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      Privacy-preserving search for a similar genomic makeup in the cloud

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      Author(s)
      Zhu, X.
      Vitenberg, R.
      Veeraragavan, N. R.
      Ayday, Erman
      Date
      2021-04-20
      Source Title
      IEEE Transactions on Dependable and Secure Computing
      Print ISSN
      15455971
      Electronic ISSN
      1941-0018
      Publisher
      Institute of Electrical and Electronics Engineers Inc.
      Volume
      19
      Issue
      4
      Pages
      2771 - 2788
      Language
      English
      Type
      Article
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      Abstract
      Increasing affordability of genome sequencing and, as a consequence, widespread availability of genomic data opens up new opportunities for the field of medicine, as also evident from the emergence of popular cloud-based offerings in this area, such as Google Genomics [1]. To utilize this data more efficiently, it is crucial that different entities share their data with each other. However, such data sharing is risky mainly due to privacy concerns. In this article, we attempt to provide a privacy-preserving and efficient solution for the “similar patient search” problem among several parties (e.g., hospitals) by addressing the shortcomings of previous attempts. We consider a scenario in which each hospital has its own genomic dataset and the goal of a physician (or researcher) is to search for a patient similar to a given one (based on a genomic makeup) among all the hospitals in the system. To enable this search, we propose a hierarchical index structure to index each hospital’s dataset with low memory requirement. Furthermore, we develop a novel privacy-preserving index merging mechanism that generates a common search index from individual indices of each hospital to significantly improve the search efficiency. We also consider the storage of medical information associated with genomic data of a patient (e.g., diagnosis and treatment). We allow access to this information via a fine-grained access control policy that we develop through the combination of standard symmetric encryption and ciphertext policy attribute-based encryption. Using this mechanism, a physician can search for similar patients and obtain medical information about the matching records if the access policy holds. We conduct experiments on large-scale genomic data and show the high efficiency of the proposed scheme.
      Keywords
      Genome privacy
      Dataset outsourcing
      Similar patient search
      Permalink
      http://hdl.handle.net/11693/111300
      Published Version (Please cite this version)
      https://www.doi.org/10.1109/TDSC.2021.3074327
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