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Published in: Lifetime Data Analysis 4/2020

12-07-2020

Statistical analysis of clustered mixed recurrent-event data with application to a cancer survivor study

Authors: Liang Zhu, Sangbum Choi, Yimei Li, Xuelin Huang, Jianguo Sun, Leslie L. Robison

Published in: Lifetime Data Analysis | Issue 4/2020

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Abstract

In long-term follow-up studies on recurrent events, the observation patterns may not be consistent over time. During some observation periods, subjects may be monitored continuously so that each event occurence time is known. While during the other observation periods, subjects may be monitored discretely so that only the number of events in each period is known. This results in mixed recurrent-event and panel-count data. In these data, there is dependence among within-subject events. Furthermore, if the data are collected from multiple centers, then there is another level of dependence among within-center subjects. Literature exists for clustered recurrent-event data, but not for clustered mixed recurrent-event and panel-count data. Ignoring the cluster effect may lead to less efficient analysis. In this paper, we present a marginal modeling approach to take into account the cluster effect and provide asymptotic distributions of the resulting regression parameters. Our simulation study demonstrates that this approach works well for practical situations. It was applied to a study comparing the hospitalization rates between childhood cancer survivors and healthy controls, with data collected from 26 medical institutions across North America during more than 20 years of follow-up.

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Appendix
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Literature
go back to reference Cai J, Schaubel DE (2004) Marginal means/rates models for multiple type recurrent event data. Lifetime Data Anal 10:121–138MathSciNetCrossRef Cai J, Schaubel DE (2004) Marginal means/rates models for multiple type recurrent event data. Lifetime Data Anal 10:121–138MathSciNetCrossRef
go back to reference Cook RJ, Lawless JF (2007) The analysis of recurrent event data. Springer, New YorkMATH Cook RJ, Lawless JF (2007) The analysis of recurrent event data. Springer, New YorkMATH
go back to reference Fang S, Zhang HX, Sun LQ, Wang DH (2017) Analysis of panel count data with time-dependent covariates and informative observation process. Acta Math Appl Sin Engl Ser 33(1):147–56MathSciNetCrossRef Fang S, Zhang HX, Sun LQ, Wang DH (2017) Analysis of panel count data with time-dependent covariates and informative observation process. Acta Math Appl Sin Engl Ser 33(1):147–56MathSciNetCrossRef
go back to reference He H, Pan D, Sun L, Li Y, Robison LL, Song X (2017) Analysis of a fixed center effect additive rates model for recurrent event data. Comput Stat Data Anal 112:186–197MathSciNetCrossRef He H, Pan D, Sun L, Li Y, Robison LL, Song X (2017) Analysis of a fixed center effect additive rates model for recurrent event data. Comput Stat Data Anal 112:186–197MathSciNetCrossRef
go back to reference Lawless JF, Nadeau C (1995) Some simple robust methods for the analysis of recurrent events. Technometrics 37:158–168MathSciNetCrossRef Lawless JF, Nadeau C (1995) Some simple robust methods for the analysis of recurrent events. Technometrics 37:158–168MathSciNetCrossRef
go back to reference Li S, Sun Y, Huang CY, Follmann DA, Krause R (2016) Recurrent event data analysis with intermittently observed time varying covariates. Stat Med 35(18):3049–65MathSciNetCrossRef Li S, Sun Y, Huang CY, Follmann DA, Krause R (2016) Recurrent event data analysis with intermittently observed time varying covariates. Stat Med 35(18):3049–65MathSciNetCrossRef
go back to reference Lin DY, Wei LJ, Yang I, Ying Z (2000) Semiparametric regression for the mean and rate function of recurrent events. J R Stat Soc Ser B 69:711–730MathSciNetCrossRef Lin DY, Wei LJ, Yang I, Ying Z (2000) Semiparametric regression for the mean and rate function of recurrent events. J R Stat Soc Ser B 69:711–730MathSciNetCrossRef
go back to reference Liu D, Kalbfleisch JD, Schaubel DE (2012) Methods for estimating center effects on recurrent events. Stat Biosci 6(1):19–37CrossRef Liu D, Kalbfleisch JD, Schaubel DE (2012) Methods for estimating center effects on recurrent events. Stat Biosci 6(1):19–37CrossRef
go back to reference Liu D, Kalbfleisch JD, Schaubel DE (2014) Methods for estimating center effects on recurrent events. Stat Biosci 6(1):19–37CrossRef Liu D, Kalbfleisch JD, Schaubel DE (2014) Methods for estimating center effects on recurrent events. Stat Biosci 6(1):19–37CrossRef
go back to reference Pepe MS, Cai J (1993) Some graphic displays and marginal regression analyses for recurrent failure times and time dependent covariates. J Am Stat Assoc 88:811–820CrossRef Pepe MS, Cai J (1993) Some graphic displays and marginal regression analyses for recurrent failure times and time dependent covariates. J Am Stat Assoc 88:811–820CrossRef
go back to reference Pollard D (1990 Jan 1) Empirical processes: theory and applications. In: NSF-CBMS regional conference series in probability and statistics (pp. i-86). Institute of Mathematical Statistics and the American Statistical Association Pollard D (1990 Jan 1) Empirical processes: theory and applications. In: NSF-CBMS regional conference series in probability and statistics (pp. i-86). Institute of Mathematical Statistics and the American Statistical Association
go back to reference Schaubel DE, Cai J (2005a) Analysis of clustered recurrent-event data with application to hospitalization rates among renal failure patients. Biostatistics 6:404–419CrossRef Schaubel DE, Cai J (2005a) Analysis of clustered recurrent-event data with application to hospitalization rates among renal failure patients. Biostatistics 6:404–419CrossRef
go back to reference Schaubel DE, Cai J (2005b) Semiparametric methods for clustered recurrent event data. Lifetime Data Anal 11(3):405–425MathSciNetCrossRef Schaubel DE, Cai J (2005b) Semiparametric methods for clustered recurrent event data. Lifetime Data Anal 11(3):405–425MathSciNetCrossRef
go back to reference Sun J, Zhao X (2013) The statistical analysis of panel count data. Springer, New YorkCrossRef Sun J, Zhao X (2013) The statistical analysis of panel count data. Springer, New YorkCrossRef
go back to reference Sun L, Zhu L, Sun J (2009) Regression analysis of multivariate recurrent event data with time-varying covariate effects. J Multivar Anal 100(10):2214–23MathSciNetCrossRef Sun L, Zhu L, Sun J (2009) Regression analysis of multivariate recurrent event data with time-varying covariate effects. J Multivar Anal 100(10):2214–23MathSciNetCrossRef
go back to reference Wang MC, Chen YQ (2000) Nonparametric and semiparametric trend analysis of stratified recurrent time data. Biometrics 56:789–794CrossRef Wang MC, Chen YQ (2000) Nonparametric and semiparametric trend analysis of stratified recurrent time data. Biometrics 56:789–794CrossRef
go back to reference Wang Y, Yu Z (2019 Mar 25) A kernel regression model for panel count data with time-varying coefficients. ArXiv preprint arXiv:1903.10233 Wang Y, Yu Z (2019 Mar 25) A kernel regression model for panel count data with time-varying coefficients. ArXiv preprint arXiv:​1903.​10233
go back to reference Yu Z, Liu L, Bravata DM, Williams LS, Tepper RS (2013) A semiparametric recurrent events model with time varying coefficients. Stat Med 32(6):1016–26MathSciNetCrossRef Yu Z, Liu L, Bravata DM, Williams LS, Tepper RS (2013) A semiparametric recurrent events model with time varying coefficients. Stat Med 32(6):1016–26MathSciNetCrossRef
go back to reference Zhu L, Zhao H, Tong X, Sun J, Srivastava DK, Leisenring W, Robison LL (2013) Statistical analysis of mixed recurrent event data with application to cancer survivor study. Stat Med 32(11):1954–63MathSciNetCrossRef Zhu L, Zhao H, Tong X, Sun J, Srivastava DK, Leisenring W, Robison LL (2013) Statistical analysis of mixed recurrent event data with application to cancer survivor study. Stat Med 32(11):1954–63MathSciNetCrossRef
go back to reference Zhu L, Tong X, Sun J, Chen M, Srivastava DK, Leisenring W, Robison LL (2014) Regression analysis of mixed recurrent-event and panel-count data. Biostatistics 15(3):555–568CrossRef Zhu L, Tong X, Sun J, Chen M, Srivastava DK, Leisenring W, Robison LL (2014) Regression analysis of mixed recurrent-event and panel-count data. Biostatistics 15(3):555–568CrossRef
go back to reference Zhu L, Zhao H, Sun J, Leisenring W, Robison LL (2015) Regression analysis of mixed recurrent-event and panel-count data with additive rate models. Biometrics 71(1):71–79MathSciNetCrossRef Zhu L, Zhao H, Sun J, Leisenring W, Robison LL (2015) Regression analysis of mixed recurrent-event and panel-count data with additive rate models. Biometrics 71(1):71–79MathSciNetCrossRef
go back to reference Zhu L, Zhang Y, Li Y, Sun J, Robison LL (2017) A semiparametric likelihood-based method for regression analysis of mixed panel-count data. Biometrics 74:488–497MathSciNetCrossRef Zhu L, Zhang Y, Li Y, Sun J, Robison LL (2017) A semiparametric likelihood-based method for regression analysis of mixed panel-count data. Biometrics 74:488–497MathSciNetCrossRef
Metadata
Title
Statistical analysis of clustered mixed recurrent-event data with application to a cancer survivor study
Authors
Liang Zhu
Sangbum Choi
Yimei Li
Xuelin Huang
Jianguo Sun
Leslie L. Robison
Publication date
12-07-2020
Publisher
Springer US
Published in
Lifetime Data Analysis / Issue 4/2020
Print ISSN: 1380-7870
Electronic ISSN: 1572-9249
DOI
https://doi.org/10.1007/s10985-020-09500-6

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