Litcius/Paper detail

COLLAGENE enables privacy-aware federated and collaborative genomic data analysis

Wentao Li, Miran Kim, Kai Zhang, Han Chen, Xiaoqian Jiang, Arif Harmanci

2023Genome biology14 citationsDOIOpen Access PDF

Abstract

Growing regulatory requirements set barriers around genetic data sharing and collaborations. Moreover, existing privacy-aware paradigms are challenging to deploy in collaborative settings. We present COLLAGENE, a tool base for building secure collaborative genomic data analysis methods. COLLAGENE protects data using shared-key homomorphic encryption and combines encryption with multiparty strategies for efficient privacy-aware collaborative method development. COLLAGENE provides ready-to-run tools for encryption/decryption, matrix processing, and network transfers, which can be immediately integrated into existing pipelines. We demonstrate the usage of COLLAGENE by building a practical federated GWAS protocol for binary phenotypes and a secure meta-analysis protocol. COLLAGENE is available at https://zenodo.org/record/8125935 .

Topics & Concepts

Homomorphic encryptionComputer scienceData sharingProtocol (science)EncryptionKey (lock)Set (abstract data type)Computer networkComputer securityProgramming languageAlternative medicineMedicinePathologyCancer Genomics and DiagnosticsPrivacy-Preserving Technologies in DataGenetic Syndromes and Imprinting