Genomic prediction for growth using a low-density SNP panel in dromedary camels

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作者
Morteza Bitaraf Sani
Javad Zare Harofte
Mohammad Hossein Banabazi
Saeid Esmaeilkhanian
Ali Shafei Naderi
Nader Salim
Abbas Teimoori
Ahmad Bitaraf
Mohammad Zadehrahmani
Pamela Anna Burger
Vincenzo Landi
Mohammad Silawi
Afsaneh Taghipour Sheshdeh
Mohammad Ali Faghihi
机构
[1] Agricultural Research,Animal Science Research Department, Yazd Agricultural and Natural Resources Research and Education Center
[2] Education & Extension Organization (AREEO),Department of Biotechnology, Animal Science Research Institute of IRAN (ASRI)
[3] Agricultural Research,Department of Biotechnology, Animal Science Research Institute of IRAN (ASRI)
[4] Education & Extension Organization (AREEO),Departement of Veterinary Medicine
[5] Agricultural Research,Center for Therapeutic Innovation and Department of Psychiatry and Behavioral Sciences
[6] Education and Extension Organization (AREEO),undefined
[7] Organization of Agriculture - Jahad -Yazd,undefined
[8] Ministry of Agriculture-Jahad,undefined
[9] Yazd Dar Al-Elm Higher Education Institute,undefined
[10] Research Institute of Wildlife Ecology,undefined
[11] Vetmeduni Vienna,undefined
[12] Università Di Bari “Aldo Moro”,undefined
[13] Persian BayanGene Research and Training Center,undefined
[14] University of Miami,undefined
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Scientific Reports | / 11卷
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摘要
For thousands of years, camels have produced meat, milk, and fiber in harsh desert conditions. For a sustainable development to provide protein resources from desert areas, it is necessary to pay attention to genetic improvement in camel breeding. By using genotyping-by-sequencing (GBS) method we produced over 14,500 genome wide markers to conduct a genome- wide association study (GWAS) for investigating the birth weight, daily gain, and body weight of 96 dromedaries in the Iranian central desert. A total of 99 SNPs were associated with birth weight, daily gain, and body weight (p-value < 0.002). Genomic breeding values (GEBVs) were estimated with the BGLR package using (i) all 14,522 SNPs and (ii) the 99 SNPs by GWAS. Twenty-eight SNPs were associated with birth weight, daily gain, and body weight (p-value < 0.001). Annotation of the genomic region (s) within ± 100 kb of the associated SNPs facilitated prediction of 36 candidate genes. The accuracy of GEBVs was more than 0.65 based on all 14,522 SNPs, but the regression coefficients for birth weight, daily gain, and body weight were 0.39, 0.20, and 0.23, respectively. Because of low sample size, the GEBVs were predicted using the associated SNPs from GWAS. The accuracy of GEBVs based on the 99 associated SNPs was 0.62, 0.82, and 0.57 for birth weight, daily gain, and body weight. This report is the first GWAS using GBS on dromedary camels and identifies markers associated with growth traits that could help to plan breeding program to genetic improvement. Further researches using larger sample size and collaboration of the camel farmers and more profound understanding will permit verification of the associated SNPs identified in this project. The preliminary results of study show that genomic selection could be the appropriate way to genetic improvement of body weight in dromedary camels, which is challenging due to a long generation interval, seasonal reproduction, and lack of records and pedigrees.
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