FedViTBloc: Secure and privacy-enhanced medical image analysis with federated vision transformer and blockchain

IF 3 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Gabriel Chukwunonso Amaizu , Akshita Maradapu Vera Venkata Sai , Sanjay Bhardwaj , Dong-Seong Kim , Madhuri Siddula , Yingshu Li
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引用次数: 0

Abstract

The increasing prevalence of cancer necessitates advanced methodologies for early detection and diagnosis. Early intervention is crucial for improving patient outcomes and reducing the overall burden on healthcare systems. Traditional centralized methods of medical image analysis pose significant risks to patient privacy and data security, as they require the aggregation of sensitive information in a single location. Furthermore, these methods often suffer from limitations related to data diversity and scalability, hindering the development of universally robust diagnostic models. Recent advancements in machine learning, particularly deep learning, have shown promise in enhancing medical image analysis. However, the need to access large and diverse datasets for training these models introduces challenges in maintaining patient confidentiality and adhering to strict data protection regulations. This paper introduces FedViTBloc, a secure and privacy-enhanced framework for medical image analysis utilizing Federated Learning (FL) combined with Vision Transformers (ViT) and blockchain technology. The proposed system ensures patient data privacy and security through fully homomorphic encryption and differential privacy techniques. By employing a decentralized FL approach, multiple medical institutions can collaboratively train a robust deep-learning model without sharing raw data. Blockchain integration further enhances the security and trustworthiness of the FL process by managing client registration and ensuring secure onboarding of participants. Experimental results demonstrate the effectiveness of FedViTBloc in medical image analysis while maintaining stringent privacy standards, achieving 67% accuracy and reducing loss below 2 across 10 clients, ensuring scalability and robustness.
FedViTBloc:使用联合视觉变压器和区块链的安全和隐私增强的医学图像分析
癌症的日益流行需要先进的方法进行早期发现和诊断。早期干预对于改善患者预后和减轻卫生保健系统的总体负担至关重要。传统的集中式医学图像分析方法需要将敏感信息聚集在一个位置,这对患者隐私和数据安全构成了重大风险。此外,这些方法经常受到与数据多样性和可扩展性相关的限制,阻碍了普遍健壮的诊断模型的发展。机器学习的最新进展,特别是深度学习,在增强医学图像分析方面显示出了希望。然而,需要访问大型和多样化的数据集来训练这些模型,这在维护患者机密性和遵守严格的数据保护法规方面带来了挑战。本文介绍了FedViTBloc,这是一个利用联邦学习(FL)结合视觉变形器(ViT)和区块链技术的安全且增强隐私的医学图像分析框架。该系统通过全同态加密和差分隐私技术确保患者数据的隐私和安全。通过采用分散的FL方法,多个医疗机构可以在不共享原始数据的情况下协作训练强大的深度学习模型。区块链集成通过管理客户端注册和确保参与者的安全入职,进一步增强了FL过程的安全性和可信度。实验结果证明了FedViTBloc在医学图像分析中的有效性,同时保持严格的隐私标准,达到67%的准确率,并将10个客户端的损失降低到2以下,确保了可扩展性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.70
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0.00%
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