Causal inference in survival analysis using longitudinal observational data: Sequential trials and marginal structural models

Author:

Keogh Ruth H.1ORCID,Gran Jon Michael2,Seaman Shaun R.3ORCID,Davies Gwyneth4ORCID,Vansteelandt Stijn15ORCID

Affiliation:

1. Department of Medical Statistics and Centre for Statistical Methodology London School of Hygiene and Tropical Medicine Keppel Street London WC1E 7HT UK

2. Oslo Centre for Biostatistics and Epidemiology, Department of Biostatistics, Institute of Basic Medical Sciences University of Oslo P.O. Box 1122 Blindern Oslo 0317 Norway

3. MRC Biostatistics Unit University of Cambridge East Forvie Building, Forvie Site, Robinson Way Cambridge CB2 0SR UK

4. Population, Policy and Practice Research and Teaching Department, UCL Great Ormond Street Institute of Child Health University College London WC1N 1EH London UK

5. Department of Applied Mathematics, Computer Science and Statistics Ghent University 9000 Ghent Belgium

Abstract

Longitudinal observational data on patients can be used to investigate causal effects of time‐varying treatments on time‐to‐event outcomes. Several methods have been developed for estimating such effects by controlling for the time‐dependent confounding that typically occurs. The most commonly used is marginal structural models (MSM) estimated using inverse probability of treatment weights (IPTW) (MSM‐IPTW). An alternative, the sequential trials approach, is increasingly popular, and involves creating a sequence of “trials” from new time origins and comparing treatment initiators and non‐initiators. Individuals are censored when they deviate from their treatment assignment at the start of each “trial” (initiator or noninitiator), which is accounted for using inverse probability of censoring weights. The analysis uses data combined across trials. We show that the sequential trials approach can estimate the parameters of a particular MSM. The causal estimand that we focus on is the marginal risk difference between the sustained treatment strategies of “always treat” vs “never treat.” We compare how the sequential trials approach and MSM‐IPTW estimate this estimand, and discuss their assumptions and how data are used differently. The performance of the two approaches is compared in a simulation study. The sequential trials approach, which tends to involve less extreme weights than MSM‐IPTW, results in greater efficiency for estimating the marginal risk difference at most follow‐up times, but this can, in certain scenarios, be reversed at later time points and relies on modelling assumptions. We apply the methods to longitudinal observational data from the UK Cystic Fibrosis Registry to estimate the effect of dornase alfa on survival.

Funder

Medical Research Council Canada

Norges Forskningsråd

UK Research and Innovation

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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