A New Causal Approach to Account for Treatment Switching in Randomized Experiments under a Structural Cumulative Survival Model

03/22/2021
by   Andrew Ying, et al.
0

Treatment switching in a randomized controlled trial is said to occur when a patient randomized to one treatment arm switches to another treatment arm during follow-up. This can occur at the point of disease progression, whereby patients in the control arm may be offered the experimental treatment. It is widely known that failure to account for treatment switching can seriously dilute the estimated effect of treatment on overall survival. In this paper, we aim to account for the potential impact of treatment switching in a re-analysis evaluating the treatment effect of NucleosideReverse Transcriptase Inhibitors (NRTIs) on a safety outcome (time to first severe or worse sign or symptom) in participants receiving a new antiretroviral regimen that either included or omitted NRTIs in the Optimized Treatment That Includes or OmitsNRTIs (OPTIONS) trial. We propose an estimator of a treatment causal effect under a structural cumulative survival model (SCSM) that leverages randomization as an instrumental variable to account for selective treatment switching. Unlike Robins' accelerated failure time model often used to address treatment switching, the proposed approach avoids the need for artificial censoring for estimation. We establish that the proposed estimator is uniformly consistent and asymptotically Gaussian under standard regularity conditions. A consistent variance estimator is also given and a simple resampling approach provides uniform confidence bands for the causal difference comparing treatment groups overtime on the cumulative intensity scale. We develop an R package named "ivsacim" implementing all proposed methods, freely available to download from R CRAN. We examine the finite performance of the estimator via extensive simulations.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/27/2022

Structural Cumulative Survival Models for Robust Estimation of Treatment Effects Accounting for Treatment Switching in Randomized Experiments

We propose an instrumental variable estimator to estimate the treatment ...
research
02/27/2020

Assessing causal effects in the presence of treatment switching through principal stratification

Clinical trials focusing on survival outcomes often allow patients in th...
research
03/10/2023

Adjusting for time-varying treatment switches in randomized clinical trials: the danger of extrapolation and how to avoid it

When choosing estimands and estimators in randomized clinical trials, ca...
research
01/22/2020

Comparing the Performance of Statistical Adjustment Methods By Recovering the Experimental Benchmark from the REFLUX Trial

Much evidence in comparative effectiveness research is based on observat...
research
05/19/2023

A general model-checking procedure for semiparametric accelerated failure time models

We propose a set of goodness-of-fit tests for the semiparametric acceler...
research
11/18/2022

The Trial within Cohorts (TwiCs) study design in oncology: Experience and methodological reflections

A Trial within Cohorts (TwiCs) study design is a trial design that uses ...
research
03/24/2021

Pair-switching rerandomization

Rerandomization discards assignments with covariates unbalanced in the t...

Please sign up or login with your details

Forgot password? Click here to reset