Shafique Arslan, Naqvi Syed Ali Atif, Raza Ali, Ghalaii Masoud, Papanastasiou Panagiotis, McCann Julie, Abbasi Qammer H, Imran Muhammad Ali
School of Electronic and Nanoscale Engineering, University of Glasgow, Glasgow, G12 8QQ, UK.
School of Electronic and Electrical Engineering, University of Leeds, Leeds, LS2 9JT, UK.
Sci Rep. 2024 Dec 28;14(1):31054. doi: 10.1038/s41598-024-82256-3.
In the era of the Internet of Things (IoT), the transmission of medical reports in the form of scan images for collaborative diagnosis is vital for any telemedicine network. In this context, ensuring secure transmission and communication is necessary to protect medical data to maintain privacy. To address such privacy concerns and secure medical images against cyberattacks, this research presents a robust hybrid encryption framework that integrates quantum, and classical cryptographic methods. The proposed framework not only secure medical data against cyber threats but also protects the secret security keys. Initially, a Quantum Key Distribution (QKD) is employed to generate a shared key, which is then used to secure the symmetric keys via One-Time Pad (OTP) encryption. Next, bit-planes are extracted from each color component. The rows and columns of the extracted bit-planes are scrambled using random sequences which are generated by a 6D hyperchaotic Chen system and the Ikeda map. To further increase confusion in the original data, multiple-step pixel scrambling operations such as pixel shuffling, pixel value shuffling, and rotational and flipping operations are implemented. After the confusion phase, a combination of affine transformations with non-linear functions, Discrete Cosine Transform (DCT) with complex modulation, Discrete Wavelet Transform (DWT) with random phase modulation, bilinear transformation, and nonlinear polynomial mapping are employed to create diffusion in the scrambled components. These multiple encryption operations aim to maximize randomness in the final ciphertext image. Additionally, to reduce computational complexity, only the Most Significant Bit-Planes (MSBs) are encrypted, as they contain more than 94% of the plaintext information. Several experimental results and analyses are conducted to assess the proposed encryption framework, including entropy analysis, key sensitivity analysis, correlation analysis lossless analysis, and histogram analysis. Furthermore, the framework is tested against various cyberattacks such as brute-force attacks, clipping attacks, and noise attacks on the ciphertext images, to demonstrate its resilience against such threats.
在物联网(IoT)时代,以扫描图像形式传输医学报告用于协作诊断对任何远程医疗网络都至关重要。在此背景下,确保安全传输和通信对于保护医疗数据以维护隐私是必要的。为了解决此类隐私问题并保护医学图像免受网络攻击,本研究提出了一种强大的混合加密框架,该框架集成了量子和经典加密方法。所提出的框架不仅能保护医疗数据免受网络威胁,还能保护秘密安全密钥。首先,采用量子密钥分发(QKD)生成共享密钥,然后通过一次性密码本(OTP)加密来保护对称密钥。接下来,从每个颜色分量中提取位平面。使用由6D超混沌陈氏系统和池田映射生成的随机序列对提取的位平面的行和列进行置乱。为了进一步增加原始数据中的混淆度,实施了多步像素置乱操作,如像素洗牌、像素值洗牌以及旋转和翻转操作。在混淆阶段之后,采用仿射变换与非线性函数相结合、离散余弦变换(DCT)与复调制相结合、离散小波变换(DWT)与随机相位调制相结合、双线性变换以及非线性多项式映射,在置乱后的分量中产生扩散。这些多重加密操作旨在使最终密文图像中的随机性最大化。此外,为了降低计算复杂度,仅对最高有效位平面(MSB)进行加密,因为它们包含超过94%的明文信息。进行了多项实验结果和分析以评估所提出的加密框架,包括熵分析、密钥敏感性分析、相关性分析、无损分析和直方图分析。此外,针对密文图像对该框架进行了各种网络攻击测试,如暴力攻击、裁剪攻击和噪声攻击,以证明其对此类威胁的抵御能力。