Skip to main page content
U.S. flag

An official website of the United States government

Dot gov

The .gov means it’s official.
Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

Https

The site is secure.
The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

Access keys NCBI Homepage MyNCBI Homepage Main Content Main Navigation
. 2023 Sep 12:7:e42756.
doi: 10.2196/42756.

Identification of Risk Groups for and Factors Affecting Metabolic Syndrome in South Korean Single-Person Households Using Latent Class Analysis and Machine Learning Techniques: Secondary Analysis Study

Affiliations

Identification of Risk Groups for and Factors Affecting Metabolic Syndrome in South Korean Single-Person Households Using Latent Class Analysis and Machine Learning Techniques: Secondary Analysis Study

Ji-Soo Lee et al. JMIR Form Res. .

Abstract

Background: The rapid increase of single-person households in South Korea is leading to an increase in the incidence of metabolic syndrome, which causes cardiovascular and cerebrovascular diseases, due to lifestyle changes. It is necessary to analyze the complex effects of metabolic syndrome risk factors in South Korean single-person households, which differ from one household to another, considering the diversity of single-person households.

Objective: This study aimed to identify the factors affecting metabolic syndrome in single-person households using machine learning techniques and categorically characterize the risk factors through latent class analysis (LCA).

Methods: This cross-sectional study included 10-year secondary data obtained from the National Health and Nutrition Examination Survey (2009-2018). We selected 1371 participants belonging to single-person households. Data were analyzed using SPSS (version 25.0; IBM Corp), Mplus (version 8.0; Muthen & Muthen), and Python (version 3.0; Plone & Python). We applied 4 machine learning algorithms (logistic regression, decision tree, random forest, and extreme gradient boost) to identify important factors and then applied LCA to categorize the risk groups of metabolic syndromes in single-person households.

Results: Through LCA, participants were classified into 4 groups (group 1: intense physical activity in early adulthood, group 2: hypertension among middle-aged female respondents, group 3: smoking and drinking among middle-aged male respondents, and group 4: obesity and abdominal obesity among middle-aged respondents). In addition, age, BMI, obesity, subjective body shape recognition, alcohol consumption, smoking, binge drinking frequency, and job type were investigated as common factors that affect metabolic syndrome in single-person households through machine learning techniques. Group 4 was the most susceptible and at-risk group for metabolic syndrome (odds ratio 17.67, 95% CI 14.5-25.3; P<.001), and obesity and abdominal obesity were the most influential risk factors for metabolic syndrome.

Conclusions: This study identified risk groups and factors affecting metabolic syndrome in single-person households through machine learning techniques and LCA. Through these findings, customized interventions for each generational risk factor for metabolic syndrome can be implemented, leading to the prevention of metabolic syndrome, which causes cardiovascular and cerebrovascular diseases. In conclusion, this study contributes to the prevention of metabolic syndrome in single-person households by providing new insights and priority groups for the development of customized interventions using classification.

Keywords: latent class analysis; machine learning; metabolic syndrome; risk factor; single-person households.

PubMed Disclaimer

Conflict of interest statement

Conflicts of Interest: None declared.

Figures

Figure 1
Figure 1
Overall flowchart of this study. DT: decision tree; LR: logistic regression; NHANES: National Health and Nutrition Examination Survey; RF: random forest; XGBoost: extreme gradient boost.

Similar articles

Cited by

References

    1. Zheng X, Yu H, Qiu X, Chair SY, Wong EM, Wang Q. The effects of a nurse-led lifestyle intervention program on cardiovascular risk, self-efficacy and health promoting behaviours among patients with metabolic syndrome: randomized controlled trial. Int J Nurs Stud. 2020 Sep;109:103638. doi: 10.1016/j.ijnurstu.2020.103638. https://linkinghub.elsevier.com/retrieve/pii/S0020-7489(20)30122-X S0020-7489(20)30122-X - DOI - PubMed
    1. Fujiki H. The use of noncash payment methods for regular payments and the household demand for cash: evidence from Japan. Jpn Econ Rev. 2020 Jul 31;71(4):719–65. doi: 10.1007/s42973-020-00049-5. - DOI
    1. Lee HN. The social service needs of single-person households and their policy implications. Health Welfare Pol Forum. 2020 Oct 01;288:21–35. https://repository.kihasa.re.kr/handle/201002/36543
    1. Kawano T, Moriki G, Bono S, Kaji N, Jung H. Effects of household composition on health-related quality of life among the japanese middle-aged and elderly: analysis from a gender perspective. Jpn J Soc Welfare. 2020;60(5):1–12. doi: 10.3390/app12063097. https://www.jssw.jp/wp-content/uploads/2020-60-5-1.pdf - DOI
    1. Kang SH, Park JY. Factors affecting the life satisfaction of unmarried one-person households according to marital experience. J Fam Res Manag Policy Rev. 2020;24:21–39. doi: 10.22626/jkfrma.2020.24.1.002. - DOI