ITCRJan 28, 2021

Private DNA Sequencing: Hiding Information in Discrete Noise

arXiv:2101.12124v2
Originality Incremental advance
AI Analysis

This addresses privacy concerns for individuals undergoing DNA sequencing, though it is an incremental contribution focused on a specific domain.

The paper tackles the problem of hiding sensitive genetic information during DNA sequencing by mixing in known DNA samples as additive noise, and it characterizes upper and lower bounds on the privacy metric, showing they are empirically very close.

When an individual's DNA is sequenced, sensitive medical information becomes available to the sequencing laboratory. A recently proposed way to hide an individual's genetic information is to mix in DNA samples of other individuals. We assume that the genetic content of these samples is known to the individual but unknown to the sequencing laboratory. Thus, these DNA samples act as "noise" to the sequencing laboratory, but still allow the individual to recover their own DNA samples afterward. Motivated by this idea, we study the problem of hiding a binary random variable $X$ (a genetic marker) with the additive noise provided by mixing DNA samples, using mutual information as a privacy metric. This is equivalent to the problem of finding a worst-case noise distribution for recovering $X$ from the noisy observation among a set of feasible discrete distributions. We characterize upper and lower bounds to the solution of this problem, which are empirically shown to be very close. The lower bound is obtained through a convex relaxation of the original discrete optimization problem, and yields a closed-form expression. The upper bound is computed via a greedy algorithm for selecting the mixing proportions.

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