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Meta-analysis of individual patient data with semi-competing risks under the Weibull joint frailty–copula model

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TLDR
It is shown that the Weibull model constitutes a conjugate model for the gamma frailty, leading to explicit expressions for the moments, survival functions, hazard functions, quantiles, and mean residual lifetimes, which facilitate the parameter interpretation of prognostic inference.
Abstract
In meta-analysis of individual patient data with semi-competing risks, the joint frailty–copula model has been proposed, where frailty terms account for the between-study heterogeneity and copulas account for dependence between terminal and nonterminal event times. In the previous works, the baseline hazard functions in the joint frailty–copula model are estimated by the nonparametric model or the penalized spline model, which requires complex maximization schemes and resampling-based interval estimation. In this article, we propose the Weibull distribution for the baseline hazard functions under the joint frailty–copula model. We show that the Weibull model constitutes a conjugate model for the gamma frailty, leading to explicit expressions for the moments, survival functions, hazard functions, quantiles, and mean residual lifetimes. These results facilitate the parameter interpretation of prognostic inference. We propose a maximum likelihood estimation method and make our computer programs available in the R package, joint.Cox. We also show that the delta method is feasible to calculate interval estimates, which is a useful alternative to the resampling-based method. We conduct simulation studies to examine the accuracy of the proposed methods. Finally, we use the data on ovarian cancer patients to illustrate the proposed method.

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Citations
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Journal ArticleDOI

An MM Algorithm for the Frailty-Based Illness Death Model with Semi-Competing Risks Data

Bruna Faccin Camargo
- 10 Oct 2022 - 
TL;DR: In this article , the authors developed efficient computational methods for analyzing semi-competing risks data in the illness death model with the general frailty, where the minorization-maximization (MM) principle is employed for yielding accurate estimation and inferential procedures.
Journal ArticleDOI

Inference for block progressive censored competing risks data from an inverted exponentiated exponential model

TL;DR: In this paper , a hierarchical Bayes approach is proposed and the Metropolis-Hastings sampling algorithm is constructed for complex posterior computation, and extensive simulation studies and a real data analysis are carried out to elaborate the performance of the methods.

Semiparametric Modeling for Multivariate Survival Data via Copulas

TL;DR: In this article , a new class of multivariate survival models based on archimedean copulas with margins modeled by the Yang and Prentice (YP) model is proposed to accommodate the dependency among marginal distributions.
References
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Journal ArticleDOI

A Statistical Distribution Function of Wide Applicability

TL;DR: In this article, the applicability of statistics to a wide field of problems is discussed, and examples of simple and complex distributions are given, as well as a discussion of the application of statistics in a wide range of problems.
Book

An Introduction to Copulas

TL;DR: This book discusses the fundamental properties of copulas and some of their primary applications, which include the study of dependence and measures of association, and the construction of families of bivariate distributions.
Book

The Frailty Model

TL;DR: In this book different methods based on the frailty model are described and it is demonstrated how they can be used to analyze clustered survival data.
Journal ArticleDOI

On semi-competing risks data

TL;DR: In this article, the authors considered a variant of the competing risks problem in which a terminal event censors a non-terminal event, but not vice versa, and formulated the joint distribution of the events via a gamma frailty model in the upper wedge where data are observable, with the marginal distributions unspecified.
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