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Lightweight Multi-Class Support Vector Machine-Based Medical Diagnosis System with Privacy Preservation.

Sherif Abdelfattah1, Mohamed Baza2, Mohamed Mahmoud3

  • 1Department of Computer Science and Information Systems, Bradley University, Peoria, IL 61625, USA.

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|November 25, 2023
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Summary
This summary is machine-generated.

This study introduces a novel privacy-preserving method for support vector machine (SVM) medical diagnosis systems. The approach enhances data security and model protection on cloud servers while maintaining high accuracy and efficiency.

Keywords:
cloud securitymedical diagnosismulticlassificationprivacy preservationsupport vector machine (SVM)

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Area of Science:

  • Computer Science
  • Medical Informatics
  • Cybersecurity

Background:

  • Machine learning, particularly support vector machines (SVM), is crucial for smart healthcare and medical diagnosis.
  • Outsourcing SVM models to cloud servers raises significant concerns regarding patient data privacy and model intellectual property protection.
  • Existing privacy-preserving methods for SVM diagnosis systems often incur high computational/communication costs and may not fully protect classification results or model IP.

Purpose of the Study:

  • To address the limitations of current privacy-preserving techniques in multi-class SVM medical diagnosis.
  • To develop a novel framework that safeguards patient data and preserves the intellectual property of diagnosis models.
  • To enhance the security and privacy of machine learning models in cloud-based healthcare services.

Main Methods:

  • Modified an inner product encryption cryptosystem and integrated it into a multi-class SVM medical diagnosis framework.
  • Compared the efficiency of the proposed cryptosystem against Paillier and multi-party computation cryptography.
  • Conducted comprehensive analyses and experiments to evaluate performance and security.

Main Results:

  • The proposed cryptosystem demonstrates greater efficiency compared to existing methods like Paillier and multi-party computation.
  • The framework successfully achieves security and privacy objectives for medical diagnosis.
  • High classification accuracy is maintained with minimized communication and computational overhead.

Conclusions:

  • The developed privacy-preserving framework effectively protects sensitive medical data and intellectual property in SVM-based diagnosis systems.
  • The approach offers a more efficient and secure solution for cloud-based machine learning applications.
  • The methodology is adaptable for other privacy-sensitive machine learning applications beyond healthcare.