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Diversity from genes to ecosystems: A unifying framework to study variation across biological metrics and scales.

Authors: Gaggiotti OEChao APeres-Neto PChiu CHEdwards CFortin MJJost LRichards CMSelkoe KA


Affiliations

1 School of Biology Scottish Oceans Institute University of St Andrews St Andrews UK.
2 Institute of Statistics National Tsing Hua University Hsin-Chu Taiwan.
3 Department of Biology Concordia University Montreal QC Canada.
4 Department of Agronomy National Taiwan University Taipei Taiwan.
5 Center for Conservation and Sustainable Development Missouri Botanical Garden Saint Louis MO USA.
6 Department of Ecology and Evolutionary Biology University of Toronto Toronto ON Canada.
7 Ecominga Fundation Banos Tungurahua Ecuador.
8 Plant Germplasm Preservation Research Unit USDA-ARS Fort Collins CO USA.
9 National Center for Ecological Analysis and Synthesis University of California Santa Barbara Santa Barbara CA USA.
10 Hawai'i Institute of Marine Biology University of Hawai'i at Manoa Kaneohe HI USA.

Description

Diversity from genes to ecosystems: A unifying framework to study variation across biological metrics and scales.

Evol Appl. 2018 Aug;11(7):1176-1193

Authors: Gaggiotti OE, Chao A, Peres-Neto P, Chiu CH, Edwards C, Fortin MJ, Jost L, Richards CM, Selkoe KA

Abstract

Biological diversity is a key concept in the life sciences and plays a fundamental role in many ecological and evolutionary processes. Although biodiversity is inherently a hierarchical concept covering different levels of organization (genes, population, species, ecological communities and ecosystems), a diversity index that behaves consistently across these different levels has so far been lacking, hindering the development of truly integrative biodiversity studies. To fill this important knowledge gap, we present a unifying framework for the measurement of biodiversity across hierarchical levels of organization. Our weighted, information-based decomposition framework is based on a Hill number of order q = 1, which weights all elements in proportion to their frequency and leads to diversity measures based on Shannon's entropy. We investigated the numerical behaviour of our approach with simulations and showed that it can accurately describe complex spatial hierarchical structures. To demonstrate the intuitive and straightforward interpretation of our diversity measures in terms of effective number of components (alleles, species, etc.), we applied the framework to a real data set on coral reef biodiversity. We expect our framework will have multiple applications covering the fields of conservation biology, community genetics and eco-evolutionary dynamics.

PMID: 30026805 [PubMed]


Keywords: Hill numbersbiodiversity indicesgenetic diversityhierarchical spatial structurespecies diversity


Links

PubMed: https://www.ncbi.nlm.nih.gov/pubmed/30026805?dopt=Abstract

DOI: 10.1111/eva.12593