Literature DB >> 23455646

Characterising and correcting batch variation in an automated direct infusion mass spectrometry (DIMS) metabolomics workflow.

J A Kirwan1, D I Broadhurst, R L Davidson, M R Viant.   

Abstract

Direct infusion mass spectrometry (DIMS)-based untargeted metabolomics measures many hundreds of metabolites in a single experiment. While every effort is made to reduce within-experiment analytical variation in untargeted metabolomics, unavoidable sources of measurement error are introduced. This is particularly true for large-scale multi-batch experiments, necessitating the development of robust workflows that minimise batch-to-batch variation. Here, we conducted a purpose-designed, eight-batch DIMS metabolomics study using nanoelectrospray (nESI) Fourier transform ion cyclotron resonance mass spectrometric analyses of mammalian heart extracts. First, we characterised the intrinsic analytical variation of this approach to determine whether our existing workflows are fit for purpose when applied to a multi-batch investigation. Batch-to-batch variation was readily observed across the 7-day experiment, both in terms of its absolute measurement using quality control (QC) and biological replicate samples, as well as its adverse impact on our ability to discover significant metabolic information within the data. Subsequently, we developed and implemented a computational workflow that includes total-ion-current filtering, QC-robust spline batch correction and spectral cleaning, and provide conclusive evidence that this workflow reduces analytical variation and increases the proportion of significant peaks. We report an overall analytical precision of 15.9%, measured as the median relative standard deviation (RSD) for the technical replicates of the biological samples, across eight batches and 7 days of measurements. When compared against the FDA guidelines for biomarker studies, which specify an RSD of <20% as an acceptable level of precision, we conclude that our new workflows are fit for purpose for large-scale, high-throughput nESI DIMS metabolomics studies.

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Year:  2013        PMID: 23455646     DOI: 10.1007/s00216-013-6856-7

Source DB:  PubMed          Journal:  Anal Bioanal Chem        ISSN: 1618-2642            Impact factor:   4.142


  38 in total

1.  A complete workflow for high-resolution spectral-stitching nanoelectrospray direct-infusion mass-spectrometry-based metabolomics and lipidomics.

Authors:  Andrew D Southam; Ralf J M Weber; Jasper Engel; Martin R Jones; Mark R Viant
Journal:  Nat Protoc       Date:  2017-01-12       Impact factor: 13.491

2.  Untargeted metabolomic analysis and pathway discovery in perinatal asphyxia and hypoxic-ischaemic encephalopathy.

Authors:  Niamh M Denihan; Jennifer A Kirwan; Brian H Walsh; Warwick B Dunn; David I Broadhurst; Geraldine B Boylan; Deirdre M Murray
Journal:  J Cereb Blood Flow Metab       Date:  2017-08-25       Impact factor: 6.200

3.  Optimization of XCMS parameters for LC-MS metabolomics: an assessment of automated versus manual tuning and its effect on the final results.

Authors:  Oihane E Albóniga; Oskar González; Rosa M Alonso; Yun Xu; Royston Goodacre
Journal:  Metabolomics       Date:  2020-01-10       Impact factor: 4.290

4.  Combination of host immune metabolic biomarkers for the PD-1 blockade cancer immunotherapy.

Authors:  Ryusuke Hatae; Kenji Chamoto; Young Hak Kim; Kazuhiro Sonomura; Kei Taneishi; Shuji Kawaguchi; Hironori Yoshida; Hiroaki Ozasa; Yuichi Sakamori; Maryam Akrami; Sidonia Fagarasan; Izuru Masuda; Yasushi Okuno; Fumihiko Matsuda; Toyohiro Hirai; Tasuku Honjo
Journal:  JCI Insight       Date:  2020-01-30

5.  Evaluation of intensity drift correction strategies using MetaboDrift, a normalization tool for multi-batch metabolomics data.

Authors:  Chanisa Thonusin; Heidi B IglayReger; Tanu Soni; Amy E Rothberg; Charles F Burant; Charles R Evans
Journal:  J Chromatogr A       Date:  2017-09-09       Impact factor: 4.759

6.  Comparison of High-Resolution Fourier Transform Mass Spectrometry Platforms for Putative Metabolite Annotation.

Authors:  Danning Huang; Marcos Bouza; David A Gaul; Franklin E Leach; I Jonathan Amster; Frank C Schroeder; Arthur S Edison; Facundo M Fernández
Journal:  Anal Chem       Date:  2021-08-30       Impact factor: 8.008

7.  Normalizing and Correcting Variable and Complex LC-MS Metabolomic Data with the R Package pseudoDrift.

Authors:  Jonas Rodriguez; Lina Gomez-Cano; Erich Grotewold; Natalia de Leon
Journal:  Metabolites       Date:  2022-05-12

Review 8.  Colon Cancer: From Epidemiology to Prevention.

Authors:  Kyriaki Katsaounou; Elpiniki Nicolaou; Paris Vogazianos; Cameron Brown; Marios Stavrou; Savvas Teloni; Pantelis Hatzis; Agapios Agapiou; Elisavet Fragkou; Georgios Tsiaoussis; George Potamitis; Apostolos Zaravinos; Chrysafis Andreou; Athos Antoniades; Christos Shiammas; Yiorgos Apidianakis
Journal:  Metabolites       Date:  2022-05-30

9.  Discrimination of conventional and organic white cabbage from a long-term field trial study using untargeted LC-MS-based metabolomics.

Authors:  Axel Mie; Kristian Holst Laursen; K Magnus Åberg; Jenny Forshed; Anna Lindahl; Kristian Thorup-Kristensen; Marie Olsson; Pia Knuthsen; Erik Huusfeldt Larsen; Søren Husted
Journal:  Anal Bioanal Chem       Date:  2014-03-12       Impact factor: 4.142

10.  MetaDB a Data Processing Workflow in Untargeted MS-Based Metabolomics Experiments.

Authors:  Pietro Franceschi; Roman Mylonas; Nir Shahaf; Matthias Scholz; Panagiotis Arapitsas; Domenico Masuero; Georg Weingart; Silvia Carlin; Urska Vrhovsek; Fulvio Mattivi; Ron Wehrens
Journal:  Front Bioeng Biotechnol       Date:  2014-12-16
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