This project will develop statistical methods for the joint analysis of time-to-event and repeated measures data collected serially in longitudinal studies. Such data are increasingly common in many settings in medicine and public health, including clinical trials designed to evaluate palliative, maintenance, or preventative therapies, in evaluation of prevention interventions, and in population studies of the effects of risk factors on the development of disease. Our methodology will be applied to clinical trial data for AIDS, schizophrenia, and contraception therapies, and to a longitudinal epidemiological study of obesity in childhood. There are two main components to the project, both of them involving the joint analysis of repeated measures and time-to-event data. The first component will focus on the case where primary interest is in describing trends in a categorical outcome over time in the presence of non-ignorable dropout. This is common in clinical trials where removal from treatment may be related to the outcome of interest and causes follow-up to cease. A new feature of this work will be the use of a mixture model to incorporate information on dropout. Mixture models offer two important advantages: they can be easily implemented and it is straightforward to characterize model assumptions. We will develop methods based on Generalized Estimating Equations (GEE) for the case where any intermediate missingness prior to dropout is Missing Completely at Random, and extend the method to del with arbitrary patterns of non-ignorable non-response. We will also develop maximum likelihood approaches using both marginal and Markov models for the case where intermediate missingness is Missing at Random. Second, we will focus on the case where the primary interest is survival and where the repeated measures are used to gain efficiency in the presence of censoring. This component will extend previous work on this problem by using mixture models for categorical repeated measures, by including covariates for the survival model with the proportional hazards assumption, and by using maximum likelihood to estimate the joint distribution of survival and repeated measures.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
2R01GM029745-18
Application #
2760329
Study Section
Special Emphasis Panel (ZRG7-STA (01))
Project Start
1981-09-01
Project End
2002-11-30
Budget Start
1998-12-01
Budget End
1999-11-30
Support Year
18
Fiscal Year
1999
Total Cost
Indirect Cost
Name
Harvard University
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
082359691
City
Boston
State
MA
Country
United States
Zip Code
02115
Fraser, Raphael André; Lipsitz, Stuart R; Sinha, Debajyoti et al. (2016) Approximate median regression for complex survey data with skewed response. Biometrics 72:1336-1347
Parzen, Michael; Ghosh, Souparno; Lipsitz, Stuart et al. (2011) A generalized linear mixed model for longitudinal binary data with a marginal logit link function. Ann Appl Stat 5:449-467
Parikh, Ankit; Natarajan, Sundar; Lipsitz, Stuart R et al. (2011) Iron deficiency in community-dwelling US adults with self-reported heart failure in the National Health and Nutrition Examination Survey III: prevalence and associations with anemia and inflammation. Circ Heart Fail 4:599-606
Troxel, Andrea B; Lipsitz, Stuart R; Fitzmaurice, Garrett M et al. (2010) A weighted combination of pseudo-likelihood estimators for longitudinal binary data subject to non-ignorable non-monotone missingness. Stat Med 29:1511-21
Friedberg, Jennifer P; Lipsitz, Stuart R; Natarajan, Sundar (2010) Challenges and recommendations for blinding in behavioral interventions illustrated using a case study of a behavioral intervention to lower blood pressure. Patient Educ Couns 78:5-11
Lin, Yan; Newcombe, Robert G; Lipsitz, Stuart et al. (2009) Fully specified bootstrap confidence intervals for the difference of two independent binomial proportions based on the median unbiased estimator. Stat Med 28:2876-90
Lipsitz, Stuart R; Fitzmaurice, Garrett M; Ibrahim, Joseph G et al. (2009) Joint generalized estimating equations for multivariate longitudinal binary outcomes with missing data: An application to AIDS data. J R Stat Soc Ser A Stat Soc 172:3-20
Ding, Xiao; Lange, Christoph; Xu, Xin et al. (2009) New powerful approaches for family-based association tests with longitudinal measurements. Ann Hum Genet 73:74-83
Ding, Xiao; Weiss, Scott; Raby, Benjamin et al. (2009) Impact of population stratification on family-based association tests with longitudinal measurements. Stat Appl Genet Mol Biol 8:Article 17
Ding, Xiao; Laird, Nan (2009) Family-Based Association Tests with longitudinal measurements: handling missing data. Hum Hered 68:98-105

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