Open Access
September 2019 Imputation and post-selection inference in models with missing data: An application to colorectal cancer surveillance guidelines
Lin Liu, Yuqi Qiu, Loki Natarajan, Karen Messer
Ann. Appl. Stat. 13(3): 1370-1396 (September 2019). DOI: 10.1214/19-AOAS1239

Abstract

It is common to encounter missing data among the potential predictor variables in the setting of model selection. For example, in a recent study we attempted to improve the US guidelines for risk stratification after screening colonoscopy (Cancer Causes Control 27 (2016) 1175–1185), with the aim to help reduce both overuse and underuse of follow-on surveillance colonoscopy. The goal was to incorporate selected additional informative variables into a neoplasia risk-prediction model, going beyond the three currently established risk factors, using a large dataset pooled from seven different prospective studies in North America. Unfortunately, not all candidate variables were collected in all studies, so that one or more important potential predictors were missing on over half of the subjects. Thus, while variable selection was a main focus of the study, it was necessary to address the substantial amount of missing data. Multiple imputation can effectively address missing data, and there are also good approaches to incorporate the variable selection process into model-based confidence intervals. However, there is not consensus on appropriate methods of inference which address both issues simultaneously. Our goal here is to study the properties of model-based confidence intervals in the setting of imputation for missing data followed by variable selection. We use both simulation and theory to compare three approaches to such post-imputation-selection inference: a multiple-imputation approach based on Rubin’s Rules for variance estimation (Comput. Statist. Data Anal. 71 (2014) 758–770); a single imputation-selection followed by bootstrap percentile confidence intervals; and a new bootstrap model-averaging approach presented here, following Efron (J. Amer. Statist. Assoc. 109 (2014) 991–1007). We investigate relative strengths and weaknesses of each method. The “Rubin’s Rules” multiple imputation estimator can have severe undercoverage, and is not recommended. The imputation-selection estimator with bootstrap percentile confidence intervals works well. The bootstrap-model-averaged estimator, with the “Efron’s Rules” estimated variance, may be preferred if the true effect sizes are moderate. We apply these results to the colorectal neoplasia risk-prediction problem which motivated the present work.

Citation

Download Citation

Lin Liu. Yuqi Qiu. Loki Natarajan. Karen Messer. "Imputation and post-selection inference in models with missing data: An application to colorectal cancer surveillance guidelines." Ann. Appl. Stat. 13 (3) 1370 - 1396, September 2019. https://doi.org/10.1214/19-AOAS1239

Information

Received: 1 April 2018; Revised: 1 December 2018; Published: September 2019
First available in Project Euclid: 17 October 2019

zbMATH: 07145961
MathSciNet: MR4019143
Digital Object Identifier: 10.1214/19-AOAS1239

Keywords: missing data , model averaging , Model selection , multiple imputation , Post-selection inference

Rights: Copyright © 2019 Institute of Mathematical Statistics

Vol.13 • No. 3 • September 2019
Back to Top