Suppr超能文献

基于北美荷斯坦犊牛自动喂奶器记录的牛奶摄入量变异性的恢复力指标的性状发育和遗传参数

Trait development and genetic parameters of resilience indicators based on variability in milk consumption recorded by automated milk feeders in North American Holstein calves.

作者信息

Graham Jason R, Taghipoor Masoomeh, Gloria Leonardo S, Boerman Jacquelyn P, Doucette Jarrod, Rocha Artur O, Brito Luiz F

机构信息

Department of Animal Sciences, Purdue University, West Lafayette, IN 47907.

Université Paris-Saclay, INRAE, AgroParisTech, UMR Modélisation Systémique Appliquée aux Ruminants, 91120, Palaiseau, France.

出版信息

J Dairy Sci. 2024 Dec;107(12):11180-11194. doi: 10.3168/jds.2024-25192. Epub 2024 Aug 30.

Abstract

The implementation of automated milk feeders (AMF) on precision dairy farms has enabled efficient management of large numbers of group-housed replacement calves with reduced labor requirements and improved calf welfare. In this study, we investigated the feasibility of deriving calf resilience indicators based on variability in milk consumption using data from 10,076 North American Holstein calves collected between 2015 and 2021. We modeled and evaluated deviations in observed and predicted daily milk consumption trajectories as indicators of resilience to environmental perturbations. We also analyzed average milk intake and the number of treatments for bovine respiratory disease (BRD) and their genetic correlations with the derived resilience parameters. Milk consumption was recorded using the Förster-Technik AMF. Deviations in cumulative milk intake were modeled using various methods, including quantile regression and the Gompertz function. Ten resilience indicators were derived to quantify the degree and duration of perturbations, including amplitude, perturbation time, recovery time, and deviation velocities. After data editing, genomic data from 9,273 calves and pedigree information from 10,076 calves with 321,388 phenotypic records were used to estimate genetic parameters for 12 traits, including 10 calf resilience indicators as well as average milk intake and treatments for BRD. Substantial phenotypic variability was observed for all calf resilience indicators derived and genetic parameters related to these novel resilience indicators were estimated. The heritability estimates for the resilience traits are as follows: amplitude of the deviation (in L) 0.047 (0.032, 0.064; HPD interval), perturbation time of deviation (in d) 0.011 (0.0056, 0.016), recovery time of the deviation (in d) 0.025 (0.016, 0.035), maximum velocity of perturbation (L/d) 0.039 (0.024, 0.053), average velocity of perturbation (L/d) 0.038 (0.022, 0.050), area between the curves (L × d) 0.039 (0.027, 0.054), recovery ratio 0.053 (0.036, 0.072), deviation variance 0.049 (0.32, 0.068), log-deviation variance 0.027 (0.016, 0.044), deviation autocorrelation 0.010 (0.0042, 0.017) and number of deviation occurrences 0.023 (0.0094, 0.036). Some of the highlighted genetic correlations observed with average milk consumption include amplitude: 0.569 (0.474, 0.666), perturbation time: -0.534 (-0.73, -0.342), and average velocity: 0.554 (0.432, 0.672). Similarly, the genetic correlations between the number of times treated for BRD with perturbation time was 0.494 (0.251, 0.723), -0.294 (-0.52, -0.095) with number of deviations, and 0.348 (0.131, 0.578) with deviation autocorrelation. This study highlights the genetic influence on various resilience traits in calves, including amplitude, perturbation time, recovery time, and velocity measures of the perturbation. Our findings suggest the need for prioritizing genetic selection based on traits such as recovery time, which exhibits higher heritability and a moderate genetic correlation with the number of times a calf is treated for BRD. The combination of AMF data, mathematical modeling, and genomic evaluation provides a comprehensive framework for assessing and breeding more resilient dairy calves in the face of environmental and health challenges.

摘要

在精准奶牛场实施自动喂乳器(AMF),能够有效管理大量群养的后备犊牛,减少劳动力需求并改善犊牛福利。在本研究中,我们利用2015年至2021年间收集的10,076头北美荷斯坦犊牛的数据,调查了基于牛奶摄入量变异性得出犊牛恢复力指标的可行性。我们对观察到的和预测的每日牛奶消耗轨迹偏差进行建模和评估,将其作为对环境扰动恢复力的指标。我们还分析了平均牛奶摄入量以及牛呼吸道疾病(BRD)的治疗次数,及其与得出的恢复力参数的遗传相关性。使用Förster-Technik AMF记录牛奶消耗量。使用包括分位数回归和Gompertz函数在内的各种方法对累积牛奶摄入量偏差进行建模。得出了十个恢复力指标,以量化扰动的程度和持续时间,包括幅度、扰动时间、恢复时间和偏差速度。数据编辑后,使用来自9,273头犊牛的基因组数据和来自10,076头犊牛的系谱信息以及321,388条表型记录,来估计12个性状的遗传参数,包括10个犊牛恢复力指标以及平均牛奶摄入量和BRD治疗次数。对于得出的所有犊牛恢复力指标,均观察到显著的表型变异性,并估计了与这些新恢复力指标相关的遗传参数。恢复力性状的遗传力估计值如下:偏差幅度(单位:升)0.047(0.032,0.064;HPD区间),偏差扰动时间(单位:天)0.011(0.0056,0.016),偏差恢复时间(单位:天)0.025(0.016,0.035),最大扰动速度(升/天)0.039(0.024,0.053),平均扰动速度(升/天)0.038(0.022,0.050),曲线间面积(升×天)0.039(0.027,0.054),恢复率0.053(0.036,0.072),偏差方差0.049(0.32,0.068),对数偏差方差0.027(0.016,0.044),偏差自相关0.010(0.0042,0.017)以及偏差发生次数0.023(0.0094,0.036)。观察到的与平均牛奶消耗量的一些突出遗传相关性包括:幅度:0.569(0.474,0.666),扰动时间:-0.534(-0.73,-0.342),以及平均速度:0.554(0.432,0.672)。同样,BRD治疗次数与扰动时间的遗传相关性为0.494(0.251,0.723),与偏差次数为-0.294(-0.52,-0.095),与偏差自相关为0.348(0.131,0.578)。本研究强调了遗传因素对犊牛各种恢复力性状的影响,包括幅度、扰动时间、恢复时间和扰动速度测量。我们的研究结果表明,需要根据恢复时间等性状优先进行遗传选择,恢复时间具有较高的遗传力,并且与犊牛BRD治疗次数具有中等遗传相关性。AMF数据、数学建模和基因组评估的结合,为面对环境和健康挑战时评估和培育更具恢复力的奶牛犊提供了一个全面的框架。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验