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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Methods for observed-cluster inference when cluster size is informative: A review and clarifications
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Methods for observed-cluster inference when cluster size is informative: A review and clarifications

机译:集群大小可提供信息时的观测集群推断方法:回顾和澄清

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Clustered data commonly arise in epidemiology. We assume each cluster member has an outcome Y and covariates X. When there are missing data in Y, the distribution of Y given X in all cluster members ("complete clusters") may be different from the distribution just in members with observed Y ("observed clusters"). Often the former is of interest, but when data are missing because in a fundamental sense Y does not exist (e.g., quality of life for a person who has died), the latter may be more meaningful (quality of life conditional on being alive). Weighted and doubly weighted generalized estimating equations and shared random-effects models have been proposed for observed-cluster inference when cluster size is informative, that is, the distribution of Y given X in observed clusters depends on observed cluster size. We show these methods can be seen as actually giving inference for complete clusters and may not also give observed-cluster inference. This is true even if observed clusters are complete in themselves rather than being the observed part of larger complete clusters: here methods may describe imaginary complete clusters rather than the observed clusters. We show under which conditions shared random-effects models proposed for observed-cluster inference do actually describe members with observed Y. A psoriatic arthritis dataset is used to illustrate the danger of misinterpreting estimates from shared random-effects models.
机译:聚集数据通常在流行病学中出现。我们假设每个聚类成员都有一个结果Y和协变量X。当Y中缺少数据时,给定X在所有聚类成员(“完整聚类”)中的Y分布可能不同于仅具有观察到的Y的成员的分布( “观察到的星团”)。通常前者很有趣,但是当数据丢失是因为从根本上说Y不存在(例如,死亡者的生活质量)时,后者可能更有意义(生活条件取决于生存) 。当簇的大小是可观的时,已经提出了加权和双重加权的广义估计方程和共享随机效应模型,用于观察簇的推断,也就是说,在观察簇中给定X的Y的分布取决于观察簇的大小。我们表明,这些方法可以看作是对完整聚类进行实际推断,可能也不能给出观察到的聚类推断。即使观察到的聚类本身是完整的,而不是较大的完整聚类的被观察部分,也是如此:这里的方法可能描述了虚构的完整聚类,而不是观察到的聚类。我们显示了在什么条件下为观察聚类推断提议的共享随机效应模型实际上确实描述了具有观测Y的成员。银屑病关节炎数据集用于说明误解来自共享随机效应模型的估计值的危险。

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