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SAFETY: Secure gwAs in Federated Environment through a hYbrid Solution.


ABSTRACT: Recent studies demonstrate that effective healthcare can benefit from using the human genomic information. Consequently, many institutions are using statistical analysis of genomic data, which are mostly based on genome-wide association studies (GWAS). GWAS analyze genome sequence variations in order to identify genetic risk factors for diseases. These studies often require pooling data from different sources together in order to unravel statistical patterns, and relationships between genetic variants and diseases. Here, the primary challenge is to fulfill one major objective: accessing multiple genomic data repositories for collaborative research in a privacy-preserving manner. Due to the privacy concerns regarding the genomic data, multi-jurisdictional laws and policies of cross-border genomic data sharing are enforced among different countries. In this article, we present SAFETY, a hybrid framework, which can securely perform GWAS on federated genomic datasets using homomorphic encryption and recently introduced secure hardware component of Intel Software Guard Extensions to ensure high efficiency and privacy at the same time. Different experimental settings show the efficacy and applicability of such hybrid framework in secure conduction of GWAS. To the best of our knowledge, this hybrid use of homomorphic encryption along with Intel SGX is not proposed to this date. SAFETY is up to 4.82 times faster than the best existing secure computation technique.

SUBMITTER: Sadat MN 

PROVIDER: S-EPMC6411680 | biostudies-literature | 2019 Jan-Feb

REPOSITORIES: biostudies-literature

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SAFETY: Secure gwAs in Federated Environment through a hYbrid Solution.

Sadat Md Nazmus MN   Al Aziz Md Momin MM   Mohammed Noman N   Chen Feng F   Jiang Xiaoqian X   Wang Shuang S  

IEEE/ACM transactions on computational biology and bioinformatics 20180424 1


Recent studies demonstrate that effective healthcare can benefit from using the human genomic information. Consequently, many institutions are using statistical analysis of genomic data, which are mostly based on genome-wide association studies (GWAS). GWAS analyze genome sequence variations in order to identify genetic risk factors for diseases. These studies often require pooling data from different sources together in order to unravel statistical patterns, and relationships between genetic va  ...[more]

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