50,309头荷斯坦公牛30个复杂性状的全基因组关联研究和精细定位。

IF 4.4 1区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Junjian Wang, Yahui Gao, Sajjad Toghiani, John B Cole, Christian Maltecca, Li Ma, Jicai Jiang
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引用次数: 0

摘要

确定奶牛重要经济性状的因果遗传变异对于了解其遗传基础和优化育种计划至关重要。越来越多的参考基因组和具有表型和基因型数据的个体显著提高了我们检测遗传关联和进一步查明因果关系的能力。这一全面的奶牛GWAS使用非遗传育种值作为表型,分析了来自50,309头荷斯坦公牛的11,292,243个质量控制的输入序列变异。具有可用表型的公牛数量从23,121到50,309不等,涉及生产和产量,类型,寿命和健康等30个复杂性状。我们使用SLEMM-GWA方法执行GWAS,该方法考虑了个体间去压力育种值的不同可靠性,并证明了大样本量和序列数据的计算效率。该分析确定了381个显著的关联峰,其中126个是新发现。随后的贝叶斯精细映射通过分配个体变异和基因的后验条件包含概率提供了统计优先级,产生了可信的候选基因列表,这比传统的GWAS报告所有近端基因的进步。这种优先排序为之前报道的基因提供了直接的统计支持,更重要的是,在126个新发现的特定性状峰中确定了可信的候选基因,包括AOPEP、GC、E2F6、MGST1、VPS13B、ZNF652、ASPH、SFMBT1和MAPRE2。这些发现增强了对这些复杂乳制品性状的遗传结构的理解,并为改进荷斯坦牛的基因组选择策略和育种计划提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genome-wide association study and fine-mapping using imputed sequences to prioritize candidate genes for 30 complex traits in 50,309 Holstein bulls.

Identifying causal genetic variants underlying economically important traits in dairy cattle is essential for understanding their genetic basis and optimizing breeding programs. The growing availability of sequenced reference genomes and individuals with both phenotypic and genotypic data notably enhances our ability to detect genetic associations and further pinpoint causal effects. This comprehensive GWAS of dairy cattle used deregressed breeding values as phenotypes and analyzed 11,292,243 quality-controlled, imputed sequence variants from 50,309 Holstein bulls. The number of bulls with available phenotypes ranged from 23,121 to 50,309 across 30 complex traits categorized into production and yield, type, and longevity and health. We performed GWAS using our SLEMM-GWA approach, which accounts for the varying reliability of deregressed breeding values across individuals and demonstrates computational efficiency for large sample sizes and sequence data. This analysis identified 381 significant association peaks, of which 126 are novel findings. Subsequent Bayesian fine-mapping provided statistical prioritization by assigning posterior conditional inclusion probabilities to individual variants and genes, yielding a list of credible candidate genes-an advancement over conventional GWAS reporting of all proximal genes. This prioritization offered direct statistical support for previously reported genes and, more importantly, identified credible candidate genes within the 126 newly discovered peaks for specific traits, including AOPEP, GC, E2F6, MGST1, VPS13B, ZNF652, ASPH, SFMBT1, and MAPRE2. These findings enhance the understanding of the genetic architecture of these complex dairy traits and provide valuable insights for the refinement of genomic selection strategies and breeding programs in Holstein cattle.

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来源期刊
Journal of Dairy Science
Journal of Dairy Science 农林科学-奶制品与动物科学
CiteScore
7.90
自引率
17.10%
发文量
784
审稿时长
4.2 months
期刊介绍: The official journal of the American Dairy Science Association®, Journal of Dairy Science® (JDS) is the leading peer-reviewed general dairy research journal in the world. JDS readers represent education, industry, and government agencies in more than 70 countries with interests in biochemistry, breeding, economics, engineering, environment, food science, genetics, microbiology, nutrition, pathology, physiology, processing, public health, quality assurance, and sanitation.
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