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  4. Authoritative subspecies diagnosis tool for European honey bees based on ancestry informative SNPs
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Authoritative subspecies diagnosis tool for European honey bees based on ancestry informative SNPs

Journal
BMC Genomics
Date Issued
December 2021
Author(s)
Momeni, Jamal  
Parejo, Melanie  
Nielsen, Rasmus O.  
Langa, Jorge  
Montes, Iratxe  
Papoutsis, Laetitia  
Farajzadeh, Leila  
Bendixen, Christian  
Căuia, Eliza  
Charrière, Jean-Daniel  
Coffey, Mary F.  
Costa, Cecilia  
Dall’Olio, Raffaele  
De la Rúa, Pilar  
Drazic, M. Maja  
Filipi, Janja  
Galea, Thomas  
Golubovski, Miroljub  
Gregorc, Ales  
Grigoryan, Karina  
Hatjina, Fani  
Ilyasov, Rustem  
Ivanova, Evgeniya  
Janashia, Irakli  
Karatasou, Aikaterini  
Kekecoglu, Meral  
Kezic, Nikola  
Matray, Enikö Sz.  
Mifsud, David  
Moosbeckhofer, Rudolf  
Nikolenko, Alexei G.  
Papachristoforou, Alexandros  
Petrov, Plamen  
Pinto, M. Alice  
Poskryakov, Aleksandr V.  
Sharipov, Aglyam Y.  
Siceanu, Adrian  
Soysal, M. Ihsan  
Uzunov, Aleksandar  
Zammit-Mangion, Marion  
Vingborg, Rikke  
Bouga, Maria  
Kryger, Per  
Meixner, Marina D.  
Estonba, Andone  
DOI
10.1186/s12864-021-07379-7
Abstract
Background: With numerous endemic subspecies representing four of its five evolutionary lineages, Europe holds a large fraction of Apis mellifera genetic diversity. This diversity and the natural distribution range have been altered by anthropogenic factors. The conservation of this natural heritage relies on the availability of accurate tools for subspecies diagnosis. Based on pool-sequence data from 2145 worker bees representing 22 populations sampled across Europe, we employed two highly discriminative approaches (PCA and FST) to select the most informative SNPs for ancestry inference. Results: Using a supervised machine learning (ML) approach and a set of 3896 genotyped individuals, we could show that the 4094 selected single nucleotide polymorphisms (SNPs) provide an accurate prediction of ancestry inference in European honey bees. The best ML model was Linear Support Vector Classifier (Linear SVC) which correctly assigned most individuals to one of the 14 subspecies or different genetic origins with a mean accuracy of 96.2% ± 0.8 SD. A total of 3.8% of test individuals were misclassified, most probably due to limited differentiation between the subspecies caused by close geographical proximity, or human interference of genetic integrity of reference subspecies, or a combination thereof. Conclusions: The diagnostic tool presented here will contribute to a sustainable conservation and support breeding activities in order to preserve the genetic heritage of European honey bees.
Subjects

Apis mellifera

European subspecies

Biodiversity

Conservation

Machine learning

Prediction

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s12864-021-07379-7.pdf

Size

1.05 MB

Format

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Checksum (MD5)

fec273758084dbc43df9868a862b41b6

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