This application addresses the development and application of new analytic strategies for mixed recurrent-event and panel-count data. While recurrent-event data and panel-count data are both generated from recurrent-event processes, they have different observation systems. In the former, subjects are observed continuously and in the latter, subjects are observed only at discrete time points. Consequently, recurrent-event data record all occurrence times of recurrent events, while panel-count data record only the events between observation time points. It is possible that in a single cohort, some subjects have recurrent-event data while others have panel-count data, or every subject has recurrent-event data during some periods and has panel-count data during other periods. It is not unusual to have these mixed data in long-term follow-up studies. The current common practice is to approximate or simplify these complex data, resulting in potentially misleading conclusions. There is an urgent need to develop intuitive, efficient, and computationally feasible methods for analyzing complex data in event history studies. This project proposes to use data from the renown longitudinal Childhood Cancer Survivor Study (CCSS) to: 1) develop both a nonparametric estimation of the mean function and a procedure of nonparametric two-sample comparison for these mixed data;2) Develop a semiparametric estimating equation-based method for a proportional mean model and a semiparametric estimating equation-based method for an additive rate model for regression analysis;and, 3) Extend the methods developed in Aim 2 for multivariate mixed recurrent-event and panel-count data. These approaches potentially have strong statistical and clinical relevance for the study of complex event history data.

Public Health Relevance

Statement This application addresses the development and application of new analytic strategies for mixed recurrent-event and panel-count data. It is possible that in a single cohort, some subjects have recurrent-event data while others have panel-count data, or every subject has recurrent-event data during some periods and has panel-count data during other periods. This type of mixed data arises frequently in long-term follow-up studies. To date, no existing statistical methods have been developed that will allow for comprehensively assessing this complex data structure. We propose the development and application of new analytic strategies to assess these data in order to provide useful tools for statisticians and clinicians in cancer and other fields which rely on long-term cohort follow-u studies.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Small Research Grants (R03)
Project #
1R03CA169150-01A1
Application #
8584083
Study Section
Special Emphasis Panel (ZCA1-SRLB-D (M1))
Program Officer
Dunn, Michelle C
Project Start
2013-07-01
Project End
2015-06-30
Budget Start
2013-07-01
Budget End
2014-06-30
Support Year
1
Fiscal Year
2013
Total Cost
$87,500
Indirect Cost
$37,500
Name
St. Jude Children's Research Hospital
Department
Type
DUNS #
067717892
City
Memphis
State
TN
Country
United States
Zip Code
38105
Yu, Guanglei; Zhu, Liang; Sun, Jianguo et al. (2018) Regression analysis of incomplete data from event history studies with the proportional rates model. Stat Interface 11:91-97
Yu, Guanglei; Zhu, Liang; Li, Yang et al. (2017) Regression analysis of mixed panel count data with dependent terminal events. Stat Med 36:1669-1680
Zhu, Liang; Zhao, Hui; Sun, Jianguo et al. (2015) Regression analysis of mixed recurrent-event and panel-count data with additive rate models. Biometrics 71:71-79
Zhu, Liang; Tong, Xinwei; Sun, Jianguo et al. (2014) Regression analysis of mixed recurrent-event and panel-count data. Biostatistics 15:555-68
Zhu, Liang; Tong, Xingwei; Zhao, Hui et al. (2013) Statistical analysis of mixed recurrent event data with application to cancer survivor study. Stat Med 32:1954-63