SecUre Privacy-presERving Medical Image CompRessiOn (SUPERMICRO)

Shuang Wang, Xiaoqian Jiang, L. Ohno-Machado, Lijuan Cui, Samuel Cheng
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引用次数: 3

Abstract

The privacy and security of biomedical data are important. Ideally, biomedical data should be kept in a secure manner (i.e. encrypted). With the increasing deployment of the electronic health records, it is critical to make protected health information (PHI) available securely to private and public healthcare providers through the National Health Information Network (NHIN). Efficient transmission and storage of these large encrypted biomedical data becomes an important concern. An intuitive way is to compress the encrypted biomedical data directly. Unfortunately, traditional compression algorithms (removing redundancy through exploiting the structure of data) fail to handle encrypted data. The reason is that encrypted data appear to be random and lack the structure in the original data. The "best" practice has been compressing the data before encryption, however, this is not appropriate for privacy related scenarios (e.g., biomedical application), where one wants to process data while keeping them encrypted and safe. In this paper, we develop a Secure Privacy-presERving Medical Image CompRessiOn (SUPERMICRO) framework based on distributed source coding (DSC), which makes the compression of the encrypted data possible without compromising security and compression efficiency. Our approach guarantees the data transmission and storage in a privacy-preserving manner. We tested our proposed framework on two CT image sequences and compared it with the state-of-the-art JPEG 2000 lossless compression. Experimental results demonstrated that the SUPERMICRO framework provides enhanced security and privacy protection, as well as high compression performance.
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安全保护隐私的医学图像压缩(SUPERMICRO)
生物医学数据的隐私和安全非常重要。理想情况下,生物医学数据应以安全的方式保存(即加密)。随着越来越多地部署电子健康记录,通过国家健康信息网络(NHIN)向私人和公共医疗保健提供者安全地提供受保护的健康信息(PHI)至关重要。这些大型加密生物医学数据的有效传输和存储成为一个重要的问题。一种直观的方法是直接压缩加密后的生物医学数据。不幸的是,传统的压缩算法(通过利用数据结构去除冗余)无法处理加密数据。原因是加密后的数据看起来是随机的,缺乏原始数据的结构。“最佳”实践是在加密之前压缩数据,然而,这并不适合与隐私相关的场景(例如,生物医学应用程序),在这些场景中,人们希望在处理数据的同时保持数据的加密和安全。本文提出了一种基于分布式源编码(DSC)的安全保密医学图像压缩(SUPERMICRO)框架,该框架可以在不影响安全性和压缩效率的情况下对加密数据进行压缩。我们的方法保证了数据传输和存储的隐私保护方式。我们在两个CT图像序列上测试了我们提出的框架,并将其与最先进的JPEG 2000无损压缩进行了比较。实验结果表明,SUPERMICRO框架提供了增强的安全性和隐私保护,以及高压缩性能。
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