Literature DB >> 31548056

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

Morteza H Ghaffari1, Amirhossein Jahanbekam2, Hassan Sadri3, Katharina Schuh4, Georg Dusel5, Cornelia Prehn6, Jerzy Adamski7, Christian Koch8, Helga Sauerwein9.   

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. The Authors. Published by FASS Inc. and Elsevier Inc. on behalf of the American Dairy Science Association®. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

Entities:  

Keywords:  machine learning; metabolic pathway; metabolomics; transition cow

Year:  2019        PMID: 31548056     DOI: 10.3168/jds.2019-17114

Source DB:  PubMed          Journal:  J Dairy Sci        ISSN: 0022-0302            Impact factor:   4.034


  10 in total

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Journal:  Sci Rep       Date:  2022-06-11       Impact factor: 4.996

2.  Distinct serum metabolomic signatures of multiparous and primiparous dairy cows switched from a moderate to high-grain diet during early lactation.

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Review 3.  Systems biology approaches integrated with artificial intelligence for optimized metabolic engineering.

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Review 4.  Over 20 Years of Machine Learning Applications on Dairy Farms: A Comprehensive Mapping Study.

Authors:  Philip Shine; Michael D Murphy
Journal:  Sensors (Basel)       Date:  2021-12-22       Impact factor: 3.576

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Journal:  Transl Psychiatry       Date:  2022-02-28       Impact factor: 6.222

6.  Transient rapamycin treatment during developmental stage extends lifespan in Mus musculus and Drosophila melanogaster.

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Journal:  EMBO Rep       Date:  2022-07-07       Impact factor: 9.071

7.  Rewiring of Glucose and Lipid Metabolism Induced by G Protein-Coupled Receptor 17 Silencing Enables the Transition of Oligodendrocyte Progenitors to Myelinating Cells.

Authors:  Davide Marangon; Matteo Audano; Silvia Pedretti; Marta Fumagalli; Nico Mitro; Davide Lecca; Donatella Caruso; Maria P Abbracchio
Journal:  Cells       Date:  2022-08-02       Impact factor: 7.666

8.  Association between alterations in plasma metabolome profiles and laminitis in intensively finished Holstein bulls in a randomized controlled study.

Authors:  Sonja Christiane Bäßler; Ákos Kenéz; Theresa Scheu; Christian Koch; Ulrich Meyer; Sven Dänicke; Korinna Huber
Journal:  Sci Rep       Date:  2021-06-17       Impact factor: 4.379

9.  Machine learning approach to integrated endometrial transcriptomic datasets reveals biomarkers predicting uterine receptivity in cattle at seven days after estrous.

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Journal:  Sci Rep       Date:  2020-10-12       Impact factor: 4.379

10.  Oxidative pentose phosphate pathway controls vascular mural cell coverage by regulating extracellular matrix composition.

Authors:  Nicola Facchinello; Matteo Astone; Matteo Audano; Roxana E Oberkersch; Marianna Spizzotin; Enrica Calura; Madalena Marques; Mihaela Crisan; Nico Mitro; Massimo M Santoro
Journal:  Nat Metab       Date:  2022-01-27
  10 in total

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