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EMIF Catalogue: A collaborative platform for sharing and reusing biomedical data.

José Luís Oliveira1, Alina Trifan1, Luís A Bastião Silva2

  • 1University of Aveiro, DETI/IEETA, Portugal.

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|April 29, 2019
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Summary
This summary is machine-generated.

Researchers can now discover and access distributed biomedical datasets through the EMIF Catalogue. This platform enhances collaboration by providing a holistic view of available data, supporting diverse research needs.

Keywords:
Biomedical data integrationData catalogueData discoveryData reuseData sharingResearch study

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Area of Science:

  • Biomedical Informatics
  • Data Science
  • Health Research

Background:

  • Collaboration and knowledge exchange among researchers are impeded by the lack of centralized information on available research databases.
  • Patient health information is often fragmented and inaccessible across multiple institutions, hindering scientific progress.

Purpose of the Study:

  • To provide research communities with a unified, granular view of relevant biomedical datasets.
  • To facilitate the discovery and exploration of distributed biomedical data resources.

Main Methods:

  • Developed a community-centered framework for secure data sharing and privacy preservation.
  • Implemented a dynamic schema to expose metadata models from existing repositories.
  • Utilized a modular, plugin-based architecture for seamless integration of tools.

Main Results:

  • Launched the EMIF Catalogue, a web platform for sharing and reusing biomedical data.
  • Enabled data custodians to publish diverse information levels and researchers to search for suitable databases.

Conclusions:

  • The EMIF Catalogue supports multiple research communities with varying data governance needs.
  • It integrates data from pan-European Electronic Health Records (EHR) and Alzheimer cohorts.
  • The platform is accessible at https://emif-catalogue.eu.