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Multi-level modelling of longitudinal child growth data from the Birth-to-Twenty Cohort: a comparison of growth models

机译:出生至二十岁人群纵向儿童生长数据的多层次建模:生长模型的比较

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摘要

Background: Different structural and non-structural models have been used to describe human growth patterns. However, few studies have compared the fitness of these models in an African transitioning population. Aim: To find model(s) that best describe the growth pattern from birth to early childhood using mixed effect modelling. Subjects and methods: The study compared the fitness of four structural (Berkey-Reed, Count, Jenss-Bayley and the adapted Jenss-Bayley) and two non-structural (2nd and 3rd order Polynomial) models. The models were fitted to physical growth data from an urban African setting from birth to 10 years using a multi-level modelling technique. The goodness-of-fit of the models was examined using median and maximum absolute residuals, Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC). Results: There were variations in how the different models fitted to the data at different measurement occasions. The Jenss-Bayley and the polynomial models did not fit well to growth measurements in the early years, with very high or very low percentage of positive residuals. The Berkey-Reed model fitted consistently well over the study period. Conclusion: The Berkey-Reed model, previously used and fitted well to infancy growth data, has been shown to also fit well beyond infancy into childhood.
机译:背景:已经使用了不同的结构模型和非结构模型来描述人类的生长方式。但是,很少有研究比较这些模型在非洲转型人群中的适用性。目的:使用混合效应模型找到最能描述从出生到儿童早期的生长方式的模型。主题和方法:研究比较了四个结构模型(Berkey-Reed,Count,Jenss-Bayley和改编的Jenss-Bayley)和两个非结构模型(二阶和三阶多项式)的适用性。使用多级建模技术,将模型拟合到从出生到10年的非洲城市环境中的身体增长数据。使用中位数和最大绝对残差,Akaike信息准则(AIC)和贝叶斯信息准则(BIC)检验了模型的拟合优度。结果:在不同的测量场合,不同模型对数据的拟合方式存在差异。詹斯-贝利(Jenss-Bayley)模型和多项式模型不适用于早期的增长测量,正残差百分比很高或非常低。在研究期间,Berkey-Reed模型一直很好地拟合。结论:以前使用过的Berkey-Reed模型非常适合婴儿期的生长数据,已经显示出它还可以很好地适应从婴儿期到儿童期的情况。

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