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代谢组学与机器学习的结合:正常与过度训练奶牛血清中纵向代谢物特征分析及途径分析。

Metabolomics meets machine learning: Longitudinal metabolite profiling in serum of normal versus overconditioned cows and pathway analysis.

机构信息

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

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

出版信息

J Dairy Sci. 2019 Dec;102(12):11561-11585. doi: 10.3168/jds.2019-17114. Epub 2019 Sep 20.

Abstract

This study aimed to investigate the differences in the metabolic profiles in serum of dairy cows that were normal or overconditioned when dried off for elucidating the pathophysiological reasons for the increased health disturbances commonly associated with overconditioning. Fifteen weeks antepartum, 38 multiparous Holstein cows were allocated to either a high body condition (HBCS; n = 19) group or a normal body condition (NBCS; n = 19) group and were fed different diets until dry-off to amplify the difference. The groups were also stratified for comparable milk yields (NBCS: 10,361 ± 302 kg; HBCS: 10,315 ± 437 kg; mean ± standard deviation). At dry-off, the cows in the NBCS group (parity: 2.42 ± 1.84; body weight: 665 ± 64 kg) had a body condition score (BCS) <3.5 and backfat thickness (BFT) <1.2 cm, whereas the HBCS cows (parity: 3.37 ± 1.67; body weight: 720 ± 57 kg) had BCS >3.75 and BFT >1.4 cm. During the dry period and the subsequent lactation, both groups were fed identical diets but maintained the BCS and BFT differences. A targeted metabolomics (AbsoluteIDQ p180 kit, Biocrates Life Sciences AG, Innsbruck, Austria) approach was performed in serum samples collected on d -49, +3, +21, and +84 relative to calving for identifying and quantifying up to 188 metabolites from 6 different compound classes (acylcarnitines, AA, biogenic amines, glycerophospholipids, sphingolipids, and hexoses). The concentrations of 170 metabolites were above the limit of detection and could thus be used in this study. We used various machine learning (ML) algorithms (e.g., sequential minimal optimization, random forest, alternating decision tree, and naïve Bayes-updatable) to analyze the metabolome data sets. The performance of each algorithm was evaluated by a leave-one-out cross-validation method. The accuracy of classification by the ML algorithms was lowest on d 3 compared with the other time points. Various ML methods (partial least squares discriminant analysis, random forest, information gain ranking) were then performed to identify those metabolites that were contributing most significantly to discriminating the groups. On d 21 after parturition, 12 metabolites (acetylcarnitine, hexadecanoyl-carnitine, hydroxyhexadecenoyl-carnitine, octadecanoyl-carnitine, octadecenoyl-carnitine, hydroxybutyryl-carnitine, glycine, leucine, phosphatidylcholine-diacyl-C40:3, trans-4-hydroxyproline, carnosine, and creatinine) were identified in this way. Pathway enrichment analysis showed that branched-chain AA degradation (before calving) and mitochondrial β-oxidation of long-chain fatty acids along with fatty acid metabolism, purine metabolism, and alanine metabolism (after calving) were significantly enriched in HBCS compared with NBCS cows. Our results deepen the insights into the phenotype related to overconditioning from the preceding lactation and the pathophysiological sequelae such as increased lipolysis and ketogenesis and decreased feed intake.

摘要

本研究旨在探讨干奶时代谢状况正常和过度的奶牛血清代谢谱差异,以阐明与过度状况相关的常见健康问题增加的病理生理原因。在产前 15 周,将 38 头经产荷斯坦奶牛分为高体况(HBCS;n = 19)组或正常体况(NBCS;n = 19)组,并在干奶前给予不同的饮食以放大差异。还对两组进行了类似产奶量(NBCS:10361 ± 302 kg;HBCS:10315 ± 437 kg;平均值 ± 标准差)的分层。在干奶时,NBCS 组的奶牛(胎次:2.42 ± 1.84;体重:665 ± 64 kg)体况评分(BCS)<3.5,背膘厚(BFT)<1.2 cm,而 HBCS 奶牛(胎次:3.37 ± 1.67;体重:720 ± 57 kg)BCS >3.75,BFT >1.4 cm。在干奶期和随后的泌乳期,两组均给予相同的饮食,但维持 BCS 和 BFT 的差异。在产犊前 49 天、+3 天、+21 天和+84 天,使用靶向代谢组学(AbsoluteIDQ p180 试剂盒,Biocrates Life Sciences AG,因斯布鲁克,奥地利)方法在血清样本中进行,以鉴定和定量多达 188 种来自 6 种不同化合物类别的代谢物(酰基肉碱、AA、生物胺、甘油磷脂、鞘脂和己糖)。170 种代谢物的浓度高于检测限,因此可用于本研究。我们使用了各种机器学习(ML)算法(例如,顺序最小优化、随机森林、交替决策树和朴素贝叶斯更新)来分析代谢组数据集。通过留一交叉验证方法评估每种算法的性能。与其他时间点相比,ML 算法在第 3 天的分类准确性最低。然后使用各种 ML 方法(偏最小二乘判别分析、随机森林、信息增益排序)来识别对区分两组最有贡献的代谢物。在产后第 21 天,有 12 种代谢物(乙酰肉碱、十六烷酰肉碱、羟基十六烯酰肉碱、十八烷酰肉碱、十八烯酰肉碱、羟基丁酰肉碱、甘氨酸、亮氨酸、二酰基 C40:3 磷脂酰胆碱、反式 4-羟脯氨酸、肌肽和肌酸)具有这种特征。途径富集分析显示,支链 AA 降解(分娩前)和长链脂肪酸的线粒体β-氧化以及脂肪酸代谢、嘌呤代谢和丙氨酸代谢(分娩后)在 HBCS 中显著富集,与 NBCS 奶牛相比。我们的结果加深了对过度状况相关表型的了解,包括产前的支链 AA 降解和线粒体β-氧化以及脂肪酸代谢、嘌呤代谢和丙氨酸代谢,以及产后的脂肪分解和酮生成增加和采食量减少。

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