AbstractIn biostatistical, epidemiological and demographic studies of human survival it is often necessary to consider the dynamics of physiological processes and their influences on observed mortality rates. The parameters of a stochastic covariate process can be estimated using a conditional Gaussian strategy based on the mortality model presented in M.A. Woodbury and K.G. Manton, A random walk model of human mortality and aging. Theor. Popul. Biol. 11, 37–48 (1977) and A.I. Yashin, K.G. Manton, and J.W. Vaupel, Mortality and aging in a heterogeneous population: A stochastic process model with observed and unobserved variables. Theor. Popul. Biol., in press. (1985). The utility of this approach for modeling survival in a longitudinally fo...
An outgrowth of the "International Conference on Statistical Models for Biomedical and Technical Sys...
This study presents an innovative approach to human mortality data analysis, namely a transversal an...
The study of events involving an element of time has a long and important history in statistical res...
In biostatistical, epidemiological and demographic studies of human survival it is often necessary t...
AbstractIn biostatistical, epidemiological and demographic studies of human survival it is often nec...
The recently developed conditional Gaussian diffusion process model is a powerful tool of survival a...
Various multivariate stochastic process models have been developed to represent human physiological ...
Survival analysis is an old area of statistics dedicated to the study of time-to-event random variab...
This paper describes the stochastic process model for mortality rates of the population. The key que...
International audienceBACKGROUND: In epidemiology, we are often interested in the association betwee...
A number of multivariate stochastic process models have been developed to represent human physiologi...
In biomedical studies, researchers are often interested in the relationship between patients' charac...
The central statistical problem of survival analysis is to determine and characterize the conditiona...
In studying the progression of a disease and to better predict time to death (survival data), invest...
We consider a range of models that may be used to predict the future persistence of populations, par...
An outgrowth of the "International Conference on Statistical Models for Biomedical and Technical Sys...
This study presents an innovative approach to human mortality data analysis, namely a transversal an...
The study of events involving an element of time has a long and important history in statistical res...
In biostatistical, epidemiological and demographic studies of human survival it is often necessary t...
AbstractIn biostatistical, epidemiological and demographic studies of human survival it is often nec...
The recently developed conditional Gaussian diffusion process model is a powerful tool of survival a...
Various multivariate stochastic process models have been developed to represent human physiological ...
Survival analysis is an old area of statistics dedicated to the study of time-to-event random variab...
This paper describes the stochastic process model for mortality rates of the population. The key que...
International audienceBACKGROUND: In epidemiology, we are often interested in the association betwee...
A number of multivariate stochastic process models have been developed to represent human physiologi...
In biomedical studies, researchers are often interested in the relationship between patients' charac...
The central statistical problem of survival analysis is to determine and characterize the conditiona...
In studying the progression of a disease and to better predict time to death (survival data), invest...
We consider a range of models that may be used to predict the future persistence of populations, par...
An outgrowth of the "International Conference on Statistical Models for Biomedical and Technical Sys...
This study presents an innovative approach to human mortality data analysis, namely a transversal an...
The study of events involving an element of time has a long and important history in statistical res...