In this paper we study approaches for dealing with treatment when developing a clinical prediction model. Analogous to the estimand framework recently proposed by the European Medicines Agency for clinical trials, we propose a ‘predictimand’ framework of different questions that may be of interest when predicting risk in relation to treatment started after baseline. We provide a formal definition of the estimands matching these questions, give examples of settings in which each is useful and discuss appropriate estimators including their assumptions. We illustrate the impact of the predictimand choice in a dataset of patients with end-stage kidney disease. We argue that clearly defining the estimand is equally important in prediction resear...
Prediction and causal explanation are fundamentally distinct tasks of data analysis. In health appli...
The main task in causal inference is the prediction of the outcome of an in-tervention. For example,...
Failure to account for time‐dependent treatment use when developing a prognostic model can result in...
In this paper we study approaches for dealing with treatment when developing a clinical prediction m...
Clinical prediction models play an increasingly important role in contemporary clinical care, by inf...
Clinical prediction models (CPMs) are often used to guide treatment initiation, with individuals at ...
Clinical prediction models provide risk estimates for the presence of disease (diagnosis) or an even...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Th...
Massive numbers of new prediction models have been published over the past two decades and the numbe...
In part 1 of the thesis Predicting Outcomes in Patients with Kidney Disease, key differences between...
A clinical prediction model can assist doctors in arriving at the most likely diagnosis or estimatin...
Failure to account for time-dependent treatment use when developing a prognostic model can result in...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Prediction and causal explanation are fundamentally distinct tasks of data analysis. In health appli...
The main task in causal inference is the prediction of the outcome of an in-tervention. For example,...
Failure to account for time‐dependent treatment use when developing a prognostic model can result in...
In this paper we study approaches for dealing with treatment when developing a clinical prediction m...
Clinical prediction models play an increasingly important role in contemporary clinical care, by inf...
Clinical prediction models (CPMs) are often used to guide treatment initiation, with individuals at ...
Clinical prediction models provide risk estimates for the presence of disease (diagnosis) or an even...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Th...
Massive numbers of new prediction models have been published over the past two decades and the numbe...
In part 1 of the thesis Predicting Outcomes in Patients with Kidney Disease, key differences between...
A clinical prediction model can assist doctors in arriving at the most likely diagnosis or estimatin...
Failure to account for time-dependent treatment use when developing a prognostic model can result in...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Prediction and causal explanation are fundamentally distinct tasks of data analysis. In health appli...
The main task in causal inference is the prediction of the outcome of an in-tervention. For example,...
Failure to account for time‐dependent treatment use when developing a prognostic model can result in...