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1.
Neuroinformatics ; 6(3): 205-17, 2008 Sep.
Article in English | MEDLINE | ID: mdl-18958629

ABSTRACT

The overarching goal of the NIF (Neuroscience Information Framework) project is to be a one-stop-shop for Neuroscience. This paper provides a technical overview of how the system is designed. The technical goal of the first version of the NIF system was to develop an information system that a neuroscientist can use to locate relevant information from a wide variety of information sources by simple keyword queries. Although the user would provide only keywords to retrieve information, the NIF system is designed to treat them as concepts whose meanings are interpreted by the system. Thus, a search for term should find a record containing synonyms of the term. The system is targeted to find information from web pages, publications, databases, web sites built upon databases, XML documents and any other modality in which such information may be published. We have designed a system to achieve this functionality. A central element in the system is an ontology called NIFSTD (for NIF Standard) constructed by amalgamating a number of known and newly developed ontologies. NIFSTD is used by our ontology management module, called OntoQuest to perform ontology-based search over data sources. The NIF architecture currently provides three different mechanisms for searching heterogeneous data sources including relational databases, web sites, XML documents and full text of publications. Version 1.0 of the NIF system is currently in beta test and may be accessed through http://nif.nih.gov.


Subject(s)
Computational Biology/methods , Databases as Topic , Neurosciences/methods , Access to Information , Animals , Computational Biology/trends , Databases as Topic/trends , Humans , Information Storage and Retrieval/methods , Information Storage and Retrieval/trends , Internet/organization & administration , Internet/trends , Meta-Analysis as Topic , Neurosciences/standards , Software/standards , Software/trends
2.
BMC Bioinformatics ; 7: 55, 2006 Feb 07.
Article in English | MEDLINE | ID: mdl-16464251

ABSTRACT

BACKGROUND: The goal of information integration in systems biology is to combine information from a number of databases and data sets, which are obtained from both high and low throughput experiments, under one data management scheme such that the cumulative information provides greater biological insight than is possible with individual information sources considered separately. RESULTS: Here we present PathSys, a graph-based system for creating a combined database of networks of interaction for generating integrated view of biological mechanisms. We used PathSys to integrate over 14 curated and publicly contributed data sources for the budding yeast (S. cerevisiae) and Gene Ontology. A number of exploratory questions were formulated as a combination of relational and graph-based queries to the integrated database. Thus, PathSys is a general-purpose, scalable, graph-data warehouse of biological information, complete with a graph manipulation and a query language, a storage mechanism and a generic data-importing mechanism through schema-mapping. CONCLUSION: Results from several test studies demonstrate the effectiveness of the approach in retrieving biologically interesting relations between genes and proteins, the networks connecting them, and of the utility of PathSys as a scalable graph-based warehouse for interaction-network integration and a hypothesis generator system. The PathSys's client software, named BiologicalNetworks, developed for navigation and analyses of molecular networks, is available as a Java Web Start application at http://brak.sdsc.edu/pub/BiologicalNetworks.


Subject(s)
Computer Graphics , Databases, Protein , Information Storage and Retrieval/methods , Protein Interaction Mapping/methods , Software , Systems Biology/methods , User-Computer Interface , Computer Simulation , Models, Biological , Saccharomyces cerevisiae Proteins/metabolism , Signal Transduction/physiology , Systems Integration
3.
Neuroinformatics ; 1(4): 379-95, 2003.
Article in English | MEDLINE | ID: mdl-15043222

ABSTRACT

The creation of structured shared data repositories for molecular data in the form of web-accessible databases like GenBank has been a driving force behind the genomic revolution. These resources serve not only to organize and manage molecular data being created by researchers around the globe, but also provide the starting point for data mining operations to uncover interesting information present in the large amount of sequence and structural data. To realize the full impact of the genomic and proteomic efforts of the last decade, similar resources are needed for structural and biochemical complexity in biological systems beyond the molecular level, where proteins and macromolecular complexes are situated within their cellular and tissue environments. In this review, we discuss our efforts in the development of neuroinformatics resources for managing and mining cell level imaging data derived from light and electron microscopy. We describe the main features of our web-accessible database, the Cell Centered Database (CCDB; http://ncmir.ucsd.edu/CCDB/), designed for structural and protein localization information at scales ranging from large expanses of tissue to cellular microdomains with their associated macromolecular constituents. The CCDB was created to make 3D microscopic imaging data available to the scientific community and to serve as a resource for investigating structural and macromolecular complexity of cells and tissues, particularly in the rodent nervous system.


Subject(s)
Cellular Structures/metabolism , Computational Biology , Databases, Factual , Microscopy , Online Systems , Proteins/metabolism , Brain , Brain Mapping , Image Processing, Computer-Assisted/methods , Information Storage and Retrieval , Internet , Microscopy/methods , Microscopy, Electron , National Library of Medicine (U.S.) , Online Systems/organization & administration , United States , Workforce
4.
J Struct Biol ; 138(1-2): 145-55, 2002.
Article in English | MEDLINE | ID: mdl-12160711

ABSTRACT

Electron tomography is providing a wealth of 3D structural data on biological components ranging from molecules to cells. We are developing a web-accessible database tailored to high-resolution cellular level structural and protein localization data derived from electron tomography. The Cell Centered Database or CCDB is built on an object-relational framework using Oracle 8i and is housed on a server at the San Diego Supercomputer Center at the University of California, San Diego. Data can be deposited and accessed via a web interface. Each volume reconstruction is stored with a full set of descriptors along with tilt images and any derived products such as segmented objects and animations. Tomographic data are supplemented by high-resolution light microscopic data in order to provide correlated data on higher-order cellular and tissue structure. Every object segmented from a reconstruction is included as a distinct entity in the database along with measurements such as volume, surface area, diameter, and length and amount of protein labeling, allowing the querying of image-specific attributes. Data sets obtained in response to a CCDB query are retrieved via the Storage Resource Broker, a data management system for transparent access to local and distributed data collections. The CCDB is designed to provide a resource for structural biologists and to make tomographic data sets available to the scientific community at large.


Subject(s)
Cellular Structures/ultrastructure , Databases, Factual , Tomography, X-Ray Computed , Animals , Electronic Data Processing , Humans , Imaging, Three-Dimensional , Microscopy, Electron , Proteins
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