Berger Moritz, Klein Nadja, Wagner Michael, Schmid Matthias
Department of Medical Biometry, Informatics and Epidemiology, Faculty of Medicine, University of Bonn, Bonn, Germany.
Scientific Computing Center, Karlsruhe Institute of Technology, Karlsruhe, Baden-Württemberg, Germany.
Stat Methods Med Res. 2025 May;34(5):968-985. doi: 10.1177/09622802241313293. Epub 2025 Feb 11.
Modeling the ratio of two dependent components as a function of covariates is a frequently pursued objective in observational research. Despite the high relevance of this topic in medical studies, where biomarker ratios are often used as surrogate endpoints for specific diseases, existing models are commonly based on oversimplified assumptions, assuming e.g. independence or strictly positive associations between the components. In this paper, we overcome such limitations and propose a regression model where the marginal distributions of the two components are linked by a copula. A key feature of our model is that it allows for both positive and negative associations between the components, with one of the model parameters being directly interpretable in terms of Kendall's rank correlation coefficient. We study our method theoretically, evaluate finite sample properties in a simulation study and demonstrate its efficacy in an application to diagnosis of Alzheimer's disease via ratios of amyloid-beta and total tau protein biomarkers.
将两个相关成分的比率建模为协变量的函数是观察性研究中经常追求的目标。尽管该主题在医学研究中具有高度相关性,其中生物标志物比率常被用作特定疾病的替代终点,但现有模型通常基于过于简化的假设,例如假设成分之间具有独立性或严格的正相关。在本文中,我们克服了这些限制,提出了一种回归模型,其中两个成分的边际分布通过一个copula函数联系起来。我们模型的一个关键特征是它允许成分之间存在正相关和负相关,其中一个模型参数可以直接根据肯德尔秩相关系数来解释。我们从理论上研究了我们的方法,在模拟研究中评估了有限样本性质,并通过淀粉样β蛋白和总tau蛋白生物标志物的比率在阿尔茨海默病诊断中的应用证明了其有效性。