A Faster Privacy-Preserving Medical Image Diagnosis Scheme with Machine Learning.

Jiuhong Ran, Dong Li
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Abstract

Convolutional neural networks (CNNs) have become indispensable to medical image diagnosis research, enabling the automated differentiation of diseased images from extensive medical image datasets. Due to their efficacy, these methods raise significant privacy concerns regarding patient images and diagnostic models. To address these issues, some researchers have explored privacy-preserving medical image diagnosis schemes using fully homomorphic encryption (FHE). However, these schemes often support and are suitable for only a limited number of non-linear layers, resulting in less effective diagnoses and potentially inaccurate results. To improve upon these limitations, we propose and design a robust privacy-preserving medical diagnosis scheme that maintains both diagnostic accuracy and effectiveness at the same time. First, we utilize FHE to encrypt both the image and the model to safeguard the confidentiality of medical data and the model itself. Then, we introduce batch normalization to facilitate the use of multiple non-linear layers in deep convolutional neural networks within a ciphertext context. Furthermore, we employ a 2-degree polynomial function to approximate the ReLU activation function effectively. Finally, we introduce two innovative network depth optimization techniques to solve the issue of CNN depth insufficiency. Both theoretical and empirical analyses confirm that our scheme not only protects the confidentiality of medical images and diagnostic models but also ensures practicality and efficiency.

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一种基于机器学习的快速隐私医学图像诊断方案。
卷积神经网络(cnn)已经成为医学图像诊断研究中不可或缺的一部分,它能够从广泛的医学图像数据集中自动区分病变图像。由于其有效性,这些方法引起了关于患者图像和诊断模型的重大隐私问题。为了解决这些问题,一些研究人员探索了使用完全同态加密(FHE)保护隐私的医学图像诊断方案。然而,这些方案通常只支持和适用于有限数量的非线性层,导致较低的诊断效率和潜在的不准确结果。为了改进这些限制,我们提出并设计了一个健壮的隐私保护医疗诊断方案,同时保持诊断的准确性和有效性。首先,我们利用FHE对图像和模型进行加密,以保证医疗数据和模型本身的机密性。然后,我们引入了批归一化,以促进在密文环境下深度卷积神经网络中使用多个非线性层。此外,我们使用一个2度多项式函数来有效地近似ReLU激活函数。最后,我们介绍了两种创新的网络深度优化技术来解决CNN深度不足的问题。理论分析和实证分析表明,该方案既保护了医学图像和诊断模型的机密性,又保证了实用性和高效性。
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