End-to-end privacy preserving deep learning on multi-institutional medical imaging

被引:0
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作者
Georgios Kaissis
Alexander Ziller
Jonathan Passerat-Palmbach
Théo Ryffel
Dmitrii Usynin
Andrew Trask
Ionésio Lima
Jason Mancuso
Friederike Jungmann
Marc-Matthias Steinborn
Andreas Saleh
Marcus Makowski
Daniel Rueckert
Rickmer Braren
机构
[1] Institute of Diagnostic and Interventional Radiology,
[2] Technical University of Munich,undefined
[3] Artificial Intelligence in Medicine and Healthcare,undefined
[4] Technical University of Munich,undefined
[5] Department of Computing,undefined
[6] Imperial College London,undefined
[7] OpenMined,undefined
[8] ConsenSys Health,undefined
[9] INRIA,undefined
[10] ENS,undefined
[11] PSL University,undefined
[12] Arkhn,undefined
[13] Centre for the Governance of AI,undefined
[14] University of Oxford,undefined
[15] Universidade Federal de Campina Grande,undefined
[16] Cape Privacy,undefined
[17] München-Klinik Schwabing,undefined
[18] German Cancer Consortium (DKTK),undefined
[19] Partner Site Munich,undefined
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摘要
Using large, multi-national datasets for high-performance medical imaging AI systems requires innovation in privacy-preserving machine learning so models can train on sensitive data without requiring data transfer. Here we present PriMIA (Privacy-preserving Medical Image Analysis), a free, open-source software framework for differentially private, securely aggregated federated learning and encrypted inference on medical imaging data. We test PriMIA using a real-life case study in which an expert-level deep convolutional neural network classifies paediatric chest X-rays; the resulting model’s classification performance is on par with locally, non-securely trained models. We theoretically and empirically evaluate our framework’s performance and privacy guarantees, and demonstrate that the protections provided prevent the reconstruction of usable data by a gradient-based model inversion attack. Finally, we successfully employ the trained model in an end-to-end encrypted remote inference scenario using secure multi-party computation to prevent the disclosure of the data and the model.
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页码:473 / 484
页数:11
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