Gonzalez Paula N, Barbeito-Andrés Jimena, D'Addona Lucas A, Bernal Valeria, Perez S Ivan
Instituto De Genética Veterinaria "Ing. Fernando N. Dulout", CONICET-Facultad De Ciencias Veterinarias, Universidad Nacional De La Plata, 1900, La Plata, Argentina.
División Antropología, Facultad De Ciencias Naturales Y Museo, Universidad Nacional de La Plata, La Plata, 1900, Argentina.
Am J Phys Anthropol. 2016 May;160(1):169-78. doi: 10.1002/ajpa.22934. Epub 2016 Jan 9.
One of the biggest challenges in the study of complex morphologies is to adequately describe shape variation. Here, we assess how the random sampling of surface points automatically obtained performs, when compared with observer-guided sampling procedures, and also evaluate the effect of sliding surface points by bending energy and minimum Procrustes distance.
Three datasets comprising structures with disparate levels of complexity and intrasample variation are as follows: mouse molars, mouse brains, and primate endocasts. Different configurations of 3D coordinates on curves and surfaces were digitized from MRI images and CT scans using semi and fully automated procedures. Shape variables were obtained by Generalized Procrustes Superpositions before and after sliding the pseudolandmarks. Multivariate analyses were used to summarize and compare shape variation.
For the primate endocast, the semiautomated and automated strategies yield similar ordinations of specimens. Conversely, the semiautomated strategy better discriminates molar shapes between mouse groups. Shape differences among specimens are not adequately represented by the PCs calculated with surface pseudolandmarks. This is improved when the points are converted into semilandmarks by a sliding criterion.
Surface semilandmarks automatically obtained from 3D models are promising although they should be used with some caution in complex structures. This approach can be taken as complementary of semiautomated procedures which perform better for assessing shape variation in localized traits previously selected while automated procedures are suitable in studies aimed at comparing overall variation in shape and when there is no previous information about highly variable anatomical regions.
复杂形态学研究中最大的挑战之一是充分描述形状变异。在此,我们评估自动获取的表面点随机采样与观察者引导采样程序相比的表现,并通过弯曲能量和最小普氏距离评估滑动表面点的效果。
包含具有不同复杂程度和样本内变异水平结构的三个数据集如下:小鼠磨牙、小鼠大脑和灵长类脑模。使用半自动和全自动程序从MRI图像和CT扫描中数字化曲线和表面上不同配置的三维坐标。在滑动伪地标前后通过广义普氏叠加获得形状变量。使用多变量分析来总结和比较形状变异。
对于灵长类脑模,半自动和自动策略产生相似的标本排序。相反,半自动策略能更好地区分小鼠组之间的磨牙形状。用表面伪地标计算的主成分不能充分代表标本之间的形状差异。当通过滑动标准将点转换为半地标时,这种情况会得到改善。
从三维模型自动获取的表面半地标很有前景,尽管在复杂结构中应谨慎使用。这种方法可作为半自动程序的补充,半自动程序在评估先前选择的局部特征的形状变异方面表现更好,而自动程序适用于旨在比较形状总体变异且对高度可变解剖区域没有先前信息的研究。