Hostname: page-component-78c5997874-xbtfd Total loading time: 0 Render date: 2024-11-05T12:23:54.918Z Has data issue: false hasContentIssue false

The double burden of malnutrition in under-five children at national and individual levels: observed and expected prevalence in ninety-three low- and middle-income countries

Published online by Cambridge University Press:  07 July 2020

Beatriz Raffi Lerm
Affiliation:
International Center for Equity in Health, Post-Graduate Program in Epidemiology, Federal University of Pelotas, Pelotas, RS96020-220, Brazil
Inácio Crochemore-Silva*
Affiliation:
International Center for Equity in Health, Post-Graduate Program in Epidemiology, Federal University of Pelotas, Pelotas, RS96020-220, Brazil
Janaína Calu Costa
Affiliation:
International Center for Equity in Health, Post-Graduate Program in Epidemiology, Federal University of Pelotas, Pelotas, RS96020-220, Brazil
Cesar Gomes Victora
Affiliation:
International Center for Equity in Health, Post-Graduate Program in Epidemiology, Federal University of Pelotas, Pelotas, RS96020-220, Brazil
*
*Corresponding author: Email [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Objective:

To assess whether the observed prevalence of the double burden of malnutrition (DBM) would be higher than expected on the basis of chance, through analyses at national, wealth quintile and individual child levels.

Design:

We selected nationally representative surveys from low- and middle-income countries (LMIC) carried out since 2005 with anthropometric measures on children under 5 years of age. Household wealth was assessed through asset indices. The expected prevalence of DBM was estimated by multiplying the prevalence of stunting (low height/length for age) and overweight (high weight for height/length). The WHO recommended cut-offs (20% for stunting and 10% for overweight) that were used to define DBM at national level. DBM at individual level was defined as co-occurrence of stunting and overweight in the same child.

Setting:

Nationally representative surveys from ninety-three LMIC.

Participants:

A total of 825 633 children were studied.

Results:

DBM at national level was observed in five countries, whereas it would be expected to occur in eleven countries. Six countries did not present evidence of DBM at national level but did so in at least one wealth quintile. At individual level, thirty countries (32·3%) showed higher prevalence of DBM than would be expected, but most differences were small except for Syria, Azerbaijan, Albania and Egypt.

Conclusions:

The observed number of countries or socio-economic subgroups within countries with the DBM using recommended thresholds was below what would be expected by chance. However, individual-level analyses showed that one-third of countries presented higher prevalence of DBM than would be expected.

Type
Research paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2020. Published by Cambridge University Press on behalf of The Nutrition Society

The coexistence of contrasting extremes of the malnutrition spectrum, such as stunting and overweight, is known as the double burden of malnutrition (DBM). This phenomenon(Reference Tzioumis and Adair1,2) has been described at the individual level, when the same person presents both short stature and overweight(Reference Pomeroy, Stock and Stanojevic3), at household level, when stunting and overweight affect different members (often when children present undernutrition and their mothers are overweight)(Reference Kosaka and Umezaki4,Reference Popkin, Corvalan and Grummer-Strawn5) and at the population level, when prevalence of both stunting and overweight is high within the same population group(Reference Black, Victora and Walker6). Regarding the latter definition, the 2019 Joint Child Malnutrition Estimates Report(7) highlighted the lack of estimates on the proportion of children who are affected by both stunting and overweight.

International organisations state that the DBM poses a novel public health challenge for low- and middle-income countries (LMIC)(2), where high levels of undernutrition persist and overweight is on the rise(Reference Tzioumis and Adair1,Reference Pomeroy, Stock and Stanojevic3) . While stunting is strongly related to poverty, resulting from poor diets, inadequate care and repeated infections(Reference De Onis and Branca8), the association between overweight and family wealth is less clear in LMIC settings(Reference Black, Victora and Walker6,9Reference Tzioumis, Kay and Bentley13) .

The DBM at population level has been described by several authors, with variable definitions(Reference Tzioumis and Adair1,Reference Popkin, Corvalan and Grummer-Strawn5,Reference Freire, Silva-Jaramillo and Ramirez-Luzuriaga11Reference Tzioumis, Kay and Bentley13) . For children under 5 years of age, a national prevalence of stunting above 20% or a prevalence of overweight above 10% has been suggested as indicating public health concerns(Reference De Onis, Borghi and Arimond14,15) . In the current analyses, we describe how many LMIC with recent surveys present both problems, using these criteria.

However, even if a given country presents high prevalence of both stunting and overweight, these problems may be affecting different subgroups of the population, for example, stunting being common among children from poor families and overweight affecting those from wealthy families. Our second set of analyses investigate the prevalence of each condition by household’s wealth quintiles in LMIC.

Our third set of analyses address the request by the 2019 Joint Child Malnutrition Estimates Report(7) for estimates of the DBM at the individual child level. Rather than rely solely on the prevalence of stunting and overweight(Reference Corsi, Finlay and Subramanian16Reference Jehn and Brewis18), our approach also recognises that the overlap between the two conditions may occur due to chance. For instance, Dieffenbach & Stein(Reference Dieffenbach and Stein17), studying the co-occurrence of stunted children and overweight mothers within each household in 112 surveys from fifty-four countries, found little evidence of such a ‘double burden’ combination once chance was accounted for. We applied the same approach to compare our estimate at individual level with what would be predicted by chance alone.

The current analyses contribute to the literature by taking into account that the DBM, both at population and at individual levels, may be present due to chance. This requires estimating the expected prevalence at each level and comparing it with observed prevalence. This will allow a critical assessment of present estimates of the magnitude of double burden at individual and population levels.

Methods

Data sources and measurements

The current analyses are based on Demographic and Health Surveys(19) and Multiple Indicators Clusters Surveys(20). These are nationally representative surveys which collect data on reproductive, maternal, neonatal and child health and nutrition in LMIC. Both surveys are similarly designed, using multistage cluster sampling and standardised questionnaires and data collection procedures, allowing therefore comparability of results(Reference Hancioglu and Arnold21).

Publicly available data from Demographic and Health Surveys and Multiple Indicators Clusters Surveys have been processed and reanalysed by the International Center for Equity in Health (ICEH) at the Federal University of Pelotas (Brazil) to provide disaggregated estimates that enable the study of social and economic inequalities. The ICEH database currently comprises 224 Demographic and Health Surveys and 116 Multiple Indicators Clusters Surveys from 114 countries. The current analyses included the most recent Demographic and Health Surveys or Multiple Indicators Clusters Surveys from each country carried out from 2005 to 2017, in which anthropometric data were available for children under 5 years of age.

For the anthropometric assessment, measuring boards were used to obtain recumbent length for children under 2 years of age and standing height for the older children. Weight was measured using portable digital scales. Children under 2 years of age were weighted while on an adult’s lap, and afterwards the weight of the adult was subtracted(22,23) . Stunting prevalence was defined as the proportion of children presenting height/length for age below –2 sd relative to the median of the WHO Child Growth Standards(24). Overweight prevalence was defined as the proportion of children with weight for height/length above +2 sd from the median of the reference curve for their age(24). Ages of the children were estimated by subtracting the birth date (reported by the mother or caregiver) from the interview date; some older surveys only had data on month of birth, and the 15th of each month was used as the day of birth. Children who presented both stunting and overweight were considered as suffering from the DBM at individual level.

Wealth indices were calculated at household level for each survey, based on a score of assets, home construction materials and facilities (e.g., water and electricity) obtained through principal components analyses(Reference Barros and Victora25). The first component resulting from these analyses was divided into quintiles, with the first representing the poorest 20% of all households in the sample, and the fifth representing the wealthiest 20%(Reference Howe, Galobardes and Matijasevich26). Considering that fertility rates and household sizes are larger among the poor, the proportion of children tends to be slightly above 20% in the poorest quintiles and below 20% in the richest quintiles. Cuba and Djibouti were excluded from wealth-specific analyses due to lack of information on variables needed to estimate the asset index.

Data analyses

Descriptive analyses include estimates of the DBM at individual level and of the prevalence of stunting and overweight at national level and for wealth quintiles. Point estimates and 95% CI are presented. Results are summarised by world regions and country’s income groups, using the median value and interquartile range (IQR) for the three outcomes. The UNICEF classification was used to characterise seven regions: West and Central Africa, Eastern and Southern Africa, Middle East and North Africa, Europe and Central Asia, South Asia, East Asia and the Pacific and Latin America and the Caribbean. Income groups were based on the World Bank’s classification, which takes into account the country’s gross national income per capita in 2017–2018 as follows: low income (gross national income ≤$1005), lower-middle income (gross national income $1006–$3955) and upper-middle income (gross national income $3956–$12 235)(27,28) .

Correlations between the prevalence of stunting and overweight at national level and in each wealth quintile, region and income group were assessed using Spearman’s rank-order coefficients. This method was chosen, given the asymmetric distribution of the stunting and overweight estimates.

All data were analysed using Stata (Stata Statistical Software: Release 15; StataCorp LLC), taking into account the complex sampling structure of the surveys and the sampling weights. All the data used are publicly available, and ethical clearance for data collection was under the responsibility of the national institutions that administered the surveys.

Characterisation of the double burden

We used two definitions of DBM, one for population-level and another for individual-level analyses. At population level, the number of countries presenting the DBM was estimated based on thresholds of high prevalence suggested by international organisations, namely, prevalence above 20 and 10% for stunting and overweight, respectively(Reference De Onis, Borghi and Arimond14,15) . The expected number of countries with DBM was estimated using by multiplying the proportion of countries with high stunting prevalence by the proportion with high overweight prevalence. The same approach was also used to assess the DBM within wealth quintiles.

For individual-level analyses, the observed estimates of the DBM were compared with the expected probabilities of children presenting both stunting and overweight due to chance (assuming that the two conditions were independent from one another) using the formula:

$$P\left( {{\rm{DBM}}} \right) = P\left( {{\rm{stunting}}} \right)\times P\left( {{\rm{overweight}}} \right).$$

The variance for the expected DBM prevalence was calculated as follows:

$$var_{{\rm{DBM}}} = var_{{\rm{stunting}}} \times var_{{\rm{overweight}}} + var_{{\rm{stunting}}}\times {\left( {{E_{{\rm{overweight}}}}} \right)^2} + var_{{\rm{overweight}}}\times {\left( {{E_{{\rm{stunting}}}}} \right)^2},$$

where E = estimate and var = se 2(n). The variance estimate was used to calculate 95% CI.

The observed DBM prevalence at individual level was reported as higher than expected when the lower limit of its 95% CI was above the upper limit of the 95% CI for the expected prevalence. By subtracting the observed prevalence by the expected prevalence, we assessed the magnitude of the excess of DBM at individual level in each country, expressed in percentage points.

Results

Ninety-three LMIC had eligible surveys carried out between 2005 and 2017 (median year was 2013), which were included in the analyses. Twenty-six low-income, forty-three lower-middle- and twenty-four upper-middle-income countries were assessed. The median number of children per survey was 5481 (IQR 2895–9165), and the total number of children was 825 633.

Analyses at national level

Stunting prevalence varied from 2·5% (95% CI 1·2, 5·2) in St. Lucia to 55·9% (95% CI 54·2, 57·7) in Burundi, whilst overweight prevalence ranged from 0·9% (95% CI 0·8, 1·2) in Senegal to 22·3% (95% CI 19·5, 26·0) in Montenegro. Results by country are available in the online supplementary material, Supplemental Table 1.

Globally, the median prevalence was 25·5% (IQR 12·9–35·3) for stunting, 5·2% (IQR 2·8–8·2) for overweight and 1·4% (IQR 0·9–2·6) for both conditions present in the same child. Differences among country’s income groups and world regions are presented in Table 1. Stunting prevalence was highest in low-income countries, whereas overweight was most frequent in upper-middle-income countries. Double burden prevalence did not vary among country’s income groups but was highest in the Middle East and North Africa (3·4%) and the lowest in Latin America and the Caribbean (0·6%).

Table 1 Correlation and prevalence of stunting and overweight and double burden at individual level, globally, by country’s income group and world region in low- and middle-income countries with a survey since 2005

* P-level (Kruskal–Wallis test) comparing prevalence of the outcomes among country’s income groups and world regions.

Spearman’s correlation coefficient between stunting and overweight prevalence within country’s income groups and world regions, with countries as the units of analyses.

Spearman’s correlation coefficients were calculated within each group of countries. Using all countries as the units of analysis, there was a moderate inverse correlation between stunting and overweight prevalence (r –0·51; P < 0·001; Table 1). Despite the inverse correlation between stunting and overweight at global level, the two outcomes were not correlated within low-income countries (r 0·13; P = 0·519), nor within upper-middle-income countries (r –0·16; P = 0·450). The inverse correlation was only observed within lower-middle-income countries (r –0·42; P = 0·005; see Table 1 and online supplementary material, Supplemental Fig. 1). Correlations within each region were non-significant and difficult to interpret due to the small number of countries in each group (Table 1).

Table 2 shows the number of countries where the DBM was expected and the number where it was present. Five of the ninety-three countries had point estimates for both stunting and overweight prevalence above the international thresholds (Table 2 and Fig. 1), whereas eleven countries would be expected to present DBM by chance alone (Table 2). In all five countries (Azerbaijan, Djibouti, Egypt, Iraq and Syria), the lower limits of the 95% CI for the national estimates were above the international thresholds for both stunting and overweight (see online supplementary material, Supplemental Table 1 for the CI). In summary, there was evidence of regional variability in DBM prevalence, but it did not vary by country income, and the number of countries affected was lower than what would be expected by chance.

Table 2 Expected and observed numbers of countries and wealth quintiles presenting the double burden of malnutrition

At national level, ninety-three countries were assessed. In each wealth quintiles, ninety-one countries were assessed.

Fig. 1 Countries according to their stunting and overweight prevalence

Analyses by wealth quintile

To address whether DBM may be affecting children from different socio-economic strata within the same country, analyses by wealth quintile were performed. Table 3 is complementary to Table 2, by showing the five countries with evidence of DBM, as well as another six countries where there was no such evidence at national level, but where DBM was present in at least one wealth quintile. In Syria, the DBM was present at national level and in all quintiles, while in Egypt, it was present in four quintiles (the exception being the middle quintile). In Azerbaijan and Uzbekistan, the DBM was observed in the three poorest quintiles. Some countries did not present evidence of DBM at national level but did so in at least one quintile: Albania, Bhutan, Comoros, Georgia, Rwanda and Uzbekistan. Summing up, there was no evidence that countries with DBM presented a combination of stunting among children from poor households and overweight among those from wealthy families.

Table 3 Countries with point estimates for stunting ≥20% and overweight ≥10% at national level and/or wealth quintile levels

Analyses at individual level

The last set of analyses refer to the presence of DBM at individual rather than country or quintile level. The last columns in Table 1 show that the median national values of DBM prevalence did not vary by country’s income groups.

Fig. 2 shows the individual-level analyses by country. The proportion of children with DBM ranged from 0·2% (95% CI 0·1, 0·6) in Kosovo to 10·9% (95% CI 10·0, 11·8) in Syria. A total of thirty countries (32·3%) presented the lower limit value of the 95% CI for the observed prevalence above the upper limit of the expected prevalence (Fig. 2), and only in Peru and Honduras, the observed prevalence was significantly lower than expected. Eighteen of these countries had a difference between the observed and expected values of <2 percentage points. The highest differences were observed in countries with high DBM prevalence – Syria, Azerbaijan, Albania and Egypt – where the observed prevalence was >4 percentage points compared with the expected value.

Fig. 2 Countries observed and expected prevalence of double burden of malnutrition at individual level and its respective CI, by World Bank income groups

Discussion

We reported on the prevalence of stunting, overweight and of both conditions among children under 5 years of age through analyses at individual and population levels. The analyses by country’s income groups confirm the inverse association between national wealth and stunting prevalence and its direct association with overweight prevalence. In contrast, DBM prevalence was 1·5% or lower in most income or regional groups. Still in the country-level analyses, stunting prevalence was inversely and moderately correlated with overweight prevalence, at national level for all ninety-three countries, but this association was driven by lower-middle-income countries, where the number of stunted children dropped rapidly and that of overweight children increased markedly from 2000 to 2017(15). As shown in the online supplementary material, Supplemental Fig. 1, regardless of the frequency of stunting, overweight tends to be rare in low-income countries and high in upper-middle-income countries. Only lower-middle-income countries seem to have sufficient heterogeneity in both indicators to result in a significant, inverse correlation. It should be noted that our correlation analyses are simply descriptive, and there is no attempt to assess causality. In addition, the cross-sectional nature of the current analyses, based on the most recent available surveys, do not reflect trends over time. Nevertheless, the presence of DBM likely reflects the ongoing nutrition transition in a given setting(2).

Still at national level, the number of countries presenting the DBM (defined as stunting prevalence ≥ 20% and overweight prevalence ≥ 10%) was lower than what would be expected by chance. Only five countries – including four of the ten countries from the Middle East and North Africa region in our analyses – presented evidence of the DBM at national level. It should be noted that we do not have data for North African countries such as Algeria, Libya, Morocco and Tunisia, where this problem may also be present. We found a single study that attempted to identify LMIC where the DBM was present among children under 5 years of age at national level, rather than at individual level. Tzioumis et al.(Reference Tzioumis, Kay and Bentley13) analysed thirty-six countries and defined that the DBM was a ratio of stunting prevalence to overweight prevalence close to 1·0. Only four countries (Armenia, Egypt, Dominican Republic and Jordan) had ratios below 1·5 and were identified as presenting DBM using this criterion. Of the above countries, Egypt was classified by our analyses as presenting the DBM at national level, and Dominican Republic was not; Armenia and Jordan were not studied. The lack of national studies on DBM prevalence at population level is likely due to the fact that although the population prevalence threshold of 20% for defining stunting as a public health problem has been available for decades(Reference Ferro-Luzzi, Garza and Haas29), only recently the 10% cut-off for overweight prevalence was proposed by international agencies(Reference De Onis, Borghi and Arimond14,15) .

Next, we examined whether children from a particular wealth quintile were more likely to be affected by DBM. Two studies – from Ghana(Reference Atsu, Guure and Laar30) and Mexico(Reference Fernald and Neufeld31) – reported higher prevalence of the double burden among children from the poorest quintiles. Nevertheless, our analyses did not support these findings (Table 3), as no clear patterns of DBM by wealth were found. We did not find any similar analyses in the published literature.

A critique of most of analyses of DBM is lack of recognition that, due to chance alone, stunting and overweight may coexist at population, household or individual level(Reference Dieffenbach and Stein17). Examples of such analyses include the recent Lancet series on DBM (data in the web annex)(Reference Popkin, Corvalan and Grummer-Strawn5), the above-cited article by Tzioumis et al.(Reference Tzioumis, Kay and Bentley13) and the work of Bates et al.(Reference Bates, Gjonca and Leone32) who estimated DBM at individual level (which they refer to as ‘stuntedoverweight’ children) in seventy-nine LMIC, with prevalence ranging from 0·3% in Senegal to 11·7% in Guinea-Bissau.

In our analyses, national prevalence of the DBM at individual level ranged from 0·2% to 10·9%, which is consistent with the literature(Reference Tzioumis, Kay and Bentley13,Reference Bates, Gjonca and Leone32Reference Rachmi, Agho and Li34) and also consistent with the overall estimate 2·0% (ranged from 0·0% in Niue to 10·1% in Egypt) from the Global School-Based Student Health and Health Behavior in School-Aged Children surveys conducted in fifty-seven LMIC(Reference Caleyachetty, Thomas and Kengne35). In thirty of the ninety-three countries in our analyses, more children presented DBM than would be expected by chance, although in most countries, the excess was rather small. The largest excesses were observed in countries from Sub-Saharan Africa, the Middle East and in Eastern Europe and Central Asia.

A few articles considered the expected prevalence when assessing the co-occurrence of stunting and overweight in children. The observed prevalence was lower than the expected in children aged 5–11 years from Ecuador(Reference Freire, Silva-Jaramillo and Ramirez-Luzuriaga11) and among children aged 5–12 years from Colombia(Reference Sarmiento, Parra and Gonzalez36). In contrast, a study of Indian children aged 6–59 months reported that in twenty-five of the thirty-six states studied, the observed DBM prevalence was significantly higher than would be expected(Reference Varghese and Stein37).

Our approach enhances the above analyses by also accounting for the variability not only around the observed prevalence but also around the expected DBM prevalence. Additional strengths of our analyses include the large number of countries studied and the use of nationally representative surveys which are highly comparable(Reference Hancioglu and Arnold21).

The limitations of our analyses include the fact that surveys were spread out over several years (from 2005 up to 2017) and the fact that a large proportion of the surveys come from low-income and lower-middle-income countries, with more restricted representation of upper-middle-income or high-income countries. To assess whether the inclusion of older surveys would affect the results, we restricted the analyses to eighty-one surveys carried out in 2010 or later. The proportion of countries with national-level evidence of the DBM falls from 5·4% (all surveys) to 2·5% (more recent surveys). Likewise, evidence of DBM at individual level falls from 32·3 to 27·2%, respectively. These reductions were mostly due to declines in the prevalence of stunting over time. Thus, there is no evidence of higher DBM prevalence in newer surveys. We did not exclude countries affected by humanitarian crises, such as Syria and Yemen, because we aimed at describing the situation in as many countries as possible. In addition, there is no agreement on a precise definition for ‘conflict’ nor on the length of post-conflict period during which populations may still experience its consequences(Reference Bhutta, Yousafzai and Zipursky38). Results on these countries should be interpreted while bearing in mind their special conditions, as in the short-term humanitarian emergencies are likely to affect overweight, and in the long term both stunting and overweight prevalence.

It is important to note that quintiles are relative measures of socio-economic position and that, for example, the poorest quintile in a given country could be similar in terms of wealth to say the third quintile in another country. Despite this limitation, the descriptive analyses by quintiles were important to address the possibility that, within each country, DBM would be more common in a particular socio-economic group. In addition, several authors postulate that relative poverty is as important in predicting deprivation(Reference Sen39) and health status(Reference Marmot40) as is absolute poverty.

Another limitation is that the expected prevalence of DBM was calculated assuming the independence of stunting and overweight(Reference Bove, Miranda and Campoy42). However, both events are possibly biologically related(Reference Barker43) and may share common determinants and mechanisms including the microbiome, hormonal regulation and lean and fat mass growth patterns(Reference Wells and Victora44). In addition, stunting and overweight may be related mathematically, since height – used to evaluate stunting – is also in the denominator of weight for height/length, which is utilised to characterise overweight. By assuming that the two conditions are independent, we opted for a conservative approach in calculating the expected prevalence levels. Indeed, our finding that in many countries the observed prevalence is somewhat higher than the expected level may be an indication that the two conditions are indeed biologically related. Finally, our results on DBM prevalence are limited to young children, whereas overweight(Reference Cole, Bellizzi and Flegal41) and likely DBM prevalence increase with age.

Recently, the Lancet Series on the DBM addressed the dynamics of DBM, its aetiological pathways and consequences for health, its economics effects and programmatic and policy implications(Reference Popkin, Corvalan and Grummer-Strawn5,Reference Wells and Victora44Reference Nugent, Levin and Hale46) . A broad definition of DBM was adopted, including presence of stunting among children, overweight among children and adults, as well as micronutrient deficiencies. None of the analyses in this series took into account the expected prevalence of DBM. The series provides a thorough review of the causes of the DBM, such as early life nutrition, diet diversity, food environments and socio-economic factors. It advocates for so-called double-duty actions against DBM(Reference Hawkes, Ruel and Salm45) at multiple levels, including health services, social safety nets, educational settings and agriculture, food systems and food environments.

Summing up, we provide a comprehensive overview of the occurrence of the DBM in children at population and individual levels. We find that few countries and few wealth groups within countries present evidence of a DBM epidemic. The main conclusion from the individual level analyses is that in one-third of the countries, the proportions of children presenting both stunting and overweight are slightly higher than would be expected by change. Continued monitoring of DBM prevalence at national and individual levels is essential for assessing the progress of the epidemic and for providing guidance to national and international policies.

Acknowledgements

Acknowledgements: The authors are grateful to the ICEH for the routine data used in the manuscript, Luís Paulo Vidaletti (ICEH) and Fernanda Ewerling (ICEH) for statistical advice, Fatima Maia for the supervision of the literature review and Giovanna Gatica (ICEH) for nutritional insights. Financial support: The current work was supported by the Bill & Melinda Gates Foundation (grant no. OPP1135522), Wellcome Trust (grant no. 101815/Z/13/Z) and Associação Brasileira de Saúde Coletiva. These groups had no role in the design, analysis or writing of the current article. Conflict of interest: There are no conflicts of interest. Authorship: B.R.L., I.C.S. and C.G.V. designed the study, B.R.L. analysed the data and all authors interpreted the results and contributed in writing the manuscript. All authors read and approved the final manuscript. Ethics of human subject participation: The study was based on publicly available data, and ethical clearance was the responsibility of the institutions that administered the surveys.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980020001226

References

Tzioumis, E & Adair, LS (2014) Childhood dual burden of under- and overnutrition in low- and middle-income countries: a critical review. Food Nutr Bull 35, 230243.CrossRefGoogle ScholarPubMed
World Health Organization (WHO) (2017) Double-Duty Actions for Nutrition: Policy Brief. Geneva: WHO.Google Scholar
Pomeroy, E, Stock, JT, Stanojevic, S et al. (2014) Stunting, adiposity, and the individual-level “dual burden” among urban lowland and rural highland Peruvian children. Am J Hum Biol 26, 481490.CrossRefGoogle ScholarPubMed
Kosaka, S & Umezaki, M (2017) A systematic review of the prevalence and predictors of the double burden of malnutrition within households. Br J Nutr 117, 11181127.CrossRefGoogle ScholarPubMed
Popkin, BM, Corvalan, C & Grummer-Strawn, LM (2020) Dynamics of the double burden of malnutrition and the changing nutrition reality. Lancet 395, 6574.CrossRefGoogle ScholarPubMed
Black, RE, Victora, CG, Walker, SP et al. (2013) Maternal and child undernutrition and overweight in low-income and middle-income countries. Lancet 382, 427451.CrossRefGoogle ScholarPubMed
United Nations International Children’s Emergency Fund (UNICEF), World Health Organization (WHO) & International Bank for Reconstruction and Development – World Bank (2019) Levels and Trends in Child Malnutrition: Joint Child Malnutrition Estimates: Key Findings of the 2019 Edition. New York: UNICEF.Google Scholar
De Onis, M & Branca, F (2016) Childhood stunting: a global perspective. Matern Child Nutr 12(S1), 1226.CrossRefGoogle ScholarPubMed
Food and Agriculture Organization of the United Nations (2006) The double burden of malnutrition: case studies from six developing countries. FAO Food Nutr Pap 84, 1334.Google Scholar
Development Initiatives Poverty Research (2018) Global Nutrition Report: Shining a Light to Spur Action on Nutrition. Bristol: Development Initiatives.Google Scholar
Freire, WB, Silva-Jaramillo, KM, Ramirez-Luzuriaga, MJ et al. (2014) The double burden of undernutrition and excess body weight in Ecuador. Am J Clin Nutr 100, 1636S1643S.CrossRefGoogle ScholarPubMed
Le Nguyen, BK, Le Thi, H, Nguyen Do, VA et al. (2013) Double burden of undernutrition and overnutrition in Vietnam in 2011: results of the SEANUTS study in 0.5–11-year-old children. Br J Nutr 110, Suppl. 3, S45S56.CrossRefGoogle ScholarPubMed
Tzioumis, E, Kay, MC, Bentley, ME et al. (2016) Prevalence and trends in the childhood dual burden of malnutrition in low- and middle-income countries, 1990–2012. Public Health Nutr 19, 13751388.CrossRefGoogle ScholarPubMed
De Onis, M, Borghi, E, Arimond, M et al. (2018) Prevalence thresholds for wasting, overweight and stunting in children under 5 years. Public Health Nutr 22, 175179.CrossRefGoogle ScholarPubMed
United Nations International Children’s Emergency Fund (UNICEF), World Health Organization (WHO) & World Bank Group (2018) Levels and Trends in Child Malnutrition: Key Findings of the 2018 Edition of the Joint Child Malnutrition Estimates. New York: UNICEF.Google Scholar
Corsi, DJ, Finlay, JE & Subramanian, SV (2011) Global burden of double malnutrition: has anyone seen it? PLoS One 6, e25120.CrossRefGoogle Scholar
Dieffenbach, S & Stein, AD (2012) Stunted child/overweight mother pairs represent a statistical artifact, not a distinct entity. J Nutr 142, 771773.CrossRefGoogle Scholar
Jehn, M & Brewis, A (2009) Paradoxical malnutrition in mother-child pairs: untangling the phenomenon of over- and under-nutrition in underdeveloped economies. Econ Hum Biol 7, 2835.CrossRefGoogle ScholarPubMed
U.S. Agency for International Development (USAID) (2018) The Demographic and Health Surveys (DHS). Calverton, MD: USAID.Google Scholar
United Nations International Children’s Emergency Fund (UNICEF) (2018) Multiple Indicator Cluster Surveys (MICS). New York: UNICEF.Google Scholar
Hancioglu, A & Arnold, F (2013) Measuring coverage in MNCH: tracking progress in health for women and children using DHS and MICS household surveys. PLoS Med 10, e1001391.CrossRefGoogle ScholarPubMed
United Nations International Children’s Emergency Fund (UNICEF) (2017) MICS Manual for Anthropometry. New York: UNICEF.Google Scholar
U.S. Agency for International Development (USAID) (2012) Biomarker Field Manual, Demographic and Health Surveys Methodology. Calverton, MD: USAID.Google Scholar
World Health Organization (WHO) (2006) WHO Child Growth Standards: Length/Height for Age, Weight-for-Age, Weight-for-Length, Weight-for-Height and Body Mass Index-for-Age, Methods and Development. Geneva: WHO.Google Scholar
Barros, AJD & Victora, CG (2013) Measuring coverage in MNCH: determining and interpreting inequalities in coverage of maternal, newborn, and child health interventions. PLoS Med 10, e1001390.CrossRefGoogle ScholarPubMed
Howe, LD, Galobardes, B, Matijasevich, A et al. (2012) Measuring socio-economic position for epidemiological studies in low-and middle-income countries: a methods of measurement in epidemiology paper. Int J Epidemiol 41, 871886.CrossRefGoogle ScholarPubMed
United Nations International Children’s Emergency Fund (UNICEF) (2017) Country, Regional and Divisional Annual Reports. New York: UNICEF.Google Scholar
World Bank Group (2018) World Bank Country and Lending Groups. New York: World Bank.Google Scholar
Ferro-Luzzi, A, Garza, C, Haas, J et al. (1995) Physical Status: The Use and Interpretation of Anthropometry. Geneva: World Health Organization.Google Scholar
Atsu, BK, Guure, C & Laar, AK (2017) Determinants of overweight with concurrent stunting among Ghanaian children. BMC Pediatr 17, 177.CrossRefGoogle ScholarPubMed
Fernald, LC & Neufeld, LM (2007) Overweight with concurrent stunting in very young children from rural Mexico: prevalence and associated factors. Eur J Clin Nutr 61, 623632.CrossRefGoogle ScholarPubMed
Bates, K, Gjonca, A & Leone, T (2017) Double burden or double counting of child malnutrition? The methodological and theoretical implications of stunting overweight in low and middle income countries. J Epidemiol Community Health 71, 779785.CrossRefGoogle ScholarPubMed
Piernas, C, Wang, D, Du, S et al. (2015) The double burden of under- and overnutrition and nutrient adequacy among Chinese preschool and school-aged children in 2009–2011. Eur J Clin Nutr 69, 1323.CrossRefGoogle ScholarPubMed
Rachmi, CN, Agho, KE, Li, M et al. (2016) Stunting coexisting with overweight in 2·0–4·9-year-old Indonesian children: prevalence, trends and associated risk factors from repeated cross-sectional surveys. Public Health Nutr 19, 26982707.CrossRefGoogle ScholarPubMed
Caleyachetty, R, Thomas, G, Kengne, AP et al. (2018) The double burden of malnutrition among adolescents: analysis of data from the global school-based student health and health behavior in school-aged children surveys in 57 low-and middle-income countries. Am J Clin Nutr 108, 414424.CrossRefGoogle ScholarPubMed
Sarmiento, OL, Parra, DC, Gonzalez, SA et al. (2014) The dual burden of malnutrition in Colombia. Am J Clin Nutr 100, 1628S1635S.CrossRefGoogle ScholarPubMed
Varghese, JS & Stein, AD (2019) Malnutrition among women and children in India: limited evidence of clustering of underweight, anemia, overweight, and stunting within individuals and households at both state and district levels. Am J Clin Nutr 109, 12071215.CrossRefGoogle ScholarPubMed
Bhutta, ZA, Yousafzai, AK & Zipursky, A (2010) Pediatrics, war, and children. Curr Probl Pediatr Adolesc Health Care 40, 2035.CrossRefGoogle ScholarPubMed
Sen, A (1992) Inequality Reexamined. Oxford: Oxford University Press.Google Scholar
Marmot, M (2017) The health gap: the challenge of an unequal world: the argument. Int J Epidemiol 46, 13121318.CrossRefGoogle ScholarPubMed
Cole, TJ, Bellizzi, MC, Flegal, KM et al. (2000) Establishing a standard definition for child overweight and obesity worldwide: international survey. BMJ 320, 1240.CrossRefGoogle ScholarPubMed
Bove, I, Miranda, T, Campoy, C et al. (2012) Stunting, overweight and child development impairment go hand in hand as key problems of early infancy: Uruguayan case. Early Hum Dev 88, 747751.CrossRefGoogle Scholar
Barker, DJP (1998) Mothers, Babies and Health in Later Life. London: Elsevier Health Sciences.Google Scholar
Wells, JC & Victora, CG (2005) Indices of whole-body and central adiposity for evaluating the metabolic load of obesity. Int J Obes 29, 483489.CrossRefGoogle ScholarPubMed
Hawkes, C, Ruel, MT, Salm, L et al. (2020) Double-duty actions: seizing programme and policy opportunities to address malnutrition in all its forms. Lancet 395, 142155.CrossRefGoogle ScholarPubMed
Nugent, R, Levin, C, Hale, J et al. (2020) Economic effects of the double burden of malnutrition. Lancet 395, 156164.CrossRefGoogle ScholarPubMed
Figure 0

Table 1 Correlation and prevalence of stunting and overweight and double burden at individual level, globally, by country’s income group and world region in low- and middle-income countries with a survey since 2005

Figure 1

Table 2 Expected and observed numbers of countries and wealth quintiles presenting the double burden of malnutrition

Figure 2

Fig. 1 Countries according to their stunting and overweight prevalence

Figure 3

Table 3 Countries with point estimates for stunting ≥20% and overweight ≥10% at national level and/or wealth quintile levels

Figure 4

Fig. 2 Countries observed and expected prevalence of double burden of malnutrition at individual level and its respective CI, by World Bank income groups

Supplementary material: File

Lerm et al. supplementary material

Tables S1-S2 and Figure S1

Download Lerm et al. supplementary material(File)
File 255.4 KB