Literature DB >> 19866435

POPREP: a generic report for population management.

E Groeneveld1, B v D Westhuizen, A Maiwashe, F Voordewind, J B S Ferraz.   

Abstract

Genetic variation provides a basis upon which populations can be genetically improved. Management of animal genetic resources in order to minimize loss of genetic diversity both within and across breeds has recently received attention at different levels, e.g., breed, national and international levels. A major need for sustainable improvement and conservation programs is accurate estimates of population parameters, such as rate of inbreeding and effective population size. A software system (POPREP) is presented that automatically generates a typeset report. Key parameters for population management, such as age structure, generation interval, variance in family size, rate of inbreeding, and effective population size form the core part of this report. The report includes a default text that describes definition, computation and meaning of the various parameters. The report is summarized in two pdf files, named Population Structure and Pedigree Analysis Reports. In addition, results (e.g., individual inbreeding coefficients, rate of inbreeding and effective population size) are stored in comma-separate-values files that are available for further processing. Pedigree data from eight livestock breeds from different species and countries were used to describe the potential of POPREP and to highlight areas for further research.

Mesh:

Year:  2009        PMID: 19866435     DOI: 10.4238/vol8-3gmr648

Source DB:  PubMed          Journal:  Genet Mol Res        ISSN: 1676-5680


  11 in total

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4.  Evaluation of inbreeding and genetic variability of five pig breeds in czech republic.

Authors:  E Krupa; E Žáková; Z Krupová
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5.  A WebGIS platform for the monitoring of Farm Animal Genetic Resources (GENMON).

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7.  Methods to estimate effective population size using pedigree data: Examples in dog, sheep, cattle and horse.

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8.  Unraveling the genetic diversity of Belgian Milk Sheep using medium-density SNP genotypes.

Authors:  R Meyermans; W Gorssen; K Wijnrocx; J A Lenstra; P Vellema; N Buys; S Janssens
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9.  Genetic analysis of the endangered Cleveland Bay horse: A century of breeding characterised by pedigree and microsatellite data.

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10.  Assessment of the Genetic Diversity of a Local Pig Breed Using Pedigree and SNP Data.

Authors:  Emil Krupa; Nina Moravčíková; Zuzana Krupová; Eliška Žáková
Journal:  Genes (Basel)       Date:  2021-12-10       Impact factor: 4.096

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