Shared Frailty Methods for Complex Survival Data: A Review of Recent Advances

arxiv(2022)

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摘要
Dependent survival data arise in many contexts. One context is clustered survival data, where survival data are collected on clusters such as families or medical centers. Dependent survival data also arise when multiple survival times are recorded for each individual. Frailty models is one common approach to handle such data. In frailty models, the dependence is expressed in terms of a random effect, called the frailty. Frailty models have been used with both Cox proportional hazards model and the accelerated failure time model. This paper reviews recent developments in the area of frailty models in a variety of settings. In each setting we provide a detailed model description, assumptions, available estimation methods, and R packages.
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关键词
accelerated failure time model,clustered data,competing event,Cox regression,regression tree,random survival forest,recurrent events
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