| Literature DB >> 35206986 |
Min-Seok Shin1, Jea-Young Lee1.
Abstract
Metabolic syndrome can cause complications, such as stroke and cardiovascular disease. We aimed to propose a nomogram that visualizes and predicts the probability of metabolic syndrome occurrence after identifying risk factors related to metabolic syndrome for prevention and recognition. We created a nomogram related to metabolic syndrome in this paper for the first time. We analyzed data from the Korea National Health and Nutrition Examination Survey VII. Total 17,584 participants were included in this study, and the weighted sample population was 39,991,680, which was 98.1% of the actual Korean population in 2018. We identified 14 risk factors affecting metabolic syndrome using the Rao-Scott chi-squared test. Next, logistic regression analysis was performed to build a model for metabolic syndrome and 11 risk factors were finally obtained, including BMI, marriage, employment, education, age, stroke, sex, income, smoking, family history and age* sex. A nomogram was constructed to predict the occurrence of metabolic syndrome using these risk factors. Finally, the nomogram was verified using a receiver operating characteristic curve (ROC) and a calibration plot.Entities:
Keywords: logistic regression; metabolic syndrome; nomogram; risk factor
Year: 2022 PMID: 35206986 PMCID: PMC8871838 DOI: 10.3390/healthcare10020372
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Rao-Scott chi-squared test result for 14 risk factors associated metabolic syndrome.
| Variable | Level | Metabolic (%) | Non-Metabolic (%) |
| |
|---|---|---|---|---|---|
| BMI | BMI < 25 | 3,138,741 (12.1) | 22,748,807 (87.9) | 2128.3904 | 0.0001 |
| 25 ≤ BMI < 30 | 5,365,781 (45.1) | 6,542,466 (54.9) | |||
| 30 ≤ BMI | 1,458,791 (66.4) | 737,094 (33.6) | |||
| Marriage | Yes | 9,003,536 (29.0) | 22,056,181 (71) | 309.0303 | 0.0001 |
| No | 959,776 (10.7) | 7,972,187 (89.3) | |||
| Employment | Yes | 6,182,962 (23.4) | 20,207,289 (76.6) | 29.727 | 0.0001 |
| No | 3,780,350 (27.8) | 9,821,079 (72.2) | |||
| Education | Low | 3,844,170 (41.6) | 5,393,007 (58.4) | 942.6711 | 0.0001 |
| High | 6,119,142 (19.9) | 24,635,361 (80.1) | |||
| Age | 20–34 | 815,925 (8.2) | 9,186,929 (91.8) | 1006.4028 | 0.0001 |
| 35–64 | 6,192,295 (26.4) | 17,245,747 (73.6) | |||
| 65+ | 2,955,092 (45.1) | 3,595,692 (54.9) | |||
| Stroke | Yes | 283,695 (54.2) | 240,097 (45.8) | 91.1563 | 0.0001 |
| No | 9,679,617 (24.5) | 29,788,271 (75.5) | |||
| Sex | Man | 5,684,391 (28.3) | 14,390,899 (71.7) | 87.496 | 0.0001 |
| Woman | 4,278,921 (21.5) | 15,637,469 (78.5) | |||
| Income | Lowest | 2,875,053 (28.4) | 7,264,837 (71.6) | 38.88 | 0.0001 |
| Low | 2,571,634 (25.5) | 7,519,515 (74.5) | |||
| High | 2,367,455 (23.7) | 7,637,714 (76.3) | |||
| Highest | 2,149,170 (22.0) | 7,606,302 (78.0) | |||
| Heart attack | Yes | 130,116 (45.5) | 155,918 (54.5) | 26.427 | 0.0001 |
| No | 9,833,196 (24.8) | 29,872,450 (75.2) | |||
| Exercise | Physical activity | 3,319,421 (22.1) | 11,682,340(77.9) | 29.7132 | 0.0001 |
| Non-physical activity | 6,643,892 (26.6) | 18,346,028 (73.4) | |||
| Alcohol | High drink | 5,543,185 (23.4) | 18,150,203 (76.6) | 24.9774 | 0.0001 |
| Low drink | 4,420,127 (27.1) | 11,878,165 (72.9) | |||
| Angina | Yes | 217,589 (45.1) | 265,396 (54.9) | 45.1976 | 0.0001 |
| No | 9,745,723 (24.7) | 29,762,972 (75.3) | |||
| Smoking | Non | 4,878,365 (21.7) | 17,595,872 (78.3) | 88.4268 | 0.0001 |
| Past | 2,569,051 (29.2) | 6,241,132 (70.8) | |||
| Present | 2,515,896 (28.9) | 6,191,363 (71.1) | |||
| Family history | Yes | 1,516,774 (27.7) | 3,966,295 (72.3) | 6.1727 | 0.0130 |
| No | 8,446,538 (24.5) | 26,062,073 (75.5) |
Multiple logistic regression analysis results about metabolic syndrome.
| Variable | Level | Coefficients | Odds Ratio | 95% CI |
| |
|---|---|---|---|---|---|---|
| BMI | BMI < 25 | 0 | 1 | 0 | ||
| 25 ≤ BMI < 30 | 1.81729 | 6.155 | 5.477–6.917 | <0.0001 | 55 | |
| 30 ≤ BMI | 3.27648 | 26.482 | 20.836–33.66 | <0.0001 | 100 | |
| Marriage | Yes | 0.38834 | 1.475 | 1.176–1.849 | 0.000829 | 12 |
| No | 0 | 1 | 0 | |||
| Employment | Yes | 0 | 1 | 0 | ||
| No | 0.20096 | 1.223 | 1.084–1.378 | 0.001099 | 6 | |
| Education | Low | 0.39328 | 1.482 | 1.293–1.698 | <0.0001 | 12 |
| High | 0 | 1 | 0 | |||
| Age | 20–34 | 0 | 1 | 0 | ||
| 35–64 | 1.41967 | 4.136 | 2.971–5.757 | <0.0001 | 43 | |
| 65+ | 2.61083 | 13.61 | 9.363–19.785 | <0.0001 | 80 | |
| Stroke | Yes | 0.69463 | 2.003 | 1.37–2.928 | 0.00037 | 21 |
| No | 0 | 1 | 0 | |||
| Sex | Man | 0.46728 | 1.596 | 1.116–2.282 | 0.010745 | 14 |
| Woman | 0 | 1 | 0 | |||
| Income | Lowest | 0 | 1 | 7 | ||
| Low | −0.11727 | 0.889 | 0.772–1.025 | 0.105852 | 4 | |
| High | −0.19741 | 0.821 | 0.709–0.951 | 0.008754 | 1 | |
| Highest | −0.24427 | 0.783 | 0.671–0.915 | 0.002139 | 0 | |
| Smoking | Non | 0 | 1 | 0 | ||
| Past | 0.08861 | 1.093 | 0.932–1.281 | 0.274897 | 3 | |
| Current | 0.34904 | 1.418 | 1.196–1.681 | <0.0001 | 11 | |
| Family history | Yes | 0.32115 | 1.379 | 1.167–1.629 | 0.000183 | 10 |
| No | 0 | 1 | 0 | |||
| Age*Sex | 35–64 & Man | 0.0931 | 1.098 | 0.753–1.601 | 0.628911 | 28 |
| 65+ & Man | −0.81425 | 0.443 | 0.293–0.671 | 0.000134 | 0 | |
| otherwise (o.w.) | 0 | 1 | 25 |
Likelihood Ratio Goodness of Fit Test: F = 223.34, p-value < 0.0001. Adjusted Wald Goodness of Fit Test: F = 118.57, p-value < 0.0001. Score Goodness of Fit Test: F = 110.03, p-value < 0.0001.
Figure 1Nomogram result for metabolic syndrome by 11 risk factors.
Figure 2ROC curve validation of a nomogram for metabolic syndrome.
Figure 3Calibration plot of nomogram for metabolic syndrome.