Predictions of disease outcome in prognostic factor models are usually based on one selected model. However, often several models fit the data equally well, but these models might differ substantially in terms of included explanatory variables and might lead to different predictions for individual patients. For survival data, we discuss two approaches to account for model selection uncertainty in two data examples, with the main emphasis on variable selection in a proportional hazard Cox model. The main aim of our investigation is to establish the ways in which either of the two approaches is useful in such prognostic models. The first approach is Bayesian model averaging (BMA) adapted for the proportional hazard model, termed ‘approx. BMA’...
AbstractMedical prognostic models can be designed to predict the future course or outcome of disease...
International audiencePredicting the evolution of mortality rates plays a central role for life insu...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
This study considered the problem of predicting survival, based on three alternative models: a singl...
Objective. Survival extrapolation using a single, best-fit model ignores 2 sources of model uncertai...
This article is concerned with variable selection methods for the proportional hazards regression mo...
This article is concerned with variable selection methods for the proportional hazards regression mo...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Abstract. This article is concerned with variable selection methods for the pro-portional hazards re...
Bayesian Model Averaging (BMA) has previously been proposed as a solution to the variable selection ...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
International audiencePredicting the evolution of mortality rates plays a central role for life insu...
AbstractMedical prognostic models can be designed to predict the future course or outcome of disease...
International audiencePredicting the evolution of mortality rates plays a central role for life insu...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
This study considered the problem of predicting survival, based on three alternative models: a singl...
Objective. Survival extrapolation using a single, best-fit model ignores 2 sources of model uncertai...
This article is concerned with variable selection methods for the proportional hazards regression mo...
This article is concerned with variable selection methods for the proportional hazards regression mo...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Abstract. This article is concerned with variable selection methods for the pro-portional hazards re...
Bayesian Model Averaging (BMA) has previously been proposed as a solution to the variable selection ...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
International audiencePredicting the evolution of mortality rates plays a central role for life insu...
AbstractMedical prognostic models can be designed to predict the future course or outcome of disease...
International audiencePredicting the evolution of mortality rates plays a central role for life insu...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...