Morphometrics provides a rigorous quantitative-statistical framework for assessing morphological independence among taxa in plant systematics. Despite its importance, current methods for analyzing morphological data are often not appropriate. A new workflow to conduct linear morphometric analyses in plant systematics is presented here. We introduce a Bayesian framework for species circumscription using Gaussian Mixture Models (GMMs), which enables rigorous testing of alternative taxonomic hypotheses. In addition, we present a set of algorithms for morphometric analyses: a lumping-splitting algorithm, methods for computing class-wise morphometric distances, and tools for visualising admixture patterns in morphometric data. We also developed a comprehensive guide for performing linear morphometric analyses in plant systematics and exemplified the new workflow using the Juniperus oxycedrus group. This framework creates a meaningful link between morphology-based taxonomy and formal statistical methods, aligning with the probabilistic concept of evolutionary lineages (UPCEL).

Tiburtini, M., Scrucca, L., Peruzzi, L. (2025). Using Gaussian Mixture Models in plant morphometrics. PERSPECTIVES IN PLANT ECOLOGY, EVOLUTION AND SYSTEMATICS, 69, 1-10 [10.1016/j.ppees.2025.125902].

Using Gaussian Mixture Models in plant morphometrics

Scrucca L.;Peruzzi L.
2025

Abstract

Morphometrics provides a rigorous quantitative-statistical framework for assessing morphological independence among taxa in plant systematics. Despite its importance, current methods for analyzing morphological data are often not appropriate. A new workflow to conduct linear morphometric analyses in plant systematics is presented here. We introduce a Bayesian framework for species circumscription using Gaussian Mixture Models (GMMs), which enables rigorous testing of alternative taxonomic hypotheses. In addition, we present a set of algorithms for morphometric analyses: a lumping-splitting algorithm, methods for computing class-wise morphometric distances, and tools for visualising admixture patterns in morphometric data. We also developed a comprehensive guide for performing linear morphometric analyses in plant systematics and exemplified the new workflow using the Juniperus oxycedrus group. This framework creates a meaningful link between morphology-based taxonomy and formal statistical methods, aligning with the probabilistic concept of evolutionary lineages (UPCEL).
2025
Tiburtini, M., Scrucca, L., Peruzzi, L. (2025). Using Gaussian Mixture Models in plant morphometrics. PERSPECTIVES IN PLANT ECOLOGY, EVOLUTION AND SYSTEMATICS, 69, 1-10 [10.1016/j.ppees.2025.125902].
Tiburtini, M.; Scrucca, L.; Peruzzi, L.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1031291
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