Yi Grace Y, Ma Yanyuan, Spiegelman Donna, Carroll Raymond J
Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, Ontario, Canada N2L 3G1.
Department of Statistics, Texas A&M University, TAMU 3143, College Station, TX 77843-3143,
J Am Stat Assoc. 2015 Jun 1;110(510):681-696. doi: 10.1080/01621459.2014.922777.
Covariate measurement imprecision or errors arise frequently in many areas. It is well known that ignoring such errors can substantially degrade the quality of inference or even yield erroneous results. Although in practice both covariates subject to measurement error and covariates subject to misclassification can occur, research attention in the literature has mainly focused on addressing either one of these problems separately. To fill this gap, we develop estimation and inference methods that accommodate both characteristics simultaneously. Specifically, we consider measurement error and misclassification in generalized linear models under the scenario that an external validation study is available, and systematically develop a number of effective functional and structural methods. Our methods can be applied to different situations to meet various objectives.
协变量测量不精确或误差在许多领域经常出现。众所周知,忽略此类误差会严重降低推断质量,甚至产生错误结果。虽然在实际中,既可能存在测量误差的协变量,也可能存在错误分类的协变量,但文献中的研究主要集中在分别解决这两个问题之一。为了填补这一空白,我们开发了同时兼顾这两种特征的估计和推断方法。具体而言,我们考虑在有外部验证研究的情况下,广义线性模型中的测量误差和错误分类,并系统地开发了一些有效的函数和结构方法。我们的方法可应用于不同情况以满足各种目标。