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Bivariate correlation coefficients in family-type clustered studies

机译:家庭型聚类研究中的双变量相关系数

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摘要

We propose a unified approach based on a bivariate linear mixed effects model to estimate three types of bivariate correlation coefficients (BCCs), as well as the associated variances between two quantitative variables in cross-sectional data from a family-type clustered design. These BCCs are defined at different levels of experimental units including clusters (e.g., families) and subjects within clusters and assess different aspects on the relationships between two variables. We study likelihood-based inferences for these BCCs, and provide easy implementation using standard software SAS. Unlike several existing BCC estimators in the literature on clustered data, our approach can seamlessly handle two major analytic challenges arising from a family-type clustered design: (1) many families may consist of only one single subject; (2) one of the paired measurements may be missing for some subjects. Hence, our approach maximizes the use of data from all subjects (even those missing one of the two variables to be correlated) from all families, regardless of family size. We also conduct extensive simulations to show that our estimators are superior to existing estimators in handling missing data or/and imbalanced family sizes and the proposed Wald test maintains good size and power for hypothesis testing. Finally, we analyze a real-world Alzheimer’s disease dataset from a family clustered study to investigate the BCCs across different modalities of disease markers including cognitive tests, cerebrospinal fluid biomarkers, and neuroimaging biomarkers.
机译:我们提出了一种基于双变量线性混合效应模型的统一方法,以估计三种类型的双变量相关系数(BCC)以及来自家庭类型聚类设计的横截面数据中两个定量变量之间的关联方差。这些BCC在实验单元的不同级别上定义,包括集群(例如,家庭)和集群内的受试者,并评估两个变量之间关系的不同方面。我们研究了这些BCC的基于似然性的推论,并提供了使用标准软件 SAS 轻松实现的方法。与文献中有关聚类数据的几个现有BCC估计器不同,我们的方法可以无缝处理家庭型聚类设计带来的两个主要分析挑战:(1)许多家庭可能只包含一个主题。 (2)某些对象可能缺少配对测量之一。因此,我们的方法最大程度地利用了来自所有家庭的所有受试者(甚至那些缺少两个相关变量之一的受试者)的数据,无论其家庭规模如何。我们还进行了广泛的模拟,以表明我们的估计器在处理缺失数据或/和不平衡家庭规模方面优于现有估计器,并且拟议的Wald检验在假设检验方面保持了良好的规模和功效。最后,我们从一项家庭聚类研究中分析了一个现实世界的阿尔茨海默氏病数据集,以研究跨多种疾病标志物的BCC,包括认知测试,脑脊液生物标志物和神经影像生物标志物。

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