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https://www.um.edu.mt/library/oar/handle/123456789/140781| Title: | HBeeID : a molecular tool that identifies honey bee subspecies from different geographic populations |
| Authors: | Donthu, Ravikiran Marcelino, Jose A. P. Giordano, Rosanna Tao, Yudong Weber, Everett Avalos, Arian Band, Mark Akraiko, Tatsiana Chen, Shu‑Ching Reyes, Maria P. Hao, Haiping Ortiz‑Alvarado, Yarira A. Cuff, Charles Pérez Claudio, Eddie Soto‑Adames, Felipe Smith‑Pardo, Allan H. Meikle, William G. Evans, Jay D. Giray, Tugrul Abdelkader, Faten B. Allsopp, Mike Ball, Daniel Morgado, Susana B. Barjadze, Shalva Correa‑Benitez, Adriana Chakir, Amina Báez, David R. Chavez, Nabor H. M. Dalmon, Anne Bugeja Douglas, Adrian Fraccica, Carmen Fernández‑Marín, Hermógenes Galindo‑Cardona, Alberto Guzman‑Novoa, Ernesto Horsburgh, Robert Kence, Meral Kilonzo, Joseph Kükrer, Mert Le Conte, Yves Mazzeo, Gaetana Mota, Fernando Muli, Elliud Oskay, Devrim Ruiz‑Martínez, José A. Oliveri, Eugenia Pichkhaia, Igor Romane, Abderrahmane Sanchez, Cesar Guillen Sikombwa, Evans Satta, Alberto Scannapieco, Alejandra A. Stanford, Brandi Soroker, Victoria Velarde, Rodrigo A. Vercelli, Monica Huang, Zachary |
| Keywords: | Honeybee Africanized honeybee Molecular genetics -- Methodology Insect populations Pollinators |
| Issue Date: | 2024 |
| Publisher: | BioMed Central Ltd. |
| Citation: | Donthu, R., Marcelino, J. A., Giordano, R., Tao, Y., Weber, E., Avalos, A.,...Huang, Z. (2024). HBeeID: a molecular tool that identifies honey bee subspecies from different geographic populations. BMC Bioinformatics, 25(1), 278, 1-33. |
| Abstract: | Background: Honey bees are the principal commercial pollinators. Along with other arthropods, they are increasingly under threat from anthropogenic factors such as the incursion of invasive honey bee subspecies, pathogens and parasites. Better tools are needed to identify bee subspecies. Genomic data for economic and ecologically important organisms is increasing, but in its basic form its practical application to address ecological problems is limited. Results: We introduce HBeeID a means to identify honey bees. The tool utilizes a knowledge-based network and diagnostic SNPs identified by discriminant analysis of principle components and hierarchical agglomerative clustering. Tests of HBeeID showed that it identifies African, Americas-Africanized, Asian, and European honey bees with a high degree of certainty even when samples lack the full 272 SNPs of HBeeID. Its prediction capacity decreases with highly admixed samples. Conclusion: HBeeID is a high-resolution genomic, SNP based tool, that can be used to identify honey bees and screen species that are invasive. Its flexible design allows for future improvements via sample data additions from other localities. |
| URI: | https://www.um.edu.mt/library/oar/handle/123456789/140781 |
| Appears in Collections: | Scholarly Works - InsESRSF |
Files in This Item:
| File | Description | Size | Format | |
|---|---|---|---|---|
| HBeeID__a_molecular_tool_that_identifies_honey_bee_subspecies_from_different_geographic_populations(2024).pdf | 4.94 MB | Adobe PDF | View/Open |
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