| Literature DB >> 28757664 |
Abstract
In observational studies, treatment may be adapted to covariates at several times without a fixed protocol, in continuous time. Treatment influences covariates, which influence treatment, which influences covariates, and so on. Then even time-dependent Cox-models cannot be used to estimate the net treatment effect. Structural nested models have been applied in this setting. Structural nested models are based on counterfactuals: the outcome a person would have had had treatment been withheld after a certain time. Previous work on continuous-time structural nested models assumes that counterfactuals depend deterministically on observed data, while conjecturing that this assumption can be relaxed. This article proves that one can mimic counterfactuals by constructing random variables, solutions to a differential equation, that have the same distribution as the counterfactuals, even given past observed data. These "mimicking" variables can be used to estimate the parameters of structural nested models without assuming the treatment effect to be deterministic.Entities:
Keywords: Causality in continuous time; Dynamic treatments; Longitudinal data; Observational studies; Panel data; Rank preservation; Stochastic differential equations; Structural nested models
Year: 2017 PMID: 28757664 PMCID: PMC5531214 DOI: 10.1214/15-AOS1433
Source DB: PubMed Journal: Ann Stat ISSN: 0090-5364 Impact factor: 4.028