Title of article :
Discrete Proportional Hazards Models for Mismeasured Outcomes
Author/Authors :
J.P.، Hughes نويسنده , , A.S.، Meier نويسنده , , B.A.، Richardson نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
-946
From page :
947
To page :
0
Abstract :
Outcome mismeasurement can lead to biased estimation in several contexts. Magder and Hughes (1997, American Journal of Epidemiology146, 195–203) showed that failure to adjust for imperfect outcome measures in logistic regression analysis can conservatively bias estimation of covariate effects, even when the mismeasurement rate is the same across levels of the covariate. Other authors have addressed the need to account for mismeasurement in survival analysis in selected cases ( Snapinn, 1998, Biometrics54, 209–218; Gelfand and Wang, 2000, Statistics in Medicine19, 1865–1879; Balasubramanian and Lagakos, 2001, Biometrics57, 1048–1058, 2003, Biometrika90, 171–182). We provide a general, more widely applicable, adjusted proportional hazards (APH) method for estimation of cumulative survival and hazard ratios in discrete time when the outcome is measured with error. We show that mismeasured failure status in a standard proportional hazards (PH) model can conservatively bias estimation of hazard ratios and that inference, in most practical situations, is more severely affected by poor specificity than by poor sensitivity. However, in simulations over a wide range of conditions, the APH method with correctly specified mismeasurement rates performs very well.
Keywords :
sensitivity , specificity , survival , Measurement error , Proportional hazards
Journal title :
BIOMETRICS (BIOMETRIC SOCIETY)
Serial Year :
2003
Journal title :
BIOMETRICS (BIOMETRIC SOCIETY)
Record number :
84204
Link To Document :
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