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The change patterns of the Clustering of metabolic syndrome

대사증후군 구성요인의 군집별 변화 양상

  • Kim, Young-Ran (Department of Radiology, Wonkwang Health Science University) ;
  • Cheon, Hae-Kyung (Department of Radiology, Baekseok Culture University) ;
  • Lee, Tae-Yong (Department of Preventive Medicine and Public Health, Chungnam National University School of Medicine and Research Institute for Medical Sciences)
  • 김영란 (원광보건대학교 방사선과) ;
  • 천해경 (백석문화대학교 방사선과) ;
  • 이태용 (충남대학교 의학전문대학원 예방의학교실)
  • Received : 2015.11.16
  • Accepted : 2016.01.05
  • Published : 2016.01.31

Abstract

Objective: This study examined the changes in the clustering of metabolic syndrome, and examined the distribution of a combination of clustering. Methods: The study was performed with the data from the same 1,900 people who had a medical checkup at a health clinic twice from 2009 to 2013. The subjects were divided into two groups of metabolic syndrome and non-metabolic syndrome (normal group) and examined according to the periodic changes. The related factors were examined with a cohort study. Results: The order affecting the prevalence of metabolic syndrome by the combination of metabolic syndrome constituent factors was two combinations (TG+HDL), three combinations (WC+TG+HDL), and four combination (WC+TG+HDL+BP). Conclusions: To manage these factors, public health programs will be needed and the methods to prevent metabolic syndrome should be promoted. In addition, more study on the risk factors of metabolic syndrome will be needed.

연구목적: 본 연구는 대사증후군 구성요인의 군집별 변화양상과 군집별 조합 중에서 가장 많이 분포된 조합들을 파악하여 대사증후군을 예방하고자 시행하였다. 연구방법: 2009년부터 2013년까지 총 2회 검진을 받은 1900명을 대상으로 하였고, 대사증후군의 변화를 살펴보기 위해 정상군과 대사증후군으로 진단된 군 두군으로 나누어 코호트연구를 시행하였다. 연구결과: 대사증후군 구성요인의 조합 상태에 따라 대사증후군 진단율에 영향을 미치는 순서는 2개의 조합에서는 TG+HDL, TG+FBS순이고, 3개의 조합은 WC+TG+HDL, TG+BP+FBS순이었고, 4개의 조합은 WC+TG+HDL+BP, WC+TG+HDL+FBS의 순이었다. 결론: 대사증후군을 예방하기 위해서는 대사증후군 진단율에 영향을 주는 조합을 고려하여 대사증후군 고 위험군을 찾아내어 관리하는 보건프로그램이 필요할 것이다.

Keywords

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