BLOOM: BLoom filter based oblivious outsourced matchings
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Date
2017
Volume
10
Issue
Suppl. 2
Journal
BMC Medical Genomics
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Abstract
Whole genome sequencing has become fast, accurate, and cheap, paving the way towards the large-scale collection and processing of human genome data. Unfortunately, this dawning genome era does not only promise tremendous advances in biomedical research but also causes unprecedented privacy risks for the many. Handling storage and processing of large genome datasets through cloud services greatly aggravates these concerns. Current research efforts thus investigate the use of strong cryptographic methods and protocols to implement privacy-preserving genomic computations.
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Citation
Ziegeldorf, J. H., Pennekamp, J., Hellmanns, D., Schwinger, F., Kunze, I., Henze, M., et al. (2017). BLOOM: BLoom filter based oblivious outsourced matchings. https://doi.org//10.1186/s12920-017-0277-y
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CC BY 4.0 Unported