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首页> 外文期刊>International Journal of Environmental Research and Public Health >A Discriminant Function Approach to Adjust for Processing and Measurement Error When a Biomarker is Assayed in Pooled Samples
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A Discriminant Function Approach to Adjust for Processing and Measurement Error When a Biomarker is Assayed in Pooled Samples

机译:判别函数方法,用于在合并样品中测定生物标志物时调整处理和测量误差

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摘要

Pooling biological specimens prior to performing expensive laboratory assays has been shown to be a cost effective approach for estimating parameters of interest. In addition to requiring specialized statistical techniques, however, the pooling of samples can introduce assay errors due to processing, possibly in addition to measurement error that may be present when the assay is applied to individual samples. Failure to account for these sources of error can result in biased parameter estimates and ultimately faulty inference. Prior research addressing biomarker mean and variance estimation advocates hybrid designs consisting of individual as well as pooled samples to account for measurement and processing (or pooling) error. We consider adapting this approach to the problem of estimating a covariate-adjusted odds ratio (OR) relating a binary outcome to a continuous exposure or biomarker level assessed in pools. In particular, we explore the applicability of a discriminant function-based analysis that assumes normal residual, processing, and measurement errors. A potential advantage of this method is that maximum likelihood estimation of the desired adjusted log OR is straightforward and computationally convenient. Moreover, in the absence of measurement and processing error, the method yields an efficient unbiased estimator for the parameter of interest assuming normal residual errors. We illustrate the approach using real data from an ancillary study of the Collaborative Perinatal Project, and we use simulations to demonstrate the ability of the proposed estimators to alleviate bias due to measurement and processing error.
机译:已显示在执行昂贵的实验室分析之前合并生物样本是评估目标参数的一种经济有效的方法。然而,除了需要专门的统计技术外,样品的合并还可能由于处理而引入分析误差,这可能是将分析应用于单个样品时可能出现的测量误差之外的结果。不考虑这些错误源可能导致参数估计有偏差,并最终导致错误的推理。针对生物标志物均值和方差估计的先前研究主张混合设计由个体样本和合并样本组成,以解决测量和处理(或合并)误差。我们考虑将这种方法用于估计将二进制结果与池中评估的持续暴露或生物标志物水平相关的协变量调整后的优势比(OR)的问题。特别是,我们探讨了基于判别函数的分析的适用性,该分析假定正常的残差,处理和测量误差。该方法的潜在优势是所需调整后的对数OR的最大似然估计简单明了且计算方便。此外,在不存在测量和处理误差的情况下,该方法针对正常参量误差,对感兴趣的参数产生有效的无偏估计量。我们使用协作围产期项目的辅助研究中的真实数据说明了该方法,并使用仿真来证明拟议的估算器缓解由于测量和处理误差而引起的偏差的能力。

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