Analysis of semi-competing risks data is becoming increasingly important in medical research in which a subject may experience both nonterminal and terminal events, and the time to the intermediate nonterminal event (e.g. onset of a disease) is subject to dependent censoring by the terminal event (e.g. death) but not vice versa. Typically, both two types of events are dependent. In many applications, subjects may also be nested within clusters, such as patients in a multi-center study, leading to possible association among event times due to unobserved shared factors across subjects. To incorporate dependency within clusters and association between two types of event times, we propose a new flexible semiparametric modeling framework where a...
Consider semi-competing risks data (two times to concurrent events are studied but only one of them ...
In survival analysis, the failure time of an event is interval-censored when the event is only known...
Multivariate survival data are characterized by the presence of correlation between event times with...
This thesis is devoted to develop novel methods for the analysis of complex survival data subject to...
In many instances, a subject can experience both a nonterminal and terminal event where the terminal...
Semicompeting risks data are commonly seen in biomedical applications in which a terminal event cens...
In this article, the focus is on the analysis of multivariate survival time data with various types ...
Frailty models are frequently used to analyse clustered survival data in medical contexts. The frail...
In many studies, survival data involve several types of failure. This is commonly referred as compet...
Understanding disease process on cancer-related health outcomes has attracted intense clinical, epid...
<p>Health sciences research often involves both right- and interval-censored events because the occu...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
The Cox model usually assumes that the hazard rate is a product of an unspecified function of time c...
In many biomedical studies, it is of interest to assess dependence between bivariate failure time da...
This dissertation is concerned with semiparametric joint models of disease natural history and its r...
Consider semi-competing risks data (two times to concurrent events are studied but only one of them ...
In survival analysis, the failure time of an event is interval-censored when the event is only known...
Multivariate survival data are characterized by the presence of correlation between event times with...
This thesis is devoted to develop novel methods for the analysis of complex survival data subject to...
In many instances, a subject can experience both a nonterminal and terminal event where the terminal...
Semicompeting risks data are commonly seen in biomedical applications in which a terminal event cens...
In this article, the focus is on the analysis of multivariate survival time data with various types ...
Frailty models are frequently used to analyse clustered survival data in medical contexts. The frail...
In many studies, survival data involve several types of failure. This is commonly referred as compet...
Understanding disease process on cancer-related health outcomes has attracted intense clinical, epid...
<p>Health sciences research often involves both right- and interval-censored events because the occu...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
The Cox model usually assumes that the hazard rate is a product of an unspecified function of time c...
In many biomedical studies, it is of interest to assess dependence between bivariate failure time da...
This dissertation is concerned with semiparametric joint models of disease natural history and its r...
Consider semi-competing risks data (two times to concurrent events are studied but only one of them ...
In survival analysis, the failure time of an event is interval-censored when the event is only known...
Multivariate survival data are characterized by the presence of correlation between event times with...