Department of Dairy Science, University of Wisconsin, Madison 53706.
Department of Dairy Science, University of Wisconsin, Madison 53706.
J Dairy Sci. 2018 May;101(5):4378-4387. doi: 10.3168/jds.2017-14076. Epub 2018 Feb 22.
Prediction of postpartum hyperketonemia (HYK) using Fourier transform infrared (FTIR) spectrometry analysis could be a practical diagnostic option for farms because these data are now available from routine milk analysis during Dairy Herd Improvement testing. The objectives of this study were to (1) develop and evaluate blood β-hydroxybutyrate (BHB) prediction models using multivariate linear regression (MLR), partial least squares regression (PLS), and artificial neural network (ANN) methods and (2) evaluate whether milk FTIR spectrum (mFTIR)-based models are improved with the inclusion of test-day variables (mTest; milk composition and producer-reported data). Paired blood and milk samples were collected from multiparous cows 5 to 18 d postpartum at 3 Wisconsin farms (3,629 observations from 1,013 cows). Blood BHB concentration was determined by a Precision Xtra meter (Abbot Diabetes Care, Alameda, CA), and milk samples were analyzed by a privately owned laboratory (AgSource, Menomonie, WI) for components and FTIR spectrum absorbance. Producer-recorded variables were extracted from farm management software. A blood BHB ≥1.2 mmol/L was considered HYK. The data set was divided into a training set (n = 3,020) and an external testing set (n = 609). Model fitting was implemented with JMP 12 (SAS Institute, Cary, NC). A 5-fold cross-validation was performed on the training data set for the MLR, PLS, and ANN prediction methods, with square root of blood BHB as the dependent variable. Each method was fitted using 3 combinations of variables: mFTIR, mTest, or mTest + mFTIR variables. Models were evaluated based on coefficient of determination, root mean squared error, and area under the receiver operating characteristic curve. Four models (PLS-mTest + mFTIR, ANN-mFTIR, ANN-mTest, and ANN-mTest + mFTIR) were chosen for further evaluation in the testing set after fitting to the full training set. In the cross-validation analysis, model fit was greatest for ANN, followed by PLS and MLR. Diagnostic strength after cross-validation was poorest for MLR and was similar for ANN and PLS. Models that used mTest + mFTIR variables performed marginally better than models that used only mFTIR or mTest variables. These results suggest that blood BHB prediction models that use mFTIR + mTest variables may be useful additions to existing HYK diagnostic and management programs.
使用傅里叶变换红外(FTIR)光谱分析预测产后高酮血症(HYK)可能是农场的一种实用诊断选择,因为这些数据现在可从奶牛群体改良测试中的常规牛奶分析中获得。本研究的目的是:(1)使用多元线性回归(MLR)、偏最小二乘回归(PLS)和人工神经网络(ANN)方法开发和评估血液β-羟丁酸(BHB)预测模型;(2)评估是否基于牛奶 FTIR 光谱(mFTIR)的模型通过包含测试日变量(mTest;牛奶成分和生产者报告的数据)得到改善。在威斯康星州的 3 个农场(来自 1,013 头奶牛的 3629 个观测值)中,在产后 5 至 18 天从多胎奶牛中采集配对的血液和牛奶样本。使用 Precision Xtra 计(雅培糖尿病护理,阿拉米达,加利福尼亚州)测定血液 BHB 浓度,使用私营实验室(威斯康星州梅诺莫尼的 AgSource)分析牛奶样本以测定成分和 FTIR 光谱吸光度。从农场管理软件中提取生产者记录的变量。血液 BHB 浓度≥1.2mmol/L 被认为是 HYK。数据集分为训练集(n=3020)和外部测试集(n=609)。使用 JMP 12(SAS Institute,Cary,NC)对 MLR、PLS 和 ANN 预测方法的训练数据集进行拟合。在训练数据集中对 MLR、PLS 和 ANN 预测方法进行了 5 折交叉验证,以血液 BHB 的平方根为因变量。每个方法都使用 3 种变量组合进行拟合:mFTIR、mTest 或 mTest + mFTIR 变量。基于决定系数、均方根误差和接收者操作特征曲线下的面积评估模型。在拟合完整训练集后,选择了 4 个模型(PLS-mTest + mFTIR、ANN-mFTIR、ANN-mTest 和 ANN-mTest + mFTIR)在测试集中进一步评估。在交叉验证分析中,ANN 的模型拟合效果最好,其次是 PLS 和 MLR。经过交叉验证后的诊断强度最差的是 MLR,ANN 和 PLS 的诊断强度相似。使用 mTest + mFTIR 变量的模型的性能略优于仅使用 mFTIR 或 mTest 变量的模型。这些结果表明,使用 mFTIR + mTest 变量的血液 BHB 预测模型可能是现有 HYK 诊断和管理计划的有用补充。