Willemsen Sten P, Eilers Paul H C, Steegers-Theunissen Régine P M, Lesaffre Emmanuel
Department of Biostatistics, Erasmus University Medical Center, Rotterdam, the Netherlands; Department of Obstetrics and Gynaecology, Erasmus University Medical Center, Rotterdam, the Netherlands.
Stat Med. 2015 Apr 15;34(8):1351-65. doi: 10.1002/sim.6411. Epub 2015 Jan 23.
Most longitudinal growth curve models evaluate the evolution of each of the anthropometric measurements separately. When applied to a 'reference population', this exercise leads to univariate reference curves against which new individuals can be evaluated. However, growth should be evaluated in totality, that is, by evaluating all body characteristics jointly. Recently, Cole et al. suggested the Superimposition by Translation and Rotation (SITAR) model, which expresses individual growth curves by three subject-specific parameters indicating their deviation from a flexible overall growth curve. This model allows the characterization of normal growth in a flexible though compact manner. In this paper, we generalize the SITAR model in a Bayesian way to multiple dimensions. The multivariate SITAR model allows us to create multivariate reference regions, which is advantageous for prediction. The usefulness of the model is illustrated on longitudinal measurements of embryonic growth obtained in the first semester of pregnancy, collected in the ongoing Rotterdam Predict study. Further, we demonstrate how the model can be used to find determinants of embryonic growth.
大多数纵向生长曲线模型分别评估各项人体测量指标的演变情况。当应用于“参考人群”时,此做法会得出单变量参考曲线,据此可对新个体进行评估。然而,生长应整体评估,即通过联合评估所有身体特征来进行。最近,科尔等人提出了平移和旋转叠加(SITAR)模型,该模型通过三个特定于个体的参数来表示个体生长曲线,这些参数表明其与灵活的总体生长曲线的偏差。此模型能够以灵活但紧凑的方式对正常生长进行表征。在本文中,我们以贝叶斯方式将SITAR模型推广到多维度。多变量SITAR模型使我们能够创建多变量参考区域,这对预测很有利。在正在进行的鹿特丹预测研究中收集的孕期第一学期胚胎生长的纵向测量数据上,展示了该模型的实用性。此外,我们还展示了该模型如何用于找出胚胎生长的决定因素。