Online Program Home
  My Program

Abstract Details

Activity Number: 204 - Recent Development in Statistical Methods for Analyzing Big and Complex Neuroimaging Data
Type: Invited
Date/Time: Monday, July 31, 2017 : 2:00 PM to 3:50 PM
Sponsor: ENAR
Abstract #322271
Title: Functional Regression Models for Nonignorable Missing Scalar Responses
Author(s): Hongtu Zhu* and Tengfei Li
Companies: The University of Texas MD Anderson Cancer Center and MD Anderson
Keywords: Missing response ; functional data ; FLM
Abstract:

As an important part of modern health care, medical imaging data, which can be regarded as densely sampled functional data, have been widely used for diagnosis, screening, treatment, and prognosis, such as finding breast cancer through mammograms. The aim of this paper is to propose a functional linear regression model for using functional (or imaging) predictors to predict clinical outcomes (e.g., disease status), while addressing missing clinical outcomes. We introduce an exponential tilting semiparametric model to account for the nonignorable missing data mechanism. We develop a set of estimating equations and its associated computational methods for both parameter estimation and the selection of the tuning parameters. We also propose a bootstrap resampling procedure for carrying out statistical inference. Under some regularity conditions, we systematically establish the asymptotic properties (e.g., consistency and convergence rate) of the estimates calculated from the proposed estimating equations. Simulation studies and a real data analysis are used to illustrate the finite sample performance of the proposed methods.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2017 program

 
 
Copyright © American Statistical Association