Variance component models for survival data
Publication date
1996-01-01
Authors
Petersen, J.H.
Andersen, P.K.
Gill, R.D.
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Document Type
Article
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Abstract
Extensions of the Cox proportional hazards model for survival data are studied where allowance is made for unobserved heterogeneity and for correlation between the life times of several individuals The extended models are frailtymodels inspired by Yashin et al Estimation is carried out using the EM algorithm Inference is discussed and potential applications are outlined in particular to statistical research in human genetics using twin data or adoption data aimed at separating the eects of genetic and environmental factors on mortality
Keywords
Censored survival data, heterogeneity, correlated frailty, correlated life times, semiparametric models, EM algorithm