Prediction models often yield inaccurate predictions for new individuals. Large data sets from pooled studies or electronic healthcare records may alleviate this with an increased sample size and variability in sample characteristics. However, existing strategies for prediction model development generally do not account for heterogeneity in predictor-outcome associations between different settings and populations. This limits the generalizability of developed models (even from large, combined, clustered data sets) and necessitates local revisions. We aim to develop methodology for producing prediction models that require less tailoring to different settings and populations. We adopt internal-external cross-validation to assess and reduce he...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
The use of individual participant data (IPD) from multiple studies is an increasingly popular approa...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
BackgroundClinical prediction models (CPMs) are increasingly deployed to support healthcare decision...
markdownabstractWilliam Osler noted in 1893 that “If it were not for the great variability between i...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
Objectives Our aim was to improve meta-analysis methods for summarizing a prediction model's perform...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
AbstractObjectivesOur aim was to improve meta-analysis methods for summarizing a prediction model's ...
Abstract Background Clinical p...
OBJECTIVE: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in ...
Prediction models are becoming increasingly important in clinical practice. Unfortunately, research ...
There is growing interest in developing clinical prediction models (CPMs) to aid local healthcare de...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
The use of individual participant data (IPD) from multiple studies is an increasingly popular approa...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
BackgroundClinical prediction models (CPMs) are increasingly deployed to support healthcare decision...
markdownabstractWilliam Osler noted in 1893 that “If it were not for the great variability between i...
OBJECTIVE: To illustrate how to evaluate the need of complex strategies for developing generalizable...
Objectives Our aim was to improve meta-analysis methods for summarizing a prediction model's perform...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
AbstractObjectivesOur aim was to improve meta-analysis methods for summarizing a prediction model's ...
Abstract Background Clinical p...
OBJECTIVE: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in ...
Prediction models are becoming increasingly important in clinical practice. Unfortunately, research ...
There is growing interest in developing clinical prediction models (CPMs) to aid local healthcare de...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
The use of individual participant data (IPD) from multiple studies is an increasingly popular approa...