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基于联邦学习的稳健零水印方案在保障医疗保健数据安全中的应用。

Application of Robust Zero-Watermarking Scheme Based on Federated Learning for Securing the Healthcare Data.

出版信息

IEEE J Biomed Health Inform. 2023 Feb;27(2):804-813. doi: 10.1109/JBHI.2021.3123936. Epub 2023 Feb 3.

DOI:10.1109/JBHI.2021.3123936
PMID:34714760
Abstract

The privacy protection and data security problems existing in the healthcare framework based on the Internet of Medical Things (IoMT) have always attracted much attention and need to be solved urgently. In the teledermatology healthcare framework, the smartphone can acquire dermatology medical images for remote diagnosis. The dermatology medical image is vulnerable to attacks during transmission, resulting in malicious tampering or privacy data disclosure. Therefore, there is an urgent need for a watermarking scheme that doesn't tamper with the dermatology medical image and doesn't disclose the dermatology healthcare data. Federated learning is a distributed machine learning framework with privacy protection and secure encryption technology. Therefore, this paper presents a robust zero-watermarking scheme based on federated learning to solve the privacy and security issues of the teledermatology healthcare framework. This scheme trains the sparse autoencoder network by federated learning. The trained sparse autoencoder network is applied to extract image features from the dermatology medical image. Image features are undergone to two-dimensional Discrete Cosine Transform (2D-DCT) in order to select low-frequency transform coefficients for creating zero-watermarking. Experimental results show that the proposed scheme has more robustness to the conventional attack and geometric attack and achieves superior performance when compared with other zero-watermarking schemes. The proposed scheme is suitable for the specific requirements of medical images, which neither changes the important information contained in medical images nor divulges privacy data.

摘要

基于物联网(IoMT)的医疗保健框架中存在的隐私保护和数据安全问题一直备受关注,亟待解决。在远程医疗保健框架中,智能手机可以获取皮肤病学医学图像进行远程诊断。皮肤病学医学图像在传输过程中容易受到攻击,导致恶意篡改或隐私数据泄露。因此,需要有一种不篡改皮肤病学医学图像且不泄露皮肤病学医疗数据的水印方案。联邦学习是一种具有隐私保护和安全加密技术的分布式机器学习框架。因此,本文提出了一种基于联邦学习的鲁棒零水印方案,以解决远程医疗保健框架的隐私和安全问题。该方案通过联邦学习训练稀疏自编码器网络。训练好的稀疏自编码器网络应用于从皮肤病学医学图像中提取图像特征。对图像特征进行二维离散余弦变换(2D-DCT),以便为创建零水印选择低频变换系数。实验结果表明,该方案对常规攻击和几何攻击具有更强的鲁棒性,并且在与其他零水印方案的比较中表现出更好的性能。该方案适用于医疗图像的特定要求,既不会改变医学图像中包含的重要信息,也不会泄露隐私数据。

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