In chronic diseases, research often centers on discovering a latent trait trajectory that manifests itself through multiple response variables on different measurement scales. In longitudinal studies, it is common to collect multivariate response data consisting of mixtures of continuous, survival, ordinal, count and multinomial variables. Development of the methodology was motivated by situations when measuring and predicting the latent trait can provide important insights for managing the observed phenotype. In Chapter II, we study survival models of cancer where a latent trait is responsible for the cure process. Traditional cure models assume that the cure status is determined at the beginning of the follow up. However, patients ofte...
This edited volume features cutting-edge topics from the leading researchers in the areas of latent ...
In latent variable models the existence of one or more unobserved (latent) variables is posited to e...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...
In chronic diseases, research often centers on discovering a latent trait trajectory that manifests ...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...
In clinical research, interest sometimes lies in analysing variables which are not measured directly...
In survival analysis, a common assumption is that all subjects will eventually experience the event ...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
In many clinical trials studying neurodegenerative diseases such as Parkinson\u27s disease (PD) and ...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...
Cure models were developed to deal with situations where it is plausible to assume that there are no...
University of Minnesota Ph.D. dissertation. August 2011. Major: Biostatistics. Advisor: Brad Carlin....
Various complex survival models, such as joint models of survival and longitudinal data and multivar...
This dissertation is concerned with semiparametric joint models of disease natural history and its r...
Multiple outcomes are often collected in applications where the quantity of interest cannot be measu...
This edited volume features cutting-edge topics from the leading researchers in the areas of latent ...
In latent variable models the existence of one or more unobserved (latent) variables is posited to e...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...
In chronic diseases, research often centers on discovering a latent trait trajectory that manifests ...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...
In clinical research, interest sometimes lies in analysing variables which are not measured directly...
In survival analysis, a common assumption is that all subjects will eventually experience the event ...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
In many clinical trials studying neurodegenerative diseases such as Parkinson\u27s disease (PD) and ...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...
Cure models were developed to deal with situations where it is plausible to assume that there are no...
University of Minnesota Ph.D. dissertation. August 2011. Major: Biostatistics. Advisor: Brad Carlin....
Various complex survival models, such as joint models of survival and longitudinal data and multivar...
This dissertation is concerned with semiparametric joint models of disease natural history and its r...
Multiple outcomes are often collected in applications where the quantity of interest cannot be measu...
This edited volume features cutting-edge topics from the leading researchers in the areas of latent ...
In latent variable models the existence of one or more unobserved (latent) variables is posited to e...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...