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Privacy-preserving techniques for decentralized and secure machine learning in drug discovery

Aljŏs̆a Smajíć, Melanie Grandits, Gerhard F. Ecker

2023Drug Discovery Today16 citationsDOIOpen Access PDF

Abstract

Data availability, data security, and privacy concerns often hamper optimal performance efficiency of machine learning (ML) techniques. Therefore, novel techniques for the utilization of private/sensitive data in the field of drug discovery have been proposed for ML model-building tasks. Some examples of the different techniques are secure multiparty computation, distributed deep learning, homomorphic encryption, blockchain-based peer-to-peer networking, differential privacy, and federated learning, as well as combinations of such techniques. In this paper, we present an overview of these techniques for decentralized ML to illustrate its benefits and drawbacks in the field of drug discovery.

Topics & Concepts

Homomorphic encryptionComputer scienceDifferential privacyField (mathematics)EncryptionDrug discoveryFederated learningInformation privacyMachine learningData scienceDistributed computingData miningComputer securityBioinformaticsBiologyPure mathematicsMathematicsPrivacy-Preserving Technologies in DataCryptography and Data SecurityBlockchain Technology Applications and Security
Privacy-preserving techniques for decentralized and secure machine learning in drug discovery | Litcius