The log odds ratio is a well-established metric for evaluating the association between binary outcome and exposure variables. Despite its widespread use, there has been limited discussion on how to summarize the log odds ratio as a function of confounders through averaging. To address this issue, we propose the Average Adjusted Association (AAA), which is a summary measure of association in a heterogeneous population, adjusted for observed confounders. To facilitate the use of it, we also develop efficient double/debiased machine learning (DML) estimators of the AAA. Our DML estimators use two equivalent forms of the efficient influence function, and are applicable in various sampling scenarios, including random sampling, outcome-based sampling, and exposure-based sampling. Through real data and simulations, we demonstrate the practicality and effectiveness of our proposed estimators in measuring the AAA.
翻译:对数比率作为评价二元结果和暴露变量关联程度的经典量已经得到广泛运用。然而,如何通过均值总结对数比率在混淆变量的作用下的效果问题上鲜有研究。为了解决这个问题,我们提出了平均调整后的关联度 (AAA) 的总结度量,该度量是计算调整后在一个异质群体中观测到的关联度。同时,我们也开发了高效的双重/去偏机器学习 (DML) 估计器来估算 AAA。我们的 DML 估计器采用了两个等价的高效影响函数形式,可适用于各种抽样场景,包括随机抽样、基于结果的抽样和基于暴露的抽样。通过真实数据和模拟,我们展示了我们提出的估计器在测量 AAA 上的可行性和有效性。