Literature DB >> 17381968

Multivariate techniques and their application in nutrition: a metabolomics case study.

E Katherine Kemsley1, Gwénaëlle Le Gall, Jack R Dainty, Andrew D Watson, Linda J Harvey, Henri S Tapp, Ian J Colquhoun.   

Abstract

The post-genomic technologies are generating vast quantities of data but many nutritional scientists are not trained or equipped to analyse it. In high-resolution NMR spectra of urine, for example, the number and complexity of spectral features mean that computational techniques are required to interrogate and display the data in a manner intelligible to the researcher. In addition, there are often multiple underlying biological factors influencing the data and it is difficult to pinpoint which are having the most significant effect. This is especially true in nutritional studies, where small variations in diet can trigger multiple changes in gene expression and metabolite concentration. One class of computational tools that are useful for analysing this highly multivariate data include the well-known 'whole spectrum' methods of principal component analysis and partial least squares. In this work, we present a nutritional case study in which NMR data generated from a human dietary Cu intervention study is analysed using multivariate methods and the advantages and disadvantages of each technique are discussed. It is concluded that an alternative approach, called feature subset selection, will be important in this type of work; here we have used a genetic algorithm to identify the small peaks (arising from metabolites of low concentration) that have been altered significantly following a dietary intervention.

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Year:  2007        PMID: 17381968     DOI: 10.1017/S0007114507685365

Source DB:  PubMed          Journal:  Br J Nutr        ISSN: 0007-1145            Impact factor:   3.718


  20 in total

1.  Individual variation in macronutrient regulation measured by proton magnetic resonance spectroscopy of human plasma.

Authors:  Youngja Park; Seoung Bum Kim; Bing Wang; Roberto A Blanco; Ngoc-Anh Le; Shaoxiong Wu; Carolyn J Accardi; R Wayne Alexander; Thomas R Ziegler; Dean P Jones
Journal:  Am J Physiol Regul Integr Comp Physiol       Date:  2009-05-20       Impact factor: 3.619

2.  Evaluation of multiple variate selection methods from a biological perspective: a nutrigenomics case study.

Authors:  Henri S Tapp; Marijana Radonjic; E Kate Kemsley; Uwe Thissen
Journal:  Genes Nutr       Date:  2012-03-02       Impact factor: 5.523

3.  Opportunities and Limitations for Untargeted Mass Spectrometry Metabolomics to Identify Biologically Active Constituents in Complex Natural Product Mixtures.

Authors:  Lindsay K Caesar; Joshua J Kellogg; Olav M Kvalheim; Nadja B Cech
Journal:  J Nat Prod       Date:  2019-03-07       Impact factor: 4.050

4.  Storage conditions modulate the metabolomic profile of a black raspberry nectar with minimal impact on bioactivity.

Authors:  Matthew D Teegarden; Thomas J Knobloch; Christopher M Weghorst; Jessica L Cooperstone; Devin G Peterson
Journal:  Food Funct       Date:  2018-09-19       Impact factor: 5.396

5.  Advances in Nutritional Metabolomics.

Authors:  Elizabeth P Ryan; Adam L Heuberger; Corey D Broeckling; Erica C Borresen; Cadie Tillotson; Jessica E Prenni
Journal:  Curr Metabolomics       Date:  2013

6.  A Multiplatform Metabolomics Approach to Characterize Plasma Levels of Phenylalanine and Tyrosine in Phenylketonuria.

Authors:  H Blasco; C Veyrat-Durebex; M Bertrand; F Patin; F Labarthe; H Henique; P Emond; C R Andres; C Antar; C Landon; L Nadal-Desbarats; F Maillot
Journal:  JIMD Rep       Date:  2016-06-15

7.  A practical approach to detect unique metabolic patterns for personalized medicine.

Authors:  Jennifer M Johnson; Tianwei Yu; Frederick H Strobel; Dean P Jones
Journal:  Analyst       Date:  2010-09-13       Impact factor: 4.616

8.  Measurement of dietary exposure: a challenging problem which may be overcome thanks to metabolomics?

Authors:  Gaëlle Favé; M E Beckmann; J H Draper; J C Mathers
Journal:  Genes Nutr       Date:  2009-04-02       Impact factor: 5.523

9.  Profiling the metabolome changes caused by cranberry procyanidins in plasma of female rats using (1) H NMR and UHPLC-Q-Orbitrap-HRMS global metabolomics approaches.

Authors:  Haiyan Liu; Timothy J Garrett; Fariba Tayyari; Liwei Gu
Journal:  Mol Nutr Food Res       Date:  2015-09-15       Impact factor: 5.914

10.  A novel R-package graphic user interface for the analysis of metabonomic profiles.

Authors:  Jose L Izquierdo-García; Ignacio Rodríguez; Angelos Kyriazis; Palmira Villa; Pilar Barreiro; Manuel Desco; Jesús Ruiz-Cabello
Journal:  BMC Bioinformatics       Date:  2009-10-29       Impact factor: 3.169

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