Namrata Kale
European Bioinformatics Institute
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Featured researches published by Namrata Kale.
Nucleic Acids Research | 2012
Janna Hastings; Paula de Matos; Adriano Dekker; Marcus Ennis; Bhavana Harsha; Namrata Kale; Venkatesh Muthukrishnan; Gareth Owen; Steve Turner; Mark A. Williams; Christoph Steinbeck
ChEBI (http://www.ebi.ac.uk/chebi) is a database and ontology of chemical entities of biological interest. Over the past few years, ChEBI has continued to grow steadily in content, and has added several new features. In addition to incorporating all user-requested compounds, our annotation efforts have emphasized immunology, natural products and metabolites in many species. All database entries are now ‘is_a’ classified within the ontology, meaning that all of the chemicals are available to semantic reasoning tools that harness the classification hierarchy. We have completely aligned the ontology with the Open Biomedical Ontologies (OBO) Foundry-recommended upper level Basic Formal Ontology. Furthermore, we have aligned our chemical classification with the classification of chemical-involving processes in the Gene Ontology (GO), and as a result of this effort, the majority of chemical-involving processes in GO are now defined in terms of the ChEBI entities that participate in them. This effort necessitated incorporating many additional biologically relevant compounds. We have incorporated additional data types including reference citations, and the species and component for metabolites. Finally, our website and web services have had several enhancements, most notably the provision of a dynamic new interactive graph-based ontology visualization.
Nucleic Acids Research | 2016
Janna Hastings; Gareth Owen; Adriano Dekker; Marcus Ennis; Namrata Kale; Venkatesh Muthukrishnan; Steve Turner; Neil Swainston; Pedro Mendes; Christoph Steinbeck
ChEBI is a database and ontology containing information about chemical entities of biological interest. It currently includes over 46 000 entries, each of which is classified within the ontology and assigned multiple annotations including (where relevant) a chemical structure, database cross-references, synonyms and literature citations. All content is freely available and can be accessed online at http://www.ebi.ac.uk/chebi. In this update paper, we describe recent improvements and additions to the ChEBI offering. We have substantially extended our collection of endogenous metabolites for several organisms including human, mouse, Escherichia coli and yeast. Our front-end has also been reworked and updated, improving the user experience, removing our dependency on Java applets in favour of embedded JavaScript components and moving from a monthly release update to a ‘live’ website. Programmatic access has been improved by the introduction of a library, libChEBI, in Java, Python and Matlab. Furthermore, we have added two new tools, namely an analysis tool, BiNChE, and a query tool for the ontology, OntoQuery.
Current protocols in human genetics | 2016
Namrata Kale; Kenneth Haug; Pablo Conesa; Kalaivani Jayseelan; Pablo Moreno; Philippe Rocca-Serra; Venkata Chandrasekhar Nainala; Rachel A. Spicer; Mark A. Williams; Xuefei Li; Reza M. Salek; Julian L. Griffin; Christoph Steinbeck
MetaboLights is the first general purpose, open‐access database repository for cross‐platform and cross‐species metabolomics research at the European Bioinformatics Institute (EMBL‐EBI). Based upon the open‐source ISA framework, MetaboLights provides Metabolomics Standard Initiative (MSI) compliant metadata and raw experimental data associated with metabolomics experiments. Users can upload their study datasets into the MetaboLights Repository. These studies are then automatically assigned a stable and unique identifier (e.g., MTBLS1) that can be used for publication reference. The MetaboLights Reference Layer associates metabolites with metabolomics studies in the archive and is extensively annotated with data fields such as structural and chemical information, NMR and MS spectra, target species, metabolic pathways, and reactions. The database is manually curated with no specific release schedules. MetaboLights is also recommended by journals for metabolomics data deposition. This unit provides a guide to using MetaboLights, downloading experimental data, and depositing metabolomics datasets using user‐friendly submission tools.
BMC Genomics | 2013
David P. Hill; Nico Adams; Mike Bada; Colin R. Batchelor; Tanya Z. Berardini; Heiko Dietze; Harold J. Drabkin; Marcus Ennis; Rebecca E. Foulger; Midori A. Harris; Janna Hastings; Namrata Kale; Paula de Matos; Christopher J. Mungall; Gareth Owen; Paola Roncaglia; Christoph Steinbeck; Steve Turner; Jane Lomax
BackgroundThe Gene Ontology (GO) facilitates the description of the action of gene products in a biological context. Many GO terms refer to chemical entities that participate in biological processes. To facilitate accurate and consistent systems-wide biological representation, it is necessary to integrate the chemical view of these entities with the biological view of GO functions and processes. We describe a collaborative effort between the GO and the Chemical Entities of Biological Interest (ChEBI) ontology developers to ensure that the representation of chemicals in the GO is both internally consistent and in alignment with the chemical expertise captured in ChEBI.ResultsWe have examined and integrated the ChEBI structural hierarchy into the GO resource through computationally-assisted manual curation of both GO and ChEBI. Our work has resulted in the creation of computable definitions of GO terms that contain fully defined semantic relationships to corresponding chemical terms in ChEBI.ConclusionsThe set of logical definitions using both the GO and ChEBI has already been used to automate aspects of GO development and has the potential to allow the integration of data across the domains of biology and chemistry. These logical definitions are available as an extended version of the ontology from http://purl.obolibrary.org/obo/go/extensions/go-plus.owl.
Bioinformatics | 2013
Ilinca Tudose; Janna Hastings; Venkatesh Muthukrishnan; Gareth Owen; Steve Turner; Adriano Dekker; Namrata Kale; Marcus Ennis; Christoph Steinbeck
Summary: The Web Ontology Language (OWL) provides a sophisticated language for building complex domain ontologies and is widely used in bio-ontologies such as the Gene Ontology. The Protégé-OWL ontology editing tool provides a query facility that allows composition and execution of queries with the human-readable Manchester OWL syntax, with syntax checking and entity label lookup. No equivalent query facility such as the Protégé Description Logics (DL) query yet exists in web form. However, many users interact with bio-ontologies such as chemical entities of biological interest and the Gene Ontology using their online Web sites, within which DL-based querying functionality is not available. To address this gap, we introduce the OntoQuery web-based query utility. Availability and implementation: The source code for this implementation together with instructions for installation is available at http://github.com/IlincaTudose/OntoQuery. OntoQuery software is fully compatible with all OWL-based ontologies and is available for download (CC-0 license). The ChEBI installation, ChEBI OntoQuery, is available at http://www.ebi.ac.uk/chebi/tools/ontoquery. Contact: [email protected]
GigaScience | 2017
Reza M. Salek; Pablo Conesa; Keeva Cochrane; Kenneth Haug; Mark A. Williams; Namrata Kale; Pablo Moreno; Kalai Vanii Jayaseelan; Jose Ramon Macias; Venkata Chandrasekhar Nainala; Robert D. Hall; Laura K. Reed; Mark R. Viant; Claire O’Donovan; Christoph Steinbeck
Abstract Following similar global efforts to exchange genomic and other biomedical data, global databases in metabolomics have now been established. MetaboLights, the first general purpose, publically available, cross-species, cross-application database in metabolomics, has become the fastest growing data repository at the European Bioinformatics Institute in terms of data volume. Here we present the automated assembly of species metabolomes in MetaboLights, a crucial reference for chemical biology, which is growing through user submissions.
F1000Research | 2017
Merlijn van Rijswijk; Charlie Beirnaert; Christophe Caron; Marta Cascante; Victoria Dominguez; Warwick B. Dunn; Timothy M. D. Ebbels; Franck Giacomoni; Alejandra Gonzalez-Beltran; Thomas Hankemeier; Kenneth Haug; Jose L. Izquierdo-Garcia; Rafael C. Jimenez; Fabien Jourdan; Namrata Kale; Maria I. Klapa; Oliver Kohlbacher; Kairi Koort; Kim Kultima; Gildas Le Corguillé; Pablo Moreno; Nicholas K. Moschonas; Steffen Neumann; Claire O’Donovan; Martin Reczko; Philippe Rocca-Serra; Antonio Rosato; Reza M. Salek; Susanna-Assunta Sansone; Venkata P. Satagopam
Metabolomics, the youngest of the major omics technologies, is supported by an active community of researchers and infrastructure developers across Europe. To coordinate and focus efforts around infrastructure building for metabolomics within Europe, a workshop on the “Future of metabolomics in ELIXIR” was organised at Frankfurt Airport in Germany. This one-day strategic workshop involved representatives of ELIXIR Nodes, members of the PhenoMeNal consortium developing an e-infrastructure that supports workflow-based metabolomics analysis pipelines, and experts from the international metabolomics community. The workshop established metabolite identification as the critical area, where a maximal impact of computational metabolomics and data management on other fields could be achieved. In particular, the existing four ELIXIR Use Cases, where the metabolomics community - both industry and academia - would benefit most, and which could be exhaustively mapped onto the current five ELIXIR Platforms were discussed. This opinion article is a call for support for a new ELIXIR metabolomics Use Case, which aligns with and complements the existing and planned ELIXIR Platforms and Use Cases.
bioRxiv | 2018
Kristian Peters; James Bradbury; Sven Bergmann; Marco Capuccini; Marta Cascante; Pedro de Atauri; Timothy M. D. Ebbels; Carles Foguet; Robert C. Glen; Alejandra Gonzalez-Beltran; Evangelos Handakas; Thomas Hankemeier; Stephanie Herman; Kenneth Haug; Petr Holub; Massimiliano Izzo; Daniel Jacob; David Johnson; Fabien Jourdan; Namrata Kale; Ibrahim Karaman; Bita Khalili; Payam Emami Khoonsari; Kim Kultima; Samuel Lampa; Anders Larsson; Pablo Moreno; Steffen Neumann; Jon Ander Novella; Claire O'Donovan
Background Metabolomics is the comprehensive study of a multitude of small molecules to gain insight into an organism’s metabolism. The research field is dynamic and expanding with applications across biomedical, biotechnological and many other applied biological domains. Its computationally-intensive nature has driven requirements for open data formats, data repositories and data analysis tools. However, the rapid progress has resulted in a mosaic of independent – and sometimes incompatible – analysis methods that are difficult to connect into a useful and complete data analysis solution. Findings The PhenoMeNal (Phenome and Metabolome aNalysis) e-infrastructure provides a complete, workflow-oriented, interoperable metabolomics data analysis solution for a modern infrastructure-as-a-service (IaaS) cloud platform. PhenoMeNal seamlessly integrates a wide array of existing open source tools which are tested and packaged as Docker containers through the project’s continuous integration process and deployed based on a kubernetes orchestration framework. It also provides a number of standardized, automated and published analysis workflows in the user interfaces Galaxy, Jupyter, Luigi and Pachyderm. Conclusions PhenoMeNal constitutes a keystone solution in cloud infrastructures available for metabolomics. It provides scientists with a ready-to-use, workflow-driven, reproducible and shareable data analysis platform harmonizing the software installation and configuration through user-friendly web interfaces. The deployed cloud environments can be dynamically scaled to enable large-scale analyses which are interfaced through standard data formats, versioned, and have been tested for reproducibility and interoperability. The flexible implementation of PhenoMeNal allows easy adaptation of the infrastructure to other application areas and ‘omics research domains.
bioRxiv | 2017
Payam Emami Khoonsari; Pablo Moreno; Sven Bergmann; Joachim Burman; Marco Capuccini; Matteo Carone; Marta Cascante; Pedro de Atauri; Carles Foguet; Alejandra Gonzalez-Beltran; Thomas Hankemeier; Kenneth Haug; Sijin He; Stephanie Herman; David Johnson; Namrata Kale; Anders Larsson; Steffen Neumann; Kristian Peters; Luca Pireddu; Philippe Rocca-Serra; Pierrick Roger; Rico Rueedi; Christoph Ruttkies; Noureddin Sadawi; Reza M. Salek; Susanna-Assunta Sansone; Daniel Schober; Vitaly A. Selivanov; Etienne A. Thévenot
Developing a robust and performant data analysis workflow that integrates all necessary components whilst still being able to scale over multiple compute nodes is a challenging task. We introduce a generic method based on the microservice architecture, where software tools are encapsulated as Docker containers that can be connected into scientific workflows and executed in parallel using the Kubernetes container orchestrator. The access point is a virtual research environment which can be launched on-demand on cloud resources and desktop computers. IT-expertise requirements on the user side are kept to a minimum, and established workflows can be re-used effortlessly by any novice user. We validate our method in the field of metabolomics on two mass spectrometry studies, one nuclear magnetic resonance spectroscopy study and one fluxomics study, showing that the method scales dynamically with increasing availability of computational resources. We achieved a complete integration of the major software suites resulting in the first turn-key workflow encompassing all steps for mass-spectrometry-based metabolomics including preprocessing, multivariate statistics, and metabolite identification. Microservices is a generic methodology that can serve any scientific discipline and opens up for new types of large-scale integrative science.Developing a robust and performant data analysis workflow that integrates all necessary components whilst still being able to scale over multiple compute nodes is a challenging task. We here presen ...
Journal of Cheminformatics | 2013
Janna Hastings; Pablo Conesa; Adriano Dekker; Marcus Ennis; Kenneth Haug; Kalai Vanii Jayaseelan; Namrata Kale; Tejasvi Mahendraker; Pablo Moreno; Venkatesh Muthukrishnan; Gareth Owen; Reza M. Salek; Steve Turner; Christoph Steinbeck
Natural products are of substantial interest in drug discovery and metabolism research, since they represent molecules that have been shaped by natural selection to be bioactive in ways that are useful for a range of applications including as therapeutics, cosmetics and pesticides. The ChEBI database (http://www.ebi.ac.uk/chebi) and the MetaboLights database (http://www.ebi.ac.uk/metabolights/) aim to offer a comprehensive public resource suite for capturing and describing natural product chemistry. ChEBI has recently added over 2,700 natural products, of which more than 100 have been fully curated. Together with the pre-existing metabolites in ChEBI, the total collection of metabolites (both primary and secondary) is approaching 3,500 entries (October 2012). In addition, we have added the species, strain, and component (e.g tissue type) from which the metabolite has been isolated, linked to the appropriate taxonomies and ontologies, together with supporting citations to the primary literature. The MetaboLights database provides a general-purpose, open-access repository for metabolomics studies, their raw experimental data, and associated metadata [1]. Released in June 2012, the repository includes 15 submitted studies, encompassing 93 protocols for 714 assays over 8 different species. These include species such as H. sapiens, C. elegans, M. musculus and A. thaliana, and techniques such as NMR spectroscopy and mass spectrometry. Finally, we have recently released an open-source, open-data natural product likeness implementation [2], bringing a well-known metric -- useful in compound library screening and lead design - - to a wider community.