BackgroundClinical prediction models (CPMs) are increasingly deployed to support healthcare decisions but they are derived inconsistently, in part due to limited data. An emerging alternative is to aggregate existing CPMs developed for similar settings and outcomes. This simulation study aimed to investigate the impact of between-population-heterogeneity and sample size on aggregating existing CPMs in a defined population, compared with developing a model de novo.MethodsSimulations were designed to mimic a scenario in which multiple CPMs for a binary outcome had been derived in distinct, heterogeneous populations, with potentially different predictors available in each. We then generated a new ‘local’ population and compared the performance...
As real world evidence on drug efficacy involves nonrandomized studies, statistical methods adjustin...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
Abstract Background Each year, thousands of clinical prediction models are developed to make predict...
Background Clinical prediction models (CPMs) are increasingly deployed to support healthcare decisi...
Abstract Background Clinical p...
There is growing interest in developing clinical prediction models (CPMs) to aid local healthcare de...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
Published clinical prediction models are often ignored during the development of novel prediction mo...
markdownabstractWilliam Osler noted in 1893 that “If it were not for the great variability between i...
A clinical prediction model (CPM) is a tool for predicting healthcare outcomes, usually within a spe...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
Background: Prognostic models that are accurate could help aid medical decision making. Large observ...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
As real world evidence on drug efficacy involves nonrandomized studies, statistical methods adjustin...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
Abstract Background Each year, thousands of clinical prediction models are developed to make predict...
Background Clinical prediction models (CPMs) are increasingly deployed to support healthcare decisi...
Abstract Background Clinical p...
There is growing interest in developing clinical prediction models (CPMs) to aid local healthcare de...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
Published clinical prediction models are often ignored during the development of novel prediction mo...
markdownabstractWilliam Osler noted in 1893 that “If it were not for the great variability between i...
A clinical prediction model (CPM) is a tool for predicting healthcare outcomes, usually within a spe...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
Background: Prognostic models that are accurate could help aid medical decision making. Large observ...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
As real world evidence on drug efficacy involves nonrandomized studies, statistical methods adjustin...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
Abstract Background Each year, thousands of clinical prediction models are developed to make predict...