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A class of Box-Cox transformation models for recurrent event data

机译:一类用于重复事件数据的Box-Cox转换模型

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In this article, we propose a class of Box-Cox transformation models for recurrent event data, which includes the proportional means models as special cases. The new model offers great flexibility in formulating the effects of covariates on the mean functions of counting processes while leaving the stochastic structure completely unspecified. For the inference on the proposed models, we apply a profile pseudo-partial likelihood method to estimate the model parameters via estimating equation approaches and establish large sample properties of the estimators and examine its performance in moderate-sized samples through simulation studies. In addition, some graphical and numerical procedures are presented for model checking. An example of application on a set of multiple-infection data taken from a clinic study on chronic granulomatous disease (CGD) is also illustrated.
机译:在本文中,我们为递归事件数据提出了一类Box-Cox转换模型,其中包括作为特殊情况的比例均值模型。新模型在制定协变量对计数过程的平均函数的影响时提供了极大的灵活性,同时完全没有指定随机结构。为了对建议的模型进行推断,我们采用了轮廓伪偏似然法,通过估计方程方法估计模型参数,并建立估计量的大样本属性,并通过仿真研究来检验其在中等大小样本中的性能。此外,还提供了一些图形和数字程序来进行模型检查。还举例说明了从慢性肉芽肿性疾病(CGD)的临床研究中获取的一组多重感染数据的应用示例。

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