CAML: Cryptographic-Based Cloud Security for Healthcare Data with Machine Learning Technique

Q3 Engineering
Chaithra M H, Vagdevi S
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引用次数: 0

Abstract

Background: The Cloud model is one of the most realistic frameworks with a vast range of social networking interactions. In medical data, security is a major constraint as it incorporates information about the patients. The cloud environment subjected to mobility and openness is exposed to security issues and limits authorization levels for data transmission. Objective: This paper aims to propose a security model for attack prevention within the healthcare environment. Method: The proposed Cryptographic Attribute-based Machine Learning (CAML) scheme incorporates three stages. Initially, the homomorphic encryption escrow is performed for secure data transmission in the cloud. Secondly, the information of the users is evaluated based on the consideration of users' authorization. The authorization process for the users is carried out with the attribute-based ECC technique. Finally, the ML model with the classifier is applied for the detection and classification of attacks in the medical network. Results: The detected attack is computed and processed with the CNN model. Simulation analysis is performed for the proposed CAML with conventional ANN, CNN, and RNN models. The simulation analysis of proposed CAML achieves a higher accuracy of 0.96 while conventional SVM, RF, and DT achieve an accuracy of 0.82, 0.89 and 0.93, respectively. Conclusion: Conclusion: With the analysis, it is concluded that the proposed CAML model achieves higher classification accuracy for attack detection and prevention in the cloud computing environment.
CAML:基于加密的医疗数据云安全与机器学习技术
背景:云模型是最现实的框架之一,具有广泛的社交网络交互。在医疗数据中,安全性是一个主要的制约因素,因为它包含有关患者的信息。具有移动性和开放性的云环境面临安全问题,并限制数据传输的授权级别。目的:本文旨在提出一种在医疗保健环境中用于攻击预防的安全模型。方法:提出的基于密码属性的机器学习(CAML)方案包含三个阶段。最初,同态加密托管是为了云中的安全数据传输而执行的。其次,在考虑用户授权的基础上对用户信息进行评估。用户的授权过程采用基于属性的ECC技术。最后,将带有分类器的ML模型应用于医疗网络中的攻击检测和分类。结果:利用CNN模型对检测到的攻击进行计算和处理。采用传统的ANN、CNN和RNN模型对所提出的CAML进行了仿真分析。本文提出的CAML的仿真分析精度为0.96,而传统的SVM、RF和DT的精度分别为0.82、0.89和0.93。结论:通过分析可知,本文提出的CAML模型对于云计算环境下的攻击检测和防御具有较高的分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Recent Patents on Engineering
Recent Patents on Engineering Engineering-Engineering (all)
CiteScore
1.40
自引率
0.00%
发文量
100
期刊介绍: Recent Patents on Engineering publishes review articles by experts on recent patents in the major fields of engineering. A selection of important and recent patents on engineering is also included in the journal. The journal is essential reading for all researchers involved in engineering sciences.
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