特征工程和集合方法的人工智能方法描绘了瘤胃微生物组对奶牛饲料效率的贡献。

IF 4.9 Q1 MICROBIOLOGY Animal microbiome Pub Date : 2024-02-06 DOI:10.1186/s42523-024-00289-5
Hugo F Monteiro, Caio C Figueiredo, Bruna Mion, José Eduardo P Santos, Rafael S Bisinotto, Francisco Peñagaricano, Eduardo S Ribeiro, Mariana N Marinho, Roney Zimpel, Ana Carolina da Silva, Adeoye Oyebade, Richard R Lobo, Wilson M Coelho, Phillip M G Peixoto, Maria B Ugarte Marin, Sebastian G Umaña-Sedó, Tomás D G Rojas, Modesto Elvir-Hernandez, Flávio S Schenkel, Bart C Weimer, C Titus Brown, Ermias Kebreab, Fábio S Lima
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引用次数: 0

摘要

随着时间的推移,美国奶牛场的每头奶牛的产奶量增加了一倍多,遗传选育显著帮助奶牛场减少了碳足迹。尽管饲料和牛奶生产效率的提高带来了环境和经济效益,但仍迫切需要探索饲料利用率的表型变异,以促进奶牛场的长期可持续发展。饲料是奶牛场的主要开支,而饲料的肠道发酵是农业温室气体的主要来源。扩大表型数据库(尤其是用于饲料效率预测的表型数据库)所面临的挑战以及对其驱动因素的不了解限制了其利用。瘤胃微生物在奶牛的生理反应中起着核心作用,因此我们利用人工智能方法、特征工程和集合方法来探索瘤胃微生物组对饲料和牛奶生产效率性状的预测能力。新颖的集合方法有助于进一步确定与效率指标相关的关键微生物。我们使用了美国和加拿大的 454 头基因分型荷斯坦奶牛,这些奶牛的饲料和产奶效率表型都是单独测定的。该研究强调,瘤胃微生物组是残余饲料摄入量(RFI)的主要驱动因素,RFI 是该研究中评估的最可靠的饲料效率指标,占其变化的 36%。进一步的分析表明,饲料效率较高的奶牛α-多样性指标较低。就 RFI 而言,[Ruminococcus] gauvreauii 组是唯一与饲料效率提高呈正相关的菌属,而其他七个类群则与效率低下相关。该研究还强调,瘤胃微生物群对牛奶脂肪和蛋白质生产效率中无法解释的差异至关重要。对这些奶牛碳足迹的估算表明,选择更好的RFI可使每头奶牛每天减少多达5千克的日粮消耗,从而可能减少多达37.5%的CH4。这些发现表明,将人工智能方法、微生物学和反刍动物营养学结合起来,可以进一步促进我们对瘤胃微生物组对奶牛营养需求和泌乳性能的了解,从而支持奶牛业的长期可持续发展。
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An artificial intelligence approach of feature engineering and ensemble methods depicts the rumen microbiome contribution to feed efficiency in dairy cows.

Genetic selection has remarkably helped U.S. dairy farms to decrease their carbon footprint by more than doubling milk production per cow over time. Despite the environmental and economic benefits of improved feed and milk production efficiency, there is a critical need to explore phenotypical variance for feed utilization to advance the long-term sustainability of dairy farms. Feed is a major expense in dairy operations, and their enteric fermentation is a major source of greenhouse gases in agriculture. The challenges to expanding the phenotypic database, especially for feed efficiency predictions, and the lack of understanding of its drivers limit its utilization. Herein, we leveraged an artificial intelligence approach with feature engineering and ensemble methods to explore the predictive power of the rumen microbiome for feed and milk production efficiency traits, as rumen microbes play a central role in physiological responses in dairy cows. The novel ensemble method allowed to further identify key microbes linked to the efficiency measures. We used a population of 454 genotyped Holstein cows in the U.S. and Canada with individually measured feed and milk production efficiency phenotypes. The study underscored that the rumen microbiome is a major driver of residual feed intake (RFI), the most robust feed efficiency measure evaluated in the study, accounting for 36% of its variation. Further analyses showed that several alpha-diversity metrics were lower in more feed-efficient cows. For RFI, [Ruminococcus] gauvreauii group was the only genus positively associated with an improved feed efficiency status while seven other taxa were associated with inefficiency. The study also highlights that the rumen microbiome is pivotal for the unexplained variance in milk fat and protein production efficiency. Estimation of the carbon footprint of these cows shows that selection for better RFI could reduce up to 5 kg of diet consumed per cow daily, potentially reducing up to 37.5% of CH4. These findings shed light that the integration of artificial intelligence approaches, microbiology, and ruminant nutrition can be a path to further advance our understanding of the rumen microbiome on nutrient requirements and lactation performance of dairy cows to support the long-term sustainability of the dairy community.

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