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Journal ArticleDOI

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

Likelihood-based inference for a frailty-copula model based on competing risks failure time data

TL;DR: A frailty‐copula model is proposed, which is a hybrid model including both a frailty term and a copula function for dependence between failure times, and likelihood‐based inference methods based on competing risks data, including accelerated failure time models are developed.
Journal ArticleDOI

A copula-based Markov chain model for serially dependent event times with a dependent terminal event

TL;DR: This paper proposes a novel copula-based Markov chain model for describing serial dependence in recurrent event times, and proposes a two-stage estimation method under Weibull distributions for fitting the survival data.
Journal ArticleDOI

Parametric Distributions for Survival and Reliability Analyses, a Review and Historical Sketch

TL;DR: In this paper , the authors comprehensively review the historical backgrounds and statistical properties of a number of parametric distributions used in survival and reliability analyses, including the exponential, Weibull, Rayleigh, lognormal, log-logistic, gamma, generalized gamma, Pareto (types I, II, and IV), Hjorth, Burr (types III and XII), Dagum, exponential power, Gompertz, Birnbaum-Saunders, exponential-logarithmic, piecewise exponential, generalized exponential, exponentiated Weibell, generalized modified Weibbull, and spline distributions.
Journal ArticleDOI

Dynamic Risk Prediction via a Joint Frailty-Copula Model and IPD Meta-Analysis: Building Web Applications

TL;DR: This article provides a tutorial in order to build a web-based application for dynamic risk prediction for cancer patients on the basis of the R packages joint, and demonstrates the proposed methods using a dataset of breast cancer patients from multiple clinical studies.
Journal ArticleDOI

Dynamic lifetime prediction using a Weibull-based bivariate failure time model: a meta-analysis of individual-patient data

TL;DR: In this article, a dynamic prediction method using a bivariate failure time model allows one to build a prediction for the time-to-death for patients, which is one of the most important issues in survival analysis.
References
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Journal ArticleDOI

A combined gamma frailty and normal random-effects model for repeated, overdispersed time-to-event data

TL;DR: This paper presents, extends, and studies a model for repeated, overdispersed time-to-event outcomes, subject to censoring, and two estimation methods are presented.
Journal ArticleDOI

An approach to model clustered survival data with dependent censoring.

TL;DR: This study introduces a likelihood-based method, via the Weibull and piecewise exponential distributions, capable of accommodating the dependence between failure and censoring times and devise a Monte Carlo EM algorithm to carry out inferences.
Book ChapterDOI

The Joint Frailty-Copula Model for Correlated Endpoints

TL;DR: The joint frailty-copula model that formulates the shared frailty model for heterogeneity in a meta-analysis of individual patient data with two correlated survival endpoints, and utilizes a copula for dependence between TTP and OS is introduced.
Journal ArticleDOI

Joint regression analysis for survival data in the presence of two sets of semi-competing risks.

TL;DR: A novel statistical approach is proposed that jointly models such data via a pair of copulas to account for multiple dependence structures, while the marginal distribution of each endpoint is formulated by a Cox proportional hazards model.
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