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ITS : Intelligent Tissue Mineral Analysis Medical Information System

ITS : 지능적 Tissue Mineral Analysis 의료 정보 시스템

  • Cho, Young-Im (Dept. of Computer Science, The University of Suwon)
  • Published : 2005.04.01

Abstract

There are some problems in TMA. There are no databases in Korea which can be independently and specially analyzed the TMA results. Even there are some medical databases, some of them are low level databases which are related to TMA, so they can not serve medical services to patients as well as doctors. Moreover, TMA results are based on the database of american health and mineral standards, it is possibly mislead oriental, especially korean, mineral standards. The purposes of this paper is to develope the first Intelligent TMA Information System(ITS) which makes clear the problems mentioned earlier ITS can analyze TMA data with multiple stage decision tree classifier. It is also constructed with multiple fuzzy rule base and hence analyze the complex data from Korean database by fuzzy inference methods.

현재 국내에서는 TMA(Tissue Mineral Analysis) 결과를 독자적이며 전문적으로 해석할 수 있는 의료 정보 데이터베이스가 없을 뿐 아니라, TMA 관련 데이터베이스가 있다 하더라도 의료기관에서 사용하기 어려운 매우 낮은 수준이므로 양질의 의료서비스를 제공하기 어려운 실정이다. 또한 국내에서 주로 사용되는 TMA 방법은 미국에 의뢰한 후 보내온 분석결과에 의존하게 되는데, 이때의 결과는 서구식 생활패턴에서 비롯된 데이터베이스에 의해 분석된 것이므로 동양인의 경우 특히 검사결과의 신뢰성 문제가 발생하게 된다. 따라서 본 논문에서는 이러한 문제점을 해결하기 위해 국내 임상자료를 바탕으로 TMA 관련 국내 최초 지능적 의료정보시스템(ITS: Intelligent TMA Information System)을 개발하였다. ITS는 TMA 자료를 다단계 통계분석 방법에 의한 결성트리 분류기를 이용하여 분류하고 다중 퍼지 규칙베이스를 구축하여 복잡한 자료론 추론하도록 구축하였다.

Keywords

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