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A semiparametric imputation approach for regression with censored covariate with application to an AMD progression study

机译:对审查对AMD进展研究的复群协变量的复回的半运动归责方法

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This research is motivated by studying the progression of age‐related macular degeneration where both a covariate and the response variable are subject to censoring. We develop a general framework to handle regression with censored covariate where the response can be different types and the censoring can be random or subject to (constant) detection limits. Multiple imputation is a popular technique to handle missing data that requires compatibility between the imputation model and the substantive model to obtain valid estimates. With censored covariate, we propose a novel multiple imputation‐based approach, namely, the semiparametric two‐step importance sampling imputation (STISI) method, to impute the censored covariate. Specifically, STISI imputes the missing covariate from a semiparametric accelerated failure time model conditional on fully observed covariates (Step 1) with the acceptance probability derived from the substantive model (Step 2). The 2‐step procedure automatically ensures compatibility and takes full advantage of the relaxed semiparametric assumption in the imputation. Extensive simulations demonstrate that the STISI method yields valid estimates in all scenarios and outperforms some existing methods that are commonly used in practice. We apply STISI on data from the Age‐related Eye Disease Study, to investigate the association between the progression time of the less severe eye and that of the more severe eye. We also illustrate the method by analyzing the urine arsenic data for patients from National Health and Nutrition Examination Survey (2003‐2004) where the response is binary and 1 covariate is subject to detection limit.
机译:该研究通过研究年龄相关性黄斑变性的进展而激励,其中协变量和反应变量受审查。我们开发了一般框架,以处理回归与审查的协变量,其中响应可以是不同类型的,并且审查可以随机或受到(常数)检测限制。多个估算是一种流行的技术来处理需要在归纳模型和实质模型之间兼容的缺失数据,以获得有效估计。通过审查的协变量,我们提出了一种新颖的基于多重估算的方法,即半甲酰胺两步重视采样归档(STISI)方法,以赋予截取的协变量。具体而言,STISI赋予缺失的协变量从半甲酰胺加速故障时间模型有条件的完全观察到的协变量(步骤1),具有从实质模型的接受概率(步骤2)。 2步过程自动确保兼容性,充分利用估算中的松弛半造型假设。广泛的模拟表明,STISI方法在所有情况下产生有效估计,并且优于实际中常用的一些现有方法。我们将STISI应用于与年龄相关的眼病学习的数据,调查较严重的眼睛的进展时间与更严重的眼睛之间的进展时间之间的关联。我们还通过分析来自国家健康和营养考试调查(2003-2004)的尿液砷数据来说明该方法(2003-2004),其中响应是二进制和1个协变量的检测限。

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