对牧草日粮中影响牛奶尿素氮和尿氮输出的奶牛水平因素进行系统回顾和荟萃分析。

IF 3.7 1区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Mancoba C Mangwe, Winston A Mason, Charlotte B Reed, Olivia K Spaans, David Pacheco, Racheal H Bryant
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引用次数: 0

摘要

奶牛养殖业面临着降低环境足迹的压力,因此必须找到有效的牧场代用指标,用于评估和监测旨在降低氮(N)损失风险和优化奶牛场系统氮利用效率的管理方法。尿氮(UN)被认为是氮排放的最大来源。与圈养系统相比,很少有牧场系统的研究将牧场动物和营养因素与尿氮产量联系起来。因此,本次荟萃分析的目的是整理牧场研究数据库,以便(a) 调查管理、饮食和动物变量与 MUN 浓度和日 UN 产量之间的关系;(b) 描述 MUN 与 UN 之间的关系;(c) 评估动物、管理和饮食因素是否会影响这种关系。我们建立了一个数据集,该数据集由 95 个观测值组成,代表了 919 头以牧草为基础日粮的泌乳乳牛,这些观测值来自 32 篇同时报道 MUN 和 UN 产量的研究论文。数据分析采用了多层次混合荟萃分析回归技术。首先,所有变量都作为两级随机效应模型中唯一的固定效应进行评估,以考虑出版物内部的异质性。然后,使用元回归技术分别评估所有变量与 MUN 和联合国产出的关系,并考虑到 3 个变量来源:单个观察结果的抽样误差、出版物内部的异质性和出版物之间的异质性。在单变量水平上,尽管有 10 多个饮食、动物或管理变量与 MUN 显著相关,但没有一个变量能解释 MUN 的大量变化。能解释最大变异的变量是日粮粗蛋白(CP)含量和氮:代谢能含量比,它们分别解释了约 33% 和 31% 的 MUN 浓度变异。在多元回归中结合各种因素可提高模型的拟合度,因此在最终的多元元回归模型中,由膳食粗蛋白和氮摄入量解释的出版物内的变化增加到了 40.0%。与 MUN 相比,UN 输出的单个变量解释了观察结果中更大比例的变异,其中日粮 CP 含量(伪 R2 = 66.1%)、N 与代谢能摄入量之比(伪 R2 = 64.0%)、N 摄入量(伪 R2 = 58.3%)和 MUN(伪 R2 = 43.5%)解释了总变异的最大部分。在最终的多元元回归模型中,牛奶尿素氮、氮摄入量和干物质摄入量与联合国产出相关。不同出版物之间的 MUN 和 UN 都存在很大的异质性,出版物之间的异质性占 MUN 所有差异的 73.4%,占 UN 产出所有差异的 88.6%。因此,荟萃分析无法在很大程度上预测 "监测、评估和报告 "和 "联合国"。建议今后在牧场系统的所有研究中采用一致的方法来测量和报告 MUN 浓度和 UN 产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A systematic review and meta-analysis of cow-level factors affecting milk urea nitrogen and urinary nitrogen output under pasture-based diets.

With dairy cattle farming under pressure to lower its environmental footprint it is important to find effective on-farm proxies for evaluation and monitoring of management practices aimed at reducing the risk of nitrogen (N) losses and optimizing N use efficiency of dairy farm systems. Urinary N (UN) is regarded as the most potent source of N emissions. In contrast to confinement systems, there have been few studies from pasture-based systems associating on-farm animal and nutritional factors with UN output. Thus, the aims of this meta-analysis were to collate a database from pasture-based research to: (a) investigate the associations of management, dietary, and animal variables with MUN concentration, and daily UN output; (b) describe the MUN-UN association; and (c) assess whether animal, management, and dietary factors influence the relationship. We developed a data set consisting of 95 observations representing 919 lactating dairy cattle fed pasture-based diets, which was compiled from 32 unique research publications that reported both MUN and UN output. Multi-level, mixed meta-analysis regression techniques were used to analyze the data. Initially, all variables were assessed as the sole fixed effect in a 2-level random effects model, accounting for within publication heterogeneity. Meta-regression techniques were then used to assess the relationship of all variables with MUN and UN output, respectively, accounting for 3 sources of variability: the sampling error of the individual observation, within publication heterogeneity, and among publication heterogeneity. At the univariable level, despite more than 10 dietary, animal, or management variables being significantly associated with MUN, none explained a large amount of the MUN variation. The variables that explained the greatest amount of variation were dietary crude protein (CP) content and the nitrogen: metabolizable energy content ratio, which explained about 33% and 31% of the variation in MUN concentrations, respectively. Combining factors in multiple regressions improved the model fit, such that the variation within publications explained by dietary CP and N intake increased to 40.0% in the final multiple meta-regression model. For UN output, individual variables explained a greater proportion of variance reported among observations, compared with MUN, whereby diet CP content (pseudo R2 = 66.1%), N to metabolizable energy intake ratio (pseudo R2 = 64.0%), N intake (pseudo R2 = 58.3%), and MUN (pseudo R2 = 43.5%) explained the greatest amount of the total variation. Milk urea nitrogen, N intake and dry matter intake were associated with UN output in the final multiple meta-regression model. Substantial heterogeneity existed in both MUN and UN among publications, with among publication heterogeneity accounting for 73.4% of all the variation noted in MUN, and 88.6% of all the variation in UN output. As such, the meta-analyses could not predict MUN and UN to any great extent. It is recommended that a consistent approach to measuring and reporting MUN concentrations and UN output is carried out for all future research in pasture-based systems.

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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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