Frontiers in Neuroinformatics (May 2018)

Brain-CODE: A Secure Neuroinformatics Platform for Management, Federation, Sharing and Analysis of Multi-Dimensional Neuroscience Data

  • Anthony L. Vaccarino,
  • Anthony L. Vaccarino,
  • Moyez Dharsee,
  • Stephen Strother,
  • Stephen Strother,
  • Don Aldridge,
  • Stephen R. Arnott,
  • Stephen R. Arnott,
  • Brendan Behan,
  • Costas Dafnas,
  • Fan Dong,
  • Fan Dong,
  • Kenneth Edgecombe,
  • Rachad El-Badrawi,
  • Khaled El-Emam,
  • Tom Gee,
  • Tom Gee,
  • Susan G. Evans,
  • Mojib Javadi,
  • Francis Jeanson,
  • Shannon Lefaivre,
  • Kristen Lutz,
  • F. Chris MacPhee,
  • Jordan Mikkelsen,
  • Tom Mikkelsen,
  • Nicholas Mirotchnick,
  • Tanya Schmah,
  • Christa M. Studzinski,
  • Donald T. Stuss,
  • Donald T. Stuss,
  • Donald T. Stuss,
  • Elizabeth Theriault,
  • Kenneth R. Evans

DOI
https://doi.org/10.3389/fninf.2018.00028
Journal volume & issue
Vol. 12

Abstract

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Historically, research databases have existed in isolation with no practical avenue for sharing or pooling medical data into high dimensional datasets that can be efficiently compared across databases. To address this challenge, the Ontario Brain Institute’s “Brain-CODE” is a large-scale neuroinformatics platform designed to support the collection, storage, federation, sharing and analysis of different data types across several brain disorders, as a means to understand common underlying causes of brain dysfunction and develop novel approaches to treatment. By providing researchers access to aggregated datasets that they otherwise could not obtain independently, Brain-CODE incentivizes data sharing and collaboration and facilitates analyses both within and across disorders and across a wide array of data types, including clinical, neuroimaging and molecular. The Brain-CODE system architecture provides the technical capabilities to support (1) consolidated data management to securely capture, monitor and curate data, (2) privacy and security best-practices, and (3) interoperable and extensible systems that support harmonization, integration, and query across diverse data modalities and linkages to external data sources. Brain-CODE currently supports collaborative research networks focused on various brain conditions, including neurodevelopmental disorders, cerebral palsy, neurodegenerative diseases, epilepsy and mood disorders. These programs are generating large volumes of data that are integrated within Brain-CODE to support scientific inquiry and analytics across multiple brain disorders and modalities. By providing access to very large datasets on patients with different brain disorders and enabling linkages to provincial, national and international databases, Brain-CODE will help to generate new hypotheses about the biological bases of brain disorders, and ultimately promote new discoveries to improve patient care.

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