info:eu-repo/semantics/article
Description and analysis of spatial patterns in geometric morphometric data
Fecha
2019-05Registro en:
Gonzalez, Paula Natalia; Bonfili, Noelia; Vallejo Azar, Mariana Nahir; Barbeito Andrés, Jimena; Bernal, Valeria; et al.; Description and analysis of spatial patterns in geometric morphometric data; Springer; Evolutionary Biology; 46; 3; 5-2019; 260-270
0071-3260
1934-2845
CONICET Digital
CONICET
Autor
Gonzalez, Paula Natalia
Bonfili, Noelia
Vallejo Azar, Mariana Nahir
Barbeito Andrés, Jimena
Bernal, Valeria
Perez, Sergio Ivan
Resumen
The development of techniques for the acquisition of high-resolution 3D images, such as computed tomography and magnetic resonance imaging, has opened new avenues to the study of complex morphologies. Detailed descriptions of internal and external traits can be now obtained, allowing the intensive sampling of surface points. In this paper, we introduce a morphometric and statistical framework, grounded on Procrustes and Procrustes-like techniques as well as standard spatial statistics, to explicitly describe and incorporate the spatial pattern of these surface points into the analyses. We exemplified this approach by analyzing ontogenetic changes in a sample of human brain endocasts and inter-specific differences between primate skulls. An intensive sampling of points on 3D surfaces was performed by automatic techniques and the morphometric variation among specimens was measured by the residuals obtained after the alignment of points. Our results showed that shape changes in both examples are spatially structured. Different results were attained by using methods that incorporate or not the spatial structure in the evaluation of the effect of specific biological factors on shape variation. Particularly, these analyses indicated that the effect of biological factors acting at local scales can be confounded with more systemic factors (by example, the effect of the diet on the facial skeleton) if the spatial structure is not taken into account. Overall, our results suggest that the intensive description of shape differences among structures using densely sampled points on 3D surfaces combined with spatial statistical methods can be used to explore problems not widely addressed in morphological studies.