Encrypted federated learning for secure decentralized collaboration in cancer image analysis

Daniel Truhn(Heidelberg University), Soroosh Tayebi Arasteh(RWTH Aachen University), Oliver Lester Saldanha(University Hospital Carl Gustav Carus), Gustav Müller‐Franzes(RWTH Aachen University), Firas Khader(RWTH Aachen University), Philip Quirke(University of Leeds), Nicholas P. West(University of Leeds), Richard Gray(University of Oxford), Gordon G.A. Hutchins(University of Leeds), Jacqueline A. James(Queen's University Belfast), Maurice B. Loughrey(Queen's University Belfast), Manuel Salto‐Tellez(Queen's University Belfast), Hermann Brenner(German Cancer Research Center), Alexander Brobeil(Heidelberg University), Tanwei Yuan(Universität Hamburg), Jenny Chang‐Claude(Universität Hamburg), Michael Hoffmeister(German Cancer Research Center), Sebastian Foersch(Johannes Gutenberg University Mainz), Tianyu Han(RWTH Aachen University), Sebastian Keil(RWTH Aachen University), Maximilian Schulze‐Hagen(RWTH Aachen University), Peter Isfort(RWTH Aachen University), Philipp Bruners(RWTH Aachen University), Georgios Kaissis(TUM Klinikum), Christiane Kühl(RWTH Aachen University), Sven Nebelung(RWTH Aachen University), Jakob Nikolas Kather(University of Leeds)
Medical Image Analysis
December 7, 2023
Cited by 80Open Access
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Abstract

Artificial intelligence (AI) has a multitude of applications in cancer research and oncology. However, the training of AI systems is impeded by the limited availability of large datasets due to data protection requirements and other regulatory obstacles. Federated and swarm learning represent possible solutions to this problem by collaboratively training AI models while avoiding data transfer. However, in these decentralized methods, weight updates are still transferred to the aggregation server for merging the models. This leaves the possibility for a breach of data privacy, for example by model inversion or membership inference attacks by untrusted servers. Somewhat-homomorphically-encrypted federated learning (SHEFL) is a solution to this problem because only encrypted weights are transferred, and model updates are performed in the encrypted space. Here, we demonstrate the first successful implementation of SHEFL in a range of clinically relevant tasks in cancer image analysis on multicentric datasets in radiology and histopathology. We show that SHEFL enables the training of AI models which outperform locally trained models and perform on par with models which are centrally trained. In the future, SHEFL can enable multiple institutions to co-train AI models without forsaking data governance and without ever transmitting any decryptable data to untrusted servers.


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