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SciCrunch Registry is a curated repository of scientific resources, with a focus on biomedical resources, including tools, databases, and core facilities - visit SciCrunch to register your resource.

(last updated: Oct 12, 2019)

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Resource NameResource TypeDescriptionKeywordsResource IDProper CitationParent OrganizationRelated ConditionFunding AgencyRelationReferenceWebsite StatusAlternate IDsAlternate URLsOld URLs
Kidney and Urinary Pathway Knowledge BaseResource, data analysis service, production service resource, analysis service resource, data set, service resource, storage service resource, data repository, data or information resourceA collection of omics datasets (mRNA, proteins and miRNA) that have been extracted from PubMed and other related renal databases, all related to kidney physiology and pathology giving KUP biologists the means to ask queries across many resources in order to aggregate knowledge that is necessary for answering biological questions. Some microarray raw datasets have also been downloaded from the Gene Expression Omnibus and analyzed by the open-source software GeneArmada. The Semantic Web technologies, together with the background knowledge from the domain's ontologies, allows both rapid conversion and integration of this knowledge base. SPARQL endpoint http://sparql.kupkb.org/sparql The KUPKB Network Explorer will help you visualize the relationships among molecules stored in the KUPKB. A simple spreadsheet template is available for users to submit data to the KUPKB. It aims to capture a minimal amount of information about the experiment and the observations made.kidney, urinary, urine, pathway, molecule, visualizer, gene, protein, mirna, metabolite, mrna, microarray, ortholog, rdf, renal cell, anatomy, animal model, disease, sparql, proteomics, ontology, biomarker, gene expression, physiology, pathologySCR_001746(Kidney and Urinary Pathway Knowledge Base, RRID:SCR_001746)University of Manchester; Manchester; United Kingdom , National Institute of Health and Medical Research; Rennes; France Kidney diseaseEuropean Union, FP7, ICT-2007.4.4 e-LICO projectrelated to: NIDDK Information Network, Gene Expression Omnibus, Gene Ontology, KEGG, submitted by: NIDDK Information NetworkPMID:21624162Last checked downnlx_154134http://www.e-lico.eu/kupkb
GenomEUtwinResource, disease-related portal, topical portal, database, biomaterial supply resource, research forum portal, portal, material resource, data or information resourceTHIS RESOURCE IS NO LONGER IN SERVICE, documented August 29, 2016. Study of genetic and life-style risk factors associated with common diseases based on analysis of European twins. The population cohorts used in the Genomeutwin study consist of Danish, Finnish, Italian, Dutch, English, Australian and Swedish twins and the MORGAM population cohort. This project will apply and develop new molecular and statistical strategies to analyze unique European twin and other population cohorts to define and characterize the genetic, environmental and life-style components in the background of health problems like obesity, migraine, coronary heart disease and stroke, representing major health care problems worldwide. The participating 8 twin cohorts form a collection of over 0.6 million pairs of twins. Tens of thousands of DNA samples with informed consents for genetic studies of common diseases have already been stored from these population-based twin cohorts. Studies targeted to cardiovascular traits are now being undertaken in MORGAM, a prospective case-cohort study. MORGAM cohorts include approximately 6000 individuals, drawn from population-based cohorts consisting of more than 80 000 participants who have donated DNA samples.genetic, environment, lifestyle, gene, diseaseSCR_002843(GenomEUtwin, RRID:SCR_002843)University of Helsinki; Helsinki; Finland TwinEuropean Unionrelated to: KI Biobank - TwinGene, listed by: One Mind Biospecimen Bank ListingLast checked downnif-0000-25218
Genes to Cognition: Neuroscience Research ProgrammeResource, blog, topical portal, software application, narrative resource, portal, software resource, training material, data or information resourceA neuroscience research program that studies genes, the brain and behavior in an integrated manner, established to elucidate the molecular mechanisms of learning and memory, and shed light on the pathogenesis of disorders of cognition. Central to G2C investigations is the NMDA receptor complex (NRC/MASC), that is found at the synapses in the central nervous system which constitute the functional connections between neurons. Changes in the receptor and associated components are thought to be in a large part responsible for the phenomenon of synaptic plasticity, that may underlie learning and memory. G2C is addressing the function of synapse proteins using large scale approaches combining genomics, proteomics and genetic methods with electrophysiological and behavioral studies. This is incorporated with computational models of the organization of molecular networks at the synapse. These combined approaches provide a powerful and unique opportunity to understand the mechanisms of disease genes in behavior and brain pathology as well as provide fundamental insights into the complexity of the human brain. Additionally, Genes to Cognition makes available its biological resources, including gene-targeting vectors, ES cell lines, antibodies, and transgenic mice, generated for its phenotyping pipeline. The resources are freely-available to interested researchers.electrophysiological, es cell, functional, gene, gene-target vector, genetic, 1295s, allele, antibody, behavior, behavioral, brain, c57bl/6j, central nervous system, clone, cognition, computation, connection, deletion, disease, disorder, dlg3, dlg4, domain, genomic, guanylate kinase, hprt gene, hras1, human, knockout, learning, mechanism, memory, model, molecular, mouse, mutation, network, neuron, neuroscience, nmda receptor complex, pathogenesis, phenotyping, protein, proteomics, ptk2, strain, synapse, synaptic plasticity, syngap1, transgenic, modelSCR_007121(Genes to Cognition: Neuroscience Research Programme, RRID:SCR_007121)Wellcome Trust Sanger Institute; Hinxton; United Kingdom BBSRC, EPSRC, European Union, Framework Programme, Gatsby Charitable Foundation, Human Frontiers Science Programme, MRC, NSF, Wellcome Trustlisted by: 3DVCLast checked downnif-0000-10235
aneurISTResource, topical portal, production service resource, analysis service resource, data analysis service, standard specification, narrative resource, service resource, portal, knowledge environment, data or information resourceAn IT infrastructure for the management, integration and processing of data associated with the diagnosis and treatment of cerebral aneurysm and subarachnoid hemorrhage. This new paradigm to understand and manage cerebral aneurysms, provides an integrated decision support system to assess the risk of aneurysm rupture in patients and to optimize their treatments. aneurIST benefits patients with better diagnostics, prevention and treatment because it combines efforts of clinicians and industry. Through research clinicians gain a greater insight in aneurysm understanding, while industry will be dragged by these achievements to develop more suitable medical devices to treat the disease. This infrastructure : * Facilitate clinicians the diagnosis and study of the disease, as a result of providing a seamless access to patient data using data fusion and processing of complex information spanning from the molecular to the personal level. * Provide a better planning and personalization of minimally invasive interventional procedures for patients, after linking modern diagnostic imaging to computational tools. * Collaborate in the development, extension and exploitation of standards and protocols at all project stages. * Share biomedical knowledge providing access to a set of software tools and platforms such as aneuLink, aneuFuse, aneuRisk, aneuEndo, aneuCompute and aneuInfo. * Create awareness through scientific dissemination and collaboration. * Explore the business opportunities directly arising from aneurIST. It intends to provide an integrated decision support system to assess the risk of aneurysm rupture in patients and to optimize their treatments. Software: * aneuLink will create an IT environment with the goal of establishing a link between genomics and disease. * aneuFuse will fuse diagnostic, modelling and simulation data into a coherent representation of the patient''s condition. * aneuRisk will provide clinicians with a tool to facilitate the personalized risk assessment and guidelines establishment to treat patients. * aneuEndo will develop computational tools to optimize and customize the design of endovascular devices. * aneuInfo will enable access to clinical and epidemiological data distributed in public and project-specific protected databases. * aneuCompute will provide aneurIST with distributed computing capabilities ensuring secure data transport.gene, genetic, adult, cerebral aneurysm, cerebral brain hemorrhage, cerebral hemorrhage, cerebral parenchymal hemorrhage, cerebral hemorrhage, clinical, genomic, human, intracerebral hemorrhage, intracranial aneurysm, subarachnoid hemorrhage, risk, aneurysm rupture, patient, treatment, infrastructure, platform, genomics, disease, personalized risk assessment, bioinformatics, clinical, data management, data integration, data processing, software tool, cerebrumSCR_007427(aneurIST, RRID:SCR_007427)Pompeu Fabra University; Barcelona; Spain Cerebral aneurysm, Subarachnoid hemorrhage, AgingEuropean Union, Sixth FPPriority 2 of the Information Society Technologies ISTLast checked downnif-0000-00538http://www.cilab.upf.edu/aneurist1/
FunSimMatResource, data analysis service, data access protocol, production service resource, analysis service resource, database, web service, service resource, software resource, data or information resourceFunSimMat is a comprehensive resource of semantic and functional similarity values. It allows ranking disease candidate proteins for OMIM diseases and searching for functional similarity values for proteins (extracted from UniProt), and protein families (Pfam, SMART). FunSimMat provides several different semantic and functional similarity measures for each protein pair using the Gene Ontology annotation from UniProtKB and the Gene Ontology Annotation project at EBI (GOA). There are several search options available: Disease candidate prioritization: * Rank candidate proteins using any OMIM disease entry * Compare a list of proteins to any OMIM disease entry * Compare all human proteins to any OMIM disease entry Functional similarity: * Compare one protein / protein family to a list of proteins / protein families * Compare a list of GO terms to a list of proteins / protein families Semantic similarity: * For a list of GO terms, FunSimMat performs an all-against-all comparison and displays the semantic similarity values. FunSimMat provides an XML-RPC interface for performing automatic queries and processing of the results as well as a RestLike Interface. Platform: Online toolfunctional similarity value, protein family, protein similarity, semantic similarity value, similarity value, functional similarity, disease gene candidate prioritization, disease, protein, protein family, disease candidate prioritization, semantic similarity, gene ontology, visualization, annotation, database or data warehouseSCR_002729(FunSimMat, RRID:SCR_002729)Max-Planck-Institute for Informatics; Saarbrucken; Germany European Union, German National Genome Research Network, Klinische Forschergrupperelated to: Gene Ontology, listed by: Gene Ontology ToolsReferences (2)Last checked upnif-0000-02860
OrphanetResource, service resource, topical portal, database, portal, data or information resourceEuropean website providing information about orphan drugs and rare diseases. It contains content both for physicians and for patients. Reference portal for rare diseases and orphan drugs to help improve diagnosis, care and treatment of patients with rare diseases.drug, clinical, diagnostic, test, rare, disease, molecule, gene, orphan, drugSCR_006628(Orphanet, RRID:SCR_006628)National Institute of Health and Medical Research; Rennes; France European Union, France, French Directorate General for Health, National Institute of Health and Medical Research, Rennesrelated to: Disease core ontology applied to Rare Diseases, phenomeNET, used by: NIF Data Federation, HmtPhenome, listed by: OMICtoolsLast checked upnif-0000-21306
GEUVADISResource, organization portal, portal, consortium, data or information resourceA European Medical Sequencing Consortium committed to gaining insights into the human genome and its role in health and medicine by sharing data, experience and expertise in high-throughput sequencing.genetic, variation, health, disease, medical, sequencing, high-throughput sequencing, human genome, genome, genomics, personalized medicine, genomic medicineSCR_000684(GEUVADIS, RRID:SCR_000684)European Union, FP7, HEALTHlisted by: OMICtoolsLast checked upOMICS_01779
INFEVERSResource, data set, service resource, data repository, storage service resource, data or information resourceRegistry for Familial Mediterranean Fever (FMF) and hereditary inflammatory disorders mutations. As of 2014, it includes twenty genes including: MEFV, MVK, TNFRSF1A, NLRP3, NOD2, PSTPIP1, LPIN2 and NLRP7, and contains over 1338 sequence variants. Confidential data, simple and complex alleles are accepted. For each gene, a menu offers: 1) a tabular list of the variants that can be sorted by several parameters; 2) a gene graph providing a schematic representation of the variants along the gene; 3) statistical analysis of the data according to the phenotype, alteration type, and location of the mutation in the gene; 4) the cDNA and gDNA sequences of each gene, showing the nucleotide changes along the sequence, with a color-based code highlighting the gene domains, the first ATG, and the termination codon; and 5) a download menu making all tables and figures available for the users, which, except for the gene graphs, are all automatically generated and updated upon submission of the variants. The entire database was curated to comply with the HUGO Gene Nomenclature Committee (HGNC) and HGVS nomenclature guidelines, and wherever necessary, an informative note was provided.sequence variant, mutation, allele, genetics, dna, rna, protein, disease, heredity, inflammation, gene, function, phenotype, complex allele, simple allele, exon, intron, cdna sequence, genomic sequence, gdnaSCR_007738(INFEVERS, RRID:SCR_007738)Familial Mediterranean Fever, Auto-inflammatory Disorder, Hereditary Auto-inflammatory DisorderEuropean Unionrelated to: Human Genome Variation Society, HGNC, listed by: re3data.orgReferences (3)Last checked upnif-0000-03022http://fmf.igh.cnrs.fr/infevers
Interaction Proteome ProjectResource, topical portal, software application, portal, software resource, simulation software, data or information resourceTHIS RESOURCE IS NO LONGER IN SERVICE, documented on January 28, 2013. (URL is no longer valid) A platform for high-throughput proteomic analysis. Major objectives of IPP include the establishment of a broadly applicable platform of routine methods for the analysis of protein interaction networks in bio-medical research. A multidisciplinary approach will address; * their validation by cell biological, biochemical and biophysical methods. * their collection in a new type of public database. * their exploitation and use for in silico simulations of protein-interaction networks. The innovations generated in IPP will provide the basis for an efficient analysis and systems modeling of fundamental biological processes in health and disease. It will develop novel technology, including a high-end mass spectrometer with extremely large dynamic range, high-density peptide arrays, and improved visualization technology for light and electron microscopy. Additionally, the novel technologies will be validated with selected model systems of high relevance to medicine and biotechnology. Extensive bioinformatics support is a key element in the project to cope with the massive increase in experimental data on protein interactions obtained using the novel technologies. In particular, the efficient integration of disparate data sets represents a key challenge in proteomics and functional genomics. Therefore, the consortium includes the creator of the only European protein-interactions database, MINT. The multi-disciplinary efforts required in the scientific program of IPP are organized into four sub-projects (SP): * SP1: Tools for interaction analysis - SP1 is dedicated to the development of innovative proteomics technology to map protein-interaction networks and their cellular topology for the interaction analyses in SP2 and SP3. * SP2: Identification of interaction partners for protein domains - SP2 will generate (high throughput) data for important protein-protein interactions defined by bioinformatics and biomedical interest and by SP3, utilizing technology developed in SP1. * SP3: Functional analysis of interactions - SP3 focuses on the validation of technologies and tools developed in SP1. It will perform functional analyses of protein-interactions in medically and biochemically relevant prokaryotic and eukaryotic (mammalian) model systems. * SP4: Interactome database and modelling - SP4 provides the required bioinformatics infrastructure for the project, comprising the improvement of the public MINT database for the collection and dissemination of the interactome data; modelling and simulation of protein-interaction networks characterised in SP2 and SP3; and the dissemination of the technology developments to the scientific community.electron, eukaryotic, biochemical, bioinformatics, biological, biomedical, biophysical, biotechnology, cell, development, disease, domain, genomics, health, interaction, light, mammalian, map, mass spectrometer, medicine, microscopy, model, modeling, network, peptide array, prokayotic, protein interaction, proteome, proteomics, silico, simulation, system, technology, tool, protein interactionSCR_008043(Interaction Proteome Project, RRID:SCR_008043)Max Planck Institute of Biochemistry; Martinsried; Germany European UnionLast checked upnif-0000-10259
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