Hospital System Model for Personalized Medical Service

개인 맞춤형 의료서비스를 위한 병원시스템 모델

  • Ahn, Yoon-Ae (Dept. of Medical IT Engineering, Korea National University of Transportation) ;
  • Cho, Han-Jin (Dept. of Energy IT Engineering, Far East University)
  • 안윤애 (한국교통대학교 의료IT공학전공) ;
  • 조한진 (극동대학교 에너지IT공학과)
  • Received : 2017.10.10
  • Accepted : 2017.12.20
  • Published : 2017.12.28


With the entry into the aging society, we are increasingly interested in wellness, and personalized medical services through artificial intelligence are expanding. In order to provide personalized medical services, it is difficult to provide accurate medical analysis services only with the existing hospital system components PM / PA, OCS, EMR, PACS, and LIS. Therefore, it is necessary to present the hospital system model and the construction plan suitable for personalized medical service. Currently, some medical cloud services and artificial intelligence diagnosis services using Watson are being introduced in domestic. However, there are not many examples of systematic hospital system construction. Therefore, this paper proposes a hospital system model suitable for personalized medical service. To do this, we design a model that integrates medical big data construction and AI medical analysis system into the existing hospital system components, and suggest development plan of each module. The proposed model is meaningful as a basic research that provides guidelines for the construction of new hospital system in the future.


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