Literature DB >> 9147598

A joint model for survival and longitudinal data measured with error.

M S Wulfsohn1, A A Tsiatis.   

Abstract

The relationship between a longitudinal covariate and a failure time process can be assessed using the Cox proportional hazards regression model. We consider the problem of estimating the parameters in the Cox model when the longitudinal covariate is measured infrequently and with measurement error. We assume a repeated measures random effects model for the covariate process. Estimates of the parameters are obtained by maximizing the joint likelihood for the covariate process and the failure time process. This approach uses the available information optimally because we use both the covariate and survival data simultaneously. Parameters are estimated using the expectation-maximization algorithm. We argue that such a method is superior to naive methods where one maximizes the partial likelihood of the Cox model using the observed covariate values. It also improves on two-stage methods where, in the first stage, empirical Bayes estimates of the covariate process are computed and then used as time-dependent covariates in a second stage to find the parameters in the Cox model that maximize the partial likelihood.

Entities:  

Mesh:

Year:  1997        PMID: 9147598

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  204 in total

1.  AN APPROACH FOR JOINTLY MODELING MULTIVARIATE LONGITUDINAL MEASUREMENTS AND DISCRETE TIME-TO-EVENT DATA.

Authors:  Paul S Albert; Joanna H Shih
Journal:  Ann Appl Stat       Date:  2010-09-01       Impact factor: 2.083

2.  A joint model for nonlinear longitudinal data with informative dropout.

Authors:  Chuanpu Hu; Mark E Sale
Journal:  J Pharmacokinet Pharmacodyn       Date:  2003-02       Impact factor: 2.745

3.  A latent process model for joint modeling of events and marker.

Authors:  R Hashemi; H Jacqmin-Gadda; D Commenges
Journal:  Lifetime Data Anal       Date:  2003-12       Impact factor: 1.588

4.  Longitudinal Data with Follow-up Truncated by Death: Match the Analysis Method to Research Aims.

Authors:  Brenda F Kurland; Laura L Johnson; Brian L Egleston; Paula H Diehr
Journal:  Stat Sci       Date:  2009       Impact factor: 2.901

5.  Latent-model robustness in joint models for a primary endpoint and a longitudinal process.

Authors:  Xianzheng Huang; Leonard A Stefanski; Marie Davidian
Journal:  Biometrics       Date:  2009-01-23       Impact factor: 2.571

6.  Estimation in semiparametric transition measurement error models for longitudinal data.

Authors:  Wenqin Pan; Donglin Zeng; Xihong Lin
Journal:  Biometrics       Date:  2009-01-23       Impact factor: 2.571

7.  Predicting progression of glaucoma from rates of frequency doubling technology perimetry change.

Authors:  Daniel Meira-Freitas; Andrew J Tatham; Renato Lisboa; Tung-Mei Kuang; Linda M Zangwill; Robert N Weinreb; Christopher A Girkin; Jeffrey M Liebmann; Felipe A Medeiros
Journal:  Ophthalmology       Date:  2013-11-26       Impact factor: 12.079

8.  Hemoglobin A1c Level and Cardiovascular Disease Incidence in Persons With Type 1 Diabetes: An Application of Joint Modeling of Longitudinal and Time-to-Event Data in the Pittsburgh Epidemiology of Diabetes Complications Study.

Authors:  Rachel G Miller; Stewart J Anderson; Tina Costacou; Akira Sekikawa; Trevor J Orchard
Journal:  Am J Epidemiol       Date:  2018-07-01       Impact factor: 4.897

9.  Regression analysis of longitudinal data with outcome-dependent sampling and informative censoring.

Authors:  Weining Shen; Suyu Liu; Yong Chen; Jing Ning
Journal:  Scand Stat Theory Appl       Date:  2018-12-26       Impact factor: 1.396

10.  Prediction of Conversion to Alzheimer's Disease with Longitudinal Measures and Time-To-Event Data.

Authors:  Kan Li; Wenyaw Chan; Rachelle S Doody; Joseph Quinn; Sheng Luo
Journal:  J Alzheimers Dis       Date:  2017       Impact factor: 4.472

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.