Although multicenter data are common, many prediction model studies ignore this during model development. The objective of this study is to evaluate the predictive performance of regression methods for developing clinical risk prediction models using multicenter data, and provide guidelines for practice. We compared the predictive performance of standard logistic regression, generalized estimating equations, random intercept logistic regression, and fixed effects logistic regression. First, we presented a case study on the diagnosis of ovarian cancer. Subsequently, a simulation study investigated the performance of the different models as a function of the amount of clustering, development sample size, distribution of center-specific interc...
Background: Clinical prediction models are often constructed using multicenter databases. Such a dat...
Abstract Background Reporting of absolute risk difference (RD) is recommended for clinical and epide...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Clinical risk prediction models are increasingly being developed and validated on multicenter datase...
Background: When study data are clustered, standard regression analysis is considered inappropriate ...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
Objectives: This study aims to investigate the influence of the amount of clustering [intraclass cor...
Objectives: This study aims to investigate the influence of the amount of clustering [intraclass cor...
Background: Clinical prediction models are often constructed using multicenter databases. Such a dat...
Background: Clinical prediction models are often constructed using multicenter databases. Such a dat...
Abstract Background Reporting of absolute risk difference (RD) is recommended for clinical and epide...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Clinical risk prediction models are increasingly being developed and validated on multicenter datase...
Background: When study data are clustered, standard regression analysis is considered inappropriate ...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
This study aims to investigate the influence of the amount of clustering [intraclass correlation (IC...
Objectives: This study aims to investigate the influence of the amount of clustering [intraclass cor...
Objectives: This study aims to investigate the influence of the amount of clustering [intraclass cor...
Background: Clinical prediction models are often constructed using multicenter databases. Such a dat...
Background: Clinical prediction models are often constructed using multicenter databases. Such a dat...
Abstract Background Reporting of absolute risk difference (RD) is recommended for clinical and epide...
Multinomial Logistic Regression (MLR) has been advocated for developing clinical prediction models t...