安全医疗数据存储系统的优化深度学习混合Logistic分段混沌映射

Anusha Ampavathi, Pradeepini Gera, T. V. Saradhi
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引用次数: 0

摘要

背景:近年来,医疗技术产生了大量的报告,如扫描的医疗图像和电子患者账户。这些报告必须存储在高度安全的平台中,以供进一步参考。传统的存储系统已经无法满足海量数据的存储需求。此外,它在提供医疗服务时难以提供安全存储和隐私保护。保障个人病历的安全存储和充分利用,是广大人民群众在实践中需要解决的问题。基于物联网的医疗保健系统增强了对患者和医生利用监测的健康数据准确诊断患者的支持。然而,当存储在云中的健康数据信息因外部攻击或停电而丢失或被黑客入侵时,医生会对患者的疾病做出不恰当的决定。因此,验证存储在云上的患者健康数据信息的真实性是非常必要的。假设:本任务的主要意图是采用一种新的基于混沌的医疗保健医疗数据存储系统,用于存储高保护的医疗数据(医学图像)。方法:首先,输入的医学图像是从不同模式的基准数据集中收集的。采用二维逻辑混沌图(2DLCM)和分段线性混沌图(PWLCM)(即混合逻辑分段混沌图(HLPWCM))对采集到的医学图像进行加密。提出了一种基于最佳适应度系数向量改进斑点鬣狗优化器(BF-CSHO)的优化递归神经网络(O-RNN)用于密钥生成。基于o - rnn的密钥生成利用提取的一阶和二阶统计特征等图像特征,将目标作为唯一的加密密钥获取,用于医疗数据的安全保护。同样的BF-CSHO被用于改进RNN的训练算法(权值优化),以最小化加密图像与原始图像之间的平均绝对误差(MAE)。结果:从结果分析来看,考虑图像大小[公式:见文],建议的bf - cshon - rnn - hlpwcm的计算效率分别为10.4%、8.5%、3.97%、0.62%、3.88%、2.40%和7.82%,优于LCM、PWLCM、LPWCM、PSO-RNN-HLPWCM、JA-RNN-HLPWCM、GWO-RNN-HLPWCM和shoo - rnn - hlpwcm。结论:因此,仿真结果表明,由于存储的医疗数据的安全性,所提出的方法是有效的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Deep Learning-Enabled Hybrid Logistic Piece-Wise Chaotic Map for Secured Medical Data Storage System
Background: In recent times, medical technology has generated massive reports such as scanned medical images and electronic patient accounts. These reports are necessary to be stored in the highly secured platform for further reference. Traditional storage systems are infeasible for storing massive data. In addition, it suffers to provide secure storage and privacy protection at the time of medical services. It is necessary to provide secure storage and full utilization of personal medical records for the common people in practice. The healthcare system based on IoT enhances the support for the patients and doctors in diagnosing the sufferers at an accurate time using the monitored health data. Yet, doctors make an inappropriate decision regarding the sufferer’s sickness when the information regarding health data saved in the cloud gets lost or hacked owing to an external attack or also power failure. Hence, it is highly essential for verifying the truthfulness of the sufferer’s information regarding health data saved on the cloud.Hypothesis: The major intention of this task is to adopt a new chaotic-based healthcare medical data storage system for storing medical data (medical images) with high protection. Methodology: Initially, the input medical images are gathered from the benchmark datasets concerning different modalities. The collected medical images are enciphered by developing Hybrid Chaotic Map by adapting the 2D-Logistic Chaotic Map (2DLCM), and Piece-Wise Linear Chaotic Map (PWLCM) referred to as Hybrid Logistic Piece-Wise Chaotic Map (HLPWCM). An Optimized Recurrent Neural Network (O-RNN) is proposed for key generation using Best Fitness-based Coefficient vector improved Spotted Hyena Optimizer (BF-CSHO). The O-RNN-based key generation utilizes the extracted image features like first and second-order statistical features and the targets are acquired as a unique encrypted key, which is used for securing the medical data. The same BF-CSHO is used for improving the training algorithm (weight optimization) of RNN to minimize the Mean Absolute Error (MAE) between the cipher (encrypted) images and original images. Results: From the result analysis, the suggested BF-CSHO-RNN-HLPWCM, by considering the image size at [Formula: see text] shows 10.4%, 8.5%, 3.97%, 0.62%, 3.88%, 2.40%, and 7.82% provides better computational efficiency than LCM, PWLCM, LPWCM, PSO-RNN-HLPWCM, JA-RNN-HLPWCM, GWO-RNN-HLPWCM, and SHO-RNN-HLPWCM, respectively. Conclusion: Thus, the simulation findings show the effective efficiency of the offered method owing to the security of the stored medical data.
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