Including microbiome information in a multi-trait genomic evaluation: a case study on longitudinal growth performance in beef cattle

IF 3.6 1区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Marina Martínez-Álvaro, Jennifer Mattock, Óscar González-Recio, Alejandro Saborío-Montero, Ziqing Weng, Joana Lima, Carol-Anne Duthie, Richard Dewhurst, Matthew A. Cleveland, Mick Watson, Rainer Roehe
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Abstract

Growth rate is an important component of feed conversion efficiency in cattle and varies across the different stages of the finishing period. The metabolic effect of the rumen microbiome is essential for cattle growth, and investigating the genomic and microbial factors that underlie this temporal variation can help maximize feed conversion efficiency at each growth stage. By analysing longitudinal body weights during the finishing period and genomic and metagenomic data from 359 beef cattle, our study demonstrates that the influence of the host genome on the functional rumen microbiome contributes to the temporal variation in average daily gain (ADG) in different months (ADG1, ADG2, ADG3, ADG4). Five hundred and thirty-three additive log-ratio transformed microbial genes (alr-MG) had non-zero genomic correlations (rg) with at least one ADG-trait (ranging from |0.21| to |0.42|). Only a few alr-MG correlated with more than one ADG-trait, which suggests that a differential host-microbiome determinism underlies ADG at different stages. These alr-MG were involved in ribosomal biosynthesis, energy processes, sulphur and aminoacid metabolism and transport, or lipopolysaccharide signalling, among others. We selected two alternative subsets of 32 alr-MG that had a non-uniform or a uniform rg sign with all the ADG-traits, regardless of the rg magnitude, and used them to develop a microbiome-driven breeding strategy based on alr-MG only, or combined with ADG-traits, which was aimed at shaping the rumen microbiome towards increased ADG at all finishing stages. Combining alr-MG information with ADG records increased prediction accuracy of genomic estimated breeding values (GEBV) by 11 to 22% relative to the direct breeding strategy (using ADG-traits only), whereas using microbiome information, only, achieved lower accuracies (from 7 to 41%). Predicted selection responses varied consistently with accuracies. Restricting alr-MG based on their rg sign (uniform subset) did not yield a gain in the predicted response compared to the non-uniform subset, which is explained by the absence of alr-MG showing non-zero rg at least with more than one of the ADG-traits. Our work sheds light on the role of the microbial metabolism in the growth trajectory of beef cattle at the genomic level and provides insights into the potential benefits of using microbiome information in future genomic breeding programs to accurately estimate GEBV and increase ADG at each finishing stage in beef cattle.
将微生物组信息纳入多性状基因组评估:肉牛纵向生长性能案例研究
生长速度是牛饲料转化效率的重要组成部分,并在育成期的不同阶段各不相同。瘤胃微生物组的代谢作用对牛的生长至关重要,研究导致这种时间变化的基因组和微生物因素有助于最大限度地提高每个生长阶段的饲料转化效率。通过分析359头肉牛育成期的纵向体重以及基因组和元基因组数据,我们的研究表明,宿主基因组对功能性瘤胃微生物组的影响导致了不同月份(ADG1、ADG2、ADG3、ADG4)平均日增重(ADG)的时间变化。533个加性对数比率转换微生物基因(alr-MG)与至少一个ADG-性状的基因组相关性(rg)不为零(从|0.21|到|0.42|)。只有少数 alr-MG 与一个以上的 ADG 性状相关,这表明宿主-微生物组的决定性差异是不同阶段 ADG 的基础。这些 alr-MG 参与了核糖体生物合成、能量过程、硫和氨基酸代谢与转运或脂多糖信号转导等。我们从 32 个 alr-MG 子群中选出了两个备选子群,它们与所有 ADG 特质(无论 rg 值大小)的 rg 值不一致或一致,并利用它们制定了仅基于 alr-MG 或与 ADG 特质相结合的微生物组驱动的育种策略,该策略旨在塑造瘤胃微生物组,以提高所有育成阶段的 ADG。与直接育种策略(仅使用 ADG-特征)相比,将 alr-MG 信息与 ADG 记录相结合可将基因组估计育种值(GEBV)的预测准确率提高 11% 至 22%,而仅使用微生物组信息的准确率较低(7% 至 41%)。预测的选择反应随准确率的变化而变化。与非均匀子集相比,根据 rg 符号限制 alr-MG(均匀子集)并不能提高预测响应,原因是至少没有 alr-MG 在一个以上的 ADG 特质中显示非零 rg。我们的研究在基因组水平上揭示了微生物代谢在肉牛生长轨迹中的作用,并深入分析了在未来基因组育种计划中使用微生物组信息的潜在益处,以准确估计肉牛各育成阶段的 GEBV 并提高 ADG。
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来源期刊
Genetics Selection Evolution
Genetics Selection Evolution 生物-奶制品与动物科学
CiteScore
6.50
自引率
9.80%
发文量
74
审稿时长
1 months
期刊介绍: Genetics Selection Evolution invites basic, applied and methodological content that will aid the current understanding and the utilization of genetic variability in domestic animal species. Although the focus is on domestic animal species, research on other species is invited if it contributes to the understanding of the use of genetic variability in domestic animals. Genetics Selection Evolution publishes results from all levels of study, from the gene to the quantitative trait, from the individual to the population, the breed or the species. Contributions concerning both the biological approach, from molecular genetics to quantitative genetics, as well as the mathematical approach, from population genetics to statistics, are welcome. Specific areas of interest include but are not limited to: gene and QTL identification, mapping and characterization, analysis of new phenotypes, high-throughput SNP data analysis, functional genomics, cytogenetics, genetic diversity of populations and breeds, genetic evaluation, applied and experimental selection, genomic selection, selection efficiency, and statistical methodology for the genetic analysis of phenotypes with quantitative and mixed inheritance.
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