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"Nutrient intake,"

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[English]

The prevalence of metabolic syndrome (MetS) and its cost are increasing due to lifestyle changes and aging. This study aimed to develop a deep neural network model for prediction and classification of MetS according to nutrient intake and other MetS-related factors. This study included 17,848 individuals aged 40–69 years from the Korea National Health and Nutrition Examination Survey (2013–2018). We set MetS (3–5 risk factors present) as the dependent variable and 52 MetS-related factors and nutrient intake variables as independent variables in a regression analysis. The analysis compared and analyzed model accuracy, precision and recall by conventional logistic regression, machine learning-based logistic regression and deep learning. The accuracy of train data was 81.2089, and the accuracy of test data was 81.1485 in a MetS classification and prediction model developed in this study. These accuracies were higher than those obtained by conventional logistic regression or machine learning-based logistic regression. Precision, recall, and F1-score also showed the high accuracy in the deep learning model. Blood alanine aminotransferase (β = 12.2035) level showed the highest regression coefficient followed by blood aspartate aminotransferase (β = 11.771) level, waist circumference (β = 10.8555), body mass index (β = 10.3842), and blood glycated hemoglobin (β = 10.1802) level. Fats (cholesterol [β = −2.0545] and saturated fatty acid [β = −2.0483]) showed high regression coefficients among nutrient intakes. The deep learning model for classification and prediction on MetS showed a higher accuracy than conventional logistic regression or machine learning-based logistic regression.

Citations

Citations to this article as recorded by  
  • Metabolomics and nutrient intake reveal metabolite–nutrient interactions in metabolic syndrome: insights from the Korean Genome and Epidemiology Study
    Minyeong Kim, Suyeon Lee, Junguk Hur, Dayeon Shin
    Nutrition Journal.2025;[Epub]     CrossRef
  • Investigating the Influence of Heavy Metals and Environmental Factors on Metabolic Syndrome Risk Based on Nutrient Intake: Machine Learning Analysis of Data from the Eighth Korea National Health and Nutrition Examination Survey (KNHANES)
    Seungpil Jeong, Yean-Jung Choi
    Nutrients.2024; 16(5): 724.     CrossRef
  • Employing broad learning and non-invasive risk factor to improve the early diagnosis of metabolic syndrome
    Junwei Duan, Yuxuan Wang, Long Chen, C. L. Philip Chen, Ronghua Zhang
    iScience.2024; 27(1): 108644.     CrossRef
  • A comprehensive multi-task deep learning approach for predicting metabolic syndrome with genetic, nutritional, and clinical data
    Minhyuk Lee, Taesung Park, Ji-Yeon Shin, Mira Park
    Scientific Reports.2024;[Epub]     CrossRef
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