National Cancer Institute

Cancer Control and Population Sciences - NCI's bridge to public health research, practice and policy

Cancer Control and Population Sciences Home

Celebrating 10 Years
Celebrating 10 Years of Research
  Research Pioneers
  MERIT Awardees
  Star RO1 Investigators
  BSA/NCAB Members

Need Help?
Search:


Cancer Control Research

5R01CA074015-10
Ibrahim, Joseph G.
INFERENCE IN REGRESSION MODELS WITH MISSING COVARIATES

Abstract

DESCRIPTION (provided by applicant): We will examine the following research problems: 1. Model Identifiability and Posterior Propriety for Generalized Linear Models (GLMs) with Ignorably and Nonignorably Missing Covariates - We will carry out a theoretical investigation for establishing necessary and sufficient conditions for posterior propriety and existence of the maximum likelihood estimator for GLMs with ignorably nor nonignorably missing covariates. Our work will then be extended to other types of models including i) the Cox regression model and ii) generalized linear mixed models. 2. Model Assessment and Sensitivity Analyses in Missing Data Problems - We will derive model selection tools for assessing models and carrying out sensitivity analyses in missing data problems. The model assessment criteria will be quite general, and can be used to assess goodness of fit and sensitivity analyses in the presence of nonignorably missing covariate and/or response data in generalized linear models, models for longitudinal data, and survival models. 3. Theory and Inference for the Cox Regression Model with Missing Covariates - A theoretical investigation for inference with missing covariate data using Cox's partial likelihood will be conducted. Necessary and sufficient conditions for the existence of the maximum partial likelihood estimate (MPLE) will be studied for complete data settings as well as with MAR covariates. In addition, Bayesian methods for MAR covariate data will be studied. 4. Semiparametric and Nonparametric Specification of the Covariate Distribution and Missing Data Mechanism - We will examine semiparametric models for the covariate distribution and missing data mechanism for regression models with ignorably or nonignorably missing covariate and/or response data.

Search | Help | Contact Us | Accessibility | Privacy Policy

DCCPSNational Cancer Institute Department of Health and Human Services National Institutes of Health USA.gov

DCCPS home DCCPS home DCCPS home