Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity between populations. Either only data from a single study or population is available for model building and evaluation, or when data from multiple studies make up the training dataset, studies are pooled before model building. As a result, prediction models might perform less than expected when applied to new subjects from new study populations. We propose a linear method for building prediction models with high-dimensional data from multiple studies. Our method explicitly addresses between-population variability and tends to select predictors that are predictive in most of the study populations. We employ empirical Bayes estimators and hence...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
Empirical Bayes is a versatile approach to “learn from a lot” in two ways: first, from a large numbe...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
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...
markdownabstractWilliam Osler noted in 1893 that “If it were not for the great variability between i...
BACKGROUND: Clinical prediction models are developed widely across medical disciplines. When predict...
BackgroundClinical prediction models (CPMs) are increasingly deployed to support healthcare decision...
We have developed a strategy for the analysis of newly available binary data to improve outcome pred...
There is an increasing interest in machine learning (ML) algorithms for predicting patient outcomes,...
Abstract Background Clinical p...
<p>Supplemental material for High-dimensional prediction of binary outcomes in the presence of betwe...
In many application areas, prediction rules trained based on high-dimensional data are subsequently ...
Classification tree models are flexible analysis tools which have the ability to evaluate interactio...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
Empirical Bayes is a versatile approach to “learn from a lot” in two ways: first, from a large numbe...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
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...
markdownabstractWilliam Osler noted in 1893 that “If it were not for the great variability between i...
BACKGROUND: Clinical prediction models are developed widely across medical disciplines. When predict...
BackgroundClinical prediction models (CPMs) are increasingly deployed to support healthcare decision...
We have developed a strategy for the analysis of newly available binary data to improve outcome pred...
There is an increasing interest in machine learning (ML) algorithms for predicting patient outcomes,...
Abstract Background Clinical p...
<p>Supplemental material for High-dimensional prediction of binary outcomes in the presence of betwe...
In many application areas, prediction rules trained based on high-dimensional data are subsequently ...
Classification tree models are flexible analysis tools which have the ability to evaluate interactio...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
Empirical Bayes is a versatile approach to “learn from a lot” in two ways: first, from a large numbe...
Prediction models are a valuable tool in medical practice, as they can help in diagnosis and prognos...