Survival estimates are an essential compliment to multivariable regression models for time-to-event data, both for prediction and illustration of covariate effects. They are easily obtained under the Cox proportional-hazards model. In populations defined by an initial, acute event, like myocardial infarction, or in studies with long-term followup, the proportional-hazards assumption of constant hazard ratios is frequently violated. One alternative is to fit an interaction between covariates and a prespecified function of time, implemented as a time-dependent covariate. This effectively creates a time-varying coefficient that is easily estimated in software such as SAS and R. However, the usual programming statements for survival estimation ...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
Survival prediction from a large number of covariates is a current focus of statistical and medical ...
Survival estimates are an essential compliment to multivariable regression models for time-to-event ...
Survival estimates are an essential compliment to multivariable regression models for time-to-event ...
Aims and objectives: Computer program for the prediction of survival with respect to time-dependent ...
Thesis (Ph.D.)--University of Washington, 2016-12Time-varying covariates are often encountered in su...
Thesis (Ph.D.)--University of Washington, 2016-12Time-varying covariates are often encountered in su...
Survival analysis examines and models the time it takes for events to occur, termed survival time. T...
Non-parametric survival analysis techniques are often used in clinical and epidemiologic research to...
The Cox regression model is a cornerstone of modern survival analysis and is widely used in many oth...
Statistical modeling of lifetime data, or survival analysis, is studied in many fields, including me...
Extending the Cox Model is aimed at researchers, practitioners, and graduate students who have some ...
This vignette covers 3 different but interrelated concepts: An introduction to time dependent covar...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
Survival prediction from a large number of covariates is a current focus of statistical and medical ...
Survival estimates are an essential compliment to multivariable regression models for time-to-event ...
Survival estimates are an essential compliment to multivariable regression models for time-to-event ...
Aims and objectives: Computer program for the prediction of survival with respect to time-dependent ...
Thesis (Ph.D.)--University of Washington, 2016-12Time-varying covariates are often encountered in su...
Thesis (Ph.D.)--University of Washington, 2016-12Time-varying covariates are often encountered in su...
Survival analysis examines and models the time it takes for events to occur, termed survival time. T...
Non-parametric survival analysis techniques are often used in clinical and epidemiologic research to...
The Cox regression model is a cornerstone of modern survival analysis and is widely used in many oth...
Statistical modeling of lifetime data, or survival analysis, is studied in many fields, including me...
Extending the Cox Model is aimed at researchers, practitioners, and graduate students who have some ...
This vignette covers 3 different but interrelated concepts: An introduction to time dependent covar...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
Survival prediction from a large number of covariates is a current focus of statistical and medical ...