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Outcome-dependent sampling for longitudinal binary response data based on a time-varying auxiliary variable

机译:基于时变辅助变量的纵向二进制响应数据的结果相关采样

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Outcome-dependent sampling (ODS) study designs are commonly implemented with rare diseases or when prospective studies are infeasible. In longitudinal data settings, when a repeatedly measured binary response is rare, an ODS design can be highly efficient for maximizing statistical information subject to resource limitations that prohibit covariate ascertainment of all observations. This manuscript details an ODS design where individual observations are sampled with probabilities determined by an inexpensive, time-varying auxiliary variable that is related but is not equal to the response. With the goal of validly estimating marginal model parameters based on the resulting biased sample, we propose a semi-parametric, sequential offsetted logistic regressions (SOLR) approach. The SOLR strategy first estimates the relationship between the auxiliary variable and the response and covariate data by using an offsetted logistic regression analysis where the offset is used to adjust for the biased design. Results from the auxiliary variable model are then combined with the known or estimated sampling probabilities to formulate a second offset that is used to correct for the biased design in the ultimate target model relating the longitudinal binary response to covariates. Because the target model offset is estimated with SOLR, we detail asymptotic standard error estimates that account for uncertainty associated with the auxiliary variable model. Motivated by an analysis of the BioCycle Study (Gaskins et al., Effect of daily fiber intake on reproductive function: the BioCycle Study. American Journal of Clinical Nutrition 2009; 90(4): 1061-1069) that aims to describe the relationship between reproductive health (determined by luteinizing hormone levels) and fiber consumption, we examine properties of SOLR estimators and compare them with other common approaches.
机译:结果依赖性抽样(ODS)研究设计通常在罕见疾病或前瞻性研究不可行时实施。在纵向数据设置中,当很少重复测量的二进制响应时,ODS设计可以高效地最大化统计信息,但要遵守禁止对所有观测值进行协变量确定的资源限制。该手稿详细介绍了一种ODS设计,在该设计中,对单个观测值进行采样的概率由与之相关但不等于响应的廉价,时变辅助变量确定。为了有效地根据产生的偏差样本来估计边际模型参数,我们提出了一种半参数,顺序偏移逻辑回归(SOLR)方法。 SOLR策略首先通过使用偏移量logistic回归分析来估计辅助变量与响应和协变量数据之间的关系,其中偏移量用于针对偏差设计进行调整。然后,将来自辅助变量模型的结果与已知或估计的采样概率进行组合,以制定第二个偏移量,该偏移量用于校正将纵向二进制响应与协变量相关的最终目标模型中的偏差设计。因为目标模型偏移是使用SOLR估计的,所以我们详细介绍了渐进标准误差估计,该估计考虑了与辅助变量模型相关的不确定性。通过对生物周期研究的分析(Gaskins等人,每日纤维摄入量对生殖功能的影响:生物周期研究。美国临床营养杂志2009; 90(4):1061-1069)进行分析,旨在描述两者之间的关系。生殖健康(由促黄体激素水平决定)和纤维消耗,我们研究了SOLR估算器的特性,并将其与其他常用方法进行了比较。

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