Protecting Patient Privacy in Genomic Analysis

Patient genomes are interpretable only in the context of other genomes. However, privacy concerns over genetic data oftentimes deter individuals from contributing their genomes to scientific studies and prevent researchers from sharing their data with the scientific community. In this talk, I will...

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Bibliographic Details
Main Author: David Wu
Format: Article
Language:English
Published: Swansea University 2018-10-01
Series:International Journal of Population Data Science
Online Access:https://ijpds.org/article/view/1046
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spelling doaj-0e4fec88a86d42869d7a797265bdf97f2020-11-25T00:35:38ZengSwansea UniversityInternational Journal of Population Data Science2399-49082018-10-013510.23889/ijpds.v3i5.1046Protecting Patient Privacy in Genomic AnalysisDavid Wu0Stanford University Patient genomes are interpretable only in the context of other genomes. However, privacy concerns over genetic data oftentimes deter individuals from contributing their genomes to scientific studies and prevent researchers from sharing their data with the scientific community. In this talk, I will describe how we can leverage secure multiparty computation techniques from modern cryptography to perform useful scientific computations on genomic data while protecting the privacy of the participants' genomes. In multiple real scenarios, our methods successfully identified the disease-causing genes and even discovered previously unrecognized disease genes, all while keeping nearly all of the participants' most sensitive genomic information private. We believe that our techniques will help make currently restricted data more readily available to the scientific community and enable individuals to contribute their genomes to a study without compromising their personal privacy. The material from this talk is based on joint works with Gill Bejerano, Bonnie Berger, Johannes A. Birgmeier, Dan Boneh, Hyunghoon Cho, and Karthik A. Jagadeesh. https://ijpds.org/article/view/1046
collection DOAJ
language English
format Article
sources DOAJ
author David Wu
spellingShingle David Wu
Protecting Patient Privacy in Genomic Analysis
International Journal of Population Data Science
author_facet David Wu
author_sort David Wu
title Protecting Patient Privacy in Genomic Analysis
title_short Protecting Patient Privacy in Genomic Analysis
title_full Protecting Patient Privacy in Genomic Analysis
title_fullStr Protecting Patient Privacy in Genomic Analysis
title_full_unstemmed Protecting Patient Privacy in Genomic Analysis
title_sort protecting patient privacy in genomic analysis
publisher Swansea University
series International Journal of Population Data Science
issn 2399-4908
publishDate 2018-10-01
description Patient genomes are interpretable only in the context of other genomes. However, privacy concerns over genetic data oftentimes deter individuals from contributing their genomes to scientific studies and prevent researchers from sharing their data with the scientific community. In this talk, I will describe how we can leverage secure multiparty computation techniques from modern cryptography to perform useful scientific computations on genomic data while protecting the privacy of the participants' genomes. In multiple real scenarios, our methods successfully identified the disease-causing genes and even discovered previously unrecognized disease genes, all while keeping nearly all of the participants' most sensitive genomic information private. We believe that our techniques will help make currently restricted data more readily available to the scientific community and enable individuals to contribute their genomes to a study without compromising their personal privacy. The material from this talk is based on joint works with Gill Bejerano, Bonnie Berger, Johannes A. Birgmeier, Dan Boneh, Hyunghoon Cho, and Karthik A. Jagadeesh.
url https://ijpds.org/article/view/1046
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