Data standards can boost metabolomics research, and if there is a will, there is a way

被引:0
作者
Philippe Rocca-Serra
Reza M. Salek
Masanori Arita
Elon Correa
Saravanan Dayalan
Alejandra Gonzalez-Beltran
Tim Ebbels
Royston Goodacre
Janna Hastings
Kenneth Haug
Albert Koulman
Macha Nikolski
Matej Oresic
Susanna-Assunta Sansone
Daniel Schober
James Smith
Christoph Steinbeck
Mark R. Viant
Steffen Neumann
机构
[1] University of Oxford,Oxford e
[2] European Molecular Biology Laboratory,Research Centre
[3] European Bioinformatics Institute (EMBL-EBI),School of Chemistry, Manchester Institute of Biotechnology
[4] National Institute of Genetics,Metabolomics Australia
[5] RIKEN Center for Sustainable Resource Science,Computational and Systems Medicine, Department of Surgery and Cancer
[6] University of Manchester,Bordeaux Bioinformatics Center
[7] Centre for Endocrinology and Diabetes,CNRS/LaBRI
[8] The University of Manchester,Department of Stress and Developmental Biology
[9] The University of Melbourne,School of Biosciences
[10] Imperial College London,Department of Applied Mathematics and Theoretical Physics, Cambridge Computational Biology Institute
[11] MRC Human Nutrition Research,undefined
[12] Elsie Widdowson Laboratory,undefined
[13] Université de Bordeaux,undefined
[14] Université de Bordeaux,undefined
[15] Steno Diabetes Center,undefined
[16] Leibniz Institute of Plant Biochemistry,undefined
[17] University of Birmingham,undefined
[18] University of Cambridge,undefined
来源
Metabolomics | 2016年 / 12卷
关键词
Metabolomics; Data standards; Mass spectrometry; NMR; Experimental metadata; Data sharing;
D O I
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学科分类号
摘要
Thousands of articles using metabolomics approaches are published every year. With the increasing amounts of data being produced, mere description of investigations as text in manuscripts is not sufficient to enable re-use anymore: the underlying data needs to be published together with the findings in the literature to maximise the benefit from public and private expenditure and to take advantage of an enormous opportunity to improve scientific reproducibility in metabolomics and cognate disciplines. Reporting recommendations in metabolomics started to emerge about a decade ago and were mostly concerned with inventories of the information that had to be reported in the literature for consistency. In recent years, metabolomics data standards have developed extensively, to include the primary research data, derived results and the experimental description and importantly the metadata in a machine-readable way. This includes vendor independent data standards such as mzML for mass spectrometry and nmrML for NMR raw data that have both enabled the development of advanced data processing algorithms by the scientific community. Standards such as ISA-Tab cover essential metadata, including the experimental design, the applied protocols, association between samples, data files and the experimental factors for further statistical analysis. Altogether, they pave the way for both reproducible research and data reuse, including meta-analyses. Further incentives to prepare standards compliant data sets include new opportunities to publish data sets, but also require a little “arm twisting” in the author guidelines of scientific journals to submit the data sets to public repositories such as the NIH Metabolomics Workbench or MetaboLights at EMBL-EBI. In the present article, we look at standards for data sharing, investigate their impact in metabolomics and give suggestions to improve their adoption.
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