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Statistical methodology for constructing gestational age‐related charts using cross‐sectional and longitudinal data: The INTERGROWTH‐21st project as a case study

机译:使用横断面和纵向数据构建胎龄图的统计方法:以INTERGROWTH-21st项目为例

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摘要

Most studies aiming to construct reference or standard charts use a cross‐sectional design, collecting one measurement per participant. Reference or standard charts can also be constructed using a longitudinal design, collecting multiple measurements per participant. The choice of appropriate statistical methodology is important as inaccurate centiles resulting from inferior methods can lead to incorrect judgements about fetal or newborn size, resulting in suboptimal clinical care.Reference or standard centiles should ideally provide the best fit to the data, change smoothly with age (eg, gestational age), use as simple a statistical model as possible without compromising model fit, and allow the computation of Z‐scores from centiles to simplify assessment of individuals and enable comparison with different populations. Significance testing and goodness‐of‐fit statistics are usually used to discriminate between models. However, these methods tend not to be useful when examining large data sets as very small differences are statistically significant even if the models are indistinguishable on actual centile plots. Choosing the best model from amongst many is therefore not trivial. Model choice should not be based on statistical considerations (or tests) alone as sometimes the best model may not necessarily offer the best fit to the raw data across gestational age. In this paper, we describe the most commonly applied methodologies available for the construction of age‐specific reference or standard centiles for cross‐sectional and longitudinal data: Fractional polynomial regression, LMS, LMST, LMSP, and multilevel regression methods. For illustration, we used data from the INTERGROWTH‐21st Project, ie, newborn weight (cross‐sectional) and fetal head circumference (longitudinal) data as examples.
机译:大多数旨在构建参考图或标准图的研究都采用横断面设计,每位参与者收集一个测量值。参考图或标准图也可以使用纵向设计来构造,每个参与者收集多个测量值。适当的统计方法的选择很重要,因为劣等方法导致的百分位数不正确会导致对胎儿或新生儿大小的错误判断,从而导致临床治疗效果欠佳。理想情况下,参考百分位数或标准百分位数应提供最合适的数据,并随着年龄的增长而平稳变化(例如胎龄),在不影响模型拟合的前提下,使用尽可能简单的统计模型,并允许从百分位数计算Z分数,以简化对个体的评估并与不同人群进行比较。重要性测试和拟合优度统计通常用于区分模型。但是,这些方法在检查大型数据集时往往没有用,因为即使实际百分位数图上的模型也无法区分,非常小的差异在统计上也很重要。因此,从众多模型中选择最佳模型并非易事。模型的选择不应仅基于统计考虑因素(或检验),因为有时最好的模型不一定能在整个胎龄期提供最适合原始数据的模型。在本文中,我们描述了可用于构造横截面和纵向数据的特定年龄参考或标准百分位数的最常用方法:分数多项式回归,LMS,LMST,LMSP和多层回归方法。为了说明起见,我们使用了INTERGROWTH-21 st 项目的数据,例如新生儿体重(横截面)和胎儿头围(纵向)数据。

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