Biomedical data sharing is one of the key elements
fostering the advancement of biomedical research but poses
severe risks towards the privacy of individuals contributing
their data, as already demonstrated for genomic data. In
this paper, we study whether and to which extent DNA
methylation data, one of the most important epigenetic
elements regulating human health, is prone to membership
inference attacks, a critical type of attack that reveals an
individual’s participation in a given database. We design
and evaluate three different attacks exploiting published
summary statistics, among which one is based on machine
learning and another is exploiting the dependencies between
genome and methylation data. Our extensive evaluation on
six datasets containing a diverse set of tissues and diseases
collected from more than 1,300 individuals in total shows that
such membership inference attacks are effective, even when
the target’s methylation profile is not accessible. It further
shows that the machine-learning approach outperforms the
statistical attacks, and that learned models are transferable
across different datasets.
History
Preferred Citation
Inken Hagestedt, Mathias Humbert, Pascal Berrang, Irina Lehmann, Roland Eils, Michael Backes and Yang Zhang. Membership Inference Against DNA Methylation Databases. In: IEEE European Symposium on Security and Privacy (EuroS&P). 2020.
Primary Research Area
Trustworthy Information Processing
Name of Conference
IEEE European Symposium on Security and Privacy (EuroS&P)
Legacy Posted Date
2020-06-08
Open Access Type
Unknown
BibTeX
@inproceedings{cispa_all_3106,
title = "Membership Inference Against DNA Methylation Databases",
author = "Hagestedt, Inken and Humbert, Mathias and Berrang, Pascal and Lehmann, Irina and Eils, Roland and Backes, Michael and Zhang, Yang",
booktitle="{IEEE European Symposium on Security and Privacy (EuroS&P)}",
year="2020",
}