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A vine copula approach for regression analysis of bivariate current status data with informative censoring

机译:作者:张莹莹,兼论

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Bivariate current status data occur in many areas and many authors have discussed their analysis and proposed many inference procedures [Jewell, N.P., van der Laan, M.J., and Lei, X. (2005), 'Bivariate Current Status Data with Univariate Monitoring Times', Biometrika, 92, 847-862; Wang, N., Wang, L., and McMahan, C.S. (2015), 'Regression Analysis of Bivariate Current Status Data Under the Gammafrailty Proportional Hazards Model Using the Em Algorithm', Computational Statistics & Data Analysis, 83, 140-150; Hu, T., Zhou, Q., and Sun, J. (2017), 'Regression Analysis of Bivariate Current Status Data Under the Proportional Hazards Model', The Canadian Journal of Statistics, 45, 410-424]. However, most of these methods are for the situation where the observation or censoring is non-informative and sometimes one may face informative censoring [Zhang, Z., Sun, J., and Sun, L. (2005), 'Statistical Analysis of Current Data with Informative Observation Times', Statistics in Medicine, 24, 1399-1407; Chen, C.M., Lu, T.F.C., Chen, M.H., and Hsu, C.M. (2012), 'Semiparametric Transformation Models for Current Status Data with Informative Censoring', Biometrical Journal, 19, 641-656; Ma, L., Hu, T., and Sun, J. (2015), 'Sieve Maximum Likelihood Regression Analysis of Dependent Current Status Data', Biometrika, 85, 649-658], where one has to deal with three correlated random variables. In this paper, a vine copula approach is developed for regression analysis of bivariate current status data in the presence of informative censoring. The proposed estimators are shown to be strongly consistent and the asymptotic normality and efficiency of the estimated regression parameter are also established. Numerical results suggest that the proposed method works well in practice.
机译:在许多领域发生了一定的现状数据,许多作者讨论了他们的分析并提出了许多推理程序[Jewell,NP,Van der Laan,MJ和Lei,X.(2005),具有单变量监测时间的二核现状数据' ,Biometrika,92,847-862;王,N.,Wang,L.和McMahan,C.S.(2015),使用EM算法的GammaFrailty比例危险模型的二抗体当前状态数据的回归分析,计算统计和数据分析,83,140-150;胡,T.,周,Q.和Sun,J.(2017),'比例危险模型下的二元现状数据的回归分析',加拿大统计日志,45,410-424。然而,这些方法中的大多数是观察或审查是非信息性的,有时可能面临信息审查[Zhang,Z.,Sun,J和Sun,L。(2005),'统计分析目前具有信息性观察时间的数据,医学统计,24,1399-1407; Chen,C.M.,Lu,T.F.C.,Chen,M.H.和Hsu,C.M.. (2012),“具有信息审查的当前状态数据的半造型转换模型”,生物杂志,19,641-656; MA,L.,Hu,T.和Sun,J。(2015),'筛选依赖电流状态数据的最大似然回归分析',Biometrika,85,649-658],其中一个人必须处理三个相关的随机性变量。在本文中,开发了一种葡萄拷贝方法,用于在非线性审查的存在下的双变量现状数据的回归分析。所提出的估计人员表现出强烈一致,也建立了估计的回归参数的渐近常态和效率。数值结果表明,所提出的方法在实践中运作良好。

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