Literature DB >> 18323816

Preprocessing, classification modeling and feature selection using flow injection electrospray mass spectrometry metabolite fingerprint data.

David P Enot1, Wanchang Lin, Manfred Beckmann, David Parker, David P Overy, John Draper.   

Abstract

Metabolome analysis by flow injection electrospray mass spectrometry (FIE-MS) fingerprinting generates measurements relating to large numbers of m/z signals. Such data sets often exhibit high variance with a paucity of replicates, thus providing a challenge for data mining. We describe data preprocessing and modeling methods that have proved reliable in projects involving samples from a range of organisms. The protocols interact with software resources specifically for metabolomics provided in a Web-accessible data analysis package FIEmspro (http://users.aber.ac.uk/jhd) written in the R environment and requiring a moderate knowledge of R command-line usage. Specific emphasis is placed on describing the outcome of modeling experiments using FIE-MS data that require further preprocessing to improve quality. The salient features of both poor and robust (i.e., highly generalizable) multivariate models are outlined together with advice on validating classifiers and avoiding false discovery when seeking explanatory variables.

Mesh:

Year:  2008        PMID: 18323816     DOI: 10.1038/nprot.2007.511

Source DB:  PubMed          Journal:  Nat Protoc        ISSN: 1750-2799            Impact factor:   13.491


  24 in total

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4.  Enhancement of plant metabolite fingerprinting by machine learning.

Authors:  Ian M Scott; Cornelia P Vermeer; Maria Liakata; Delia I Corol; Jane L Ward; Wanchang Lin; Helen E Johnson; Lynne Whitehead; Baldeep Kular; John M Baker; Sean Walsh; Anuja Dave; Tony R Larson; Ian A Graham; Trevor L Wang; Ross D King; John Draper; Michael H Beale
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5.  Metabolomic analyses reveal that anti-aging metabolites are depleted by palmitate but increased by oleate in vivo.

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Review 6.  The role of mass spectrometry-based metabolomics in medical countermeasures against radiation.

Authors:  Andrew D Patterson; Christian Lanz; Frank J Gonzalez; Jeffrey R Idle
Journal:  Mass Spectrom Rev       Date:  2010 May-Jun       Impact factor: 10.946

7.  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
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8.  Plasma metabolomic profiling in patients with rheumatoid arthritis identifies biochemical features predictive of quantitative disease activity.

Authors:  John M Davis; Jaeyun Sung; Benjamin Hur; Vinod K Gupta; Harvey Huang; Kerry A Wright; Kenneth J Warrington; Veena Taneja
Journal:  Arthritis Res Ther       Date:  2021-06-08       Impact factor: 5.156

9.  Metabolite signal identification in accurate mass metabolomics data with MZedDB, an interactive m/z annotation tool utilising predicted ionisation behaviour 'rules'.

Authors:  John Draper; David P Enot; David Parker; Manfred Beckmann; Stuart Snowdon; Wanchang Lin; Hassan Zubair
Journal:  BMC Bioinformatics       Date:  2009-07-21       Impact factor: 3.169

10.  A flow-injection mass spectrometry fingerprinting scaffold for feature selection and quantitation of Cordyceps and Ganoderma extracts in beverage: a predictive artificial neural network modelling strategy.

Authors:  Chee Wei Lim; Siew Hoon Tai; Sheot Harn Chan
Journal:  AMB Express       Date:  2012-08-13       Impact factor: 3.298

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