Privacy-preserving cancer type prediction with homomorphic encryption

被引:9
|
作者
Sarkar, Esha [1 ]
Chielle, Eduardo [2 ]
Gursoy, Gamze [3 ]
Chen, Leo [4 ]
Gerstein, Mark [3 ]
Maniatakos, Michail [2 ]
机构
[1] NYU, Tandon Sch Engn, Brooklyn, NY 11201 USA
[2] New York Univ Abu Dhabi, Ctr Cyber Secur, Abu Dhabi 129188, U Arab Emirates
[3] Yale Univ, Program Computat Biol & Bioinformat, New Haven, CT 06520 USA
[4] Yale Univ, Dept Comp Sci, New Haven, CT 06520 USA
关键词
D O I
10.1038/s41598-023-28481-8
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Cancer genomics tailors diagnosis and treatment based on an individual's genetic information and is the crux of precision medicine. However, analysis and maintenance of high volume of genetic mutation data to build a machine learning (ML) model to predict the cancer type is a computationally expensive task and is often outsourced to powerful cloud servers, raising critical privacy concerns for patients' data. Homomorphic encryption (HE) enables computation on encrypted data, thus, providing cryptographic guarantees to protect privacy. But restrictive overheads of encrypted computation deter its usage. In this work, we explore the challenges of privacy preserving cancer type prediction using a dataset consisting of more than 2 million genetic mutations from 2713 patients for several cancer types by building a highly accurate ML model and then implementing its privacy preserving version in HE. Our solution for cancer type inference encodes somatic mutations based on their impact on the cancer genomes into the feature space and then uses statistical tests for feature selection. We propose a fast matrix multiplication algorithm for HE-based model. Our final model achieves 0.98 micro-average area under curve improving accuracy from 70.08 to 83.61% , being 550 times faster than the standard matrix multiplication-based privacy-preserving models. Our tool can be found at https:// github. com/ momal ab/ octal-candet.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] Privacy-preserving cancer type prediction with homomorphic encryption
    Esha Sarkar
    Eduardo Chielle
    Gamze Gursoy
    Leo Chen
    Mark Gerstein
    Michail Maniatakos
    [J]. Scientific Reports, 13
  • [2] Privacy-Preserving Collective Learning With Homomorphic Encryption
    Paul, Jestine
    Annamalai, Meenatchi Sundaram Muthu Selva
    Ming, William
    Al Badawi, Ahmad
    Veeravalli, Bharadwaj
    Aung, Khin Mi Mi
    [J]. IEEE ACCESS, 2021, 9 : 132084 - 132096
  • [3] A privacy-preserving parallel and homomorphic encryption scheme
    Min, Zhaoe
    Yang, Geng
    Shi, Jingqi
    [J]. OPEN PHYSICS, 2017, 15 (01): : 135 - 142
  • [4] A Review of Homomorphic Encryption for Privacy-Preserving Biometrics
    Yang, Wencheng
    Wang, Song
    Cui, Hui
    Tang, Zhaohui
    Li, Yan
    [J]. SENSORS, 2023, 23 (07)
  • [5] Privacy-Preserving Swarm Learning Based on Homomorphic Encryption
    Chen, Lijie
    Fu, Shaojing
    Lin, Liu
    Luo, Yuchuan
    Zhao, Wentao
    [J]. ALGORITHMS AND ARCHITECTURES FOR PARALLEL PROCESSING, ICA3PP 2021, PT III, 2022, 13157 : 509 - 523
  • [6] Privacy-Preserving Decentralized Optimization Using Homomorphic Encryption
    Huo, Xiang
    Liu, Mingxi
    [J]. IFAC PAPERSONLINE, 2020, 53 (05): : 630 - 633
  • [7] On Fully Homomorphic Encryption for Privacy-Preserving Deep Learning
    Hernandez Marcano, Nestor J.
    Moller, Mads
    Hansen, Soren
    Jacobsen, Rune Hylsberg
    [J]. 2019 IEEE GLOBECOM WORKSHOPS (GC WKSHPS), 2019,
  • [8] Privacy-Preserving Federated Learning Using Homomorphic Encryption
    Park, Jaehyoung
    Lim, Hyuk
    [J]. APPLIED SCIENCES-BASEL, 2022, 12 (02):
  • [9] Privacy-Preserving Feature Selection with Fully Homomorphic Encryption
    Ono, Shinji
    Takata, Jun
    Kataoka, Masaharu
    Tomohiro, I
    Shin, Kilho
    Sakamoto, Hiroshi
    [J]. ALGORITHMS, 2022, 15 (07)
  • [10] Efficient homomorphic encryption framework for privacy-preserving regression
    Byun, Junyoung
    Park, Saerom
    Choi, Yujin
    Lee, Jaewook
    [J]. APPLIED INTELLIGENCE, 2023, 53 (09) : 10114 - 10129