Argyle Jenny, Seheult Allan H, Wooff David A
Department of Mathematical Sciences, University of Durham, Science Laboratories, Stockton Road, Durham DH1 3LE, UK.
Stat Med. 2008 Mar 15;27(6):888-904. doi: 10.1002/sim.2973.
Growth measurements of children, such as weight and height, are monitored regularly, particularly in infancy, to assess whether or not a child's growth is normal when compared with a reference population of the same age and sex. Here, after a suitable power transformation to normality of the reference population, we model temporal evolution of the standardized deviation (Z-score) of the transformed measurement of a normal child from the reference population as a Gaussian process with zero mean and unit variance. This paper concentrates on modelling and fitting the serial correlation structure of the process, with the benefit that monitoring growth at specific ages is not crucial, statistically. Exploratory analysis of various observed correlation matrices has suggested that a particular two-parameter Markovian form is a good representation of the correlation function in infancy. The main implication for growth monitoring is that we only need to condition on the most recent Z-score to inform a clinician's judgement about a child's growth based on its current Z-score. Inferences about the correlation parameters derive from likelihood methods based either on observed Z-scores or, if raw data are unavailable, on an observed correlation matrix. The Markov model is compared with a previously studied six-parameter correlation model. Data from major child growth studies in Newcastle and Cambridge are used to illustrate the methods and compare predictions from the two models. We argue that the Markov model serves as a pragmatic choice for growth monitoring in infancy.
儿童的生长指标,如体重和身高,会定期进行监测,尤其是在婴儿期,以评估与同年龄、同性别的参考人群相比,儿童的生长是否正常。在此,在对参考人群进行适当的幂变换使其呈正态分布后,我们将正常儿童经变换后的测量值相对于参考人群的标准化偏差(Z分数)随时间的演变建模为均值为零、方差为单位方差的高斯过程。本文着重于对该过程的序列相关结构进行建模和拟合,其好处在于从统计学角度来看,在特定年龄监测生长并非至关重要。对各种观察到的相关矩阵的探索性分析表明,一种特定的双参数马尔可夫形式能很好地表示婴儿期的相关函数。对生长监测的主要影响是,我们只需依据最近的Z分数,就能根据儿童当前的Z分数告知临床医生关于其生长情况的判断。关于相关参数的推断源自基于观察到的Z分数的似然方法,或者在原始数据不可用时,基于观察到的相关矩阵。将马尔可夫模型与之前研究的六参数相关模型进行比较。来自纽卡斯尔和剑桥主要儿童生长研究的数据用于说明这些方法并比较两个模型的预测结果。我们认为马尔可夫模型是婴儿期生长监测的务实选择。