EHR-protect:基于数据转换的隐写框架,用于保护电子健康记录

Adifa Widyadhani Chanda D'Layla , Ntivuguruzwa Jean De La Croix , Tohari Ahmad , Fengling Han
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引用次数: 0

摘要

医疗保健系统的日益数字化和向电子健康记录(EHRs)的转变带来了重大的安全挑战,包括未经授权的访问、数据泄露和机密性风险。例如,利益攸关方之间快速交换敏感的卫生数据突出表明需要建立安全的数据共享机制。为了应对这些挑战,隐写术成为一种关键的解决方案,它将敏感信息嵌入到其他数据形式中,减少未经授权访问的可能性,并确保患者的机密性。本研究提出了电子病历保护,一个创新的隐写框架,旨在通过将电子病历嵌入医学图像中来保护电子病历。与一般用途的图像不同,医学图像作为诊断工具很容易失真。EHR- protect使用对数像素变换和自适应技术,如差分扩展和EHR幅度降低,以最大限度地减少载体医学图像的失真。EHR-Protect的结果表明,它有效地将ehr安全地嵌入到医学图像中,失真最小。该方法实现了91.90 dB的峰值信噪比(PSNR)和1的完美结构相似指数(SSIM),保证了图像质量。不同封面图像的MSE值显示出最小的增加,即使秘密数据有效载荷从10千兆位增加到100千兆位,这表明失真受到控制。结果证实,EHR- protect优于现有的方法,提供了一个强大的解决方案,在不损害医疗图像完整性的情况下保护EHR数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EHR-protect: A steganographic framework based on data-transformation to protect electronic health records
The increasing digitization of healthcare systems and the shift to Electronic Health Records (EHRs) have introduced critical security challenges, including unauthorized access, data breaches, and confidentiality risks. For example, the rapid exchange of sensitive health data between stakeholders highlights the need for secure data-sharing mechanisms. To address these challenges, steganography emerges as a critical solution by embedding sensitive information within other data forms, reducing the likelihood of unauthorized access and ensuring patient confidentiality. This study presents EHR-Protect, an innovative steganographic framework designed to secure EHRs by embedding them within medical images. Unlike general-purpose images, medical images are susceptible to distortions as they serve as diagnostic tools. EHR-Protect uses logarithmic pixel transformation and adaptive techniques such as difference expansion and EHR magnitude reduction to minimize distortions in carrier medical images. The results of EHR-Protect demonstrate its effectiveness in securely embedding EHRs into medical images with minimal distortions. The proposed method achieves a high Peak Signal-to-Noise Ratio (PSNR) of 91.90 dB and a perfect Structural Similarity Index Measure (SSIM) of 1, ensuring image quality is maintained. MSE values across different cover images show minimal increases, even as secret data payloads rise from 10 to 100 kilobits, indicating controlled distortion. The results confirm that EHR-Protect outperforms existing methods, offering a robust solution for securing the EHR data without compromising medical image integrity.
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