A Survey of Secure Multiparty Computation Protocols for Privacy Preserving Genetic Tests

2016 IEEE First International Conference on Connected Health: Applications, Systems and Engineering Technologies (CHASE)(2016)

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摘要
We discuss several protocols that apply secure multiparty computation to privacy preserving genetic testing. We categorize methods into those using oblivious finite automata, additive homomorphic encryption, garbled circuits, and private set intersection. Through comparison of performance and security metrics, we aim to make recommendations for efficient and secure multiparty computation protocols for various genetic tests including edit distance, disease susceptibility, identity/paternity/- common ancestry testing, medicine and treatment efficacy for personalized medicine, and genetic compatibility.
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关键词
smpc, secure multiparty computation, genomics, privacy-preserving
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