Predicting Shannon's information for genes in finite populations: new uses for old equations
2018
O'Reilly, G. D. | Jabot, Franck | Gunn, M. R. | Sherwin, W. | UNIVERSITY OF NEW SOUTH WALES UR EERC SYDNEY AUS ; Partenaires IRSTEA ; Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA) | Laboratoire d'ingénierie pour les systèmes complexes (UR LISC) ; Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA) | University of Auckland [Auckland]
[Departement_IRSTEA]Territoires [ADD1_IRSTEA]Dynamique et fonctionnement des écosystèmes
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Mostrar más [+] Menos [-]Inglés. This study provides predictive equations for Shannon's information in a finite population, which are intuitive and simple enough to see wide scale use in molecular ecology and population genetics. A comprehensive profile of genetic diversity contains three complementary components: numbers of allelic types, Shannon's information and heterozygosity. Currently heterozygosity has greater resources than Shannon's information, such as more predictive models and integration into more mainstream genetics software. However, Shannon's information has several advantages over heterozygosity as a measure of genetic diversity, so it is important to develop Shannon's information as a new tool for molecular ecology. Past efforts at making forecasts for Shannon's information in specific molecular ecology scenarios mostly dealt with expectations for Shannon's information at genetic equilibrium, but dynamic forecasts are also vital. In particular, we must be able to predict loss of genetic diversity when dealing with finite populations, because they risk losing genetic variability, which can have an adverse effect on their survival. We present equations for predicting loss of genetic diversity measured by Shannon's information. We also provide statistical justification for these models by assessing their fit to data derived from simulations and managed, replicated laboratory populations. The predictive models will enhance the usefulness of Shannon's information as a measure of genetic diversity; they will also be useful in pest control and conservation.
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