B. Rekik, T. Mestawet, A. Girma, M. Seid, J. Besufekad, S. Meseret
{"title":"埃塞俄比亚杂交奶牛测试日产奶量、蛋白质和组成特征的全基因组关联研究","authors":"B. Rekik, T. Mestawet, A. Girma, M. Seid, J. Besufekad, S. Meseret","doi":"10.1155/2024/1472779","DOIUrl":null,"url":null,"abstract":"<p>Identifying genetic regions and candidate genes that influence milk production traits is critical for understanding genetic inheritance and improving both the quality and quantity of milk in dairy cattle. Crossbred dairy cattle significantly contribute to increasing milk production and ensuring food security in the middle- and high-altitude regions of Ethiopia. However, the genetic architecture underlying their milk yield and composition traits has not yet been thoroughly investigated. This study conducted a genome-wide association study (GWAS) on 308 crossbred dairy cows from central, northeastern, and southern Ethiopia to identify genetic markers associated with key milk production traits. Using high-density SNP chip data and the fixed and random model circulating probability unification (Farm CPU) method via the Memory-efficient, Visualization-enhanced, and Parallel-accelerated R package (rMVP) (Version 1.0.7.), we analyzed traits including test-day milk yield (TDMY), total protein (TP), casein (CN), whey (W), protein percentage (P), fat percentage (F), lactose percentage (L), total solids (TS), density (D), solids-not-fat (SNF), salt (S), and freezing point (FP). This study identified 16 significant SNPs associated with these traits, including rs41661899 on Chromosome 6, which was significantly associated with both TP and W, and rs42274954 on Chromosome 12, which was significantly associated with CN. Eight SNPs, such as rs43560693, rs109098713, rs111029661, rs134499665, rs133908307, rs133627532, rs42098411, and rs110066280, were found across multiple chromosomes (8, 10, 14, 15, 19, 21, 26, and 28, respectively) and were significantly associated with milk P. Additionally, SNPs rs110844447 and rs135995768 on Chromosomes 6 and 14 were significantly associated with D and FP, respectively. Three SNPs, including rs109564259, rs135552551, and rs41620904 on Chromosomes 6, 11, and 24, were significant associations with S. Candidate genes identified near and within these SNPs include TRAM1L1, DIAPH3, PEBP4, WDR89, BCAS3, RALGAPA1, HABP2, NRG3, HPSE, PCDH7, LINC02579, TRNAS-GGA, and OR5CN1P. These findings enhance our understanding of the genetic architecture of milk-related traits in Ethiopian dairy cattle and highlight the potential for marker-assisted selection to improve milk production and composition in breeding programs.</p>","PeriodicalId":55239,"journal":{"name":"Comparative and Functional Genomics","volume":"2024 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-10-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1155/2024/1472779","citationCount":"0","resultStr":"{\"title\":\"Genome-Wide Association Study for Test-Day Milk Yield, Proteins, and Composition Traits of Crossbred Dairy Cattle in Ethiopia\",\"authors\":\"B. Rekik, T. Mestawet, A. Girma, M. Seid, J. Besufekad, S. 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引用次数: 0
摘要
确定影响产奶性状的遗传区域和候选基因对于了解遗传和提高奶牛的产奶质量和数量至关重要。在埃塞俄比亚的中高海拔地区,杂交奶牛为提高牛奶产量和确保粮食安全做出了巨大贡献。然而,其产奶量和组成性状的遗传结构尚未得到深入研究。本研究对来自埃塞俄比亚中部、东北部和南部的 308 头杂交奶牛进行了全基因组关联研究(GWAS),以确定与主要产奶性状相关的遗传标记。我们使用高密度 SNP 芯片数据,并通过内存效率、可视化增强和并行加速 R 软件包(rMVP)(1.0.7 版)使用固定和随机模型循环概率统一(Farm CPU)方法,分析了包括牛奶生产性状在内的性状。我们分析了包括测试日产奶量(TDMY)、总蛋白(TP)、酪蛋白(CN)、乳清(W)、蛋白质百分比(P)、脂肪百分比(F)、乳糖百分比(L)、总固形物(TS)、密度(D)、固形物-非脂肪(SNF)、盐(S)和凝固点(FP)在内的性状。)这项研究发现了 16 个与这些性状相关的重要 SNPs,包括与 TP 和 W 均显著相关的 6 号染色体上的 rs41661899,以及与 CN 显著相关的 12 号染色体上的 rs42274954。rs43560693、rs109098713、rs111029661、rs134499665、rs133908307、rs133627532、rs42098411 和 rs110066280 等 8 个 SNP 在多个染色体(分别为 8、10、14、15、19、21、26 和 28)上被发现,并与奶 P 显著相关。此外,染色体 6 和 14 上的 SNPs rs110844447 和 rs135995768 分别与 D 和 FP 显著相关。在这些 SNP 附近和内部发现的候选基因包括 TRAM1L1、DIAPH3、PEBP4、WDR89、BCAS3、RALGAPA1、HABP2、NRG3、HPSE、PCDH7、LINC02579、TRNAS-GGA 和 OR5CN1P。这些发现加深了我们对埃塞俄比亚奶牛牛奶相关性状遗传结构的了解,并凸显了在育种计划中通过标记辅助选择来提高牛奶产量和成分的潜力。
Genome-Wide Association Study for Test-Day Milk Yield, Proteins, and Composition Traits of Crossbred Dairy Cattle in Ethiopia
Identifying genetic regions and candidate genes that influence milk production traits is critical for understanding genetic inheritance and improving both the quality and quantity of milk in dairy cattle. Crossbred dairy cattle significantly contribute to increasing milk production and ensuring food security in the middle- and high-altitude regions of Ethiopia. However, the genetic architecture underlying their milk yield and composition traits has not yet been thoroughly investigated. This study conducted a genome-wide association study (GWAS) on 308 crossbred dairy cows from central, northeastern, and southern Ethiopia to identify genetic markers associated with key milk production traits. Using high-density SNP chip data and the fixed and random model circulating probability unification (Farm CPU) method via the Memory-efficient, Visualization-enhanced, and Parallel-accelerated R package (rMVP) (Version 1.0.7.), we analyzed traits including test-day milk yield (TDMY), total protein (TP), casein (CN), whey (W), protein percentage (P), fat percentage (F), lactose percentage (L), total solids (TS), density (D), solids-not-fat (SNF), salt (S), and freezing point (FP). This study identified 16 significant SNPs associated with these traits, including rs41661899 on Chromosome 6, which was significantly associated with both TP and W, and rs42274954 on Chromosome 12, which was significantly associated with CN. Eight SNPs, such as rs43560693, rs109098713, rs111029661, rs134499665, rs133908307, rs133627532, rs42098411, and rs110066280, were found across multiple chromosomes (8, 10, 14, 15, 19, 21, 26, and 28, respectively) and were significantly associated with milk P. Additionally, SNPs rs110844447 and rs135995768 on Chromosomes 6 and 14 were significantly associated with D and FP, respectively. Three SNPs, including rs109564259, rs135552551, and rs41620904 on Chromosomes 6, 11, and 24, were significant associations with S. Candidate genes identified near and within these SNPs include TRAM1L1, DIAPH3, PEBP4, WDR89, BCAS3, RALGAPA1, HABP2, NRG3, HPSE, PCDH7, LINC02579, TRNAS-GGA, and OR5CN1P. These findings enhance our understanding of the genetic architecture of milk-related traits in Ethiopian dairy cattle and highlight the potential for marker-assisted selection to improve milk production and composition in breeding programs.