Bauer Edyta A, Jagusiak Wojciech
Department of Animal Reproduction, Anatomy and Genomics, Faculty of Animal Science, University of Agriculture in Krakow, 30-059 Kraków, Poland.
Department of Genetics, Animal Breeding and Ethology, Faculty of Animal Science, University of Agriculture in Krakow, 30-059 Kraków, Poland.
Animals (Basel). 2022 Jan 29;12(3):332. doi: 10.3390/ani12030332.
Subclinical ketosis is one of the most dominant metabolic disorders in dairy herds during lactation. Cows suffering from ketosis experience elevated ketone body levels in blood and milk, including β-hydroxybutyric acid (BHB), acetone (ACE) and acetoacetic acid. Ketosis causes serious financial losses to dairy cattle breeders and milk producers due to the costs of diagnosis and management as well as animal welfare reasons. Recent years have seen a growing interest in the use of artificial neural networks (ANNs) in various fields of science. ANNs offer a modeling method that enables the mapping of highly complex functional relationships. The purpose of this study was to determine the relationship between milk composition and blood BHB levels associated with subclinical ketosis in dairy cows, using feedforward multilayer perceptron (MLP) artificial neural networks. The results were verified based on the estimated sensitivity and specificity of selected network models, an optimum cut-off point was identified for the receiver operating characteristic (ROC) curve and the area under the ROC curve (AUC). The study demonstrated that BHB, ACE and lactose (LAC) levels, as well as the fat-to-protein ratio in milk, were important input variables in the network training process. For the identification of cows at risk of subclinical ketosis, variables such as BHB and ACE levels in milk were of particular relevance, with a sensitivity and specificity of 0.84 and 0.61, respectively. It was found that the back propagation algorithm offers opportunities to integrate artificial intelligence and dairy cattle welfare within a computerized decision support tool.
亚临床酮病是泌乳期奶牛群中最主要的代谢紊乱疾病之一。患酮病的奶牛血液和乳汁中的酮体水平会升高,包括β-羟基丁酸(BHB)、丙酮(ACE)和乙酰乙酸。由于诊断和管理成本以及动物福利原因,酮病给奶牛养殖者和牛奶生产者造成了严重的经济损失。近年来,人们对人工神经网络(ANN)在各个科学领域的应用越来越感兴趣。人工神经网络提供了一种建模方法,能够映射高度复杂的函数关系。本研究的目的是使用前馈多层感知器(MLP)人工神经网络确定奶牛亚临床酮病相关的乳汁成分与血液BHB水平之间的关系。基于所选网络模型的估计灵敏度和特异性对结果进行了验证,确定了受试者工作特征(ROC)曲线的最佳截断点以及ROC曲线下面积(AUC)。研究表明,BHB、ACE和乳糖(LAC)水平以及乳汁中的脂肪与蛋白质比率是网络训练过程中的重要输入变量。对于识别有亚临床酮病风险的奶牛,乳汁中的BHB和ACE水平等变量尤为重要,其灵敏度和特异性分别为0.84和0.61。研究发现,反向传播算法为在计算机化决策支持工具中整合人工智能和奶牛福利提供了机会。