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Privacy-preserving Model Training for Disease Prediction Using Federated Learning with Differential Privacy

Amol Khanna, Vincent Schaffer, Gamze Gürsoy, Mark Gerstein

20222022 44th Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)27 citationsDOIOpen Access PDF

Abstract

Machine learning is playing an increasingly critical role in health science with its capability of inferring valuable information from high-dimensional data. More training data provides greater statistical power to generate better models that can help decision-making in healthcare. However, this often requires combining research and patient data across institutions and hospitals, which is not always possible due to privacy considerations. In this paper, we outline a simple federated learning algorithm implementing differential privacy to ensure privacy when training a machine learning model on data spread across different institutions. We tested our model by predicting breast cancer status from gene expression data. Our model achieves a similar level of accuracy and precision as a single-site non-private neural network model when we enforce privacy. This result suggests that our algorithm is an effective method of implementing differential privacy with federated learning, and clinical data scientists can use our general framework to produce differentially private models on federated datasets. Our framework is available at https://github.com/gersteinlab/idash20FL.

Topics & Concepts

Differential privacyComputer scienceMachine learningInformation privacyArtificial neural networkData modelingFederated learningArtificial intelligenceData miningComputer securityDatabasePrivacy-Preserving Technologies in DataEthics in Clinical ResearchEthics and Social Impacts of AI
Privacy-preserving Model Training for Disease Prediction Using Federated Learning with Differential Privacy | Litcius