PRINCESS: Privacy-protecting Rare disease International Network Collaboration via Encryption through Software guard extensionS

Feng Chen(UC San Diego Health System), Shuang Wang(UC San Diego Health System), Xiaoqian Jiang(UC San Diego Health System), Sijie Ding(UC San Diego Health System), Yao Lu(University of California San Diego), Jihoon Kim(UC San Diego Health System), S. Cenk Şahinalp(Indiana University Bloomington), Chisato Shimizu(University of California San Diego), Jane C. Burns(University of California San Diego), Victoria Wright(Imperial College London), Eileen Png(Agency for Science, Technology and Research), Martin L. Hibberd(Agency for Science, Technology and Research), David Lloyd(Emory University), Hai Yang(UC San Diego Health System), Amalio Telenti(J. Craig Venter Institute), Cinnamon S. Bloss(University of California San Diego), Dov Fox(University of San Diego), Kristin Lauter(Microsoft (United States)), Lucila Ohno‐Machado(UC San Diego Health System)
Bioinformatics
November 23, 2016
Cited by 106Open Access
Full Text

Abstract

Motivation: We introduce PRINCESS, a privacy-preserving international collaboration framework for analyzing rare disease genetic data that are distributed across different continents. PRINCESS leverages Software Guard Extensions (SGX) and hardware for trustworthy computation. Unlike a traditional international collaboration model, where individual-level patient DNA are physically centralized at a single site, PRINCESS performs a secure and distributed computation over encrypted data, fulfilling institutional policies and regulations for protected health information. Results: To demonstrate PRINCESS' performance and feasibility, we conducted a family-based allelic association study for Kawasaki Disease, with data hosted in three different continents. The experimental results show that PRINCESS provides secure and accurate analyses much faster than alternative solutions, such as homomorphic encryption and garbled circuits (over 40 000× faster). Availability and Implementation: https://github.com/achenfengb/PRINCESS_opensource. Contact: shw070@ucsd.edu. Supplementary information: Supplementary data are available at Bioinformatics online.


Related Papers

No related papers found

Powered by citation graph analysis