치의학 분야에서 SPSS를 이용한 일반화 추정방정식의 단계별 안내

A step-by-step guide to Generalized Estimating Equations using SPSS in dental research

  • 임회정 (전남대학교 치의학전문대학원 치과교정학교실, 치의학 연구소) ;
  • 박수현 (전남대학교 자연과학대학 통계학과)
  • Lim, Hoi-Jeong (Department of Orthodontics, Chonnam National University School of Dentistry) ;
  • Park, Su-Hyeon (Dental Science Research Institute, Chonnam National University)
  • 투고 : 2016.08.05
  • 심사 : 2016.09.19
  • 발행 : 2016.11.01

초록

The Generalized Estimating Equations (GEE) approach is a widely used statistical method for analyzing longitudinal data and clustered data in clinical studies. In dentistry, due to multiple outcomes obtained from one patient, the outcomes produced from an individual patient are correlated with one another. This study focused on the basic ideas of GEE and introduced the types of covariance matrix and working correlation matrix. The quasi-likelihood information criterion (QIC) and quasi-likelihood information criterion approximation ($QIC_u$) were used to select the best working correlation matrix and the best fitting model for the correlated outcomes. The purpose of this study is to show a detailed process for the GEE analysis using SPSS software along with an orthodontic miniscrew example, and to help understand how to use GEE analysis in dental research.

키워드

과제정보

연구 과제 주관 기관 : 전남대학교

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