205 research outputs found

    COordination of Standards in MetabOlomicS (COSMOS): facilitating integrated metabolomics data access

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    Metabolomics has become a crucial phenotyping technique in a range of research fields including medicine, the life sciences, biotechnology and the environmental sciences. This necessitates the transfer of experimental information between research groups, as well as potentially to publishers and funders. After the initial efforts of the metabolomics standards initiative, minimum reporting standards were proposed which included the concepts for metabolomics databases. Built by the community, standards and infrastructure for metabolomics are still needed to allow storage, exchange, comparison and re-utilization of metabolomics data. The Framework Programme 7 EU Initiative ‘coordination of standards in metabolomics’ (COSMOS) is developing a robust data infrastructure and exchange standards for metabolomics data and metadata. This is to support workflows for a broad range of metabolomics applications within the European metabolomics community and the wider metabolomics and biomedical communities’ participation. Here we announce our concepts and efforts asking for re-engagement of the metabolomics community, academics and industry, journal publishers, software and hardware vendors, as well as those interested in standardisation worldwide (addressing missing metabolomics ontologies, complex-metadata capturing and XML based open source data exchange format), to join and work towards updating and implementing metabolomics standards

    FAIRness and Usability for Open-access Omics Data Systems

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    Omics data sharing is crucial to the biological research community, and the last decade or two has seen a huge rise in collaborative analysis systems, databases, and knowledge bases for omics and other systems biology data. We assessed the FAIRness of NASAs GeneLab Data Systems (GLDS) along with four similar kinds of systems in the research omics data domain, using 14 FAIRness metrics. The range of overall FAIRness scores was 6-12 (out of 14), average 10.1, and standard deviation 2.4. The range of Pass ratings for the metrics was 29-79%, Partial Pass 0-21%, and Fail 7-50%. The systems we evaluated performed the best in the areas of data findability and accessibility, and worst in the area of data interoperability. Reusability of metadata, in particular, was frequently not well supported. We relate our experiences implementing semantic integration of omics data from some of the assessed systems for federated querying and retrieval functions, given their shortcomings in data interoperability. Finally, we propose two new principles that Big Data system developers, in particular, should consider for maximizing data accessibility

    Dissemination of metabolomics results: role of MetaboLights and COSMOS.

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    RIGHTS : This article is licensed under the BioMed Central licence at http://www.biomedcentral.com/about/license which is similar to the 'Creative Commons Attribution Licence'. In brief you may : copy, distribute, and display the work; make derivative works; or make commercial use of the work - under the following conditions: the original author must be given credit; for any reuse or distribution, it must be made clear to others what the license terms of this work are.With ever-increasing amounts of metabolomics data produced each year, there is an even greater need to disseminate data and knowledge produced in a standard and reproducible way. To assist with this a general purpose, open source metabolomics repository, MetaboLights, was launched in 2012. To promote a community standard, initially culminated as metabolomics standards initiative (MSI), COordination of Standards in MetabOlomicS (COSMOS) was introduced. COSMOS aims to link life science e-infrastructures within the worldwide metabolomics community as well as develop and maintain open source exchange formats for raw and processed data, ensuring better flow of metabolomics information

    EDITORIAL Water, water, every where, but rarely any drop to drink

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    I would like to give all readers a very warm welcome to 2014 and the first issue of the tenth volume of Metabolomics. As you may be able to work out: the front cover is a celebration of this achievement, and I thank my colleague Dr Steve O’Hagan for his artistry. I am delighted that the journal is in such good shape and this is due to the excellent papers that are submitted and published, and of course the very valuable reviewing that many of you do. Metabolomics has an excellent Editorial board and I am also very grateful to them for their valuable support. You may be pondering over the title, so let me explain. Whilst I have somewhat moderated the quote from ‘‘The Rime of the Ancient Mariner’ ’ by Samuel Taylor Coleridge written in 1797–1798, the water does not refer to any liquid substance per se, nor does the drinking to the ‘dryathlon 1 ’ that I did early last year and will be doing so again to combat any Christmas excesses. Rather the water is an analogy to data—both metabolomics and metadata. Water here is a very apt comparison, as it seems rather ironic that a typical metabolomics experiments generates so much data that it is often referred to in terms of natural disasters—like data floods, data torrents or even data tsunamis. Yet even more ironic that very rarely do we make publicly available the metabolomics data (raw or processed) and the associated metadata with our publications. These metadata are as important as the metabolite data as these refer to the data about the data. We mainly think of these in terms of the important traits or features that we may want to predict, but these also refer to our experimental protocols that ar

    Direct infusion mass spectrometry metabolomics dataset: a benchmark for data processing and quality control

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    Direct-infusion mass spectrometry (DIMS) metabolomics is an important approach for characterising molecular responses of organisms to disease, drugs and the environment. Increasingly large-scale metabolomics studies are being conducted, necessitating improvements in both bioanalytical and computational workflows to maintain data quality. This dataset represents a systematic evaluation of the reproducibility of a multi-batch DIMS metabolomics study of cardiac tissue extracts. It comprises of twenty biological samples (cow vs. sheep) that were analysed repeatedly, in 8 batches across 7 days, together with a concurrent set of quality control (QC) samples. Data are presented from each step of the workflow and are available in MetaboLights. The strength of the dataset is that intra- and inter-batch variation can be corrected using QC spectra and the quality of this correction assessed independently using the repeatedly-measured biological samples. Originally designed to test the efficacy of a batch-correction algorithm, it will enable others to evaluate novel data processing algorithms. Furthermore, this dataset serves as a benchmark for DIMS metabolomics, derived using best-practice workflows and rigorous quality assessment
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