Fontanella Lara, Ippoliti Luigi, Valentini Pasquale
Department of Legal and Social Sciences, University G. d'Annunzio, Chieti-Pescara, Italy.
Department of Economics, University G. d'Annunzio, Chieti-Pescara, Italy.
Biom J. 2019 Jul;61(4):918-933. doi: 10.1002/bimj.201800228. Epub 2019 Mar 13.
In this paper, we introduce a Bayesian statistical model for the analysis of functional data observed at several time points. Examples of such data include the Michigan growth study where we wish to characterize the shape changes of human mandible profiles. The form of the mandible is often used by clinicians as an aid in predicting the mandibular growth. However, whereas many studies have demonstrated the changes in size that may occur during the period of pubertal growth spurt, shape changes have been less well investigated. Considering a group of subjects presenting normal occlusion, in this paper we thus describe a Bayesian functional ANOVA model that provides information about where and when the shape changes of the mandible occur during different stages of development. The model is developed by defining the notion of predictive process models for Gaussian process (GP) distributions used as priors over the random functional effects. We show that the predictive approach is computationally appealing and that it is useful to analyze multivariate functional data with unequally spaced observations that differ among subjects and times. Graphical posterior summaries show that our model is able to provide a biological interpretation of the morphometric findings and that they comprehensively describe the shape changes of the human mandible profiles. Compared with classical cephalometric analysis, this paper represents a significant methodological advance for the study of mandibular shape changes in two dimensions.
在本文中,我们介绍了一种贝叶斯统计模型,用于分析在多个时间点观测到的函数型数据。这类数据的例子包括密歇根生长研究,我们希望刻画人类下颌轮廓的形状变化。下颌的形态常被临床医生用于辅助预测下颌生长。然而,尽管许多研究已经证明了在青春期生长突增期可能发生的大小变化,但形状变化的研究较少。考虑到一组呈现正常咬合的受试者,本文我们描述了一种贝叶斯函数型方差分析模型,该模型提供了关于下颌在不同发育阶段形状变化发生的位置和时间的信息。该模型是通过定义用作随机函数效应先验的高斯过程(GP)分布的预测过程模型的概念来开发的。我们表明,预测方法在计算上具有吸引力,并且对于分析具有不等间距观测值的多变量函数型数据很有用,这些观测值在受试者和时间之间存在差异。图形化的后验总结表明,我们的模型能够对形态测量结果进行生物学解释,并且它们全面地描述了人类下颌轮廓的形状变化。与经典的头影测量分析相比,本文代表了二维下颌形状变化研究的一项重大方法学进展。