Literature DB >> 23775708

From numbers to a biological sense: How the strategy chosen for metabolomics data treatment may affect final results. A practical example based on urine fingerprints obtained by LC-MS.

Joanna Godzien1, Michal Ciborowski, Santiago Angulo, Coral Barbas.   

Abstract

Application of high-throughput technologies in metabolomics studies increases the quantity of data obtained, which in turn imposes several problems during data analysis. Correctly and clearly addressed biological question and comprehensive knowledge about data structure and properties are definitely necessary to select proper chemometric tools. However, there is a broad range of chemometric tools available for use with metabolomics data, which makes this choice challenging. Precisely performed data treatment enables valuable extraction of information and its proper interpretation. The effect of an error made at an early stage will be enhanced throughout the later stages, which in combination with other errors made at each step can accumulate and significantly affect the data interpretation. Moreover, adequate application of these tools may help not only to detect, but sometimes also to correct, biological, analytical, or methodological errors, which may affect truthfulness of obtained results. This report presents steps and tools used for LC-MS based metabolomics data extraction, reduction, and visualization. Following such steps as data reprocessing, data pretreatment, data treatment, and data revision, authors want to show how to extract valuable information and how to avoid misinterpretation of results obtained. The purpose of this work was to emphasize problematic characteristics of metabolomics data and the necessity for their attentive and precise treatment. The dataset used to illustrate metabolomics data properties and to illustrate major data treatment challenges was obtained utilizing an animal model of control and diabetic rats, both with and without rosemary treatment. Urine samples were fingerprinted employing LC-QTOF-MS.
© 2013 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Entities:  

Keywords:  Chemometrics; Data re-processing; Data treatment; Outliers detection; Validation

Mesh:

Year:  2013        PMID: 23775708     DOI: 10.1002/elps.201300053

Source DB:  PubMed          Journal:  Electrophoresis        ISSN: 0173-0835            Impact factor:   3.535


  17 in total

1.  Critical review of reporting of the data analysis step in metabolomics.

Authors:  E C Considine; G Thomas; A L Boulesteix; A S Khashan; L C Kenny
Journal:  Metabolomics       Date:  2017-12-01       Impact factor: 4.290

2.  Comparison of chemometric strategies for potential exposure marker discovery and false-positive reduction in untargeted metabolomics: application to the serum analysis by LC-HRMS after intake of Vaccinium fruit supplements.

Authors:  Lapo Renai; Claudia Ancillotti; Marynka Ulaszewska; Mar Garcia-Aloy; Fulvio Mattivi; Riccardo Bartoletti; Massimo Del Bubba
Journal:  Anal Bioanal Chem       Date:  2022-01-14       Impact factor: 4.142

3.  Discrepancies in metabolomic biomarker identification from patient-derived lung cancer revealed by combined variation in data pre-treatment and imputation methods.

Authors:  Hunter A Miller; Ramy Emam; Chip M Lynch; Samuel Bockhorst; Hermann B Frieboes
Journal:  Metabolomics       Date:  2021-03-27       Impact factor: 4.290

4.  Identification of metabolic biomarkers in patients with type 2 diabetic coronary heart diseases based on metabolomic approach.

Authors:  Xinfeng Liu; Jian Gao; Jianxin Chen; Zhiyong Wang; Qi Shi; Hongxue Man; Shuzhen Guo; Yingfeng Wang; Zhongfeng Li; Wei Wang
Journal:  Sci Rep       Date:  2016-07-29       Impact factor: 4.379

5.  To treat or not to treat: metabolomics reveals biomarkers for treatment indication in chronic lymphocytic leukaemia patients.

Authors:  Jaroslaw Piszcz; Emily G Armitage; Alessia Ferrarini; Francisco J Rupérez; Agnieszka Kulczynska; Lukasz Bolkun; Janusz Kloczko; Adam Kretowski; Alina Urbanowicz; Michal Ciborowski; Coral Barbas
Journal:  Oncotarget       Date:  2016-04-19

6.  Insulin resistance in prepubertal obese children correlates with sex-dependent early onset metabolomic alterations.

Authors:  A Mastrangelo; G Á Martos-Moreno; A García; V Barrios; F J Rupérez; J A Chowen; C Barbas; J Argente
Journal:  Int J Obes (Lond)       Date:  2016-05-10       Impact factor: 5.095

7.  A Conversation on Data Mining Strategies in LC-MS Untargeted Metabolomics: Pre-Processing and Pre-Treatment Steps.

Authors:  Fidele Tugizimana; Paul A Steenkamp; Lizelle A Piater; Ian A Dubery
Journal:  Metabolites       Date:  2016-11-03

Review 8.  Exploring the human microbiome from multiple perspectives: factors altering its composition and function.

Authors:  David Rojo; Celia Méndez-García; Beata Anna Raczkowska; Rafael Bargiela; Andrés Moya; Manuel Ferrer; Coral Barbas
Journal:  FEMS Microbiol Rev       Date:  2017-07-01       Impact factor: 16.408

9.  Robust volcano plot: identification of differential metabolites in the presence of outliers.

Authors:  Nishith Kumar; Md Aminul Hoque; Masahiro Sugimoto
Journal:  BMC Bioinformatics       Date:  2018-04-11       Impact factor: 3.169

Review 10.  Metabolomics in Plant Priming Research: The Way Forward?

Authors:  Fidele Tugizimana; Msizi I Mhlongo; Lizelle A Piater; Ian A Dubery
Journal:  Int J Mol Sci       Date:  2018-06-13       Impact factor: 5.923

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