Marginal Regression of Gaps Between Recurrent Events |
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Authors: | Huang Yijian Chen Ying Qing |
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Affiliation: | (1) Division of Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, WA;(2) Program in Biostatistics, School of Public Health, University of California, Berkeley, CA |
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Abstract: | Recurrent event data typically exhibit the phenomenon of intra-individual correlation, owing to not only observed covariates but also random effects. In many applications, the population may be reasonably postulated as a heterogeneous mixture of individual renewal processes, and the inference of interest is the effect of individual-level covariates. In this article, we suggest and investigate a marginal proportional hazards model for gaps between recurrent events. A connection is established between observed gap times and clustered survival data with informative cluster size. We subsequently construct a novel and general inference procedure for the latter, based on a functional formulation of standard Cox regression. Large-sample theory is established for the proposed estimators. Numerical studies demonstrate that the procedure performs well with practical sample sizes. Application to the well-known bladder tumor data is given as an illustration. |
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Keywords: | clustered survival data estimating equation partial score proportional hazards model renewal process semiparametric inference |
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