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Box-Cox t random intercept model for estimating usual nutrient intake distributions

机译:Box-Cox t随机截距模型,用于估计通常的营养摄入量分布

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摘要

The issue of estimating usual nutrient intake distributions and prevalence of inadequate nutrient intakes is of interest in nutrition studies. Box-Cox transformations coupled with the normal distribution are usually employed for modeling nutrient intake data. When the data present highly asymmetric distribution or include outliers, this approach may lead to implausible estimates. Additionally, it does not allow interpretation of the parameters in terms of characteristics of the original data and requires back transformation of the transformed data to the original scale. This paper proposes an alternative approach for estimating usual nutrient intake distributions and prevalence of inadequate nutrient intakes through a Box-Cox t model with random intercept. The proposed model is flexible enough for modeling highly asymmetric data even when outliers are present. Unlike the usual approach, the proposed model does not require a transformation of the data. A simulation study suggests that the Box-Cox t model with random intercept estimates the usual intake distribution satisfactorily, and that it should be preferable to the usual approach particularly in cases of highly asymmetric heavy-tailed data. In applications to data sets on intake of 19 micronutrients, the Box-Cox t models provided better fit than its competitors in most of the cases.
机译:在营养研究中,估算通常的营养摄入量分布和营养摄入量不足的问题。通常使用Box-Cox变换与正态分布相结合来建模营养摄入数据。当数据呈现高度不对称分布或包含异常值时,此方法可能会导致难以置信的估计。另外,它不允许根据原始数据的特性来解释参数,并且需要将转换后的数据反向转换为原始比例。本文提出了一种替代方法,通过具有随机截距的Box-Cox t模型估算通常的营养摄入量分布和营养摄入不足的发生率。所提出的模型足够灵活,即使存在异常值,也可以对高度不对称的数据进行建模。与通常的方法不同,提出的模型不需要数据转换。一项模拟研究表明,具有随机截距的Box-Cox t模型可以令人满意地估计通常的摄入量分布,并且它应该比通常的方法更好,特别是在高度不对称的重尾数据的情况下。在用于获取19种微量营养素的数据集的应用中,在大多数情况下,Box-Cox t模型提供了比其竞争对手更好的拟合度。

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