Mohsin A H, Zaidan A A, Zaidan B B, Mohammed K I, Albahri O S, Albahri A S, Alsalem M A
Department of Computing, Universiti Pendidikan Sultan Idris, Tanjong Malim, Perak Malaysia.
Republic of Iraq-Presidency of Ministries - Establishment of Martyrs, Baghdad, Iraq.
Multimed Tools Appl. 2021;80(9):14137-14161. doi: 10.1007/s11042-020-10284-y. Epub 2021 Jan 22.
Secure updating and sharing for large amounts of healthcare information (such as medical data on coronavirus disease 2019 [COVID-19]) in efficient and secure transmission are important but challenging in communication channels amongst hospitals. In particular, in addressing the above challenges, two issues are faced, namely, those related to confidentiality and integrity of their health data and to network failure that may cause concerns about data availability. To the authors' knowledge, no study provides secure updating and sharing solution for large amounts of healthcare information in communication channels amongst hospitals. Therefore, this study proposes and discusses a novel steganography-based blockchain method in the spatial domain as a solution. The novelty of the proposed method is the removal and addition of new particles in the particle swarm optimisation (PSO) algorithm. In addition, hash function can hide secret medical COVID-19 data in hospital databases whilst providing confidentiality with high embedding capacity and high image quality. Moreover, stego images with hash data and blockchain technology are used in updating and sharing medical COVID-19 data between hospitals in the network to improve the level of confidentiality and protect the integrity of medical COVID-19 data in grey-scale images, achieve data availability if any connection failure occurs in a single point of the network and eliminate the central point (third party) in the network during transmission. The proposed method is discussed in three stages. Firstly, the pre-hiding stage estimates the embedding capacity of each host image. Secondly, the secret COVID-19 data hiding stage uses PSO algorithm and hash function. Thirdly, the transmission stage transfers the stego images based on blockchain technology and updates all nodes (hospitals) in the network. As proof of concept for the case study, the authors adopted the latest COVID-19 research published in the Computer Methods and Programs in Biomedicine journal, which presents a rescue framework within hospitals for the storage and transfusion of the best convalescent plasma to the most critical patients with COVID-19 on the basis of biological requirements. The validation and evaluation of the proposed method are discussed.
在医院间的通信渠道中,高效安全地传输大量医疗信息(如2019冠状病毒病[COVID-19]的医疗数据)并进行安全更新和共享非常重要,但也具有挑战性。特别是在应对上述挑战时,面临两个问题,即与健康数据的保密性和完整性相关的问题,以及可能导致对数据可用性担忧的网络故障问题。据作者所知,尚无研究为医院间通信渠道中的大量医疗信息提供安全更新和共享解决方案。因此,本研究提出并讨论了一种基于空间域隐写术的新型区块链方法作为解决方案。所提方法的新颖之处在于在粒子群优化(PSO)算法中去除和添加新粒子。此外哈希函数可以将秘密的COVID-19医疗数据隐藏在医院数据库中,同时提供高嵌入容量和高图像质量的保密性。此外,带有哈希数据的隐秘图像和区块链技术用于网络中医院之间的COVID-19医疗数据更新和共享,以提高保密级别并保护灰度图像中COVID-19医疗数据的完整性,在网络单点出现任何连接故障时实现数据可用性,并在传输过程中消除网络中的中心点(第三方)。所提方法分三个阶段进行讨论。首先,预隐藏阶段估计每个宿主图像的嵌入容量。其次,秘密COVID-19数据隐藏阶段使用PSO算法和哈希函数。第三,传输阶段基于区块链技术传输隐秘图像并更新网络中的所有节点(医院)。作为案例研究的概念验证,作者采用了发表在《计算机方法与生物医学程序》杂志上的最新COVID-19研究,该研究提出了一个医院内部的救援框架,用于根据生物学要求将最佳康复期血浆储存和输注给最危重的COVID-19患者。文中还讨论了所提方法的验证和评估。