Objectives: To compare different methods to handle treatment when developing a prognostic model that aims to produce accurate probabilities of the outcome of individuals if left untreated. Study Design and Setting: Simulations were performed based on two normally distributed predictors, a binary outcome, and a binary treatment, mimicking a randomized trial or an observational study. Comparison was made between simply ignoring treatment (SIT), restricting the analytical data set to untreated individuals (AUT), inverse probability weighting (IPW), and explicit modeling of treatment (MT). Methods were compared in terms of predictive performance of the model and the proportion of incorrect treatment decisions. Results: Omitting a genuine predic...
BACKGROUND: Treatment switching is common in randomised trials of oncology treatments, with control ...
BACKGROUND: Randomised controlled trials in reproductive medicine are often subject to outcome trunc...
For both diagnostic and prognostic prediction models to effectively support clinical practice, they ...
Objectives: To compare different methods to handle treatment when developing a prognostic model that...
Objectives: To compare different methods to handle treatment when developing a prognostic model that...
Background: Prognostic models often show poor performance when applied to independent validation dat...
Abstract Background Prognostic models often show poor performance when applied to independent valida...
Background and objectives: Prognostic models are, among other things, used to provide risk predictio...
Failure to account for time-dependent treatment use when developing a prognostic model can result in...
Failure to account for time‐dependent treatment use when developing a prognostic model can result in...
Background Ignoring treatments in prognostic model development or validation can affect the accuracy...
The performance of inverse probability of treatment weighting and full matching on the propensity sc...
Observational studies almost always have bias because prognostic factors are unequally distributed b...
Frailty, a poorly measured confounder in older patients, can promote treatment in some situations an...
When patients randomised to the control group of a randomised controlled trial are allowed to switch...
BACKGROUND: Treatment switching is common in randomised trials of oncology treatments, with control ...
BACKGROUND: Randomised controlled trials in reproductive medicine are often subject to outcome trunc...
For both diagnostic and prognostic prediction models to effectively support clinical practice, they ...
Objectives: To compare different methods to handle treatment when developing a prognostic model that...
Objectives: To compare different methods to handle treatment when developing a prognostic model that...
Background: Prognostic models often show poor performance when applied to independent validation dat...
Abstract Background Prognostic models often show poor performance when applied to independent valida...
Background and objectives: Prognostic models are, among other things, used to provide risk predictio...
Failure to account for time-dependent treatment use when developing a prognostic model can result in...
Failure to account for time‐dependent treatment use when developing a prognostic model can result in...
Background Ignoring treatments in prognostic model development or validation can affect the accuracy...
The performance of inverse probability of treatment weighting and full matching on the propensity sc...
Observational studies almost always have bias because prognostic factors are unequally distributed b...
Frailty, a poorly measured confounder in older patients, can promote treatment in some situations an...
When patients randomised to the control group of a randomised controlled trial are allowed to switch...
BACKGROUND: Treatment switching is common in randomised trials of oncology treatments, with control ...
BACKGROUND: Randomised controlled trials in reproductive medicine are often subject to outcome trunc...
For both diagnostic and prognostic prediction models to effectively support clinical practice, they ...