The Impact of Sparse Follow-up on Marginal Structural Models for Time-to-Event Data

Am J Epidemiol. 2015 Dec 15;182(12):1047-55. doi: 10.1093/aje/kwv152. Epub 2015 Nov 20.

Abstract

The impact of risk factors on the amount of time taken to reach an endpoint is a common parameter of interest. Hazard ratios are often estimated using a discrete-time approximation, which works well when the by-interval event rate is low. However, if the intervals are made more frequent than the observation times, missing values will arise. We investigated common analytical approaches, including available-case (AC) analysis, last observation carried forward (LOCF), and multiple imputation (MI), in a setting where time-dependent covariates also act as mediators. We generated complete data to obtain monthly information for all individuals, and from the complete data, we selected "observed" data by assuming that follow-up visits occurred every 6 months. MI proved superior to LOCF and AC analyses when only data on confounding variables were missing; AC analysis also performed well when data for additional variables were missing completely at random. We applied the 3 approaches to data from the Canadian HIV-Hepatitis C Co-infection Cohort Study (2003-2014) to estimate the association of alcohol abuse with liver fibrosis. The AC and LOCF estimates were larger but less precise than those obtained from the analysis that employed MI.

Keywords: available-case analysis; last observation carried forward; marginal structural models; missing data; multiple imputation; survival analysis.

Publication types

  • Research Support, Non-U.S. Gov't
  • Review

MeSH terms

  • Biomedical Research / statistics & numerical data*
  • Data Interpretation, Statistical
  • Epidemiologic Methods
  • Follow-Up Studies
  • Humans
  • Models, Statistical*