Spatial survival analysis has received a great deal of attention over the last 20 years due to the important role that geographical information can play in predicting survival. This paper provides an introduction to a set of programs for implementing some Bayesian spatial survival models in R using the package spBayesSurv. The function survregbayes includes the three most commonly-used semiparametric models: proportional hazards, proportional odds, and accelerated failure time. All manner of censored survival times are simultaneously accommodated including uncensored, interval censored, current-status, left and right censored, and mixtures of these. Left-truncated data are also accommodated. Time-dependent covariates are allowed under the p...
We propose a new class of semiparametric frailty models for spatially correlated survival data. Spec...
Survival data often contain small-area geographical or spatial information, such as the residence of...
We propose a hierarchical Bayesian methodology to model spatially or spatio-temporal clustered survi...
Survival methods are used for the statistical modelling of time-to-event data, with applications in ...
Flexible incorporation of both geographical patterning and risk effects in cancer survival models is...
Advisors: Haiming Zhou.Committee members: Duchwan Ryu; Chaoxiong (Michelle) Xia.Includes illustratio...
Title from PDF of title page (University of Missouri--Columbia, viewed on October 29, 2012).The enti...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
n some studies, survival data are arranged spatially such as geographical regions. Incorporating spa...
In this research we introduce a new class of Bayesian hierarchical models that incorporates spatial ...
Survival Model is widely used in medical field and biostatistics. This model can be used to identify...
This paper introduces a novel model and software package for parametric survival modelling of indivi...
In this paper we develop a so called relative survival analysis, that is used to model the excess ri...
Reliability and survival data are widely encountered across many common settings. Subjects under inv...
We propose a new class of semiparametric frailty models for spatially correlated survival data. Spec...
Survival data often contain small-area geographical or spatial information, such as the residence of...
We propose a hierarchical Bayesian methodology to model spatially or spatio-temporal clustered survi...
Survival methods are used for the statistical modelling of time-to-event data, with applications in ...
Flexible incorporation of both geographical patterning and risk effects in cancer survival models is...
Advisors: Haiming Zhou.Committee members: Duchwan Ryu; Chaoxiong (Michelle) Xia.Includes illustratio...
Title from PDF of title page (University of Missouri--Columbia, viewed on October 29, 2012).The enti...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
n some studies, survival data are arranged spatially such as geographical regions. Incorporating spa...
In this research we introduce a new class of Bayesian hierarchical models that incorporates spatial ...
Survival Model is widely used in medical field and biostatistics. This model can be used to identify...
This paper introduces a novel model and software package for parametric survival modelling of indivi...
In this paper we develop a so called relative survival analysis, that is used to model the excess ri...
Reliability and survival data are widely encountered across many common settings. Subjects under inv...
We propose a new class of semiparametric frailty models for spatially correlated survival data. Spec...
Survival data often contain small-area geographical or spatial information, such as the residence of...
We propose a hierarchical Bayesian methodology to model spatially or spatio-temporal clustered survi...