account the error in measurement, which may be carried out for the Cox model in a number of ways. We examine several such approaches and compare and contrast them through several simulation studies. We introduce a likelihood-based approach, which we refer to as the semiparametric method, and show that this method is an appealing alternative. The methods are applied to analyze the relationship between survival and CD4 count in patients with AIDS.
Cox比例风险模型通常用于将生存数据建模为协变量的函数。由于测量机制或环境性质,协变量常常存在测量误差且无法直接观测。一种简单的方法是在Cox模型中使用协变量的观测值,这通常会对感兴趣的真实关联产生有偏估计。另一种策略是考虑测量误差,这可以通过多种方式在Cox模型中实现。我们研究了几种此类方法,并通过多个模拟研究对它们进行比较和对比。我们引入了一种基于似然的方法,即半参数方法,并表明该方法是一种有吸引力的替代方法。这些方法被应用于分析艾滋病患者生存与CD4计数之间的关系。