Development and Assessment of Fully Automated and Globally Transitive Geometric Morphometric Methods, With Application to a Biological Comparative Dataset With High Interspecific Variation.
Abstract
Automated geometric morphometric methods are promising tools for shape analysis in
comparative biology, improving researchers' abilities to quantify variation extensively
(by permitting more specimens to be analyzed) and intensively (by characterizing shapes
with greater fidelity). Although use of these methods has increased, published automated
methods have some notable limitations: pairwise correspondences are frequently inaccurate
and pairwise mappings are not globally consistent (i.e., they lack transitivity across
the full sample). Here, we reassess the accuracy of published automated methods-cPDist
(Boyer et al. Proc Nat Acad Sci 108 () 18221-18226) and auto3Dgm (Boyer et al.: Anat
Rec 298 () 249-276)-and evaluate several modifications to these methods. We show that
a substantial percentage of alignments and pairwise maps between specimens of dissimilar
geometries were inaccurate in the study of Boyer et al. (Proc Nat Acad Sci 108 ()
18221-18226), despite a taxonomically partitioned variance structure of continuous
Procrustes distances. We show these inaccuracies are remedied using a globally informed
methodology within a collection of shapes, rather than relying on pairwise comparisons
(c.f. Boyer et al.: Anat Rec 298 () 249-276). Unfortunately, while global information
generally enhances maps between dissimilar objects, it can degrade the quality of
correspondences between similar objects due to the accumulation of numerical error.
We explore a number of approaches to mitigate this degradation, quantify their performance,
and compare the generated pairwise maps (and the shape space characterized by these
maps) to a "ground truth" obtained from landmarks manually collected by geometric
morphometricians. Novel methods both improve the quality of the pairwise correspondences
relative to cPDist and achieve a taxonomic distinctiveness comparable to auto3Dgm.
Anat Rec, 301:636-658, 2018. © 2017 Wiley Periodicals, Inc.
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Journal articlePermalink
https://hdl.handle.net/10161/18074Published Version (Please cite this version)
10.1002/ar.23700Publication Info
Gao, Tingran; Yapuncich, Gabriel S; Daubechies, Ingrid; Mukherjee, Sayan; & Boyer,
Doug M (2018). Development and Assessment of Fully Automated and Globally Transitive Geometric Morphometric
Methods, With Application to a Biological Comparative Dataset With High Interspecific
Variation. Anatomical record (Hoboken, N.J. : 2007), 301(4). pp. 636-658. 10.1002/ar.23700. Retrieved from https://hdl.handle.net/10161/18074.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Douglas Martin Boyer
Associate Professor of Evolutionary Anthropology
Ingrid Daubechies
James B. Duke Distinguished Professor of Mathematics and Electrical and Computer Engineering
Gabriel Yapuncich
Assistant Professor of the Practice of Medical Education
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