Prediction models that estimate the probabilities of developing a specific disease (diagnostic model) or a specific endpoint of disease (prognostic model) given a set of subject’s characteristics are closely connected to personalized medicine of which the key idea is to base medical decisions on individual patient characteristics rather than on population averages. Depending on decision point, prediction models can be divided into two categories: static prediction models (making one-off decision) and dynamic prediction models (making dynamically updated decisions). While multivariable logistic and Cox regression are commonly used to develop prediction models, they are not the master key to every situation. Various issues such as clustered d...
Clinical prediction models estimate the risk of existing disease or future outcome for an individual...
Clinical prediction models estimate an individual's risk of a particular health outcome, conditional...
textabstractClinical prediction models provide risk estimates for the presence of disease (diagnosis...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
"In the last twenty years, dynamic prediction models have been extensively used to monitor patient p...
Clinical prediction models provide risk estimates for the presence of disease (diagnosis) or an even...
Clinical prediction models play an increasingly important role in contemporary clinical care, by inf...
Abstract Background Disease populations, clinical practice, and healthcare systems are constantly ev...
A clinical prediction model (CPM) is a tool for predicting healthcare outcomes, usually within a spe...
This thesis aims to improve methods of clinical prediction research. In clinical prediction research...
In this thesis we aimed to improve the prediction of clinical outcomes in cardiovascular diseases (C...
Prediction modelling, both diagnostic and prognostic, has become a major topic in clinical research ...
Contains fulltext : 165669.pdf (publisher's version ) (Closed access)BACKGROUND: T...
Prediction of cause-specific cumulative incidence function (CIF) is of primary interest to clinical ...
Clinical prediction models estimate the risk of existing disease or future outcome for an individual...
Clinical prediction models estimate an individual's risk of a particular health outcome, conditional...
textabstractClinical prediction models provide risk estimates for the presence of disease (diagnosis...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
Prediction models that estimate the probabilities of developing a specific disease (diagnostic model...
"In the last twenty years, dynamic prediction models have been extensively used to monitor patient p...
Clinical prediction models provide risk estimates for the presence of disease (diagnosis) or an even...
Clinical prediction models play an increasingly important role in contemporary clinical care, by inf...
Abstract Background Disease populations, clinical practice, and healthcare systems are constantly ev...
A clinical prediction model (CPM) is a tool for predicting healthcare outcomes, usually within a spe...
This thesis aims to improve methods of clinical prediction research. In clinical prediction research...
In this thesis we aimed to improve the prediction of clinical outcomes in cardiovascular diseases (C...
Prediction modelling, both diagnostic and prognostic, has become a major topic in clinical research ...
Contains fulltext : 165669.pdf (publisher's version ) (Closed access)BACKGROUND: T...
Prediction of cause-specific cumulative incidence function (CIF) is of primary interest to clinical ...
Clinical prediction models estimate the risk of existing disease or future outcome for an individual...
Clinical prediction models estimate an individual's risk of a particular health outcome, conditional...
textabstractClinical prediction models provide risk estimates for the presence of disease (diagnosis...