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Dive into the research topics where Vadim Astakhov is active.

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Featured researches published by Vadim Astakhov.


Neuroinformatics | 2008

Federated Access to Heterogeneous Information Resources in the Neuroscience Information Framework (NIF)

Amarnath Gupta; William J. Bug; Luis N. Marenco; Xufei Qian; Christopher Condit; Arun Rangarajan; Hans-Michael Müller; Perry L. Miller; Brian Sanders; Jeffrey S. Grethe; Vadim Astakhov; Gordon M. Shepherd; Paul W. Sternberg; Maryann E. Martone

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.


Database | 2012

A Hybrid Human and Machine Resource Curation Pipeline for the Neuroscience Information Framework

Anita Bandrowski; Jonathan Cachat; Yuling Li; Hans-Michael Müller; Paul W. Sternberg; Paolo Ciccarese; Tim Clark; Luis N. Marenco; Rixin Wang; Vadim Astakhov; Jeffrey S. Grethe; Maryann E. Martone

The breadth of information resources available to researchers on the Internet continues to expand, particularly in light of recently implemented data-sharing policies required by funding agencies. However, the nature of dense, multifaceted neuroscience data and the design of contemporary search engine systems makes efficient, reliable and relevant discovery of such information a significant challenge. This challenge is specifically pertinent for online databases, whose dynamic content is ‘hidden’ from search engines. The Neuroscience Information Framework (NIF; http://www.neuinfo.org) was funded by the NIH Blueprint for Neuroscience Research to address the problem of finding and utilizing neuroscience-relevant resources such as software tools, data sets, experimental animals and antibodies across the Internet. From the outset, NIF sought to provide an accounting of available resources, whereas developing technical solutions to finding, accessing and utilizing them. The curators therefore, are tasked with identifying and registering resources, examining data, writing configuration files to index and display data and keeping the contents current. In the initial phases of the project, all aspects of the registration and curation processes were manual. However, as the number of resources grew, manual curation became impractical. This report describes our experiences and successes with developing automated resource discovery and semiautomated type characterization with text-mining scripts that facilitate curation team efforts to discover, integrate and display new content. We also describe the DISCO framework, a suite of automated web services that significantly reduce manual curation efforts to periodically check for resource updates. Lastly, we discuss DOMEO, a semi-automated annotation tool that improves the discovery and curation of resources that are not necessarily website-based (i.e. reagents, software tools). Although the ultimate goal of automation was to reduce the workload of the curators, it has resulted in valuable analytic by-products that address accessibility, use and citation of resources that can now be shared with resource owners and the larger scientific community. Database URL: http://neuinfo.org


computer-based medical systems | 2009

Ontology driven data integration for autism research

Lynn Young; Samson W. Tu; Lakshika Tennakoon; David Vismer; Vadim Astakhov; Amarnath Gupta; Jeffrey S. Grethe; Maryann E. Martone; Amar K. Das; Matthew J. McAuliffe

Autism Spectrum Disorder is an inherently complex phenomenon requiring large studies of many different types to further understanding of its causes. The National Database for Autism Research (NDAR) is being constructed to aid in this effort by providing a means for researchers to share and integrate data. An autism ontology drafted by a group at Stanford is being incorporated for use by NDAR to allow semantic data integration. The architecture upon which NDAR is built — the UCSD Developed Data Integration Environment — supports the use of this autism ontology, including annotation of data with ontological concepts and ontology enhanced queries on databases, both central and federated.


data integration in the life sciences | 2005

Data integration in the biomedical informatics research network (BIRN)

Vadim Astakhov; Amarnath Gupta; Simone Santini; Jeffrey S. Grethe

A goal of the Biomedical Informatics Research Network (BIRN) project sponsored by NCRR/NIH is to develop a multi- institution information management system for Neurosciences, where each participating institution produces a database of their experimental or computationally derived data, and a mediator module performs semantic integration over the databases to enable neuroscientists to perform analyses that could not be executed from any single institutions data. This demonstration paper briefly describes the current capabilities of Metropolis-II, the information integration system for BIRN.


International Review of Neurobiology | 2012

A survey of the neuroscience resource landscape: perspectives from the neuroscience information framework.

Jonathan Cachat; Anita Bandrowski; Jeffery S. Grethe; Amarnath Gupta; Vadim Astakhov; Fahim T. Imam; Stephen D. Larson; Maryann E. Martone

The number of available neuroscience resources (databases, tools, materials, and networks) available via the Web continues to expand, particularly in light of newly implemented data sharing policies required by funding agencies and journals. However, the nature of dense, multifaceted neuroscience data and the design of classic search engine systems make efficient, reliable, and relevant discovery of such resources a significant challenge. This challenge is especially pertinent for online databases, whose dynamic content is largely opaque to contemporary search engines. The Neuroscience Information Framework was initiated to address this problem of finding and utilizing neuroscience-relevant resources. Since its first production release in 2008, NIF has been surveying the resource landscape for the neurosciences, identifying relevant resources and working to make them easily discoverable by the neuroscience community. In this chapter, we provide a survey of the resource landscape for neuroscience: what types of resources are available, how many there are, what they contain, and most importantly, ways in which these resources can be utilized by the research community to advance neuroscience research.


computer-based medical systems | 2006

Semantically Based Data Integration Environment for Biomedical Research

Vadim Astakhov; Amarnath Gupta; Jeffrey S. Grethe; Edward Ross; David P. Little; Aylin Yilmaz; Xufei Qian; Simone Santini; Maryann E. Martone; Mark H. Ellisman

This paper presents an overview of the data integration mediation system developed as part of the Biomedical Informatics Research Network (BIRN; http://www.nbirn.net) project. BIRN is sponsored by the National Center for Research Resources (NCRR), a component of the National Institutes of Health (NIH). A core BIRN goal is the development of a multi-institution information management system to support biomedical research. Each participating institution maintains a database of their experimental or computationally derived data, and the data integration system performs semantic integration over the databases to enable researchers to perform analyses based on larger and broader datasets than would be available from any single institutions data. This demonstration paper describes architecture, implementation, and capabilities of the semantically based data integration system for BIRN


Concurrency and Computation: Practice and Experience | 2015

Early experiences in developing and managing the neuroscience gateway

Subhashini Sivagnanam; Amit Majumdar; Kenneth Yoshimoto; Vadim Astakhov; Anita Bandrowski; Maryann E. Martone; Nicholas T. Carnevale

The last few decades have seen the emergence of computational neuroscience as a mature field where researchers are interested in modeling complex and large neuronal systems and require access to high performance computing machines and associated cyber infrastructure to manage computational workflow and data. The neuronal simulation tools, used in this research field, are also implemented for parallel computers and suitable for high performance computing machines. But using these tools on complex high performance computing machines remains a challenge because of issues with acquiring computer time on these machines located at national supercomputer centers, dealing with complex user interface of these machines, dealing with data management and retrieval. The Neuroscience Gateway is being developed to alleviate and/or hide these barriers to entry for computational neuroscientists. It hides or eliminates, from the point of view of the users, all the administrative and technical barriers and makes parallel neuronal simulation tools easily available and accessible on complex high performance computing machines. It handles the running of jobs and data management and retrieval. This paper shares the early experiences in bringing up this gateway and describes the software architecture it is based on, how it is implemented, and how users can use this for computational neuroscience research using high performance computing at the back end. We also look at parallel scaling of some publicly available neuronal models and analyze the recent usage data of the neuroscience gateway. Copyright


extreme science and engineering discovery environment | 2013

A neuroscience gateway: software and implementation

Subhashini Sivagnanam; Vadim Astakhov; Kenneth Yoshimoto; Ted Carnevale; Maryann E. Martone; Amit Majumdar; Anita Bandrowski

In this paper, we describe the neuroscience gateway (NSG), which facilitates access to high performance computing resources for computational neuroscientists. Through a simple web-based portal, the NSG provides a streamlined environment for uploading models, specifying HPC job parameters, querying running job status, receiving job completion notices, and storing and retrieving output data. The NSG architecture transparently distributes user jobs to appropriate HPC resources available through the XSEDE organization.


international conference on conceptual structures | 2012

Prototype of Kepler Processing Workflows For Microscopy And Neuroinformatics

Vadim Astakhov; Anita Bandrowski; Amarnath Gupta; A. W. Kulungowski; Jeffrey S. Grethe; James C. Bouwer; T. Molin; V. Rowley; S. Penticoff; Masako Terada; Willy Wong; Hiroyuki Hakozaki; O. Kwon; Maryann E. Martone; Mark H. Ellisman

We report on progress of employing the Kepler workflow engine to prototype “end-to-end” application integration workflows that concern data coming from microscopes deployed at the National Center for Microscopy Imaging Research (NCMIR). This system is built upon the mature code base of the Cell Centered Database (CCDB) and integrated rule-oriented data system (IRODS) for distributed storage. It provides integration with external projects such as the Whole Brain Catalog (WBC) and Neuroscience Information Framework (NIF), which benefit from NCMIR data. We also report on specific workflows which spawn from main workflows and perform data fusion and orchestration of Web services specific for the NIF project. This “Brain data flow” presents a user with categorized information about sources that have information on various brain regions.


Methods of Molecular Biology | 2009

Mediator Infrastructure for Information Integration and Semantic Data Integration Environment for Biomedical Research

Jeffrey S. Grethe; Edward Ross; David P. Little; Brian Sanders; Amarnath Gupta; Vadim Astakhov

This paper presents current progress in the development of semantic data integration environment which is a part of the Biomedical Informatics Research Network (BIRN; http://www.nbirn.net) project. BIRN is sponsored by the National Center for Research Resources (NCRR), a component of the National Institutes of Health (NIH). A goal is the development of a cyberinfrastructure for biomedical research that supports advance data acquisition, data storage, data management, data integration, data mining, data visualization, and other computing and information processing services over the Internet. Each participating institution maintains storage of their experimental or computationally derived data. Mediator-based data integration system performs semantic integration over the databases to enable researchers to perform analyses based on larger and broader datasets than would be available from any single institutions data. This paper describes recent revision of the system architecture, implementation, and capabilities of the semantically based data integration environment for BIRN.

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Amarnath Gupta

University of California

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Amit Majumdar

University of California

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Brian Sanders

University of California

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