2024
DOI: 10.1126/sciadv.adh8601
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PPML-Omics: A privacy-preserving federated machine learning method protects patients’ privacy in omic data

Juexiao Zhou,
Siyuan Chen,
Yulian Wu
et al.

Abstract: Modern machine learning models toward various tasks with omic data analysis give rise to threats of privacy leakage of patients involved in those datasets. Here, we proposed a secure and privacy-preserving machine learning method (PPML-Omics) by designing a decentralized differential private federated learning algorithm. We applied PPML-Omics to analyze data from three sequencing technologies and addressed the privacy concern in three major tasks of omic data under three representative deep learning models. We… Show more

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Cited by 11 publications
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