Literature DB >> 27479944

Joint partially linear model for longitudinal data with informative drop-outs.

Sehee Kim1, Donglin Zeng2, Jeremy M G Taylor1.   

Abstract

In biomedical research, a steep rise or decline in longitudinal biomarkers may indicate latent disease progression, which may subsequently cause patients to drop out of the study. Ignoring the informative drop-out can cause bias in estimation of the longitudinal model. In such cases, a full parametric specification may be insufficient to capture the complicated pattern of the longitudinal biomarkers. For these types of longitudinal data with the issue of informative drop-outs, we develop a joint partially linear model, with an aim to find the trajectory of the longitudinal biomarker. Specifically, an arbitrary function of time along with linear fixed and random covariate effects is proposed in the model for the biomarker, while a flexible semiparametric transformation model is used to describe the drop-out mechanism. Advantages of this semiparametric joint modeling approach are the following: 1) it provides an easier interpretation, compared to standard nonparametric regression models, and 2) it is a natural way to control for common (observable and unobservable) prognostic factors that may affect both the longitudinal trajectory and the drop-out process. We describe a sieve maximum likelihood estimation procedure using the EM algorithm, where the Akaike information criterion (AIC) and Bayesian information criterion (BIC) are considered to select the number of knots. We show that the proposed estimators achieve desirable asymptotic properties through empirical process theory. The proposed methods are evaluated by simulation studies and applied to prostate cancer data.
© 2016, The International Biometric Society.

Entities:  

Keywords:  Joint models; Longitudinal data; Nonparametric maximum likelihood; Partially linear model; Random effects; Sieve maximum likelihood; Transformation models

Mesh:

Substances:

Year:  2016        PMID: 27479944      PMCID: PMC5525063          DOI: 10.1111/biom.12566

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


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7.  Bayesian inference on mixed-effects varying-coefficient joint models with skew- t distribution for longitudinal data with multiple features.

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8.  Time-varying latent effect model for longitudinal data with informative observation times.

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Journal:  Biometrics       Date:  2012-10-01       Impact factor: 2.571

9.  Joint Models of Longitudinal Data and Recurrent Events with Informative Terminal Event.

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10.  Real-time individual predictions of prostate cancer recurrence using joint models.

Authors:  Jeremy M G Taylor; Yongseok Park; Donna P Ankerst; Cecile Proust-Lima; Scott Williams; Larry Kestin; Kyoungwha Bae; Tom Pickles; Howard Sandler
Journal:  Biometrics       Date:  2013-02-04       Impact factor: 2.571

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Review 3.  Joint models for dynamic prediction in localised prostate cancer: a literature review.

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