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The missing indicator approach for censored covariates subject to limit of detection in logistic regression models

机译:丢失的协变量缺失指标方法,逻辑回归模型中检测极限

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Purpose: In several biomedical studies, one or more exposures of interest may be subject to nonrandom missingness because of the failure of the measurement assay at levels below its limit of detection. This issue is commonly encountered in studies of the metabolome using tandem mass spectrometry-based technologies. Owing to a large number of metabolites measured in these studies, preserving statistical power is of utmost interest. In this article, we evaluate the small sample properties of the missing indicator approach in logistic and conditional logistic regression models.
机译:目的:在若干生物医学研究中,由于测量测定在低于其检测限度下的水平下,一个或多个感兴趣的暴露可能受到非损伤的影响。 使用基于串联质谱技术的代谢物研究通常遇到了这个问题。 由于在这些研究中测量了大量代谢物,保持统计功率最大。 在本文中,我们评估了物流和条件逻辑回归模型中缺失指示器方法的小样本性质。

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