Efficient differentially private learning improves drug sensitivity prediction
Antti Honkela, Mrinal Das, Arttu Nieminen, Onur Dikmen, Samuel, Kaski

TL;DR
This paper introduces a new robust private regression method that significantly improves drug sensitivity prediction under differential privacy, even with moderate-sized genomic datasets, advancing personalized medicine.
Contribution
The authors develop a novel private regression technique that is asymptotically consistent and efficient, enhancing predictive accuracy while maintaining strong privacy guarantees.
Findings
Significant accuracy improvements in private drug sensitivity prediction.
Method performs well on finite, moderate-sized genomic datasets.
Proven asymptotic consistency and efficiency of the privacy-preserving approach.
Abstract
Users of a personalised recommendation system face a dilemma: recommendations can be improved by learning from data, but only if the other users are willing to share their private information. Good personalised predictions are vitally important in precision medicine, but genomic information on which the predictions are based is also particularly sensitive, as it directly identifies the patients and hence cannot easily be anonymised. Differential privacy has emerged as a potentially promising solution: privacy is considered sufficient if presence of individual patients cannot be distinguished. However, differentially private learning with current methods does not improve predictions with feasible data sizes and dimensionalities. Here we show that useful predictors can be learned under powerful differential privacy guarantees, and even from moderately-sized data sets, by demonstrating…
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