...
首页> 外文期刊>Computers and Electronics in Agriculture >Prediction of subacute ruminal acidosis based on milk fatty acids: A comparison of linear discriminant and support vector machine approaches for model development
【24h】

Prediction of subacute ruminal acidosis based on milk fatty acids: A comparison of linear discriminant and support vector machine approaches for model development

机译:基于牛奶脂肪酸的亚急性瘤胃酸中毒的预测:用于模型开发的线性判别和支持向量机方法的比较

获取原文
获取原文并翻译 | 示例
           

摘要

Subacute ruminal acidosis (SARA), characterized by low rumen pH, is one of the most important metabolic disorders in dairy cattle. As dairy cows experiencing SARA often do not exhibit overt clinical symptoms, diagnostic biomarkers in milk are of interest. Data of six acidosis induction experiments with rumen-fistulated dairy cows were combined to assess the potential of milk fatty acids (FA) to identify acidotic cases, based on three threshold values often reported in literature, i.e. time pH 5.6 of 180 min/d and 283 min/d and time pH below 5.8 of 475 min/d (N = 442 cases, of which 111-165 acidotic cases, depending on the applied threshold value). Both linear discriminant analysis (LDA) as well as support vector machines (SVM) were used to develop classification models, with SVM based on two common types of kernel functions (linear kernels and Gaussian radial basis function kernels) and including either the whole milk FA profile (41-69 milk FA, depending on the experiment) or a selected number of milk FA (i.e. both odd and branched chain FA and biohydrogenation derivates of poly-unsaturated FA, 13-16 FA). Both evaluation of the performance of individual classification models as well as comparison of models was based on the area under the receiver operating characteristic (ROC) curve. Non-linear models developed through a radial kernel based SVM approach seemed of particular interest when including all milk FA as model features. However, linear models based on the selected group of milk FA most often performed as good as the non-linear models including all milk FA, with the former being least time consuming and more cost-effective, both from a computational as well as an analytical perspective. However, combination of all data sets only resulted in good classification models when including data of each dataset upon training the model, whereas model performance decreased dramatically in case of cross-dataset cross-validation. This indicates an important impact of the origin of the datasets on the performance of the model which should be taken into account in further exploration of prediction models of SARA. (C) 2015 Elsevier B.V. All rights reserved.
机译:以瘤胃pH值较低为特征的亚急性瘤胃酸中毒(SARA)是奶牛最重要的代谢疾病之一。由于经历SARA的奶牛通常不会表现出明显的临床症状,因此人们对牛奶中的诊断性生物标志物很感兴趣。基于文献中经常报道的三个阈值,即pH <5.6的180分钟/天,结合瘤胃瘘奶牛的六个酸中毒诱导实验数据,以评估牛奶脂肪酸(FA)识别酸中毒病例的潜力。 283分钟/天,时间pH低于475分钟/天的5.8(N = 442例,其中111-165例酸中毒,具体取决于应用的阈值)。线性判别分析(LDA)和支持向量机(SVM)均用于开发分类模型,其中SVM基于两种常见的核函数类型(线性核和高斯径向基函数核),并且包括全脂FA曲线(41-69牛奶FA,取决于实验)或选定数量的牛奶FA(即奇数和支链FA以及多不饱和FA,13-16 FA的生物氢化衍生物)。各个分类模型的性能评估以及模型比较均基于接收器工作特性(ROC)曲线下的面积。当将所有牛奶FA作为模型特征时,通过基于径向核的SVM方法开发的非线性模型似乎特别受关注。但是,基于所选牛奶FA组的线性模型通常与包括所有牛奶FA的非线性模型一样好,而从计算和分析两方面来看,前者耗时最少且更具成本效益透视。但是,所有数据集的组合仅在训练模型时包括每个数据集的数据时才产生良好的分类模型,而在进行交叉数据集交叉验证的情况下,模型性能会急剧下降。这表明数据集来源对模型性能的重要影响,在进一步探索SARA预测模型时应考虑在内。 (C)2015 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号