The analysis of randomized trials with time-to-event endpoints is nearly always plagued by the problem of censoring. In practice, such analyses typically invoke the assumption of noninformative censoring. While this assumption usually becomes more plausible as more baseline covariates are being adjusted for, such adjustment also raises concerns. Prespecification of which covariates will be adjusted for (and how) is difficult, thus prompting the use of data-driven variable selection procedures, which may impede valid inferences to be drawn. The adjustment for covariates moreover adds concerns about model misspecification, and the fact that each change in adjustment set also changes the censoring assumption and the treatment effect estimand. ...
In longitudinal cohort studies, potential risk factors are measured at baseline, subjects are follow...
This is the final version of the article. Available from the publisher via the DOI in this record.Om...
Inferring causal treatment effects in the presence of possible omitted variable bias is as well-know...
The analysis of randomized trials with time-to-event endpoints is nearly always plagued by the probl...
Summary. Omission of relevant covariates can lead to bias when estimating treatment or exposure effe...
In most randomized controlled trials (RCTs), investigators typically rely on estimators of causal ef...
In clinical trials, complications in the data structure can arise by design, as when treatment group...
The problem of censored covariates arises frequently in family history studies, in which an outcome ...
The restricted mean survival time is a clinically easy-to-interpret measure that does not require an...
SUMMARY. We consider inference for the treatment-arm mean difference of an outcome that would have b...
A novel method of estimating selection bias due to informative censoring for a rolling cohort utiliz...
[EMBARGOED UNTIL 6/1/2023] Variable selection has been discussed under many contexts and especially ...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
BACKGROUND: It has long been advised to account for baseline covariates in the analysis of confirmat...
The assumption of strongly ignorable treatment assignment is required for eliminating selection bias...
In longitudinal cohort studies, potential risk factors are measured at baseline, subjects are follow...
This is the final version of the article. Available from the publisher via the DOI in this record.Om...
Inferring causal treatment effects in the presence of possible omitted variable bias is as well-know...
The analysis of randomized trials with time-to-event endpoints is nearly always plagued by the probl...
Summary. Omission of relevant covariates can lead to bias when estimating treatment or exposure effe...
In most randomized controlled trials (RCTs), investigators typically rely on estimators of causal ef...
In clinical trials, complications in the data structure can arise by design, as when treatment group...
The problem of censored covariates arises frequently in family history studies, in which an outcome ...
The restricted mean survival time is a clinically easy-to-interpret measure that does not require an...
SUMMARY. We consider inference for the treatment-arm mean difference of an outcome that would have b...
A novel method of estimating selection bias due to informative censoring for a rolling cohort utiliz...
[EMBARGOED UNTIL 6/1/2023] Variable selection has been discussed under many contexts and especially ...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
BACKGROUND: It has long been advised to account for baseline covariates in the analysis of confirmat...
The assumption of strongly ignorable treatment assignment is required for eliminating selection bias...
In longitudinal cohort studies, potential risk factors are measured at baseline, subjects are follow...
This is the final version of the article. Available from the publisher via the DOI in this record.Om...
Inferring causal treatment effects in the presence of possible omitted variable bias is as well-know...