ML with HE: Privacy Preserving Machine Learning Inferences for Genome Studies [article]

Ş. S. Mağara, C. Yıldırım, F. Yaman, B. Dilekoğlu, F. R. Tutaş, E. Öztürk, K. Kaya, Ö. Taştan, E. Savaş
2022 arXiv   pre-print
Preserving the privacy and security of big data in the context of cloud computing, while maintaining a certain level of efficiency of its processing remains to be a subject, open for improvement. One of the most popular applications epitomizing said concerns is found to be useful in genome analysis. This work proposes a secure multi-label tumor classification method using homomorphic encryption, whereby two different machine learning algorithms, SVM and XGBoost, are used to classify the encrypted genome data of different tumor types.
arXiv:2110.11446v2 fatcat:dnb2vr6abjfudp6d5gmqka5r24