The use of individual participant data (IPD) from multiple studies is an increasingly popular approach when developing a multivariable risk prediction model. Corresponding datasets, however, typically differ in important aspects, such as baseline risk. This has driven the adoption of meta-analytical approaches for appropriately dealing with heterogeneity between study populations. Although these approaches provide an averaged prediction model across all studies, little guidance exists about how to apply or validate this model to new individuals or study populations outside the derivation data. We consider several approaches to develop a multivariable logistic regression model from an IPD meta-analysis (IPD-MA) with potential between-study h...
A one-stage individual participant data (IPD) meta-analysis synthesizes IPD from multiple studies us...
Individual participant time-to-event data from multiple prospective epidemiologic studies enable det...
The past decades there has been a clear shift from implicit to explicit diagnosis and prognosis. Thi...
The use of individual participant data (IPD) from multiple studies is an increasingly popular approa...
This chapter describes the opportunities and challenges involved in prediction model research using ...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
Individual participant data (IPD) from multiple sources allows external validation of a prognostic m...
AbstractObjectivesOur aim was to improve meta-analysis methods for summarizing a prediction model's ...
OBJECTIVES: Our aim was to improve meta-analysis methods for summarizing a prediction model's perfor...
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validati...
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validati...
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validati...
Clinical prediction models aim to provide estimates of absolute risk for a diagnostic or prognostic ...
Clinical prediction models aim to provide estimates of absolute risk for a diagnostic or prognostic ...
A one-stage individual participant data (IPD) meta-analysis synthesizes IPD from multiple studies us...
Individual participant time-to-event data from multiple prospective epidemiologic studies enable det...
The past decades there has been a clear shift from implicit to explicit diagnosis and prognosis. Thi...
The use of individual participant data (IPD) from multiple studies is an increasingly popular approa...
This chapter describes the opportunities and challenges involved in prediction model research using ...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
Individual participant data (IPD) from multiple sources allows external validation of a prognostic m...
AbstractObjectivesOur aim was to improve meta-analysis methods for summarizing a prediction model's ...
OBJECTIVES: Our aim was to improve meta-analysis methods for summarizing a prediction model's perfor...
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validati...
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validati...
Individual participant data meta-analyses (IPD-MA) are increasingly used for developing and validati...
Clinical prediction models aim to provide estimates of absolute risk for a diagnostic or prognostic ...
Clinical prediction models aim to provide estimates of absolute risk for a diagnostic or prognostic ...
A one-stage individual participant data (IPD) meta-analysis synthesizes IPD from multiple studies us...
Individual participant time-to-event data from multiple prospective epidemiologic studies enable det...
The past decades there has been a clear shift from implicit to explicit diagnosis and prognosis. Thi...