Efficient Server-Aided Secure Two-Party Function Evaluation with Applications to Genomic Computation

Author:

Blanton Marina1,Bayatbabolghani Fattaneh1

Affiliation:

1. University of Notre Dame

Abstract

Abstract Computation based on genomic data is becoming increasingly popular today, be it for medical or other purposes. Non-medical uses of genomic data in a computation often take place in a server-mediated setting where the server offers the ability for joint genomic testing between the users. Undeniably, genomic data is highly sensitive, which in contrast to other biometry types, discloses a plethora of information not only about the data owner, but also about his or her relatives. Thus, there is an urgent need to protect genomic data. This is particularly true when the data is used in computation for what we call recreational non-health-related purposes. Towards this goal, in this work we put forward a framework for server-aided secure two-party computation with the security model motivated by genomic applications. One particular security setting that we treat in this work provides stronger security guarantees with respect to malicious users than the traditional malicious model. In particular, we incorporate certified inputs into secure computation based on garbled circuit evaluation to guarantee that a malicious user is unable to modify her inputs in order to learn unauthorized information about the other user’s data. Our solutions are general in the sense that they can be used to securely evaluate arbitrary functions and offer attractive performance compared to the state of the art. We apply the general constructions to three specific types of genomic tests: paternity, genetic compatibility, and ancestry testing and implement the constructions. The results show that all such private tests can be executed within a matter of seconds or less despite the large size of one’s genomic data.

Publisher

Walter de Gruyter GmbH

Subject

General Medicine

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Genomic Data Analysis with Variant of Secure Multi-Party Computation Technique;December 2023;2023-12

2. Encryption with access policy and cloud data selection for secure and energy-efficient cloud computing;Multimedia Tools and Applications;2023-07-18

3. Generic server-aided secure multi-party computation in cloud computing;Computer Standards & Interfaces;2022-01

4. Efficient Server-Aided Secure Two-Party Computation in Heterogeneous Mobile Cloud Computing;IEEE Transactions on Dependable and Secure Computing;2021

5. Privado;ACM Transactions on Privacy and Security;2020-08-31

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