If individual participant data are available from multiple studies or clusters, then a prediction model can be externally validated multiple times. This allows the model's discrimination and calibration performance to be examined across different settings. Random-effects meta-analysis can then be used to quantify overall (average) performance and heterogeneity in performance. This typically assumes a normal distribution of 'true' performance across studies. We conducted a simulation study to examine this normality assumption for various performance measures relating to a logistic regression prediction model. We simulated data across multiple studies with varying degrees of variability in baseline risk or predictor effects and then evaluated...
Individual participant data (IPD) from multiple sources allows external validation of a prognostic m...
Background: Meta-regression is becoming increasingly used to model study level covariate effects. Ho...
This chapter describes the opportunities and challenges involved in prediction model research using ...
If individual participant data are available from multiple studies or clusters, then a prediction mo...
If individual participant data are available from multiple studies or clusters, then a prediction mo...
Objectives Our aim was to improve meta-analysis methods for summarizing a prediction model's perform...
AbstractObjectivesOur aim was to improve meta-analysis methods for summarizing a prediction model's ...
It is widely recommended that any developed—diagnostic or prognostic—prediction model is externally ...
The use of data from multiple studies or centers for the validation of a clinical test or a multivar...
The random-effects model, applied in most meta-analyses nowadays, typically assumes normality of the...
The use of data from multiple studies or centers for the validation of a clinical test or a multivar...
Dependent effect sizes are ubiquitous in meta-analysis. Using Monte Carlo simulation, we compared th...
Comparative trials that report binary outcome data are commonly pooled in systematic reviews and met...
Objectives To empirically assess the relation between study characteristics and prognostic model per...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Individual participant data (IPD) from multiple sources allows external validation of a prognostic m...
Background: Meta-regression is becoming increasingly used to model study level covariate effects. Ho...
This chapter describes the opportunities and challenges involved in prediction model research using ...
If individual participant data are available from multiple studies or clusters, then a prediction mo...
If individual participant data are available from multiple studies or clusters, then a prediction mo...
Objectives Our aim was to improve meta-analysis methods for summarizing a prediction model's perform...
AbstractObjectivesOur aim was to improve meta-analysis methods for summarizing a prediction model's ...
It is widely recommended that any developed—diagnostic or prognostic—prediction model is externally ...
The use of data from multiple studies or centers for the validation of a clinical test or a multivar...
The random-effects model, applied in most meta-analyses nowadays, typically assumes normality of the...
The use of data from multiple studies or centers for the validation of a clinical test or a multivar...
Dependent effect sizes are ubiquitous in meta-analysis. Using Monte Carlo simulation, we compared th...
Comparative trials that report binary outcome data are commonly pooled in systematic reviews and met...
Objectives To empirically assess the relation between study characteristics and prognostic model per...
Although multicenter data are common, many prediction model studies ignore this during model develop...
Individual participant data (IPD) from multiple sources allows external validation of a prognostic m...
Background: Meta-regression is becoming increasingly used to model study level covariate effects. Ho...
This chapter describes the opportunities and challenges involved in prediction model research using ...