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Data repositories are important tools in cancer research, providing . They provide safe and sustainable locations to store data, providing provide access to input data for meta-analyses, and allowing allow researchers to collaborate and share information across a common resource.

The problem is that repositories are often not flexible enough to store data that do not conform to known standards. Genomics, for example, benefits from community genomics standards groups that develop standard programmatic interfaces for managing, describing, and annotating genomic data (attribution: https://gdc.cancer.gov/about-data/data-standards), but not all fields of study and application are as lucky. Emerging data types such as...do not yet have data storage standards.and open industry standards. Many other fields of study are without such standards, yet generate significant amounts of data. Lacking standards prohibits these data sets from being more accessible, easily retrieved, and potentially reused by the research community.

FNLCR supports the The Center for Strategic Scientific Initiatives Data Coordinating Center (CSSI DCC) stores and manages access to data generated in support of cancer research funded or supported by the CSSI. Frederick National Lab, under the leadership of Andrew Quong, developed the CSSI DCC Portal, the repository for CSSI DCC data. The ), an innovations center within NCI, by managing science and technology initiatives to support development programs critical to nearly all cancer and biomedical research programs in new higher risk areas, including data management, high definition single cell analysis, immuno-mass cytometry, clinical proteomics, and antibody characterization that may question existing paradigms and lead to hypothesis testing. A knowledgeable team of software developers in DSITP, led by Uma Mudunuri and managed by Andrew Quong, have developed the CSSI DCC Portal, a repository for CSSI DCC data and other emerging data types without a standard approach to data storage. Experimental details or metadata of the data currently in the DCC conform to the standard Investigationstandard Investigation-Study-Assay tab-delimited formatformat (ISA-TAB) format, which describes a scientific investigation, its study or studies, and each study's assay(s).

The primary goals of the FNLCR CSSI Data Coordination Center (DCC) are to facilitate access to research data for the greater cancer research community.  Facilitating this is the DCC's design approach, which follows FAIR (Findable, Accessible, Interoperable, and Reusable) principles for scientific data management and stewardship, applies metadata standards, and involves interactions with the research community to seek out and apply their best practices.

 

The CSSI DCC Portal is powerful and serves Portal has the following purposes:

  • Provides a common location and web access to data from disparate data types including gene expression results from Next Generation Sequencing, microarray experiments, histopathological images, metabolomics data, and proteomics data, allowing for easy access by multiple collaborators and researchers located at different geographic locations. Is It is flexible enough to handle new and unspecified data types..
  • Provides a mechanism to identify and search for data sets stored at different locations but generated through the same project; for example, clinical and genomics data sets from a project might be deposited to a database of Genotypes and Phenotypes (dbGaP) or Genomics Data Commons (GDC), imaging files might be located at The Cancer Imaging Archives (TCIA), and cell motility information might be uploaded to the CSSI DCC.
  • Supports storing Stores the data in one common location so that you can make biological insights that would otherwise be missed by having data in multiple locations.
  • Applies the information gained from one study to multiple studies and projects.
  • Allows you to search the metadata from each study to identify datasets of interest.
  • Develops data storage and data mining modules that can be applied across studiesprojects, avoiding duplication of effort and saving costs.
  • Develops and/or adopts common vocabularies, data standards, and ontologies for data representation, storage, and comparison.

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See Neo4j  Neo4j - Rapidly Prototyping a Semantic Graph for  for more information about technologies used in CSSI DCC.

 

 

 

 

 The CSSI DCC Portal project team includes:

MemberRole

Uma Mudunuri

IT Lead

Paul Donovan

Team Lead/Solutions Architect

David Mott

Developer

Mahesh Yelisetti

QA Analyst

Rajani Kuchipudi

QA Analyst

Paul Aiyetan

Bioinformatician

Carolyn Klinger

Technical Documentation

Deb Hope

Subject Matter Expert

Corinne Zeitler

Project Manager

Andrew Quong

Project Director

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