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A case-base sampling method for estimating recurrent event intensities

机译:基于案例的抽样方法来估计复发事件的强度

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Case-base sampling provides an alternative to risk set sampling based methods to estimate hazard regression models, in particular when absolute hazards are also of interest in addition to hazard ratios. The case-base sampling approach results in a likelihood expression of the logistic regression form, but instead of categorized time, such an expression is obtained through sampling of a discrete set of person-time coordinates from all follow-up data. In this paper, in the context of a time-dependent exposure such as vaccination, and a potentially recurrent adverse event outcome, we show that the resulting partial likelihood for the outcome event intensity has the asymptotic properties of a likelihood. We contrast this approach to self-matched case-base sampling, which involves only within-individual comparisons. The efficiency of the case-base methods is compared to that of standard methods through simulations, suggesting that the information loss due to sampling is minimal.
机译:基于案例的抽样提供了一种替代基于风险集抽样的方法来估算危害回归模型的方法,特别是当除危害率之外还需要绝对危害时。基于案例的抽样方法会导致逻辑回归形式的似然表达,但不是对时间进行分类,而是通过从所有后续数据中抽样一组离散的人时坐标来获得这种表达。在本文中,在时间依赖性暴露(例如疫苗接种)和潜在的反复发生的不良事件结果的背景下,我们证明了结果事件强度所产生的部分可能性具有似然性的渐近性质。我们将这种方法与基于案例的自我匹配抽样进行了对比,后者仅涉及内部比较。通过模拟将案例方法的效率与标准方法的效率进行了比较,这表明由于采样而导致的信息损失最小。

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