Milk components as potential indicators of energy status in early lactation Holstein dairy cows from two farms

IF 4 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Animal Pub Date : 2024-08-01 DOI:10.1016/j.animal.2024.101235
M. Štolcová, L. Bartoň, D. Řehák
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Abstract

Negative energy balance (NEB) is a serious problem in most dairy cows. It occurs most frequently after calving, when cows are unable to consume sufficient DM to meet their energy requirements during early lactation. During NEB, the breakdown of fat stores releases non−esterified fatty acids (NEFAs) into the bloodstream. High blood concentrations of NEFAs cause health problems such as ketosis, fatty liver syndrome, and enhanced susceptibility to infections. These issues may substantially increase premature culling from the herd. Serum NEFA concentrations are often used as a direct marker of energy metabolism. However, because the direct measurement of serum NEFAs is difficult under commercial conditions, alternative indicators, such as milk components, have been increasingly investigated for their use in estimating energy balance. The objectives of this study were to (1) evaluate the relationships between serum NEFA concentrations and selected milk components in cows from two farms during the first 5 weeks of lactation, and to (2) develop a model valid for both herds for predicting serum NEFA concentrations using milk components. A total of 121 lactating Holstein cows from two different farms were included in the experiment. Blood samples were collected for NEFA analysis on days 7 (± 3), 14 (± 3), 21 (± 3), and 35 (± 3) after calving. Composite milk samples were collected during afternoon milking on the same days as blood sampling. Concentrations of fat, protein, lactose, and milk fatty acids (FAs) were determined using Fourier-transform IR spectroscopy analysis. The strongest correlations (r > 0.43) were recorded between serum NEFAs and milk long-chain FAs, monounsaturated FAs, C18:0, and C18:1 within each farm and for both farms combined. Two prediction models for serum log(NEFA) using milk components as predictors were developed by stepwise regression. The prediction model with the best fit (R2 = 0.52) included days in milk, fat-to-protein ratio, and C18:1, C18:12 and C14:0 expressed as g/100 g of milk fat. An essential finding is that, despite different concentrations of NEFAs, and of most milk components observed in the evaluated herds, there were no significant interactions between farm and any of the FAs, so the same regression coefficients could be used for the prediction models in both farms. Validation of these findings in a greater number of herds would allow for the use of milk FAs to identify energy−imbalanced cows in herds under different farm conditions.

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作为两个牧场荷斯坦奶牛泌乳早期能量状况潜在指标的牛奶成分
负能量平衡(NEB)是大多数奶牛面临的一个严重问题。它最常发生在产犊后,因为奶牛无法摄入足够的 DM 以满足泌乳早期的能量需求。在 NEB 期间,脂肪储存的分解会将非酯化脂肪酸 (NEFAs) 释放到血液中。血液中高浓度的非酯化脂肪酸会导致酮病和脂肪肝综合症等健康问题,并增加感染的几率。这些问题可能会大大增加牛群的过早淘汰。血清 NEFA 浓度通常被用作能量代谢的直接指标。然而,由于在商业条件下难以直接测量血清 NEFA,因此人们越来越多地研究牛奶成分等替代指标在估计能量平衡中的应用。本研究的目的是:(1) 评估两个牧场的奶牛在泌乳期前 5 周的血清 NEFA 浓度与所选牛奶成分之间的关系;(2) 建立一个适用于两个牧场的模型,利用牛奶成分预测血清 NEFA 浓度。共有来自两个不同牧场的 121 头泌乳荷斯坦奶牛参加了实验。在产犊后第 7 天(± 3)、14 天(± 3)、21 天(± 3)和 35 天(± 3)采集血液样本进行 NEFA 分析。在采血的同一天下午挤奶时采集复合奶样。采用傅立叶变换红外光谱分析法测定脂肪、蛋白质、乳糖和乳脂肪酸(FAs)的浓度。每个牧场和两个牧场的血清 NEFAs 与牛奶长链脂肪酸、单不饱和脂肪酸、C18:0 和 C18:1 之间的相关性最强(r > 0.43)。通过逐步回归法建立了两个以牛奶成分为预测因子的血清对数(NEFA)预测模型。拟合度最高的预测模型(R2 = 0.52)包括产奶天数、脂肪与蛋白质比率以及以克/100 克乳脂表示的 C18:1、C18:12 和 C14:0。一个重要的发现是,尽管在接受评估的牛群中观察到的 NEFAs 和大多数牛奶成分的浓度不同,但牧场与任何一种 FA 之间都没有显著的交互作用,因此两个牧场的预测模型可以使用相同的回归系数。在更多的牛群中验证这些发现将有助于利用牛奶中的 FAs 来识别不同牧场条件下牛群中能量失衡的奶牛。
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来源期刊
Animal
Animal 农林科学-奶制品与动物科学
CiteScore
7.50
自引率
2.80%
发文量
246
审稿时长
3 months
期刊介绍: Editorial board animal attracts the best research in animal biology and animal systems from across the spectrum of the agricultural, biomedical, and environmental sciences. It is the central element in an exciting collaboration between the British Society of Animal Science (BSAS), Institut National de la Recherche Agronomique (INRA) and the European Federation of Animal Science (EAAP) and represents a merging of three scientific journals: Animal Science; Animal Research; Reproduction, Nutrition, Development. animal publishes original cutting-edge research, ''hot'' topics and horizon-scanning reviews on animal-related aspects of the life sciences at the molecular, cellular, organ, whole animal and production system levels. The main subject areas include: breeding and genetics; nutrition; physiology and functional biology of systems; behaviour, health and welfare; farming systems, environmental impact and climate change; product quality, human health and well-being. Animal models and papers dealing with the integration of research between these topics and their impact on the environment and people are particularly welcome.
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