The evaluation of generic non-linear models for censored data needs to address the two complementary requirements in the software development life-cycle, of validation and verification. The former involves making a rigorous assessment of predictive accuracy in prognostic modelling and the latter is interpreted in this paper as comprising two different stages, namely model selection and rule-based interpretation of the composition of prognostic risk groups. With reference to prognostic performance is survival modelling the well-known ROC framework has recently been extended to a threshold independent, time-dependent performance index to quantify the predictive accuracy of censored data models, termed the Ctd index, which is briefly described...
Objectives. (i) to develop a computationally efficient algorithm of tree-growing for censored surviv...
Prognostic models combine several prognostic factors to provide an estimate of the likelihood (or ri...
Background: The use of alternative modeling techniques for predicting patient survival is complicate...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
Abstract Background When developing a prediction model for survival data it is essential to validate...
Background. Risk prediction models can be used as an aid when determining patient management. Becaus...
In chapter 1 we study explained variation under the additive hazards regression model for right-cens...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Everybody is confronted with the diagnosis of cancer during their life. If not personally, it might ...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
Royston (2014, Stata Journal 14: 738–755) explained how a popular application of the Cox proportiona...
Right censored data is the type of data in which the interested event has not been observed in worki...
The use of alternative modeling techniques for predicting patient survival is complicated by the fac...
Objectives. (i) to develop a computationally efficient algorithm of tree-growing for censored surviv...
Prognostic models combine several prognostic factors to provide an estimate of the likelihood (or ri...
Background: The use of alternative modeling techniques for predicting patient survival is complicate...
Risk prediction models need thorough validation to assess their performance. Validation of models fo...
Previous articles in Statistics in Medicine describe how to calculate the sample size required for e...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
Abstract Background When developing a prediction model for survival data it is essential to validate...
Background. Risk prediction models can be used as an aid when determining patient management. Becaus...
In chapter 1 we study explained variation under the additive hazards regression model for right-cens...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Everybody is confronted with the diagnosis of cancer during their life. If not personally, it might ...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
Royston (2014, Stata Journal 14: 738–755) explained how a popular application of the Cox proportiona...
Right censored data is the type of data in which the interested event has not been observed in worki...
The use of alternative modeling techniques for predicting patient survival is complicated by the fac...
Objectives. (i) to develop a computationally efficient algorithm of tree-growing for censored surviv...
Prognostic models combine several prognostic factors to provide an estimate of the likelihood (or ri...
Background: The use of alternative modeling techniques for predicting patient survival is complicate...