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首页> 外文期刊>Frontiers in Public Health >Assessing the Relationship between the Baseline Value of a Continuous Variable and Subsequent Change Over Time
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Assessing the Relationship between the Baseline Value of a Continuous Variable and Subsequent Change Over Time

机译:评估连续变量的基线值与后续随时间变化之间的关系

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摘要

Analyzing the relationship between the baseline value and subsequent change of a continuous variable is a frequent matter of inquiry in cohort studies. These analyses are surprisingly complex, particularly if only two waves of data are available. It is unclear for non-biostatisticians where the complexity of this analysis lies and which statistical method is adequate. With the help of simulated longitudinal data of body mass index in children, we review statistical methods for the analysis of the association between the baseline value and subsequent change, assuming linear growth with time. Key issues in such analyses are mathematical coupling, measurement error, variability of change between individuals, and regression to the mean. Ideally, it is better to rely on multiple repeated measurements at different times and a linear random effects model is a standard approach if more than two waves of data are available. If only two waves of data are available, our simulations show that Blomqvist’s method – which consists in adjusting for measurement error variance the estimated regression coefficient of observed change on baseline value – provides accurate estimates. The adequacy of the methods to assess the relationship between the baseline value and subsequent change depends on the number of data waves, the availability of information on measurement error, and the variability of change between individuals.
机译:在队列研究中,分析基线值和连续变量的后续变化之间的关系是经常要研究的问题。这些分析非常复杂,特别是如果只有两波数据可用时。对于非生物统计学家而言,尚不清楚该分析的复杂性在哪里以及哪种统计方法是适当的。借助儿童体重指数的模拟纵向数据,我们假设基线随时间线性增长,回顾了统计方法,用于分析基线值与后续变化之间的关联。此类分析的关键问题是数学耦合,测量误差,个体之间变化的变异性以及均值回归。理想情况下,最好在不同时间依赖多次重复测量,并且如果可获得两个以上的数据波,则线性随机效应模型是一种标准方法。如果只有两波数据可用,我们的模拟结果表明Blomqvist的方法-调整测量误差方差,即观察到的基线值变化的估计回归系数-提供准确的估计值。评估基线值与后续变化之间关系的方法的充分性取决于数据波的数量,有关测量误差的信息的可用性以及个体之间变化的可变性。

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