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Diet quality, general health and anthropometric outcomes in a Latin American population: evidence from the Colombian National Nutritional Survey (ENSIN) 2010

Published online by Cambridge University Press:  11 May 2020

Gustavo Mora-García
Affiliation:
Department of Family Medicine and Public Health, Faculty of Medicine, Universidad de Cartagena, Cartagena de Indias, Colombia Department of International Health, The Johns Hopkins School of Public Health, Baltimore, MD21205, USA
Antonio Trujillo
Affiliation:
Department of International Health, The Johns Hopkins School of Public Health, Baltimore, MD21205, USA
Vanessa García-Larsen*
Affiliation:
Program in Human Nutrition, Department of International Health, The Johns Hopkins Bloomberg School of Public Health, Baltimore, MD21205, USA
*
*Corresponding author: Email vgla@jhu.edu
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Abstract

Objective:

Colombia is experiencing a nutrition transition, characterised by nutritionally poor diets and an increased prevalence of non-communicable diseases (NCD). We aimed to investigate the association between diet quality and general health outcomes related to the risk of NCD, in a nationally representative sample of Colombian adolescents and adults.

Design:

Cross-sectional analysis. The Alternative Healthy-Eating Index (AHEI) was derived to calculate diet quality. Adjusted regressions were used to examine the association between AHEI, self-perceived general health status (GHS) and anthropometric variables (i.e. age-specific z-scores for height, and BMI for adolescents; waist circumference and BMI for adults).

Setting:

Nationally representative data from the Colombian National Nutrition Survey (ENSIN) 2010.

Participants:

Adolescents aged 10–17 years (n 6566) and adults aged ≥18 years (n 6750).

Results:

AHEI scores were similar between adolescents (mean 29·3 ± 7·2) and adults (mean 30·5 ± 7·2). In the whole sample, a better diet quality (higher AHEI score) was associated with worse self-perceived GHS (adjusted (a) β-coefficient: –0·004; P < 0·001) and with a smaller waist circumference ((a) β-coefficient: –0·06; P < 0·01). In adults, a higher AHEI score was negatively associated with BMI ((a) β-coefficient: –0·02; P < 0·05), whilst in adolescents it was associated with a reduced height-for-age z-score ((a) β-coefficient: –0·009; P < 0·001).

Conclusions:

A better diet quality was associated with reduced prevalence of predictors of NCD and with some indicators of general health in the Colombian population. In light of the high prevalence of overweight, our findings support the need for public health interventions focused on sustainable positive changes in dietary habits in the general population.

Type
Research paper
Copyright
© The Authors 2020

Latin American countries are experiencing accelerated shifts in their dietary patterns, leading to a spread of low-quality diets characterised by high intakes of hyper-energetic, inexpensive and easy-to-prepare food products(Reference Barria and Amigo1Reference Finck Barboza, Monteiro and Barradas3). This transition in dietary behaviour has been widely associated with increasing rates of obesity, type 2 diabetes mellitus and high blood pressure among children and adults(Reference Popkin, Adair and Ng4,Reference Fleischer and Diez Roux5) .

Colombia is already in the process of a complex and dynamic nutrition transition(Reference Parra, Gomez and Iannotti6). Recent studies in Colombian children have shown that new patterns of intake are of lower dietary quality and that they could be associated with the current obesity epidemic and increasing morbidity caused by non-communicable diseases (NCD)(Reference Cornwell, Villamor and Mora-Plazas7,Reference Ramírez-Vélez, Correa-Bautista and Ojeda-Pardo8) . Despite this, a third (32·9 %) of patients do not receive advice from their primary care providers about healthier dietary options(Reference Doubova, Guanais and Perez-Cuevas9).

Promoting the adherence to healthy eating patterns is thought to be a feasible strategy to improve general health and reduce all-cause mortality. Evidence from population-based studies consistently shows that diets rich in fruits, vegetables and legumes, and low in processed foods are associated with reduced risk of obesity, metabolic disorders, cardiovascular diseases (CVD) and several types of cancer(Reference Dandamudi, Tommie and Nommsen-Rivers10Reference Schwingshackl and Hoffmann12).

The Alternative Healthy Eating Index (AHEI) was developed based on the Dietary Guidelines for Americans, as an attempt to capture the cumulative effects of foods and nutrients regularly consumed that are the most predictive of chronic diseases(Reference Chiuve, Fung and Rimm13). Hence, an AHEI score has been suggested to reflect the diet quality at the individual level. In this scoring system, higher values indicate healthier eating patterns, whilst lower or zero points indicate unhealthy patterns(Reference Chiuve, Fung and Rimm13). Since the AHEI score has been associated with risk factors for NCD and risk of all-cause mortality(Reference Mertens, Markey and Geleijnse14,Reference Loprinzi, Addoh and Mann15) , it can be used to determine the association between overall diet and risk of disease in the general population.

In this study, we describe for the first time the diet quality of a nationally representative sample of adolescents and adults from Colombia who participated in the 2010 National Nutrition Survey (ENSIN) and investigated the association between AHEI score and anthropometric outcomes related to obesity.

Methods

Participants

The 2010 Colombian National Nutrition Survey (Encuesta Nacional de la Situación Nutricional en Colombia 2010 (ENSIN 2010)) collected data from a nationally representative sample of 50 760 participants, selected through multistage cluster random sampling(Reference Fonseca Centeno, Heredia Vargas and Ocampo Téllez16). Of these, 6841 were adolescents aged 10–17 years and 7130 adults aged 18–65 years. All those who completed the survey’s food frequency questionnaire (FFQ) were eligible for inclusion in the current analyses.

Demographic and socio-economic data were collected through a validated questionnaire developed for the National Demographic and Health Survey and administered before the nutritional survey. Information on age, sex, geographical localisation (by national sub-region) and wealth index was also collected. The wealth index was developed by the National Demographic and Health Survey to estimate a household’s cumulative living standard (e.g. water access, television, type of vehicles, material used for housing construction). The population is categorised into quintiles to define their socio-economic status(17).

Dietary intake assessment

Dietary intake was evaluated using a validated FFQ through face-to-face interviews with trained staff. Monthly, weekly and daily consumption over the past year was enquired for thirty-two foods including meats (chicken, red and processed meat, fish), dairy products, vegetables, fruits, whole grains, nuts and legumes, sweetened beverages (including fruit juices), whole grains, sugar, coffee and ‘fast food’, as well as consumption of nutritional supplements. Since no specific portion sizes were employed in the survey, standard portion sizes were used to estimate daily food and nutrient intakes. These reference portion sizes were based on the Food-based Dietary Guidelines for the Colombian Population (Guías Alimentarias Basadas en Alimentos para la Población Colombiana Mayor de 2 Años) developed by the National Institute of Family Welfare (Instituto Colombiano de Bienestar Familiar)(18). The Colombian food composition table(19) was used to estimate daily total energy intake (TEI) (kilocalories), as well as consumption of fatty acids (polyunsaturated (PUFA), omega-3, and trans-fatty acids) and sodium.

Children of pre-school age (3–4 years) and of primary school (5–9 years) were excluded from our analyses – in Colombia, dietary reference intakes for these age groups are highly specific to physiological demands and focused on nutritional-related deficiencies rather than in the prevention of NCDs. We therefore restricted the diet quality assessment to adolescents (aged 10–17 years) and adults (aged 18 years and older). Participants were excluded from the final sample if they had 20 % or more missing data in the FFQ, or if they had unreliably low (<1st percentile) or high (>99th percentile) TEI values.

Dietary exposure: assessment of diet quality based on the Alternative Healthy-Eating Index score

The AHEI score was used as indicator of diet quality in adolescents and adults. The AHEI 2010 is comprised of eleven different food groups or components. Each component is scored using a ten-point scale, with zero being the lowest diet quality and 110 the highest. Six of these components are assumed to be of higher quality, namely higher scores indicate higher consumption of: (i) vegetables (excluding potatoes), (ii) fruits, (iii) nuts and legumes, (iv) whole grains, (v) n-3 fatty acids and (vi) PUFA (as percentage of TEI). The remaining five components are focused on moderation, with higher scores indicating lower or null consumption of: (i) sugar-sweetened beverages and juices, (ii) red and processed meat, (iii) trans-fatty acids (as percentage of TEI), (iv) sodium and (v) alcohol(Reference Chiuve, Fung and Rimm13). The ENSIN 2010 survey did not enquire about alcohol intake in adults (or adolescents); therefore, the maximum possible AHEI score in this survey was 100.

Outcomes

Waist circumference and body mass index (BMI) were used as outcomes of obesity, a known early risk factor for CVD and other NCDs. These anthropometric variables were measured by trained personnel using calibrated instruments. Waist circumference was measured following the Clinical Guidelines on the Identification, Evaluation, and Treatment of Overweight and Obesity in Adults(20). Height was measured to the nearest millimetre using a stadiometer, and weight was measured to the nearest 100 g, using SECA 872 scales. BMI was calculated in kg/m2, and the WHO recommendations were used to categorise adults as overweight or obese(21). In adolescents, sex-specific height for age and BMI for age z-scores were calculated following the WHO references(Reference de Onis, Onyango and Borghi22).

Self-perceived health was used as outcome of general health status and considered to be somewhat influenced by dietary behaviour. This outcome was ascertained based on a question about the participant’s perception of their health over the past year, ranking it with a semi-quantitative five-point scale, from 1 (worst) to 5 (excellent).

Statistical analyses

Socio-demographic, anthropometric and nutrition data were expressed as main tendency and frequency values, when appropriate. To assess the association between AHEI 2010 score and anthropometric outcomes, we used a linear regression model adjusted by age, sex, wealth index and sub-national region. Effect sizes were reported as β-coefficients and standard errors. Information on smoking habit was available in fewer than 500 of the subjects with outcome and dietary data; therefore, it was not included as potential confounder in the analyses. Associations with a P-value <0·05 were considered statistically significant. The association between AHEI 2010 score and general health status was examined with an ordinal logistic regression model, with effect sizes reported as odds ratios (OR), adjusting for the same four potential confounders used in the linear regressions. The standard child growth values were calculated using STATA WHO 2007 package. The analyses were carried out using statistical software STATA/se 13.0.

Results

A total of 13 316 participants (6566 adolescents and 6750 adults) were included in the study (Fig. 1). Approximately 58·8 % (n 7833) of the participants were women, and the average age was 24·5 ± 13·6 years. Socio-demographic characteristics are summarised in Table 1.

Fig. 1 Flowchart of participants included in the study

Table 1 General characteristics of adolescents and adults participating in the ENSIN 2010 survey*

* Age in years; SISBEN: ‘System of potential beneficiaries of social programs’; Wealth index summarises the participants’ socio-economic status, total energy intake in kJ/d and sodium intake in mg/d; AHEI: ‘Alternative Healthy Eating Index’ employed for diet quality assessment. Height in cm; weight in kg; waist circumference in cm; BMI in kg/m2; sex-specific height for age in z-score; sex-specific BMI for age in z-score. WHO references were employed to calculate specific z-scores in adolescents.

Unemployment category includes participants involved in housekeeping and those who are retired.

Adolescents

Table 1 describes the general anthropometric characteristics of adolescents and their dietary intake. Nearly 60 % of these participants considered they had a good health status. Their TEI averaged 8267 kJ/d, and they had a mean AHEI score of 29·3 (±7·2). The median intake of food components listed in the AHEI 2010 is described in Table 2. The daily intake of fruits and vegetables was below one portion each, whilst nearly 15 % of participants reported no consumption of whole grains.

Table 2 Alternative Healthy Eating Index (AHEI) scores for each dietary component

Proportion of total energy intake.

Adults

The TEI in adults was slightly lower than that of adolescents (Table 1), and their mean AHEI score was 30·5 ± 7·2 (Table 1). Over half of the participants reported having a good general health status. There was a low consumption of foods considered to be of better quality, with the median intake of fruits, vegetables and whole grains being below one portion each (Table 2).

Associations between diet quality, general health and anthropometric outcomes

The results of the adjusted regression models examining the association between AHEI score and the outcomes studied are shown in Table 3. The AHEI score was statistically negatively associated with self-perceived health, both in the whole study sample and when analysed separately by age group.

Table 3 Adjusted association between Alternative Healthy Eating Index (AHEI) 2010 score and self-perceived health

Ordinal logistic regression model adjusted by age, sex, socio-economic status and geographic region.

*P < 0·001.

Having a higher AHEI score was statistically negatively associated with height-for-age z-score in adolescents, whilst in adults AHEI score was associated with having a smaller waist circumference, and a lower BMI (Table 4).

Table 4 Association between the Alternative Healthy Eating Index (AHEI) 2010 score, BMI and anthropometric outcomes

All models were adjusted by age, sex, socio-economic status and geographic region. Waist circumference and BMI were the anthropometric measures used as dependent variables in adults. Sex-specific height for age and sex-specific BMI for age z-scores were used as anthropometry outcomes in adolescents.

*P < 0·05, **P < 0·01, ***P < 0·001.

Discussion

In this study, we examined the association between diet quality, anthropometric variables and self-perceived general health in a nationally representative sample of Colombian adolescents and adults. The average AHEI scores for adolescents and adults were 29·3 and 30, respectively, suggesting that the overall diet quality in this population was low. Our results show that a higher (better) AHEI score was associated with having a smaller waist circumference and a lower BMI, both in adolescents and in adults, and that a higher diet quality was negatively associated with self-perceived general health.

Waist circumference and BMI are closely related to the risk of type 2 diabetes mellitus, CVD and some types of cancer(23). A population-based study in Colombian adults found that those with a healthier dietary pattern had a BMI and waist circumference within the recommended range to prevent NCD(Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez24). Similarly, a study of Hispanic and Latino adults living in the USA reported that AHEI score was negatively associated with waist circumference(Reference Mattei, Sotres-Alvarez and Daviglus25). Although these results are based on cross-sectional observations, as those reported in our study, the findings suggest that a low-quality diet is likely to be contributing to the current burden of cardio-metabolic traits in Colombia(Reference Camargo-Ramos, Correa-Bautista and Correa-Rodríguez24) and in the rest of Latin America where obesity is five times more common in individuals with the unhealthiest eating behaviours(Reference Fisberg, Kovalskys and Gómez26).

The association between healthy dietary patterns and waist circumference in adolescents has been confirmed in other population-based studies in school-aged children from Colombia, where serum concentrations of non-esterified fatty acids were correlated with waist circumference(Reference Aristizabal, González-Zapata and Estrada-Restrepo27). Considering that fatty acid consumption is a strong AHEI component and is assessed based on three criteria, this index might be associated with abdominal obesity. Such an approach could provide useful insights to determine whether further health interventions should be employed in Colombia, where waist circumference and other measures of obesity have been associated with cardio-metabolic markers in young children(Reference Marin-Echeverri, Aristizabal and Gallego-Lopera28).

The negative association between self-perceived health (general health status) and diet quality reported in the current study might be due to several reasons. In low- and middle-income countries such as Colombia, obesogenic eating behaviours are still thought to be associated with privileged social position(Reference Muda, Kuate and Jalil29Reference Poobalan and Aucott31). Although this social perception of wellness is more intense in the poorest communities, it remains a widespread determinant of eating behaviour and a factor in the ongoing nutrition transition(Reference Mayén, Marques-Vidal and Paccaud32). Changing behaviours and beliefs about what a good diet should include are challenging issues and should be taken into consideration when designing public health policies and programmes.

Food preferences in low- and middle-income countries under transition are a concerning issue. Preferences for fast food, salty snacks and sugar-sweetened beverages were associated with psychological well-being and better self-perception of health(Reference Lee, Shelley and Liu33). Such positive response to unhealthy eating behaviours was described to be highly influenced by social determinants in transitional populations(Reference Haghighian Roudsari, Vedadhir and Amiri34), where novel sensatory experiences linked to recently introduced ultra-processed food and aggressive advertising campaigns have led to an idealisation of these products(Reference Bragg, Eby and Arshonsky35). To address this issue, some studies have proposed that restrictions against nocuous publicity should be applied to promote collective choices on healthy lifestyles in Latin America and Colombia(Reference De La Cruz Sánchez36).

Among the adolescent group, we found that diet quality was negatively associated with height-for-age z-score. Considering that this anthropometric measure is an indicator of long-term growth and development in adolescents, AHEI score might not be appropriate for the assessment of nutritional requirements in adolescents. Studies reporting the use of AHEI in adolescents are limited. Dahm et al. (Reference Dahm, Chomistek and Jakobsen37) reported an association between AHEI score during adolescence and the development of risk factors for CVD in mid-adulthood. However, they were unable to estimate the association between AHEI and anthropometric measures during adolescence since the participants were adult women who provided retrospective data on their dietary habits in high school years.

Our study has several strengths. We used a large and nationally representative sample of adolescents and adults from Colombia, from which we derived a diet quality score and obtained anthropometric measures. The ENSIN 2010 survey used a FFQ that captured several important staple foods consumed in the country, and deriving the AHEI score in a nationally representative sample of Colombian individuals facilitates international comparisons of diet quality. Our study also has some potential limitations. The ENSIN 2010 survey used a semi-quantitative FFQ, which did not include portion size estimates. We used reference standardised portion sizes to derive nutrient estimates, which might not necessarily represent the usual intake of the participants(18). However, the average estimated daily TEI was similar to what has been reported in similar populations of Colombia(Reference Monterrey, Cortés and Ariza38). As reported in other studies(Reference Dahm, Chomistek and Jakobsen37,Reference Harris, Willett and Vaidya39) , we were unable to include alcohol intake in the construction of the AHEI score as information on this variable was not available in the adult survey. Given the current trends in alcohol consumption in Latin America, it is possible that the overall quality of the diet would have been even lower than that reported here(Reference de la Espriella Guerrero, Rodriguez and Rincon40). Finally, the ENSIN survey contained partial information on smoking habit in fewer than 500 subjects with valid outcome and exposure data; therefore, we did not control for the potential confounding effect of this variable.

To our knowledge, this is the first study to examine diet quality in Colombian subjects, using data from the nationally representative ENSIN 2010 Survey. We found that diet quality was associated with some indicators of general health and predictors of NCD. The overall low diet quality found in this population highlights the need to strengthen public health actions that contribute to tackle the growing burden of NCD.

Acknowledgements

Acknowledgements: The authors are thankful to the National Ministry of Health in Colombia, Profamilia Foundation and the Instituto Colombiano de Bienestar Familiar, which authorised the access to provided ENSIN 2010 data. Financial support: This study was supported by the Departamento Administrativo de Ciencia, Tecnología e Innovación (COLCIENCIAS) through the Fondo para Investigación en Salud (FIS) (grant number: 860-2017 to G.M.-G.). Conflict of interest: None to declare. Authorship: G.M.-G.: Data management and calculation of diet quality index. This author was involved in the writing of the first draft of the manuscript. A.T.: Estimation of the associations between AHEI and health variables and verification of statistic methodology and results. This author was involved in the writing of results and discussion. V.G.-L.: Design of the study, supervision of analyses, nutritional data verification and interpretation. This author was involved in the writing of introduction, methods, results and discussion. Ethics of human subject participation: The PROFAMILIA Ethics Committee approved the ENSIN survey prior to data collection (Resolución 8430 de 1993; Ministerio de Salud de Colombia). All adult participants provided written informed consent, whilst children and adolescents provided an informed assent form, in accordance with the guidelines stated in the Declaration of Helsinki. The data for the current analyses are publicly available, and the Ministry of Health of Colombia authorised the use of the data set for these secondary analyses.

References

Barria, RM & Amigo, H (2006) Nutrition transition: a review of Latin American profile. Arch Latinoam Nutr 56, 311.Google ScholarPubMed
MacDonald, J, Brevard, PB, Lee, RE et al. (2009) Link between diet and cardiovascular disease in Latin America and the Caribbean using geographic information systems. Rev Panam Salud Publica 26, 290298.10.1590/S1020-49892009001000002CrossRefGoogle ScholarPubMed
Finck Barboza, C, Monteiro, SM, Barradas, SC et al. (2013) Physical activity, nutrition and behavior change in Latin America: a systematic review. Glob Health Promot 20, 6581.10.1177/1757975913502240CrossRefGoogle ScholarPubMed
Popkin, BM, Adair, LS & Ng, SW (2012) Global nutrition transition and the pandemic of obesity in developing countries. Nutr Rev 70, 321.10.1111/j.1753-4887.2011.00456.xCrossRefGoogle ScholarPubMed
Fleischer, NL & Diez Roux, AV (2013) Inequities in cardiovascular diseases in Latin America. Rev Peru Med Exp Salud Publica 30, 641648.Google ScholarPubMed
Parra, DC, Gomez, LF, Iannotti, L et al. (2018) Multilevel correlates of household anthropometric typologies in Colombian mothers and their infants. Glob Health Epidemiol Genom 3, e6.CrossRefGoogle ScholarPubMed
Cornwell, B, Villamor, E, Mora-Plazas, M et al. (2018) Processed and ultra-processed foods are associated with lower-quality nutrient profiles in children from Colombia. Public Health Nutr 21, 142147.10.1017/S1368980017000891CrossRefGoogle ScholarPubMed
Ramírez-Vélez, R, Correa-Bautista, JE, Ojeda-Pardo, ML et al. (2018) Optimal adherence to a Mediterranean diet and high muscular fitness are associated with a healthier cardiometabolic profile in collegiate students. Nutrients 10, 511. doi: 10.3390/nu10040511.CrossRefGoogle ScholarPubMed
Doubova, SV, Guanais, FC, Perez-Cuevas, R et al. (2016) Attributes of patient-centered primary care associated with the public perception of good healthcare quality in Brazil, Colombia, Mexico and El Salvador. Health Policy Plan 31, 834843.CrossRefGoogle ScholarPubMed
Dandamudi, A, Tommie, J, Nommsen-Rivers, L et al. (2018) Dietary patterns and breast cancer risk: a systematic review. Anticancer Res 38, 32093222.CrossRefGoogle ScholarPubMed
Garcia-Larsen, V, Morton, V, Norat, T et al. (2019) Dietary patterns derived from Principal Component Analysis (PCA) and risk of colorectal cancer: a systematic review and meta-analysis. Eur J Clin Nutr 73, 366386.CrossRefGoogle ScholarPubMed
Schwingshackl, L & Hoffmann, G (2015) Diet quality as assessed by the healthy eating index, the alternate healthy eating index, the dietary approaches to stop hypertension score, and health outcomes: a systematic review and meta-analysis of cohort studies. J Acad Nutr Diet 115, 780800.e785.CrossRefGoogle ScholarPubMed
Chiuve, SE, Fung, TT, Rimm, EB et al. (2012) Alternative dietary indices both strongly predict risk of chronic disease. J Nutr 142, 10091018.10.3945/jn.111.157222CrossRefGoogle ScholarPubMed
Mertens, E, Markey, O, Geleijnse, JM et al. (2018) Adherence to a healthy diet in relation to cardiovascular incidence and risk markers: evidence from the Caerphilly Prospective Study. Eur J Nutr 57, 12451258.CrossRefGoogle ScholarPubMed
Loprinzi, PD, Addoh, O & Mann, JR (2018) Association between dietary behavior and mortality among American adults with mobility limitations. Disabil Health J 11, 126129.CrossRefGoogle ScholarPubMed
Fonseca Centeno, Z, Heredia Vargas, AP, Ocampo Téllez, PR et al. (2011) Encuesta Nacional de la Situación Nutricional de 2010 [National Survey of the Nutritional Situation in 2010]. Bogotá: Ministerio de la Protección Social, Instituto Colombiano de Bienestar Familiar, Profamilia [Ministry for Social Protection, Colombian Institute of Family Welfare].Google Scholar
The DHS Program (2018) Wealth Index Construction. https://www.dhsprogram.com/topics/wealth-index/Wealth-Index-Construction.cfm (accessed July 2019).Google Scholar
Instituto Colombiano de Bienestar Familiar [Colombian Institute of Family Welfare] (2015) Guías Alimentarias Basada en Alimentos: Documento Técnico [Feeding Guidelines – Technical Report]. Bogota: Colombian Institute of Family Welfare.Google Scholar
Tabla de Composicion de Alimentos de Colombia [The Colombian Table of Food Composition] (2015). Bogota: The Ministry of Family Welfare.Google Scholar
NHLBI Obesity Education Initiative Expert Panel on the Identification E & Treatment of Obesity in Adults (US) (1998) Chapter 4: Treatment guidelines. In Clinical Guidelines on the Identification, Evaluation, and Treatment of Overweight and Obesity in Adults: The Evidence Report, pp. xivxx [National Heart, and Blood Institute, editor]. Bethesda: National Institutes of Health.Google Scholar
World Health Organization (1998) Obesity: Preventing and Managing the Global Epidemic. Geneva: World Health Organization.Google Scholar
de Onis, M, Onyango, AW, Borghi, E et al. (2007) Development of a WHO growth reference for school-aged children and adolescents. Bull World Health Organ 85, 660667.CrossRefGoogle ScholarPubMed
World Health Organization (2014) Global Status Report On Noncommunicable Diseases 2014. Geneva: World Health Organization.Google Scholar
Camargo-Ramos, CM, Correa-Bautista, JE, Correa-Rodríguez, M et al. (2017) Dietary inflammatory index and cardiometabolic risk parameters in overweight and sedentary subjects. Int J Environ Res Public Health 14, 1104.CrossRefGoogle ScholarPubMed
Mattei, J, Sotres-Alvarez, D, Daviglus, ML et al. (2016) Diet quality and its association with cardiometabolic risk factors vary by Hispanic and Latino ethnic background in the Hispanic Community Health Study/Study of Latinos. J Nutr 146, 20352044.CrossRefGoogle ScholarPubMed
Fisberg, M, Kovalskys, I, Gómez, G et al. (2018) Total and added sugar intake: assessment in Eight Latin American Countries. Nutrients 10, 389.CrossRefGoogle ScholarPubMed
Aristizabal, JC, González-Zapata, LI, Estrada-Restrepo, A et al. (2018) Concentrations of plasma free palmitoleic and dihomo-gamma linoleic fatty acids are higher in children with abdominal obesity. Nutrients 10, 31.10.3390/nu10010031CrossRefGoogle ScholarPubMed
Marin-Echeverri, C, Aristizabal, JC, Gallego-Lopera, N et al. (2018) Cardiometabolic risk factors in preschool children with abdominal obesity from Medellin, Colombia. J Pediatr Endocrinol Metab 31, 11791189.Google ScholarPubMed
Muda, WA, Kuate, D, Jalil, RA et al. (2015) Self-perception and quality of life among overweight and obese rural housewives in Kelantan, Malaysia. Health Qual Life Outcomes 13, 19.CrossRefGoogle ScholarPubMed
Pengpid, S & Peltzer, K (2017) The prevalence of underweight, overweight/obesity and their related lifestyle factors in Indonesia, 2014–2015. AIMS Public Health 4, 633649.10.3934/publichealth.2017.6.633CrossRefGoogle ScholarPubMed
Poobalan, A & Aucott, L (2016) Obesity among young adults in developing countries: a systematic overview. Curr Obes Rep 5, 213.CrossRefGoogle ScholarPubMed
Mayén, A-L, Marques-Vidal, P, Paccaud, F et al. (2014) Socioeconomic determinants of dietary patterns in low- and middle-income countries: a systematic review. Am J Clin Nutr 100, 15201531.CrossRefGoogle ScholarPubMed
Lee, Y-H, Shelley, M, Liu, C-T et al. (2018) Assessing the association of food preferences and self-reported psychological well-being among middle-aged and older adults in contemporary China-results from the China health and nutrition survey. Int J Environ Res Public Health 15, 463.10.3390/ijerph15030463CrossRefGoogle ScholarPubMed
Haghighian Roudsari, A, Vedadhir, A, Amiri, P et al. (2017) Psycho-socio-cultural determinants of food choice: a qualitative Study on Adults in Social and Cultural Context of Iran. Iran J Psychiatry 12, 241250.Google ScholarPubMed
Bragg, MA, Eby, M, Arshonsky, J et al. (2017) Comparison of online marketing techniques on food and beverage companies’ websites in six countries. Global Health 13, 79.CrossRefGoogle ScholarPubMed
De La Cruz Sánchez, E (2016) La transición nutricional. Abordaje desde de las políticas públicas en América Latina [Nutritional transition – a public policy approach in Latin America]. Opción 32, 379–302.Google Scholar
Dahm, CC, Chomistek, AK, Jakobsen, MU et al. (2016) Adolescent diet quality and cardiovascular disease risk factors and incident cardiovascular disease in middle-aged women. J Am Heart Assoc 5, e003583. doi: 10.1161/JAHA.116.003583.CrossRefGoogle ScholarPubMed
Monterrey, GP, Cortés, S L & Ariza, GM (2016) Características de la variación de la ingesta diaria de energía de las mujeres jóvenes universitarias de estratos socioeconómicos medios en la ciudad de Bogota [Characteristics of energy intake variations in middle class, young female university students in Bogota]. Rev Chil Nutr 43, 359367.Google Scholar
Harris, HR, Willett, WC, Vaidya, RL et al. (2016) Adolescent dietary patterns and premenopausal breast cancer incidence. Carcinogenesis 37, 376384.CrossRefGoogle ScholarPubMed
de la Espriella Guerrero, RA, Rodriguez, V, Rincon, CJ et al. (2016) Alcohol consumption in the Colombian population, 2015 national mental health survey. Rev Colomb Psiquiatr 45, Suppl. 1, 7688.10.1016/j.rcp.2016.05.002CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1 Flowchart of participants included in the study

Figure 1

Table 1 General characteristics of adolescents and adults participating in the ENSIN 2010 survey*

Figure 2

Table 2 Alternative Healthy Eating Index (AHEI) scores for each dietary component

Figure 3

Table 3 Adjusted association between Alternative Healthy Eating Index (AHEI) 2010 score and self-perceived health†

Figure 4

Table 4 Association between the Alternative Healthy Eating Index (AHEI) 2010 score, BMI and anthropometric outcomes†