Urinary and fecal potassium excretion prediction in dairy cattle: A meta-analytic approach

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Abstract

Quantification of potassium (K) excretion in dairy cattle is important to understand the environmental impact of dairy farming. To improve and monitor the environmental impact of dairy cows, there is a need for a simple, inexpensive, and less laborious method to quantify K excretion on dairy farms. The adoption of empirical mathematical models has been shown to be a promising tool to address this issue. Thus, the current study aimed to develop empirical predictive models for K excretion in dairy cattle from urine and feces that can help evaluate efficiency and monitor the environmental impact of milk production. To develop urine K (KUr, g/d) and fecal K (KFa, g/d) excretion prediction models, published literature that involved 45 and 54 treatment means from 10 and 14 studies, respectively, were used. Some studies reported either urinary or fecal K excretion or both, but in total, treatment means used to develop the models were from 17 studies. The linear mixed models were fitted with the fixed effect of K intake, DMI, dietary K content, urine volume, milk yield, and water intake, and the random effect of study weighted according to the number of observations. Leave-one-study out cross-validation was used to evaluate the performance of the proposed models and the best model was based on the lowest root mean square prediction error as a percentage of the observed mean values (RMSPE%) and highest concordance correlation coefficient (CCC). As expected, most daily K excretion was through urine (202.5 ± 92.1 g/d) than through feces (43.5 ± 21.0 g/d), and among the proposed models, the model including dietary K concentration showed poor predictive ability for both KUr and KFa with the lowest CCC values (−0.15 and −0.02, respectively) and systematic bias. The model developed using DMI to predict KFa excretion showed reasonable accuracy, as indicated by RMSPE, CCC, and R2marginal of 46.6%, 0.42, and 48%, respectively. Among the proposed models for KUr and KFa, the model with K intake demonstrated better predictive performance, showing minimal systematic bias and random errors due to data variability of >92%. While these proposed models suggested that reducing K intake can lead to a decrease in K excretion, it is important to ensure that dairy cows receive adequate amounts of this nutrient to maintain optimal health and productivity, especially during periods of heat stress.

奶牛尿钾和粪钾排泄量预测:元分析方法
量化奶牛的钾(K)排泄量对于了解奶牛养殖对环境的影响非常重要。为了改善和监测奶牛对环境的影响,需要一种简单、廉价、省力的方法来量化奶牛场的钾排泄量。事实证明,采用经验数学模型是解决这一问题的有效工具。因此,本研究旨在开发奶牛从尿液和粪便中排泄钾的经验预测模型,以帮助评估牛奶生产的效率并监测其对环境的影响。为了开发尿钾排泄预测模型(KUr,克/天)和粪钾排泄预测模型(KFa,克/天),本研究使用了已发表的文献,这些文献分别涉及来自 10 项和 14 项研究的 45 个和 54 个处理指标。有些研究报告了尿液或粪便中的钾排泄量,或同时报告了这两种情况,但用于建立模型的治疗手段总共来自 17 项研究。线性混合模型由 K 摄入量、DMI、膳食 K 含量、尿量、产奶量和水摄入量的固定效应和根据观察结果数量加权的研究随机效应拟合而成。采用 "留一研究 "交叉验证来评估所提出模型的性能,最佳模型的标准是均方根预测误差占观测均值的百分比(RMSPE%)最小和一致性相关系数(CCC)最大。正如预期的那样,每天通过尿液排出的钾量(202.5 ± 92.1 克/天)多于通过粪便排出的钾量(43.5 ± 21.0 克/天),在所提出的模型中,包含膳食钾浓度的模型对 KUr 和 KFa 的预测能力较差,其 CCC 值最低(分别为-0.15 和-0.02),且存在系统性偏差。利用 DMI 建立的预测 KFa 排泄的模型显示出合理的准确性,其 RMSPE、CCC 和 R2maral 分别为 46.6%、0.42 和 48%。在所提出的 KUr 和 KFa 模型中,K 摄入量模型的预测性能较好,显示出最小的系统偏差和因数据变异造成的随机误差(>92%)。虽然这些建议的模型表明,减少钾的摄入量会导致钾的排泄量减少,但重要的是要确保奶牛摄入足量的钾,以保持最佳的健康状况和生产性能,尤其是在热应激期间。
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来源期刊
JDS communications
JDS communications Animal Science and Zoology
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