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Regression analysis of incomplete data from event history studies with the proportional rates model.

Citation
Yu, G., et al. “Regression Analysis Of Incomplete Data From Event History Studies With The Proportional Rates Model.”. Statistics And Its Interface, pp. 91-97.
Center Albert Einstein College of Medicine
Author Guanglei Yu, Liang Zhu, Jianguo Sun, Leslie L Robison
Keywords Incomplete data, Marginal model, Multiple imputation, Proportional rates model
Abstract

This paper discusses regression analysis of a type of incomplete mixed data arising from event history studies with the proportional rates model. By mixed data, we mean that each study subject may be observed continuously during the whole study period, continuously over some study periods and at some time points, or only at some discrete time points. Therefore, we have combined recurrent event and panel count data. For the problem, we present a multiple imputation-based estimation procedure and one advantage of the proposed marginal model approach is that it can be easily implemented. To assess the performance of the procedure, a simulation study is conducted and indicates that it performs well for practical situations and can be more efficient than the existing method. The methodology is applied to a set of mixed data from a longitudinal cohort study.

Year of Publication
2018
Journal
Statistics and its interface
Volume
11
Issue
1
Number of Pages
91-97
Date Published
12/2018
ISSN Number
1938-7989
DOI
10.4310/SII.2018.v11.n1.a8
Alternate Journal
Stat Interface
PMID
29276554
PMCID
PMC5736158
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