Sreedhar C, Mahesh Babu K, Kallam Suresh, Ghantasala G S Pradeep, Anthoniraj S, Kumarganesh S, Martin Sagayam K, Pandey Binay Kumar, Pandey Digvijay
Department of CSE, G. Pulla Reddy Engineering College, Kurnool, Andhra Pradesh, India.
Department of CSE, Ravindra College of Engineering for Women, Kurnool, AP, India.
Comput Biol Med. 2025 May;190:110063. doi: 10.1016/j.compbiomed.2025.110063. Epub 2025 Mar 28.
Providing security to the medical big data stored in healthcare cloud systems is the most exciting and demanding task in the present day. Many researchers use cryptographic techniques to protect big data against malicious users/attacks in cloud environments. Still, they face the problems of high complexity in operations, increased time consumption, storage overhead, and lack of efficiency. Hence, this paper aims to develop a new extensive data security framework for improving the reliability of healthcare systems. The main contribution of this work is to introduce a novel Cohesive Random-Hash based Security Model (CRHSM) for securing both user authentication and medical records. Here, the hospital environment is considered with the entities of patients, healthcare professionals, and hospital servers. In this environment, the registered entities can only participate in communication, including system initialization, registration, login, authentication, encryption, and decryption modules. First, the entities must register with the hospital server to obtain the smart card for further communications. Here, the Squirrel Search Optimization (SSO) technique generates the random number used for the registration phase. During the login and authentication module, the legitimacy of patients and healthcare professionals is validated based on the authentication parameters. Moreover, the medical records are encrypted before storing them in the cloud systems using an efficient Reformist Feistel Encryption (RFE) mechanism. Moreover, various evaluation parameters are considered for assessing the performance of the proposed model, and the evaluated values are compared with security approaches to validate the effectiveness of the proposed scheme.
为存储在医疗云系统中的医学大数据提供安全保障是当今最令人兴奋且极具挑战性的任务。许多研究人员使用加密技术来保护云环境中的大数据免受恶意用户/攻击。然而,他们面临操作复杂度高、时间消耗增加、存储开销大以及效率低下等问题。因此,本文旨在开发一种新的广泛数据安全框架,以提高医疗系统的可靠性。这项工作的主要贡献是引入一种新颖的基于凝聚随机哈希的安全模型(CRHSM),用于保护用户认证和医疗记录。在这里,医院环境中包含患者、医疗专业人员和医院服务器等实体。在这种环境下,已注册的实体才能参与通信,包括系统初始化、注册、登录、认证、加密和解密模块。首先,实体必须向医院服务器注册以获取智能卡,以便进行进一步通信。在这里,松鼠搜索优化(SSO)技术生成用于注册阶段的随机数。在登录和认证模块中,根据认证参数验证患者和医疗专业人员的合法性。此外,在使用高效的改良费斯太尔加密(RFE)机制将医疗记录存储到云系统之前对其进行加密。此外,考虑了各种评估参数来评估所提出模型的性能,并将评估值与安全方法进行比较,以验证所提出方案的有效性。