DOI QR코드

DOI QR Code

The Scalability and the Strategy for EMR Database Encryption Techniques

  • Shin, David (Computer Science Discipline, Faculty of Science and Technology (FaST)) ;
  • Sahama, Tony (Computer Science Discipline, Faculty of Science and Technology (FaST)) ;
  • Kim, Steve Jung-Tae (Dept. of Electronic Eng., Mokwon University) ;
  • Kim, Ji-Hong (Dept. of Info. & Com. Eng., Semyung University)
  • 투고 : 2011.07.24
  • 심사 : 2011.08.11
  • 발행 : 2011.10.31

초록

EMR(Electronic Medical Record) is an emerging technology that is highly-blended between non-IT and IT area. One of methodology to link non-IT and IT area is to construct databases. Nowadays, it supports before and after-treatment for patients and should satisfy all stakeholders such as practitioners, nurses, researchers, administrators and financial department and so on. In accordance with the database maintenance, DAS (Data as Service) model is one solution for outsourcing. However, there are some scalability and strategy issues when we need to plan to use DAS model properly. We constructed three kinds of databases such as plain-text, MS built-in encryption which is in-house model and custom AES (Advanced Encryption Standard) - DAS model scaling from 5K to 2560K records. To perform custom AES-DAS better, we also devised Bucket Index using Bloom Filter. The simulation showed the response times arithmetically increased in the beginning but after a certain threshold, exponentially increased in the end. In conclusion, if the database model is close to in-house model, then vendor technology is a good way to perform and get query response times in a consistent manner. If the model is DAS model, it is easy to outsource the database, however, some technique like Bucket Index enhances its utilization. To get faster query response times, designing database such as consideration of the field type is also important. This study suggests cloud computing would be a next DAS model to satisfy the scalability and the security issues.

키워드

참고문헌

  1. Grimson J, Grimson, W, and Hasselbring W. The SI Challenge in Health Care. Communications of the ACM 2009: 43(6): 49-55.
  2. Wei, Z., et al. A tuple-oriented bucket paritition index with minimum weighted mean of interferential numbers for DAS models. in Computer and Automation Engineering (ICCAE), 2010 The 2nd International Conference on. 2010.
  3. Zhong, M., et al., Optimizing data popularity conscious bloom filters, in Proceedings of the twenty-seventh ACM symposium on Principles of distributed computing. 2008, ACM: Toronto, Canada. p. 355-364.
  4. Essin, D.J. and T.L. Lincoln,Healthcare information architecture: elements of a new paradigm, in Proceedings of the 1994 workshop on New security paradigms. 1994, IEEE Compuer Society Press: Little Compton, Rhode Island, United States. p. 32-41.