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1.
Lifetime Data Anal ; 29(4): 888-918, 2023 10.
Article in English | MEDLINE | ID: mdl-37581774

ABSTRACT

We consider a novel class of semiparametric joint models for multivariate longitudinal and survival data with dependent censoring. In these models, unknown-fashion cumulative baseline hazard functions are fitted by a novel class of penalized-splines (P-splines) with linear constraints. The dependence between the failure time of interest and censoring time is accommodated by a normal transformation model, where both nonparametric marginal survival function and censoring function are transformed to standard normal random variables with bivariate normal joint distribution. Based on a hybrid algorithm together with the Metropolis-Hastings algorithm within the Gibbs sampler, we propose a feasible Bayesian method to simultaneously estimate unknown parameters of interest, and to fit baseline survival and censoring functions. Intensive simulation studies are conducted to assess the performance of the proposed method. The use of the proposed method is also illustrated in the analysis of a data set from the International Breast Cancer Study Group.


Subject(s)
Algorithms , Models, Statistical , Humans , Bayes Theorem , Computer Simulation
2.
Stat Methods Med Res ; 32(9): 1694-1710, 2023 09.
Article in English | MEDLINE | ID: mdl-37408456

ABSTRACT

Many joint models of multivariate skew-normal longitudinal and survival data have been presented to accommodate for the non-normality of longitudinal outcomes in recent years. But existing work did not consider variable selection. This article investigates simultaneous parameter estimation and variable selection in joint modeling of longitudinal and survival data. The penalized splines technique is used to estimate unknown log baseline hazard function, the rectangle integral method is adopted to approximate conditional survival function. Monte Carlo expectation-maximization algorithm is developed to estimate model parameters. Based on local linear approximations to conditional expectation of likelihood function and penalty function, a one-step sparse estimation procedure is proposed to circumvent the computationally challenge in optimizing the penalized conditional expectation of likelihood function, which is utilized to select significant covariates and trajectory functions, and identify the departure from normality of longitudinal data. The conditional expectation of likelihood function-based Bayesian information criterion is developed to select the optimal tuning parameter. Simulation studies and a real example from the clinical trial are used to illustrate the proposed methodologies.


Subject(s)
Algorithms , Models, Statistical , Bayes Theorem , Computer Simulation , Likelihood Functions , Monte Carlo Method , Longitudinal Studies
3.
Stat Med ; 36(9): 1476-1490, 2017 04 30.
Article in English | MEDLINE | ID: mdl-28070895

ABSTRACT

The normality assumption of measurement error is a widely used distribution in joint models of longitudinal and survival data, but it may lead to unreasonable or even misleading results when longitudinal data reveal skewness feature. This paper proposes a new joint model for multivariate longitudinal and multivariate survival data by incorporating a nonparametric function into the trajectory function and hazard function and assuming that measurement errors in longitudinal measurement models follow a skew-normal distribution. A Monte Carlo Expectation-Maximization (EM) algorithm together with the penalized-splines technique and the Metropolis-Hastings algorithm within the Gibbs sampler is developed to estimate parameters and nonparametric functions in the considered joint models. Case deletion diagnostic measures are proposed to identify the potential influential observations, and an extended local influence method is presented to assess local influence of minor perturbations. Simulation studies and a real example from a clinical trial are presented to illustrate the proposed methodologies. Copyright © 2017 John Wiley & Sons, Ltd.


Subject(s)
Longitudinal Studies , Models, Statistical , Multivariate Analysis , Survival Analysis , Causality , Humans , Monte Carlo Method , Proportional Hazards Models , Statistics, Nonparametric
4.
Biom J ; 59(1): 57-78, 2017 Jan.
Article in English | MEDLINE | ID: mdl-27667731

ABSTRACT

This paper presents a novel semiparametric joint model for multivariate longitudinal and survival data (SJMLS) by relaxing the normality assumption of the longitudinal outcomes, leaving the baseline hazard functions unspecified and allowing the history of the longitudinal response having an effect on the risk of dropout. Using Bayesian penalized splines to approximate the unspecified baseline hazard function and combining the Gibbs sampler and the Metropolis-Hastings algorithm, we propose a Bayesian Lasso (BLasso) method to simultaneously estimate unknown parameters and select important covariates in SJMLS. Simulation studies are conducted to investigate the finite sample performance of the proposed techniques. An example from the International Breast Cancer Study Group (IBCSG) is used to illustrate the proposed methodologies.


Subject(s)
Algorithms , Biometry/methods , Models, Statistical , Bayes Theorem , Breast Neoplasms/mortality , Computer Simulation , Humans , Longitudinal Studies , Multivariate Analysis , Survival Analysis
5.
Stat Med ; 34(5): 824-43, 2015 Feb 28.
Article in English | MEDLINE | ID: mdl-25404574

ABSTRACT

We propose a semiparametric multivariate skew-normal joint model for multivariate longitudinal and multivariate survival data. One main feature of the posited model is that we relax the commonly used normality assumption for random effects and within-subject error by using a centered Dirichlet process prior to specify the random effects distribution and using a multivariate skew-normal distribution to specify the within-subject error distribution and model trajectory functions of longitudinal responses semiparametrically. A Bayesian approach is proposed to simultaneously obtain Bayesian estimates of unknown parameters, random effects and nonparametric functions by combining the Gibbs sampler and the Metropolis-Hastings algorithm. Particularly, a Bayesian local influence approach is developed to assess the effect of minor perturbations to within-subject measurement error and random effects. Several simulation studies and an example are presented to illustrate the proposed methodologies.


Subject(s)
Bayes Theorem , Models, Statistical , Algorithms , Biostatistics/methods , Breast Neoplasms/mortality , Breast Neoplasms/psychology , Clinical Trials as Topic/statistics & numerical data , Computer Simulation , Female , Humans , Longitudinal Studies , Multivariate Analysis , Quality of Life , Survival Analysis
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