Exponential model for breast cancer partly interval censored data via multiple imputation
Abstract
The estimation problem for interval-censored data has been investigated by several
authors. The application of conventional methods to interval censored data that has been
considered by Lindsey and Ryan (1998) showed misleading results when they tended to
underestimate the standard errors of the estimated parameters.
In this thesis, we apply the likelihoods in the exponential model in order to estimate
the parameters and function of survival when multiple imputation and left imputation
methods are used for partly interval censored data. We pay particular attention to the
performance of our model. In particular, we present the Likelihood Ratio Test (LRT) with
their p-value.
We undertake a simulation study with different percentage of exact observations (0%, 25%,
50%, and 75%) in order to quantify and analyze the relative performances of maximum
likelihood estimation for exponential model. The numerical evidence suggests that the
estimates from multiple imputation are more accurate. We apply the proposed method to a
real breast cancer data.
DOI/handle
http://hdl.handle.net/10576/17737Collections
- Mathematics, Statistics & Physics [33 items ]