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利用机器学习发现过度育肥奶牛的不同代谢类型。

Discovery of different metabotypes in overconditioned dairy cows by means of machine learning.

机构信息

Institute of Animal Science, Physiology Unit, University of Bonn, 53115 Bonn, Germany.

Department of Epileptology, University of Bonn, Bonn 53127, Germany.

出版信息

J Dairy Sci. 2020 Oct;103(10):9604-9619. doi: 10.3168/jds.2020-18661. Epub 2020 Jul 31.

Abstract

Using data from targeted metabolomics in serum in combination with machine learning (ML) approaches, we aimed at (1) identifying divergent metabotypes in overconditioned cows and at (2) exploring how metabotypes are associated with lactation performance, blood metabolites, and hormones. In a previously established animal model, 38 pregnant multiparous Holstein cows were assigned to 2 groups that were fed differently to reach either high (HBCS) or normal (NBCS) body condition score (BCS) and backfat thickness (BFT) until dryoff at -49 d before calving [NBCS: BCS < 3.5 (3.02 ± 0.24) and BFT < 1.2 cm (0.92 ± 0.21), mean ± SD; HBCS: BCS > 3.75 (3.82 ± 0.33) and BFT > 1.4 cm (2.36 ± 0.35)]. Cows were then fed the same diets during the dry period and the subsequent lactation, and maintained the differences in BFT and BCS throughout the study. Blood samples were collected weekly from 7 wk antepartum (ap) to 12 wk postpartum (pp) to assess serum concentrations of metabolites (by targeted metabolomics and by classical analyses) and metabolic hormones. Metabolic clustering by applying 4 supervised ML-based classifiers [sequential minimal optimization (SMO), random forest (RF), alternating decision tree (ADTree), and naïve Bayes-updatable (NB)] on the changes (d 21 pp minus d 49 ap) in concentrations of 170 serum metabolites resulted in 4 distinct metabolic clusters: HBCS predicted HBCS (HBCS-PH, n = 13), HBCS predicted NBCS (HBCS-PN, n = 6), NBCS predicted NBCS (NBCS-PN, n = 15), and NBCS predicted HBCS (NBCS-PH, n = 4). The accuracies of SMO, RF, ADTree, and NB classifiers were >70%. Because the number of NBCS-PH cows was low, we did not consider this group for further comparisons. Dry matter intake (kg/d and percentage of body weight) and energy intake were greater in HBCS-PN than in HBCS-PH in early lactation, and HBCS-PN also reached a positive energy balance earlier than did HBCS-PH. Milk yield was not different between groups, but milk protein percentage was greater in HBCS-PN than in HBCS-PH cows. The circulating concentrations of fatty acids (FA) increased during early lactation in both groups, but HBCS-PN cows had lower concentrations of β-hydroxybutyrate, indicating lower ketogenesis compared with HBCS-PH cows. The concentrations of insulin, insulin-like growth factor 1, leptin, adiponectin, haptoglobin, glucose, and revised quantitative insulin sensitivity check index did not differ between the groups, whereas serum concentrations of glycerophospholipids were lower before calving in HBCS-PH than in HBCS-PN cows. Glycine was the only amino acid that had higher concentration after calving in HBCS-PH than in HBCS-PN cows. The circulating concentrations of some short- (C2, C3, and C4) and long-chain (C12, C16:0, C18:0, and C18:1) acylcarnitines on d 21 pp were greater in HBCS-PH than in HBCS-PN cows, indicating incomplete FA oxidation. In conclusion, the use of ML approaches involving data from targeted metabolomics in serum is a promising method for differentiating divergent metabotypes from apparently similar BCS phenotypes. Further investigations, using larger numbers of cows and farms, are warranted for confirmation of this finding.

摘要

利用血清靶向代谢组学数据和机器学习(ML)方法,我们旨在:(1) 鉴定过度饲养奶牛的不同代谢类型;(2) 探讨代谢类型如何与泌乳性能、血液代谢物和激素相关联。在之前建立的动物模型中,38 头怀孕的经产荷斯坦奶牛被分为 2 组,以不同的方式喂养,直到分娩前-49 天达到高(HBCS)或正常(NBCS)体况评分(BCS)和背膘厚度(BFT)[NBCS:BCS<3.5(3.02±0.24)和 BFT<1.2cm(0.92±0.21),平均值±标准差;HBCS:BCS>3.75(3.82±0.33)和 BFT>1.4cm(2.36±0.35)]。然后,奶牛在干奶期和随后的泌乳期内喂食相同的日粮,并在整个研究过程中保持 BFT 和 BCS 的差异。从产前 7 周(ap)到产后 12 周(pp)每周采集血液样本,以评估血清代谢物浓度(通过靶向代谢组学和经典分析)和代谢激素。通过在 170 种血清代谢物浓度的变化(pp 第 21 天减去 ap 第 49 天)上应用 4 种监督 ML 分类器[顺序最小优化(SMO)、随机森林(RF)、交替决策树(ADTree)和朴素贝叶斯可更新(NB)]进行代谢聚类,结果产生了 4 个不同的代谢簇:HBCS 预测 HBCS(HBCS-PH,n=13)、HBCS 预测 NBCS(HBCS-PN,n=6)、NBCS 预测 NBCS(NBCS-PN,n=15)和 NBCS 预测 HBCS(NBCS-PH,n=4)。SMO、RF、ADTree 和 NB 分类器的准确率均>70%。由于 NBCS-PH 奶牛的数量较少,我们没有考虑将其纳入进一步的比较。在泌乳早期,HBCS-PN 的干物质采食量(kg/d 和体重百分比)和能量采食量均高于 HBCS-PH,并且 HBCS-PN 也比 HBCS-PH 更早达到正能量平衡。两组的产奶量没有差异,但 HBCS-PN 奶牛的乳蛋白百分比高于 HBCS-PH 奶牛。两组的脂肪酸(FA)浓度在泌乳早期均增加,但 HBCS-PN 奶牛的β-羟丁酸浓度较低,表明与 HBCS-PH 奶牛相比,酮生成较低。胰岛素、胰岛素样生长因子 1、瘦素、脂联素、触珠蛋白、葡萄糖和修订后的定量胰岛素敏感性检查指数在两组之间没有差异,而 HBCS-PH 奶牛在分娩前的血清甘油磷脂浓度低于 HBCS-PN 奶牛。分娩后,HBCS-PH 奶牛的甘氨酸浓度高于 HBCS-PN 奶牛。HBCS-PH 奶牛在产后第 21 天的一些短链(C2、C3 和 C4)和长链(C12、C16:0、C18:0 和 C18:1)酰基辅酶 A 的循环浓度高于 HBCS-PN 奶牛,表明 FA 氧化不完全。总之,使用涉及血清靶向代谢组学数据的 ML 方法是区分明显相似 BCS 表型的不同代谢类型的有前途的方法。需要进行更多的研究,使用更多的奶牛和农场,以证实这一发现。

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