Homomorphic Encryption for Machine Learning in Medicine and Bioinformatics
Citations Over TimeTop 10% of 2020 papers
Abstract
Machine learning and statistical techniques are powerful tools for analyzing large amounts of medical and genomic data. On the other hand, ethical concerns and privacy regulations prevent free sharing of this data. Encryption techniques such as fully homomorphic encryption (FHE) enable evaluation over encrypted data. Using FHE, machine learning models such as deep learning, decision trees, and Naive Bayes have been implemented for privacy-preserving applications using medical data. These applications include classifying encrypted data and training models on encrypted data. FHE has also been shown to enable secure genomic algorithms, such as paternity and ancestry testing and privacy-preserving applications of genome-wide association studies. This survey provides an overview of fully homomorphic encryption and its applications in medicine and bioinformatics. The high-level concepts behind FHE and its history are introduced, and details on current open-source implementations are provided. The state of fully homomorphic encryption for privacy-preserving techniques in machine learning and bioinformatics is reviewed, along with descriptions of how these methods can be implemented in the encrypted domain.
Related Papers
- → Performance analysis of private information retrieval scheme based on homomorphic encryption(2015)2 cited
- → HETAL: Efficient Privacy-preserving Transfer Learning with Homomorphic Encryption(2024)8 cited
- → ENSEI: Efficient Secure Inference via Frequency-Domain Homomorphic Convolution for Privacy-Preserving Visual Recognition(2020)2 cited
- → A Pervasive, Efficient and Private Future: Realizing Privacy-Preserving Machine Learning Through Hybrid Homomorphic Encryption(2024)1 cited
- → RETRACTED: Secured learning through electronic health records using Hybrid Fully Homomorphic Encryption(2024)