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Exponentiated Weibull regression for time-to-event data

机译:事件时间数据的指数Weibull回归

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The Weibull, log-logistic and log-normal distributions are extensively used to model time-to-event data. The Weibull family accommodates only monotone hazard rates, whereas the log-logistic and log-normal are widely used to model unimodal hazard functions. The increasing availability of lifetime data with a wide range of characteristics motivate us to develop more flexible models that accommodate both monotone and nonmonotone hazard functions. One such model is the exponentiated Weibull distribution which not only accommodates monotone hazard functions but also allows for unimodal and bathtub shape hazard rates. This distribution has demonstrated considerable potential in univariate analysis of time-to-event data. However, the primary focus of many studies is rather on understanding the relationship between the time to the occurrence of an event and one or more covariates. This leads to a consideration of regression models that can be formulated in different ways in survival analysis. One such strategy involves formulating models for the accelerated failure time family of distributions. The most commonly used distributions serving this purpose are the Weibull, log-logistic and log-normal distributions. In this study, we show that the exponentiated Weibull distribution is closed under the accelerated failure time family. We then formulate a regression model based on the exponentiated Weibull distribution, and develop large sample theory for statistical inference. We also describe a Bayesian approach for inference. Two comparative studies based on real and simulated data sets reveal that the exponentiated Weibull regression can be valuable in adequately describing different types of time-to-event data.
机译:Weibull,对数逻辑和对数正态分布广泛用于对事件数据进行建模。 Weibull系列仅适应单调危害率,而对数逻辑和对数正态被广泛用于建模单峰危害函数。具有广泛特征的生命周期数据的可用性不断提高,促使我们开发更灵活的模型,以适应单调和非单调危害函数。一种这样的模型是指数Weibull分布,它不仅具有单调危害功能,而且还允许单峰和浴缸形状危害率。这种分布在事件数据的单变量分析中显示出了巨大的潜力。但是,许多研究的主要重点是理解事件发生的时间与一个或多个协变量之间的关系。这导致需要考虑可以在生存分析中以不同方式制定的回归模型。一种这样的策略涉及为加速故障时间分布族建立模型。为此目的最常用的分布是Weibull,对数逻辑和对数正态分布。在这项研究中,我们表明在加速失效时间族下,指数威布尔分布是封闭的。然后,我们根据指数Weibull分布建立回归模型,并开发用于统计推断的大样本理论。我们还描述了一种贝叶斯推理方法。基于真实和模拟数据集的两项比较研究表明,指数化的Weibull回归对于充分描述不同类型的事件时间数据可能非常有价值。

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