Authors
Matthew Fredrikson, Eric Lantz, Somesh Jha, Simon Lin, David Page, Thomas Ristenpart
Publication date
2014/8/20
Conference
USENIX Security Symposium
Pages
17-32
Description
We initiate the study of privacy in pharmacogenetics, wherein machine learning models are used to guide medical treatments based on a patient’s genotype and background. Performing an in-depth case study on privacy in personalized warfarin dosing, we show that suggested models carry privacy risks, in particular because attackers can perform what we call model inversion: an attacker, given the model and some demographic information about a patient, can predict the patient’s genetic markers.
Total citations
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Scholar articles
M Fredrikson, E Lantz, S Jha, S Lin, D Page… - 23rd USENIX security symposium (USENIX Security 14 …, 2014