Clinical prediction models provide risk estimates for the presence of disease (diagnosis) or an event in the future course of disease (prognosis) for individual patients. Although publications that present and evaluate such models are becoming more frequent, the methodology is often suboptimal. We propose that seven steps should be considered in developing prediction models: (i) consideration of the research question and initial data inspection; (ii) coding of predictors; (iii) model specification; (iv) model estimation; (v) evaluation of model performance; (vi) internal validation; and (vii) model presentation. The validity of a prediction model is ideally assessed in fully independent data, where we propose four key measures to evaluate m...
Clinical prediction models are increasingly used to complement clinical reasoning and decision-makin...
Prediction modelling, both diagnostic and prognostic, has become a major topic in clinical research ...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
textabstractClinical prediction models provide risk estimates for the presence of disease (diagnosis...
A clinical prediction model can be applied to several challenging clinical scenarios: screening high...
Clinical prediction models play an increasingly important role in contemporary clinical care, by inf...
IMPORTANCE Prognostication is an important aspect of clinical decision-making, but it is often chall...
Clinical predictionmodels provide risk estimates for the presenceof disease (diagnosis) or an event ...
Massive numbers of new prediction models have been published over the past two decades and the numbe...
Clinical prediction models estimate the risk of existing disease or future outcome for an individual...
International audienceBACKGROUND:Clinical prediction models are formal combinations of historical, p...
Prediction models are becoming increasingly important in clinical practice. Unfortunately, research ...
In this thesis we aimed to improve the prediction of clinical outcomes in cardiovascular diseases (C...
A clinical prediction model (CPM) is a tool for predicting healthcare outcomes, usually within a spe...
Clinical prediction models are increasingly used to complement clinical reasoning and decision-makin...
Clinical prediction models are increasingly used to complement clinical reasoning and decision-makin...
Prediction modelling, both diagnostic and prognostic, has become a major topic in clinical research ...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
textabstractClinical prediction models provide risk estimates for the presence of disease (diagnosis...
A clinical prediction model can be applied to several challenging clinical scenarios: screening high...
Clinical prediction models play an increasingly important role in contemporary clinical care, by inf...
IMPORTANCE Prognostication is an important aspect of clinical decision-making, but it is often chall...
Clinical predictionmodels provide risk estimates for the presenceof disease (diagnosis) or an event ...
Massive numbers of new prediction models have been published over the past two decades and the numbe...
Clinical prediction models estimate the risk of existing disease or future outcome for an individual...
International audienceBACKGROUND:Clinical prediction models are formal combinations of historical, p...
Prediction models are becoming increasingly important in clinical practice. Unfortunately, research ...
In this thesis we aimed to improve the prediction of clinical outcomes in cardiovascular diseases (C...
A clinical prediction model (CPM) is a tool for predicting healthcare outcomes, usually within a spe...
Clinical prediction models are increasingly used to complement clinical reasoning and decision-makin...
Clinical prediction models are increasingly used to complement clinical reasoning and decision-makin...
Prediction modelling, both diagnostic and prognostic, has become a major topic in clinical research ...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...