Structural nested failure time models (SNFTMs) are models for the effect of a time-dependent exposure on a survival outcome. They have been introduced along with so-called G-estimation methods to provide valid adjustment for time-dependent confounding induced by time-varying variables. Adjustment for informative censoring in SNFTMs is possible via inverse probability of censoring weighting (IPCW). In the presence of considerable dropout, this can imply substantial information loss and consequently imprecise effect estimates. In this article, we aim to increase the efficiency of IPCW G-estimators under a SNFTM by deriving an augmented estimator that uses both censored and uncensored observations, and offers robustness against misspecificatio...
This article describes the stgest command, which implements G-estimation (as proposed by Robins) to ...
This article describes the stgest command, which implements G-estimation (as proposed by Robins) to ...
Background: In many applications of instrumental variable (IV) methods, the treatments of interest a...
Structural nested failure time models (SNFTMs) are models for the effect of a time-dependent exposur...
Structural nested failure time models (SNFTMs) are models for the effect of a time-dependent exposur...
<p>Structural nested failure time models (SNFTMs) are models for the effect of a time-dependen...
Standard methods for estimating the effect of a time-varying exposure on survival may be biased in t...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Using data from observational studies to estimate the causal effect of a time‐varying exposure, repe...
Using data from observational studies to estimate the causal effect of a time-varying exposure, repe...
Using data from observational studies to estimate the causal effect of a time-varying exposure, repe...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
This article describes the stgest command, which implements G-estimation (as proposed by Robins) to ...
This article describes the stgest command, which implements G-estimation (as proposed by Robins) to ...
Background: In many applications of instrumental variable (IV) methods, the treatments of interest a...
Structural nested failure time models (SNFTMs) are models for the effect of a time-dependent exposur...
Structural nested failure time models (SNFTMs) are models for the effect of a time-dependent exposur...
<p>Structural nested failure time models (SNFTMs) are models for the effect of a time-dependen...
Standard methods for estimating the effect of a time-varying exposure on survival may be biased in t...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Using data from observational studies to estimate the causal effect of a time‐varying exposure, repe...
Using data from observational studies to estimate the causal effect of a time-varying exposure, repe...
Using data from observational studies to estimate the causal effect of a time-varying exposure, repe...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
Accounting for time-varying confounding when assessing the causal effects of time-varying exposures ...
This article describes the stgest command, which implements G-estimation (as proposed by Robins) to ...
This article describes the stgest command, which implements G-estimation (as proposed by Robins) to ...
Background: In many applications of instrumental variable (IV) methods, the treatments of interest a...