Abstract

Background Machine learning may be a useful tool for predicting metabolic syndrome (MetS), and previous studies also suggest that the risk of MetS differs according to Sasang constitution type. The present study investigated the development of MetS prediction models utilizing machine learning methods and whether the incorporation of Sasang constitution type could improve the performance of those prediction models. Methods Participants visiting a medical center for a health check-up were recruited in 2005 and 2006. Six kinds of machine learning were utilized (K-nearest neighbor, naive Bayes, random forest, decision tree, multilayer perceptron, and support vector machine), as was conventional logistic regression. Machine learning-derived MetS prediction models with and without the incorporation of Sasang constitution type were compared to investigate whether the former would predict MetS with higher sensitivity. Age, sex, education level, marital status, body mass index, stress, physical activity, alcohol consumption, and smoking were included as potentially predictive factors. Results A total of 750/2,871 participants had MetS. Among the six types of machine learning methods investigated, multiplayer perceptron and support vector machine exhibited the same performance as the conventional regression method, based on the areas under the receiver operating characteristic curves. The naive-Bayes method exhibited the highest sensitivity (0.49), which was higher than that of the conventional regression method (0.39). The incorporation of Sasang constitution type improved the sensitivity of all of the machine learning methods investigated except for the K-nearest neighbor method. Conclusion Machine learning-derived models may be useful for MetS prediction, and the incorporation of Sasang constitution type may increase the sensitivity of such models.

Highlights

  • Metabolic syndrome (MetS) is a condition associated with multiple metabolic abnormalities, including obesity, hypertension, hyperglycemia, and hyperlipidemia [1].e prevalence of metabolic syndrome (MetS) is reportedly increasing rapidly worldwide [2], and in South Korea, it rose from 22.6% in 2013 to 26.0% in 2017 [3]

  • Data Sources and Outcome Measurement. e current study used the Sasang constitution cohort data from the Korean Genome and Epidemiology Study (KoGES: 4851-302) [14]. e KoGES is a large cohort study project managed by the Korean National Institute of Health to investigate gene-environment factors in chronic diseases [15]. ose data include information derived from a total of 3,064 participants who received health check-ups during 2005 and 2006, and their data were collected only once

  • Because the primary aim of the present study was to investigate the prediction of MetS via methods incorporating Sasang constitution type, the TY type was excluded from the analysis because that group only contained 10 individuals. us, a total of 2,871 participants were included in the final analysis, and 750 were classified as having MetS

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Summary

Introduction

Metabolic syndrome (MetS) is a condition associated with multiple metabolic abnormalities, including obesity, hypertension, hyperglycemia, and hyperlipidemia [1].e prevalence of MetS is reportedly increasing rapidly worldwide [2], and in South Korea, it rose from 22.6% in 2013 to 26.0% in 2017 [3]. Previous studies investigating the prediction of MetS or attempting to identify associated factors have used statistical analysis methods such as linear regression or logistic regression [6, 7]. These methods sometimes have limitations, including strict assumptions or multicorrelation problems. E present study investigated the development of MetS prediction models utilizing machine learning methods and whether the incorporation of Sasang constitution type could improve the performance of those prediction models. Machine learning-derived models may be useful for MetS prediction, and the incorporation of Sasang constitution type may increase the sensitivity of such models

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