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NTIS 바로가기Communications for statistical applications and methods = 한국통계학회논문집, v.30 no.1, 2023년, pp.21 - 35
Minseok Shin (Department of Statistics, Yeungnam University) , Jeayoung Lee (Department of Statistics, Yeungnam University)
Metabolic syndrome is a serious disease that can eventually lead to various complications, such as stroke and cardiovascular disease. In this study, we aimed to identify the risk factors related to metabolic syndrome for its prevention and recognition and propose a nomogram that visualizes and predi...
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