Greene Wendy F, Cai Jianwen
Rho, Inc., Chapel Hill, North Carolina 27514, USA.
Biometrics. 2004 Dec;60(4):987-96. doi: 10.1111/j.0006-341X.2004.00254.x.
We consider measurement error in covariates in the marginal hazards model for multivariate failure time data. We explore the bias implications of normal additive measurement error without assuming a distribution for the underlying true covariate. To correct measurement-error-induced bias in the regression coefficient of the marginal model, we propose to apply the SIMEX procedure and demonstrate its large and small sample properties for both known and estimated measurement error variance. We illustrate this method using the Lipid Research Clinics Coronary Primary Prevention Trial data with total cholesterol as the covariate measured with error and time until angina and time until nonfatal myocardial infarction as the correlated outcomes of interest.
我们考虑了多变量失效时间数据的边际风险模型中协变量的测量误差。我们探讨了正态加性测量误差的偏差影响,而无需假设潜在真实协变量的分布。为了校正边际模型回归系数中由测量误差引起的偏差,我们建议应用SIMEX程序,并证明其在已知和估计测量误差方差情况下的大样本和小样本性质。我们使用脂质研究临床冠心病一级预防试验数据来说明这种方法,其中总胆固醇作为有测量误差的协变量,直到心绞痛发作的时间和直到非致命性心肌梗死的时间作为感兴趣的相关结局。