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Practical Privacy Preserving-Aided Disease Diagnosis with Multiclass SVM in an Outsourced Environment

Authors :
Ruoli Zhao
Yong Xie
Xingxing Jia
Hongyuan Wang
Neeraj Kumar
Source :
Security and Communication Networks. 2022:1-17
Publication Year :
2022
Publisher :
Hindawi Limited, 2022.

Abstract

With the rapid development of cloud computing and machine learning, using outsourced stored data and machine learning model for training and online-aided disease diagnosis has a great application prospect. However, training and diagnosis in an outsourced environment will cause serious challenges to the privacy of data. At present, many scholars have proposed privacy preserving machine learning schemes and made a lot of progress, but there are still great challenges in security and low client load. In this paper, we propose a complete privacy preserving outsourced multiclass SVM training and aided disease diagnosis scheme. We design some efficient basic operation algorithms for encrypted data. Then, we design an efficient and privacy preserving SVM model training protocol using the basic operation algorithms. We propose a secure maximum finding algorithm and secure comparison algorithm. Then, we design an efficient online-aided disease diagnosis scheme based on the BFV cryptosystem and blinding technique. Detailed security analysis proves that our scheme can protect the privacy of each participant. The experimental results illustrate that our proposed scheme significantly reduces the computation overhead compared with the previous similar works. Our proposed scheme completes most of the operations of aided disease diagnosis by the cloud servers and the client only needs to complete a small amount of encryption and decryption operations. The overall computation overhead is 0.175 s, and the efficiency of online aided disease diagnosis is improved by 85.4%. At the same time, our proposed scheme provides multiclass diagnosis results, which can better assist doctors in their treatment.

Details

ISSN :
19390122 and 19390114
Volume :
2022
Database :
OpenAIRE
Journal :
Security and Communication Networks
Accession number :
edsair.doi.dedup.....2feb89c55bc97101feefa9a099490aa7
Full Text :
https://doi.org/10.1155/2022/7751845