7 results on '"Sabry, Razick"'
Search Results
2. The eGenVar data management system—cataloguing and sharing sensitive data and metadata for the life sciences
- Author
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Sabry Razick, Einar Ryeng, Rok Močnik, Finn Drabløs, Laurent F. Thomas, and Pål Sætrom
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Computer science ,Data management ,General Biochemistry, Genetics and Molecular Biology ,Biological Science Disciplines ,World Wide Web ,03 medical and health sciences ,0302 clinical medicine ,Terminology as Topic ,Databases, Genetic ,License ,Biocuration Conference Paper ,030304 developmental biology ,0303 health sciences ,Data element ,business.industry ,Information Dissemination ,Data management plan ,Data dictionary ,Data mapping ,Metadata repository ,Metadata ,Search Engine ,Biological Ontologies ,Database Management Systems ,Original Article ,General Agricultural and Biological Sciences ,business ,030217 neurology & neurosurgery ,Software ,Information Systems - Abstract
Systematic data management and controlled data sharing aim at increasing reproducibility, reducing redundancy in work, and providing a way to efficiently locate complementing or contradicting information. One method of achieving this is collecting data in a central repository or in a location that is part of a federated system and providing interfaces to the data. However, certain data, such as data from biobanks or clinical studies, may, for legal and privacy reasons, often not be stored in public repositories. Instead, we describe a metadata cataloguing system and a software suite for reporting the presence of data from the life sciences domain. The system stores three types of metadata: file information, file provenance and data lineage, and content descriptions. Our software suite includes both graphical and command line interfaces that allow users to report and tag files with these different metadata types. Importantly, the files remain in their original locations with their existing access-control mechanisms in place, while our system provides descriptions of their contents and relationships. Our system and software suite thereby provide a common framework for cataloguing and sharing both public and private data. © The Author(s) 2014. Published by Oxford University Press. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
- Published
- 2014
3. iRefScape. A Cytoscape plug-in for visualization and data mining of protein interaction data from iRefIndex
- Author
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Katerina Michalickova, Sabry Razick, Paul Boddie, Antonio M. Mora, and Ian Donaldson
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Protein structure database ,Computer science ,lcsh:Computer applications to medicine. Medical informatics ,computer.software_genre ,Biochemistry ,Knowledge extraction ,Structural Biology ,Node (computer science) ,Databases, Genetic ,Protein Interaction Mapping ,Data Mining ,Databases, Protein ,lcsh:QH301-705.5 ,Molecular Biology ,Gene ,Applied Mathematics ,Proteins ,Computer Science Applications ,Visualization ,Data set ,lcsh:Biology (General) ,lcsh:R858-859.7 ,Database Management Systems ,Data mining ,DNA microarray ,computer ,Software ,Research Article - Abstract
Background The iRefIndex consolidates protein interaction data from ten databases in a rigorous manner using sequence-based hash keys. Working with consolidated interaction data comes with distinct challenges: data are redundant, overlapping, highly interconnected and may be collected and represented using different curation practices. These phenomena were quantified in our previous studies. Results The iRefScape plug-in for the Cytoscape graphical viewer addresses these challenges. We show how these factors impact on data-mining tasks and how our solutions resolve them in a simple and efficient manner. A uniform accession space is used to limit redundancy and support search expansion and searching on multiple accession types. Multiple node and edge features support data filtering and mining. Node colours and features supply information about search result provenance. Overlapping evidence is presented using a multi-graph and a bi-partite representation is used to distinguish binary and n-ary source data. Searching for interactions between sets of proteins is supported and specifically includes searches on disease-related genes found in OMIM. Finally, a synchronized adjacency-matrix view facilitates visualization of relationships between sets of user defined groups. Conclusions The iRefScape plug-in will be of interest to advanced users of interaction data. The plug-in provides access to a consolidated data set in a uniform accession space while remaining faithful to the underlying source data. Tools are provided to facilitate a range of tasks from a simple search to knowledge discovery. The plug-in uses a number of strategies that will be of interest to other plug-in developers.
- Published
- 2011
4. PSICQUIC and PSISCORE: accessing and scoring molecular interactions
- Author
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Hagen Blankenburg, Ruth Isserlin, Samuel Kerrien, David Eisenberg, Rafael C. Jimenez, Jyoti Khadake, Johannes B. Goll, Arnaud Ceol, Marine Dumousseau, Sandra Orchard, Jose M. Dana, Guanming Wu, Henning Hermjakob, Mario Albrecht, Sabry Razick, Keiichiro Ono, Bruno Aranda, Ian Donaldson, John P. Overington, Emilie Chautard, Milan Simonovic, Robert E. W. Hancock, Sameer Velankar, Gary D. Bader, Gavin O'Kelly, Gianni Cesareni, Mike Tyers, Olga Rigina, Magali Michaut, Javier De Las Rivas, Sylvie Ricard-Blum, Gerard J. Kleywegt, Anna Gaulton, Andrew G. Winter, Lukasz Salwinski, David J. Lynn, Carlos Prieto, Fiona S. L. Brinkman, Jules Kerssemakers, and Eugenia Galeota
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Chemical and physical biology [NCMLS 7] ,Genetics and epigenetic pathways of disease [NCMLS 6] ,Databases, Factual ,Context (language use) ,Computational biology ,Biology ,Proteomics ,Biochemistry ,Article ,03 medical and health sciences ,Animals ,Software ,Humans ,Proteins ,Computational Biology ,Protein Binding ,Databases ,Molecular Biology ,Factual ,030304 developmental biology ,0303 health sciences ,Molecular interactions ,030302 biochemistry & molecular biology ,A protein ,Cell Biology ,3. Good health ,Settore BIO/18 - Genetica ,Proteins metabolism ,Biotechnology - Abstract
To the Editor.-- Author Manuscript.-- et al., This study was supported by the European Commission under the Serving Life-science Information for the Next Generation contract 226073; Proteomics Standards Initiative and International Molecular Exchange contract FP7-HEALTH-2007-223411; Apoptosis Systems Biology Applied to Cancer and AIDS contract FP7-HEALTH-2007-200767; Experimental Network for Functional Integration contract LSHG-CT-2005-518254; German National Genome Research Network; German Research Foundation contract KFO 129/1-2; US National Institutes of Health grant R01GM071909; the Italian Association for Cancer Research; a Wellcome Trust Strategic Award to the European Molecular Biology Laboratory–European Bioinformatics Institute for Chemogenomics Databases; Grand Challenges in Global Health Research, the Canadian Institutes of Health Research, Foundation for the National Institutes of Health and Genome British Columbia; and a German Research Foundation–funded Cluster of Excellence for Multimodal Computing and Interaction.
- Published
- 2011
5. iRefIndex: A consolidated protein interaction database with provenance
- Author
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Ian Donaldson, Sabry Razick, and George Magklaras
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Proteomics ,Proteome ,Abstracting and Indexing ,Computer science ,lcsh:Computer applications to medicine. Medical informatics ,computer.software_genre ,Biochemistry ,Protein sequencing ,Structural Biology ,Protein Interaction Mapping ,Animals ,Humans ,Amino Acid Sequence ,Databases, Protein ,lcsh:QH301-705.5 ,Molecular Biology ,Gene ,Information retrieval ,Database ,Applied Mathematics ,Proteins ,A protein ,Protein database ,Data Compression ,Sequence identity ,Computer Science Applications ,lcsh:Biology (General) ,lcsh:R858-859.7 ,Database Management Systems ,Neural Networks, Computer ,DNA microarray ,Primary sequence ,computer ,Research Article - Abstract
Background Interaction data for a given protein may be spread across multiple databases. We set out to create a unifying index that would facilitate searching for these data and that would group together redundant interaction data while recording the methods used to perform this grouping. Results We present a method to generate a key for a protein interaction record and a key for each participant protein. These keys may be generated by anyone using only the primary sequence of the proteins, their taxonomy identifiers and the Secure Hash Algorithm. Two interaction records will have identical keys if they refer to the same set of identical protein sequences and taxonomy identifiers. We define records with identical keys as a redundant group. Our method required that we map protein database references found in interaction records to current protein sequence records. Operations performed during this mapping are described by a mapping score that may provide valuable feedback to source interaction databases on problematic references that are malformed, deprecated, ambiguous or unfound. Keys for protein participants allow for retrieval of interaction information independent of the protein references used in the original records. Conclusion We have applied our method to protein interaction records from BIND, BioGrid, DIP, HPRD, IntAct, MINT, MPact, MPPI and OPHID. The resulting interaction reference index is provided in PSI-MITAB 2.5 format at http://irefindex.uio.no. This index may form the basis of alternative redundant groupings based on gene identifiers or near sequence identity groupings.
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- 2008
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6. Literature curation of protein interactions: measuring agreement across major public databases
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Shoshana J. Wodak, Sabry Razick, Brian Turner, Andrei L. Turinsky, and Ian Donaldson
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Proteomics ,Computer science ,computer.software_genre ,General Biochemistry, Genetics and Molecular Biology ,03 medical and health sciences ,0302 clinical medicine ,Protein Interaction Mapping ,Animals ,Humans ,Protein Isoforms ,Protein Interaction Domains and Motifs ,Databases, Protein ,Organism ,030304 developmental biology ,Analysis of Variance ,Internet ,0303 health sciences ,Information retrieval ,Database ,Proteins ,Proteins metabolism ,Database Management Systems ,Original Article ,Splice isoforms ,General Agricultural and Biological Sciences ,computer ,030217 neurology & neurosurgery ,Information Systems - Abstract
Literature curation of protein interaction data faces a number of challenges. Although curators increasingly adhere to standard data representations, the data that various databases actually record from the same published information may differ significantly. Some of the reasons underlying these differences are well known, but their global impact on the interactions collectively curated by major public databases has not been evaluated. Here we quantify the agreement between curated interactions from 15 471 publications shared across nine major public databases. Results show that on average, two databases fully agree on 42% of the interactions and 62% of the proteins curated from the same publication. Furthermore, a sizable fraction of the measured differences can be attributed to divergent assignments of organism or splice isoforms, different organism focus and alternative representations of multi-protein complexes. Our findings highlight the impact of divergent curation policies across databases, and should be relevant to both curators and data consumers interested in analyzing protein-interaction data generated by the scientific community. Database URL: http://wodaklab.org/iRefWeb
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- 2010
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7. iRefWeb: interactive analysis of consolidated protein interaction data and their supporting evidence
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James Vlasblom, Shoshana J. Wodak, Emerson Cho, Brian Turner, Sabry Razick, Kyle Morrison, Edgard K. Crowdy, Ian Donaldson, and Andrei L. Turinsky
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Protein structure database ,Abstracting and Indexing ,Computer science ,Information Storage and Retrieval ,General Biochemistry, Genetics and Molecular Biology ,World Wide Web ,User-Computer Interface ,03 medical and health sciences ,0302 clinical medicine ,Protein Interaction Mapping ,Animals ,Humans ,Databases, Protein ,030304 developmental biology ,Internet ,0303 health sciences ,Information retrieval ,Data display ,business.industry ,Computational Biology ,Proteins ,A protein ,Interactive analysis ,Data Display ,Database Management Systems ,Original Article ,The Internet ,User interface ,General Agricultural and Biological Sciences ,business ,030217 neurology & neurosurgery ,Information Systems - Abstract
We present iRefWeb, a web interface to protein interaction data consolidated from 10 public databases: BIND, BioGRID, CORUM, DIP, IntAct, HPRD, MINT, MPact, MPPI and OPHID. iRefWeb enables users to examine aggregated interactions for a protein of interest, and presents various statistical summaries of the data across databases, such as the number of organism-specific interactions, proteins and cited publications. Through links to source databases and supporting evidence, researchers may gauge the reliability of an interaction using simple criteria, such as the detection methods, the scale of the study (high- or low-throughput) or the number of cited publications. Furthermore, iRefWeb compares the information extracted from the same publication by different databases, and offers means to follow-up possible inconsistencies. We provide an overview of the consolidated protein–protein interaction landscape and show how it can be automatically cropped to aid the generation of meaningful organism-specific interactomes. iRefWeb can be accessed at: http://wodaklab.org/iRefWeb. Database URL: http://wodaklab.org/iRefWeb/
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- 2010
- Full Text
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