Estimating a survival function with incomplete cause-of-death data
We propose a random censorship model which permits uncertainty in the cause of death assessments for a subset of the subjects in a survival experiment. A nonparametric maximum likelihood approach and a "self-consistency" approach are considered. The solution sets corresponding to both approaches are found. They are infinite and identical. Only some of the solutions are consistent; i.e., the MLEs and self-consistent estimators are not consistent in general. Two estimates are thus proposed and their asymptotic properties are studied. It is shown that both estimates are strongly consistent and converge to Gaussian processes. The covariance structures of these Gaussian processes are derived.
Year of publication: |
1991
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Authors: | Lo, Shaw-Hwa |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 39.1991, 2, p. 217-235
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Publisher: |
Elsevier |
Keywords: | random censorship model with uncertainty survival experiment nonparametric maximum likelihood self-consistency strongly consistent Gaussian process |
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