On Distributed Collaboration for Biomedical Analyses

作者: Fatima-Zahra Boujdad , Alban Gaignard , Mario Sudholt , Wilmer Garzon-Alfonso , Luis Daniel Benavides Navarro

DOI: 10.1109/CCGRID.2019.00079

关键词:

摘要: Cooperation of research groups is nowadays common for the development and execution biomedical analyses. Multiple partners contribute data in this context, that often centralized processing at some cluster-based or supercomputer-based infrastructure. In contrast, real distributed collaboration involves from several different sites rare. However, such analyses are very interesting, particular, scalability, security privacy reasons. article, we motivate need context ongoing projects, including ICAN project 34 French hospitals affiliated groups. We present a set architectures have derived discussions with medical study related work. These allow security/privacy reproducibility issues to be taken into account. Finally, illustrate these can serve as basis method

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