Division of Biological Sciences, University of Missouri, Columbia, MO, USA.
Department of Orthopaedic Surgery, University of Missouri School of Medicine, Columbia, MO, USA.
Sci Rep. 2023 Nov 7;13(1):19294. doi: 10.1038/s41598-023-46018-x.
Dense, longitudinal sampling represents the ideal for studying biological growth. However, longitudinal samples are not typically possible, due to limits of time, prohibitive cost, or health concerns of repeat radiologic imaging. In contrast, cross-sectional samples have few such drawbacks, but it is not known how well estimates of growth milestones can be obtained from cross-sectional samples. The Craniofacial Growth Consortium Study (CGCS) contains longitudinal growth data for approximately 2000 individuals. Single samples from the CGCS for individuals representing cross-sectional data were used to test the ability to predict growth parameters in linear trait measurements separately by sex. Testing across a range of cross-sectional sample sizes from 5 to the full sample, we found that means from repeated samples were able to approximate growth rates determined from the full longitudinal CGCS sample, with mean absolute differences below 1 mm at cross-sectional sample sizes greater than ~ 200 individuals. Our results show that growth parameters and milestones can be accurately estimated from cross-sectional data compared to population-level estimates from complete longitudinal data, underscoring the utility of such datasets in growth modeling. This method can be applied to other forms of growth (e.g., stature) and to cases in which repeated radiographs are not feasible (e.g., cone-beam CT).
密集的纵向采样是研究生物生长的理想选择。然而,由于时间限制、高昂的成本或重复放射成像的健康问题,通常无法进行纵向采样。相比之下,横截面采样几乎没有这些缺点,但尚不清楚从横截面采样中如何能够很好地估计生长里程碑。颅面生长联合体研究(CGCS)包含了大约 2000 个人的纵向生长数据。从 CGCS 中选择代表横截面数据的个体的单个样本,用于分别通过性别测试线性特征测量中预测生长参数的能力。在从 5 到整个样本的各种横截面样本大小上进行测试,我们发现重复样本的平均值能够近似于从完整的纵向 CGCS 样本确定的生长率,在横截面样本大小大于约 200 个人时,平均绝对差异低于 1 毫米。我们的结果表明,与完整纵向数据的群体水平估计相比,可以从横截面数据准确估计生长参数和里程碑,突出了此类数据集在生长建模中的实用性。这种方法可以应用于其他形式的生长(例如身高)以及重复拍摄射线照片不可行的情况(例如锥形束 CT)。