Correlations among survival endpoints are important for exploring surrogate endpoints of the true endpoint. With a valid surrogate endpoint tightly correlated with the true endpoint, the efficacy of a new drug/treatment can be measurable on it. However, the existing methods for measuring correlation between two endpoints impose an invalid assumption: correlation structure is constant across different treatment arms. In this article, we reconsider the definition of Kendall's concordance measure (tau) in the context of individual patient data meta-analyses of randomized controlled trials. According to our new definition of Kendall's tau, its value depends on the treatment arms. We then suggest extending the existing copula (and frailty) model...
Dependence in survival analysis is most frequently modeled by the frailty model or the copula model....
peer reviewedOur focus is on the joint analysis of longitudinal nonnormal responses and early discon...
Understanding disease process on cancer-related health outcomes has attracted intense clinical, epid...
This book introduces readers to advanced statistical methods for analyzing survival data involving c...
This paper considers methods for estimating the association between progression-free and overall sur...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
Bivariate meta-analysis provides a useful framework for combining information across related studies...
Bivariate meta‐analysis provides a useful framework for combining information across related studies...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
In oncology trials, different clinical endpoints can be measured. For the survival analysis of patie...
Bivariate meta-analysis provides a useful framework for combining information across related studies...
Dynamic prediction methods incorporate longitudinal biomarker information to produce updated, more a...
The observation of time to tumour progression (TTP) or progression-free survival (PFS) may be termin...
Background: An important issue in prediction modeling of multivariate data is the measure of depende...
Longitudinal and survival sub-models are two building blocks for joint modelling of longitudinal and...
Dependence in survival analysis is most frequently modeled by the frailty model or the copula model....
peer reviewedOur focus is on the joint analysis of longitudinal nonnormal responses and early discon...
Understanding disease process on cancer-related health outcomes has attracted intense clinical, epid...
This book introduces readers to advanced statistical methods for analyzing survival data involving c...
This paper considers methods for estimating the association between progression-free and overall sur...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
Bivariate meta-analysis provides a useful framework for combining information across related studies...
Bivariate meta‐analysis provides a useful framework for combining information across related studies...
When two interventions are randomized to multiple sub-clusters within a whole cluster, accounting fo...
In oncology trials, different clinical endpoints can be measured. For the survival analysis of patie...
Bivariate meta-analysis provides a useful framework for combining information across related studies...
Dynamic prediction methods incorporate longitudinal biomarker information to produce updated, more a...
The observation of time to tumour progression (TTP) or progression-free survival (PFS) may be termin...
Background: An important issue in prediction modeling of multivariate data is the measure of depende...
Longitudinal and survival sub-models are two building blocks for joint modelling of longitudinal and...
Dependence in survival analysis is most frequently modeled by the frailty model or the copula model....
peer reviewedOur focus is on the joint analysis of longitudinal nonnormal responses and early discon...
Understanding disease process on cancer-related health outcomes has attracted intense clinical, epid...