Intervention treatment distributions that depend on the observed treatment process and model double robustness in causal survival analysis

12/01/2021
by   Lan Wen, et al.
0

The generalized g-formula can be used to estimate the probability of survival under a sustained treatment strategy. When treatment strategies are deterministic, estimators derived from the so-called efficient influence function (EIF) for the g-formula will be doubly robust to model misspecification. In recent years, several practical applications have motivated estimation of the g-formula under non-deterministic treatment strategies where treatment assignment at each time point depends on the observed treatment process. In this case, EIF-based estimators may or may not be doubly robust. In this paper, we provide sufficient conditions to ensure existence of doubly robust estimators for intervention treatment distributions that depend on the observed treatment process for point treatment interventions, and give a class of intervention treatment distributions dependent on the observed treatment process that guarantee model doubly and multiply robust estimators in longitudinal settings. Motivated by an application to pre-exposure prophylaxis (PrEP) initiation studies, we propose a new treatment intervention dependent on the observed treatment process. We show there exist 1) estimators that are doubly and multiply robust to model misspecification, and 2) estimators that when used with machine learning algorithms can attain fast convergence rates for our proposed intervention. Theoretical results are confirmed via simulation studies.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/11/2021

Inference for treatment-specific survival curves using machine learning

In the absence of data from a randomized trial, researchers often aim to...
research
10/15/2022

Nonparametric Estimation of Mediation Effects with A General Treatment

To investigate causal mechanisms, causal mediation analysis decomposes t...
research
05/19/2020

Matching methods for obtaining survival functions to estimate the effect of a time-dependent treatment

In observational studies of survival time featuring a binary time-depend...
research
05/24/2023

Restricted Mean Survival Time Estimation Using Bayesian Nonparametric Dependent Mixture Models

Restricted mean survival time (RMST) is an intuitive summary statistic f...
research
06/02/2020

Non-parametric causal effects based on longitudinal modified treatment policies

Most causal inference methods consider counterfactual variables under in...
research
05/06/2019

Propensity Process: a Balancing Functional

In observational clinic registries, time to treatment is often of intere...
research
03/26/2020

Estimating Treatment Effects with Observed Confounders and Mediators

Given a causal graph, the do-calculus can express treatment effects as f...

Please sign up or login with your details

Forgot password? Click here to reset