| Literature DB >> 30532244 |
Aránzazu Hernández-Yumar1,2, Maria Wemrell2,3, Ignacio Abásolo Alessón1, Beatriz González López-Valcárcel4, George Leckie2,5, Juan Merlo2,6.
Abstract
Many studies have demonstrated the existence of simple, unidimensional socioeconomic gradients in body mass index (BMI). However, in the present paper we move beyond such traditional analyses by simultaneously considering multiple demographic and socioeconomic dimensions. Using the Spanish National Health Survey 2011-2012, we apply intersectionality theory and multilevel analysis of individual heterogeneity and discriminatory accuracy (MAIHDA) to analyze 14,190 adults nested within 108 intersectional strata defined by combining categories of gender, age, income, educational achievement and living situation. We develop two multilevel models to obtain information on stratum-specific BMI averages and the degree of clustering of BMI within strata expressed by the intra-class correlation coefficient (ICC). The first model is a simple variance components analysis that provides a detailed mapping of the BMI disparities in the population and measures the accuracy of stratum membership to predict individual BMI. The second model includes the variables used to define the intersectional strata as a way to identify stratum-specific interactions. The first model suggests moderate but meaningful clustering of individual BMI within the intersectional strata (ICC = 12.4%). Compared with the population average (BMI = 26.07 Kg/m2), the stratum of cohabiting 18-35-year-old females with medium income and high education presents the lowest BMI (-3.7 Kg/m2), while cohabiting 36-64-year-old females with low income and low education show the highest BMI (+2.6 Kg/m2). In the second model, the ICC falls to 1.9%, suggesting the existence of only very small stratum specific interaction effects. We confirm the existence of a socioeconomic gradient in BMI. Compared with traditional analyses, the intersectional MAIHDA approach provides a better mapping of socioeconomic and demographic inequalities in BMI. Because of the moderate clustering, public health policies aiming to reduce BMI in Spain should not solely focus on the intersectional strata with the highest BMI, but should also consider whole population polices.Entities:
Mesh:
Year: 2018 PMID: 30532244 PMCID: PMC6287827 DOI: 10.1371/journal.pone.0208624
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Flowchart indicating the exclusion criteria and the number of individuals excluded from the study sample.
Mean Body Mass Index (BMI) and (95% confidence interval) in Kg/m2 reported separately by gender, age, income, education, and living alone.
| Number of individuals (%) | Mean BMI (95% CI) | ||
|---|---|---|---|
| Overall | 14,190 (100) | 26.24 (26.17–26.32) | |
| Gender | Males | 6,821 (48.07) | 26.89 (26.79–26.98) |
| Females | 7,369 (51.93) | 25.64 (25.53–25.76) | |
| Age | ≤35 | 3,078 (21.69) | 24.37 (24.22–24.52) |
| 36–64 | 7,386 (52.05) | 26.41 (26.31–26.51) | |
| ≥65 | 3,726 (26.26) | 27.45 (27.32–27.59) | |
| Income | Low | 5,619 (39.60) | 26.90 (26.78–27.03) |
| Medium | 3,886 (27.39) | 26.20 (26.06–26.34) | |
| High | 4,685 (33.02) | 25.48 (25.36–25.60) | |
| Education | Low | 2,521 (17.77) | 27.76 (27.58–27.93) |
| Medium | 8,268 (58.27) | 26.28 (26.18–26.38) | |
| High | 3,401 (23.97) | 25.03 (24.89–25.16) | |
| Living alone | No | 10,971 (77.32) | 26.20 (26.11–26.28) |
| Yes | 3,219 (22.68) | 26.39 (26.23–26.55) | |
Results from the multilevel linear regression analysis.
| Model 1 | Model 2 | ||
|---|---|---|---|
| Intercept | 26.07 (25.76–26.38) | 25.18 (24.55–25.82) | |
| Gender | Males | Ref. | |
| Females | -1.16 (-1.49 –-0.85) | ||
| Age (years) | ≤35 | Ref. | |
| 36–64 | 2.12 (1.72–2.53) | ||
| ≥65 | 2.61 (2.21–3.04) | ||
| Income | Low | 0.71 (0.34–1.09) | |
| Medium | 0.20 (-0.18–0.59) | ||
| High | Ref. | ||
| Education | Low | 1.71 (1.26–2.15) | |
| Medium | 0.96 (0.59–1.37) | ||
| High | Ref. | ||
| Living alone | No | Ref. | |
| Yes | -0.50 (-0.84 –-0.19) | ||
| Variance level 2: | Intersectional strata | 2.55 (1.83–3.52) | 0.35 (0.21–0.53) |
| Variance level 1: | Individuals | 18.10 (17.67–18.53) | 18.09 (17.67–18.51) |
| ICC | 12.4% | 1.9% | |
| DIC | 81,451.49 | 81,413.96 | |
Fig 2Differences between the estimated average BMI in each intersectional stratum and the overall population average BMI (i.e., shrunken stratum effects values from the simple intersectional model 1).
The intersectional strata are ordered according to the demographic and socioeconomic dimensions used to define the strata. The red horizontal line at value 0 corresponds with the population average BMI. The exact values and the specific definition of the intersectional strata are indicated in the S1 Table. LI: Low Income; MI: Medium Income; HI: High Income. LE: Low Education; ME: Medium Education; HE: High Education.
Fig 3Differences in BMI due to interaction effects (i.e., shrunken stratum effects from the intersectional interaction model, model 2).
The intersectional strata are ordered according to the demographic and socioeconomic dimensions used to define the strata. The red horizontal line at value 0 corresponds with the population average BMI. The exact values and the specific definition of the intersectional strata are indicated in the S1 Table. LI: Low Income; MI: Medium Income; HI: High Income. LE: Low Education; ME: Medium Education; HE: High Education.