Journal of Xidian University ›› 2023, Vol. 50 ›› Issue (5): 166-177.doi: 10.19665/j.issn1001-2400.20230202

• Cyberspace Security • Previous Articles     Next Articles

Federated learning scheme for privacy-preserving of medical data

WANG Bo1(),LI Hongtao2(),WANG Jie2(),GUO Yina1()   

  1. 1. School of Electronic Information Engineering,Taiyuan University of Science and Technology,Taiyuan 030024,China
    2. College of Mathematics and Computer Science,Shanxi Normal University,Taiyuan 030039,China
  • Received:2022-10-08 Online:2023-10-20 Published:2023-11-21
  • Contact: Yina GUO E-mail:mophiebo@126.com;lihongtao7758@163.com;wjlkt@163.com;zulibest@tyust.edu.cn

Abstract:

As an emerging training model with neural networks,federated learning has received widespread attention due to its ability to carry out model training on the premise of protecting user data privacy.However,since adversaries can track and derive participants’ privacy from the shared gradients,federated learning is still exposed to various security and privacy threats.Aiming at the privacy leakage problem of medical data in the process of federated learning,a secure and privacy-preserving medical data federated learning architecture is proposed based on Paillier homomorphic encryption technology (HEFLPS).First,the shared training model of the client is encrypted with Paillier homomorphic encryption technology to ensure the security and privacy of the training model,and a zero-knowledge proof identity authentication module is designed to ensure the credibility of the training members;second,the disconnected or unresponsive users are temporarily eliminated by constructing a message confirmation mechanism on the server side,which reduces the waiting time of the server and reduces the communication cost.Experimental results show that the proposed mechanism has high model accuracy,low communication delay and a certain scalability while achieving privacy protection.

Key words: federated learning, privacy-preserving techniques, homomorphic encryption, medical image

CLC Number: 

  • TN393