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http://dx.doi.org/10.36498/kbigdt.2021.6.2.99

Research on Core Technology for Information Security Based on Artificial Intelligence  

Sang-Jun Lee (차의과학대학교 의학전문대학원 정보의학교실)
MIN KYUNG IL (차의과학대학교 의학전문대학원 정보의학교실)
Nam Sang Do (미소정보기술)
LIM JOON SUNG (엘티포 LT4 Co.,Ltd)
Keunhee Han (스마트의료보안포럼)
Hyun Wook Han (차의과학대학교 의학전문대학원 정보의학교실)
Publication Information
The Journal of Bigdata / v.6, no.2, 2021 , pp. 99-108 More about this Journal
Abstract
Recently, unexpected and more advanced cyber medical treat attacks are on the rise. However, in responding to various patterns of cyber medical threat attack, rule-based security methodologies such as physical blocking and replacement of medical devices have the limitations such as lack of the man-power and high cost. As a way to solve the problems, the medical community is also paying attention to artificial intelligence technology that enables security threat detection and prediction by self-learning the past abnormal behaviors. In this study, there has collecting and learning the medical information data from integrated Medical-Information-Systems of the medical center and introduce the research methodology which is to develop the AI-based Net-Working Behavior Adaptive Information data. By doing this study, we will introduce all technological matters of rule-based security programs and discuss strategies to activate artificial intelligence technology in the medical information business with the various restrictions.
Keywords
Artificial intelligence; Information security; Medical informatics;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
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