| Literature DB >> 30587262 |
Junsen Ye1, Yaogai Lv1, Zhongmin Li1, Yan Yao1, Lina Jin1.
Abstract
OBJECTIVE: To explore the direct and indirect associations of dietary patterns with hypertension using structural equation modelling (SEM).Entities:
Keywords: Dietary patterns; Factor analysis; Hypertension; Structural equation modelling
Year: 2018 PMID: 30587262 PMCID: PMC6536898 DOI: 10.1017/S1368980018003129
Source DB: PubMed Journal: Public Health Nutr ISSN: 1368-9800 Impact factor: 4.022
Descriptive characteristics, by hypertension status, of participants aged 40–79 years (n 1326) from Jilin Province, China, enrolled in the International Chronic Disease Cohort, 2010–2011
| Variable | Non-hypertensive ( | Hypertensive ( |
|
| ||
|---|---|---|---|---|---|---|
| Mean |
| Mean |
| |||
| Age (years) | 52·9 | 9·7 | 57·5 | 8·8 | 74·722 | <0·001 |
| BMI (kg/m2) | 23·1 | 3·2 | 24·8 | 3·5 | 80·023 | <0·001 |
| WC (cm) | 81·3 | 8·7 | 86·1 | 8·9 | 89·687 | <0·001 |
| FAT (%) | 28·9 | 8·2 | 31·4 | 8·6 | 25·654 | <0·001 |
| GLU (mmol/l) | 4·9 | 1·2 | 5·3 | 1·4 | 15·786 | <0·001 |
| TC:HDL-C | 3·6 | 1·1 | 3·9 | 1·1 | 17·967 | <0·001 |
| LDL-C:HDL-C | 2·3 | 0·9 | 2·5 | 0·9 | 14·086 | <0·001 |
|
| % |
| % |
|
| |
| Gender | ||||||
| Male | 324 | 37·5 | 178 | 38·4 | 0·104 | 0·396 |
| Female | 539 | 62·5 | 285 | 61·6 | ||
| Education level | ||||||
| Primary school | 225 | 26·1 | 141 | 30·5 | 4·675 | 0·322 |
| Junior high school | 492 | 57·0 | 258 | 55·7 | ||
| Senior high school | 106 | 12·3 | 50 | 10·8 | ||
| Other | 40 | 4·6 | 14 | 3·0 | ||
| Occupation | ||||||
| Mental labour | 47 | 5·4 | 32 | 6·9 | 4·282 | 0·118 |
| Manual labour | 774 | 89·7 | 398 | 86·0 | ||
| Other | 42 | 4·9 | 33 | 7·1 | ||
| Smoking | ||||||
| Yes | 76 | 8·8 | 33 | 7·1 | 1·878 | 0·391 |
| No | 517 | 59·9 | 293 | 63·3 | ||
| Abstinence | 270 | 31·3 | 137 | 29·6 | ||
| Family history of hypertension | ||||||
| Yes | 86 | 9·9 | 81 | 17·5 | 15·519 | <0·001 |
| No | 777 | 90·1 | 382 | 82·5 | ||
WC, waist circumference; FAT, body fat percentage; GLU, glucose; TC, total cholesterol; HDL-C, HDL-cholesterol; LDL-C, LDL-cholesterol.
Other’ includes illiteracy and college degree or above.
Other’ includes unemployed and retired people.
Factor loading matrix for major dietary patterns identified among participants aged 40–79 years (n 1326) from Jilin Province, China, enrolled in the International Chronic Disease Cohort, 2010–2011
| Food | Wine pattern | Vegetables pattern | Condiment pattern | Modern pattern | Snack pattern |
|---|---|---|---|---|---|
| White wine |
| 0·045 | −0·031 | 0·003 | 0·099 |
| Beer |
| 0·056 | −0·049 | 0·010 | 0·101 |
| Seasoning |
| 0·236 | 0·120 | 0·069 | −0·134 |
| Cooked vegetables | 0·154 |
| −0·024 | 0·188 | 0·093 |
| Raw vegetables | 0·130 |
| 0·007 | 0·040 | 0·110 |
| Pickles | 0·099 |
| −0·111 | −0·061 | 0·065 |
| Rice | −0·115 |
| 0·213 | 0·056 | −0·141 |
| Salt | −0·152 | −0·034 |
| 0·068 | 0·015 |
| Oil | 0·035 | 0·086 |
| 0·069 | −0·064 |
| Sugar | 0·179 | −0·061 |
| 0·056 | 0·168 |
| Lean meats | 0·120 | −0·067 | 0·025 |
| −0·021 |
| Drinks | −0·022 | −0·005 | 0·059 |
| 0·113 |
| Pasta | 0·010 | 0·181 | 0·009 |
| 0·221 |
| Eggs | 0·003 | 0·360 | −0·011 |
| 0·103 |
| Fish | −0·022 | 0·033 | 0·073 |
| 0·014 |
| Soya products | 0·194 | 0·348 | −0·294 |
| −0·048 |
| Milk | 0·095 | −0·012 | −0·045 | 0·141 |
|
| Biscuits | −0·089 | −0·002 | 0·062 | 0·053 |
|
| Fruits | 0·081 | 0·329 | 0·109 | 0·130 |
|
In considering the number of factors to retain, we evaluated eigenvalues (>1), the scree plot and the interpretability of the factors to determine which set of factors could most meaningfully describe distinct food patterns. Items were retained in a factor if they had an absolute correlation of ≥0·30 with that factor (indicated in bold font).
Fig. 1Structural equation model with standardized estimates for the relationship between dietary patterns and hypertension among participants aged 40–79 years (n 1326) from Jilin Province, China, enrolled in the International Chronic Disease Cohort, 2010–2011 (FAT, body fat percentage; WC, waist circumference; LDL-C, LDL-cholesterol; HDL-C, HDL-cholesterol; GLU, glucose; e (i = 1, …, 26) and z (j = 1, …, 3) are residuals)
Parameter estimates and model fit from the structural equation modelling of dietary patterns and hypertension among participants aged 40–79 years (n 1326) from Jilin Province, China, enrolled in the International Chronic Disease Cohort, 2010–2011
| Item | Standardized estimate |
| ||
|---|---|---|---|---|
| Direct effects of variables | ||||
| Wine pattern | → | Hypertension | 0·057 | 0·028 |
| Lipid latent variable | → | Hypertension | 0·281 | <0·001 |
| Age | → | Hypertension | 0·231 | <0·001 |
| Family history of hypertension | → | Hypertension | 0·162 | <0·001 |
| Condiment pattern | → | Obesity latent variable | 0·054 | 0·033 |
| Obesity latent variable | → | GLU | 0·073 | 0·006 |
| Obesity latent variable | → | Lipid latent variable | 0·822 | <0·001 |
| GLU | → | Lipid latent variable | 0·359 | <0·001 |
| Factor loadings of obesity latent variable | ||||
| Obesity | → | BMI | 0·826 | <0·001 |
| Obesity | → | WC | 0·963 | <0·001 |
| Obesity | → | FAT | 0·488 | <0·001 |
| Factor loadings of lipid latent variable | ||||
| Lipid | → | TC:HDL-C | 0·382 | <0·001 |
| Lipid | → | LDL-C:HDL-C | 0·330 | <0·001 |
| Correlation coefficients | ||||
| Vegetables pattern | ↔ | Snack pattern | 0·483 | <0·001 |
| Wine pattern | ↔ | Vegetables pattern | 0·239 | <0·001 |
| Condiment pattern | ↔ | Snack pattern | 0·141 | <0·001 |
| Vegetables pattern | ↔ | Modern pattern | 0·732 | <0·001 |
| Snack pattern | ↔ | Modern pattern | 0·574 | <0·001 |
| Wine patterns | ↔ | Modern pattern | 0·234 | <0·001 |
| Wine pattern | ↔ | Snack pattern | 0·198 | <0·001 |
| Wine pattern | ↔ | Condiment pattern | −0·153 | <0·001 |
| Model fit | ||||
| | 2·502 | <0·001 | ||
| NFI | 0·939 | |||
| TLI | 0·957 | |||
| CFI | 0·962 | |||
| GFI | 0·957 | |||
| AGFI | 0·947 | |||
| SRMR | 0·045 | |||
| RMSEA | 0·034 | |||
GLU, glucose; WC, waist circumference; FAT, body fat percentage; TC, total cholesterol; HDL-C, HDL-cholesterol; LDL-C, LDL-cholesterol; χ 2/df, normed χ 2; NFI normed fit index; TLI, Tucker–Lewis index; CFI, comparative fit index; GFI, goodness-of-fit index; AGFI, adjusted goodness-of-fit index; SRMR, standardized root-mean-square residual; RMSEA, root-mean-square error of approximation.
Total, direct and indirect effects of independent variables on hypertension among participants aged 40–79 years (n 1326) from Jilin Province, China, enrolled in the International Chronic Disease Cohort, 2010–2011
| Item | Direct effects | Indirect effects | Total effects |
|---|---|---|---|
| Condiment pattern | – | 0·011 | 0·011 |
| Wine pattern | 0·056 | – | 0·056 |
| Obesity latent variable | – | 0·230 | 0·230 |
| GLU | – | 0·098 | 0·098 |
| Lipid latent variable | 0·281 | – | 0·281 |
| Age | 0·232 | – | 0·232 |
| Family history of hypertension | 0·116 | – | 0·116 |
GLU, glucose.