Lee Seung-Hwan
Department of Mathematics, Illinois Wesleyan University, 1312 Park Street, Bloomington, IL, 61701, USA.
Lifetime Data Anal. 2016 Oct;22(4):531-46. doi: 10.1007/s10985-015-9349-5. Epub 2015 Oct 13.
In the accelerated hazards regression model with censored data, estimation of the covariance matrices of the regression parameters is difficult, since it involves the unknown baseline hazard function and its derivative. This paper provides simple but reliable procedures that yield asymptotically normal estimators whose covariance matrices can be easily estimated. A class of weight functions are introduced to result in the estimators whose asymptotic covariance matrices do not involve the derivative of the unknown hazard function. Based on the estimators obtained from different weight functions, some goodness-of-fit tests are constructed to check the adequacy of the accelerated hazards regression model. Numerical simulations show that the estimators and tests perform well. The procedures are illustrated in the real world example of leukemia cancer. For the leukemia cancer data, the issue of interest is a comparison of two groups of patients that had two different kinds of bone marrow transplants. It is found that the difference of the two groups are well described by a time-scale change in hazard functions, i.e., the accelerated hazards model.
在带有删失数据的加速风险回归模型中,回归参数协方差矩阵的估计很困难,因为这涉及未知的基线风险函数及其导数。本文提供了简单但可靠的方法,这些方法能产生渐近正态估计量,其协方差矩阵能够轻易估计。引入了一类权重函数以得到渐近协方差矩阵不涉及未知风险函数导数的估计量。基于从不同权重函数得到的估计量,构建了一些拟合优度检验来检查加速风险回归模型的充分性。数值模拟表明这些估计量和检验效果良好。这些方法在白血病癌症的实际例子中得到了说明。对于白血病癌症数据,感兴趣的问题是比较两组接受了两种不同骨髓移植的患者。结果发现,两组之间的差异可以通过风险函数的时间尺度变化很好地描述,即加速风险模型。