论文标题

带有贝叶斯添加剂树木的柔性仪器变量模型

Flexible Instrumental Variable Models With Bayesian Additive Regression Trees

论文作者

Spanbauer, Charles, Pan, Wei

论文摘要

利用仪器变量的方法是在存在未衡量的混杂的情况下的基本统计方法,通常发生在经济和公共卫生等领域常见的非随机观察数据中。但是,这种方法通常会导致限制线性和添加性假设,这些假设与当今的复杂建模挑战不适用。收集的观察数据的不断增长将需要灵活的回归建模,同时也能够控制使用仪器变量混淆。因此,本文提出了基于贝叶斯回归树的集合的非线性仪器变量回归模型,以估算存在混淆的情况下的这种关系,包括相互作用。该方法的一种令人兴奋的应用是将遗传变体用作工具,称为孟德尔随机化。体重指数是一个因素,它与心血管危险因素(如血压)在与年龄相互作用时具有非线性关系。从强调个性化治疗的精确医学角度来看,患者特征(例如年龄)的异质性在临床上可能很有趣。我们介绍了我们的灵活的贝叶斯仪器变量回归树方法,其中一个来自英国生物库的示例,其中体重指数与遗传变体作为仪器有关。

Methods utilizing instrumental variables have been a fundamental statistical approach to estimation in the presence of unmeasured confounding, usually occurring in non-randomized observational data common to fields such as economics and public health. However, such methods usually make constricting linearity and additivity assumptions that are inapplicable to the complex modeling challenges of today. The growing body of observational data being collected will necessitate flexible regression modeling while also being able to control for confounding using instrumental variables. Therefore, this article presents a nonlinear instrumental variable regression model based on Bayesian regression tree ensembles to estimate such relationships, including interactions, in the presence of confounding. One exciting application of this method is to use genetic variants as instruments, known as Mendelian randomization. Body mass index is one factor that is hypothesized to have a nonlinear relationship with cardiovascular risk factors such as blood pressure while interacting with age. Heterogeneity in patient characteristics such as age could be clinically interesting from a precision medicine perspective where individualized treatment is emphasized. We present our flexible Bayesian instrumental variable regression tree method with an example from the UK Biobank where body mass index is related to blood pressure using genetic variants as the instruments.

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