Literature DB >> 30194750

neogen: A tool to predict genetic effective population size (Ne ) for species with generational overlap and to assist empirical Ne study design.

Dean C Blower1,2, Cynthia Riginos1, Jennifer R Ovenden2,3.   

Abstract

Molecular genetic estimates of population effective size (Ne ) lose accuracy and precision when insufficient numbers of samples or loci are used. Ideally, researchers would like to forecast the necessary power when planning their project. neogen (genetic Ne for Overlapping Generations) enables estimates of precision and accuracy in advance of empirical investigation and allows exploration of the power available in different user-specified age-structured sampling schemes. neogen provides a population simulation and genetic power analysis framework that simulates the demographics, genetic composition, and Ne , from species-specific life history, mortality, population size, and genetic priors. neogen guides the user to establish a tractable sampling regime and to determine the numbers of samples and microsatellite or SNP loci required for accurate and precise genetic Ne estimates when sampling a natural population. neogen is useful at multiple stages of a study's life cycle: when budgeting, as sampling and locus development progresses, and for corroboration when empirical Ne estimates are available. The underlying model is applicable to a wide variety of iteroparous species with overlapping generations (e.g., mammals, birds, reptiles, long-lived fishes). In this paper, we describe the neogen model, detail the workflow for the point-and-click software, and explain the graphical results. We demonstrate the use of neogen with empirical Australian east coast zebra shark (Stegostoma fasciatum) data. For researchers wishing to make accurate and precise genetic Ne estimates for overlapping generations species, neogen facilitates planning for sample and locus acquisition, and with existing empirical genetic Ne estimates neogen can corroborate population demographic and life history properties.
© 2018 John Wiley & Sons Ltd.

Entities:  

Keywords:  conservation genetics; genetic modelling; individual-based simulation; iteroparous; power analysis; sampling planning

Mesh:

Year:  2018        PMID: 30194750     DOI: 10.1111/1755-0998.12941

Source DB:  PubMed          Journal:  Mol Ecol Resour        ISSN: 1755-098X            Impact factor:   7.090


  4 in total

1.  Genome-wide SNPs detect no evidence of genetic population structure for reef manta rays (Mobula alfredi) in southern Mozambique.

Authors:  Stephanie K Venables; Andrea D Marshall; Amelia J Armstrong; Joseph L Tomkins; W Jason Kennington
Journal:  Heredity (Edinb)       Date:  2020-10-01       Impact factor: 3.821

2.  Population Genomics Training for the Next Generation of Conservation Geneticists: ConGen 2018 Workshop.

Authors:  Amanda Stahlke; Donavan Bell; Tashi Dhendup; Brooke Kern; Samuel Pannoni; Zachary Robinson; Jeffrey Strait; Seth Smith; Brian K Hand; Paul A Hohenlohe; Gordon Luikart
Journal:  J Hered       Date:  2020-04-02       Impact factor: 2.645

3.  A globally threatened shark, Carcharias taurus, shows no population decline in South Africa.

Authors:  Juliana D Klein; Aletta E Bester-van der Merwe; Matthew L Dicken; Arsalan Emami-Khoyi; Kolobe L Mmonwa; Peter R Teske
Journal:  Sci Rep       Date:  2020-10-21       Impact factor: 4.379

4.  Genome-wide analysis reveals the genetic stock structure of hoki (Macruronus novaezelandiae).

Authors:  Emily Koot; Chen Wu; Igor Ruza; Elena Hilario; Roy Storey; Richard Wells; David Chagné; Maren Wellenreuther
Journal:  Evol Appl       Date:  2021-11-23       Impact factor: 5.183

  4 in total

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