4.5 Article

Generalized Partially Linear Models for Incomplete Longitudinal Data In the Presence of Population-Level Information

期刊

BIOMETRICS
卷 69, 期 2, 页码 386-395

出版社

WILEY
DOI: 10.1111/biom.12015

关键词

Auxiliary; Drop-out; Longitudinal data; Partially linear model; Population-level information; Pseudoempirical likelihood

资金

  1. U.S. Department of Veterans Affairs
  2. Veterans Affairs Health Administration
  3. HSRD [RCS 05-196]
  4. National Science Foundation of China (NSFC) [30728019]
  5. National Institute on Aging [U01AG016976]

向作者/读者索取更多资源

In observational studies, interest often lies in estimation of the population-level relationship between the explanatory variables and dependent variables, and the estimation is often done using longitudinal data. Longitudinal data often feature sampling error and bias due to nonrandom drop-out. However, inclusion of population-level information can increase estimation efficiency. In this article, we consider a generalized partially linear model for incomplete longitudinal data in the presence of the population-level information. A pseudo-empirical likelihood-based method is introduced to incorporate population-level information, and nonrandom drop-out bias is corrected by using a weighted generalized estimating equations method. A three-step estimation procedure is proposed, which makes the computation easier. Several methods that are often used in practice are compared in simulation studies, which demonstrate that our proposed method can correct the nonrandom drop-out bias and increase the estimation efficiency, especially for small sample size or when the missing proportion is high. We apply this method to an Alzheimer's disease study.

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