Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies

Modern breeding structures are emerging for European honeybee populations. However, while genetic evaluations of honeybees are becoming increasingly well understood, little is known about how selection decisions shape the populations’ genetic structures. We performed simulations evaluating 100 diffe...

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Main Authors: Manuel Plate, Richard Bernstein, Andreas Hoppe, Kaspar Bienefeld
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Insects
Subjects:
Online Access:https://www.mdpi.com/2075-4450/11/7/404
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spelling doaj-86df757dd25742fd8590696d0efa612f2020-11-25T03:24:45ZengMDPI AGInsects2075-44502020-06-011140440410.3390/insects11070404Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee SubspeciesManuel Plate0Richard Bernstein1Andreas Hoppe2Kaspar Bienefeld3Institute for Bee Research, Friedrich-Engels Str. 32, 16540 Hohen Neuendorf, GermanyInstitute for Bee Research, Friedrich-Engels Str. 32, 16540 Hohen Neuendorf, GermanyInstitute for Bee Research, Friedrich-Engels Str. 32, 16540 Hohen Neuendorf, GermanyInstitute for Bee Research, Friedrich-Engels Str. 32, 16540 Hohen Neuendorf, GermanyModern breeding structures are emerging for European honeybee populations. However, while genetic evaluations of honeybees are becoming increasingly well understood, little is known about how selection decisions shape the populations’ genetic structures. We performed simulations evaluating 100 different selection schemes, defined by selection rates for dams and sires, in populations of 200, 500, or 1000 colonies per year and considering four different quantitative traits, reflecting different genetic parameters and numbers of influential loci. Focusing on sustainability, we evaluated genetic progress over 100 years and related it to inbreeding developments. While all populations allowed for sustainable breeding with generational inbreeding rates below 1% per generation, optimal selection rates differed and sustainable selection was harder to achieve in smaller populations and for stronger negative correlations of maternal and direct effects in the selection trait. In small populations, a third or a fourth of all candidate queens should be selected as dams, whereas this number declined to a sixth for larger population sizes. Furthermore, our simulations indicated that, particularly in small populations, as many sires as possible should be provided. We conclude that carefully applied breeding provides good prospects for currently endangered honeybee subspecies, since sustainable genetic progress improves their attractiveness to beekeepers.https://www.mdpi.com/2075-4450/11/7/404honeybee breedingendangered speciessimulation studiessustainable breedinginbreedinglocal subspecies
collection DOAJ
language English
format Article
sources DOAJ
author Manuel Plate
Richard Bernstein
Andreas Hoppe
Kaspar Bienefeld
spellingShingle Manuel Plate
Richard Bernstein
Andreas Hoppe
Kaspar Bienefeld
Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies
Insects
honeybee breeding
endangered species
simulation studies
sustainable breeding
inbreeding
local subspecies
author_facet Manuel Plate
Richard Bernstein
Andreas Hoppe
Kaspar Bienefeld
author_sort Manuel Plate
title Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies
title_short Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies
title_full Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies
title_fullStr Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies
title_full_unstemmed Long-Term Evaluation of Breeding Scheme Alternatives for Endangered Honeybee Subspecies
title_sort long-term evaluation of breeding scheme alternatives for endangered honeybee subspecies
publisher MDPI AG
series Insects
issn 2075-4450
publishDate 2020-06-01
description Modern breeding structures are emerging for European honeybee populations. However, while genetic evaluations of honeybees are becoming increasingly well understood, little is known about how selection decisions shape the populations’ genetic structures. We performed simulations evaluating 100 different selection schemes, defined by selection rates for dams and sires, in populations of 200, 500, or 1000 colonies per year and considering four different quantitative traits, reflecting different genetic parameters and numbers of influential loci. Focusing on sustainability, we evaluated genetic progress over 100 years and related it to inbreeding developments. While all populations allowed for sustainable breeding with generational inbreeding rates below 1% per generation, optimal selection rates differed and sustainable selection was harder to achieve in smaller populations and for stronger negative correlations of maternal and direct effects in the selection trait. In small populations, a third or a fourth of all candidate queens should be selected as dams, whereas this number declined to a sixth for larger population sizes. Furthermore, our simulations indicated that, particularly in small populations, as many sires as possible should be provided. We conclude that carefully applied breeding provides good prospects for currently endangered honeybee subspecies, since sustainable genetic progress improves their attractiveness to beekeepers.
topic honeybee breeding
endangered species
simulation studies
sustainable breeding
inbreeding
local subspecies
url https://www.mdpi.com/2075-4450/11/7/404
work_keys_str_mv AT manuelplate longtermevaluationofbreedingschemealternativesforendangeredhoneybeesubspecies
AT richardbernstein longtermevaluationofbreedingschemealternativesforendangeredhoneybeesubspecies
AT andreashoppe longtermevaluationofbreedingschemealternativesforendangeredhoneybeesubspecies
AT kasparbienefeld longtermevaluationofbreedingschemealternativesforendangeredhoneybeesubspecies
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