Background:The problem of variable selection for risk factor modeling is an ongoing challenge in statistical practice. Classical methods that select one subset of exploratory risk factors dominate the medical research field. However, this approach has been criticized for not taking into account the uncertainty of the model selection process itself. This limitation can be addressed by a Bayesian model averaging approach: instead of focusing on a single model and a few factors, Bayesian model averaging considers all the models with non-negligible probabilities to make inference.Methods:This paper reports on a simulation study designed to emulate a matched case-control study and compares classical versus Bayesian model averaging selection meth...
Introduction: Diabetes is a chronic disease which usually begins with impaired glucose tolerance. Th...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
Background: The problem of variable selection for risk factor modeling is an ongoing challenge in st...
Data driven conclusion is mostly accepted approach in any medical research problem. In case of limit...
Covariate and confounder selection in case-control studies is most commonly carried out using either...
Bayesian model averaging (BMA) is a powerful technique to address model selection uncertainty and re...
We describe a selection process for a multivariable risk prediction model of death within 30 days of...
Use of classic variable selection methods in public health research is quite common. Many criteria,...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
Linear regression models are often used to represent the cost and effectiveness of medical treatment...
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
Selection bias is a massive problem in infectious disease epidemiology that can result in needless m...
Abstract Matched case-control designs are currently used in many biomedical applications. To ensure ...
Introduction: Diabetes is a chronic disease which usually begins with impaired glucose tolerance. Th...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
Background: The problem of variable selection for risk factor modeling is an ongoing challenge in st...
Data driven conclusion is mostly accepted approach in any medical research problem. In case of limit...
Covariate and confounder selection in case-control studies is most commonly carried out using either...
Bayesian model averaging (BMA) is a powerful technique to address model selection uncertainty and re...
We describe a selection process for a multivariable risk prediction model of death within 30 days of...
Use of classic variable selection methods in public health research is quite common. Many criteria,...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
Linear regression models are often used to represent the cost and effectiveness of medical treatment...
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
Selection bias is a massive problem in infectious disease epidemiology that can result in needless m...
Abstract Matched case-control designs are currently used in many biomedical applications. To ensure ...
Introduction: Diabetes is a chronic disease which usually begins with impaired glucose tolerance. Th...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...