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Dietary diversity, animal source food consumption and linear growth among children aged 1–5 years in Bandung, Indonesia: a longitudinal observational study

Published online by Cambridge University Press:  28 January 2016

Siti Muslimatun
Affiliation:
Southeast Asian Ministers of Education Organization Regional Center for Food and Nutrition/SEAMEO RECFON, Universitas Indonesia, Jakarta 10430, Indonesia Food Science Department, Indonesia International Institute for Life Sciences, Jakarta 13210, Indonesia
Luh Ade Ari Wiradnyani*
Affiliation:
Southeast Asian Ministers of Education Organization Regional Center for Food and Nutrition/SEAMEO RECFON, Universitas Indonesia, Jakarta 10430, Indonesia
*
*Corresponding author: L. A. A. Wiradnyani, fax +62 21 3913933, email [email protected]
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Abstract

Dietary diversity involves adequate intake of macronutrient and micronutrient. The inclusion of animal source foods (ASF) in the diet helps prevent multiple nutrient deficiencies and any resultant, linear growth retardation. The objective of the current study was to assess the relationship between dietary diversity, ASF consumption and height-for-age z-score (HAZ) among children aged 12–59 months old across a 1-year observation. This longitudinal observational study without controls was conducted among four age groups: 12–23 months (n 57), 24–35 months (n 56), 36–47 months (n 58) and 48–59 months (n 56). Anthropometry and dietary intake were measured during each of four visits at 16–20-week intervals. The general characteristics and other observations were only collected at baseline and endline. During the year-long study period, approximately 27 % of the children ate a diverse diet (consumed ≥6 out of 9 food groups) according to ≥3 visits. ASF consumption was high, particularly for eggs, poultry, processed meats and liquid milk. Yet, micronutrient intake inadequacy, especially of Zn, Ca, Fe and vitamin A, was highly prevalent. A multivariate regression analysis showed that the consumption of a diverse diet and ASF was not significantly associated with the HAZ at endline, after controlling for demographic characteristics and the baseline HAZ. The consumption of a diverse diet was significantly associated with Ca intake adequacy. Moreover, ASF consumption was significantly associated with adequate intake of protein and micronutrients, particularly vitamin A, Ca and Zn. Thus, the recommendation is to continue and strengthen the promotion of consuming a diverse diet that includes ASF in supporting the linear growth of young children.

Type
Full Papers
Copyright
Copyright © The Authors 2016 

Linear growth faltering is a major problem among children in Indonesia, as shown by the high prevalence of stunting. The national survey in 2013 showed that the growth of 37·2 % of children <5 years old was stunted. This figure is not significantly different from the results of the 2007 national survey( 1 ). The consequences of stunting include increased child mortality( Reference Bhutta, Das and Rizvi 2 ), prolonged illness, delayed psychomotor development and negative outcomes in adulthood( Reference Hautvast, van der Heijden and Luneta 3 ).

The inadequate intake of a quality diet rich in energy, protein and micronutrients is among the main contributing factors for stunting( Reference Stewart, Iannotti and Dewey 4 ), and it is common in developing countries such as Indonesia. Recent studies have shown that among Indonesian children aged 2–5 years the proportions of inadequate intake of energy and protein were 60·5 and 35·8 %, respectively. The proportions of inadequate intake of micronutrients such as Ca, Fe, vitamin C and vitamin A were even higher (80·9, 83·5, 84·3 and 79·1 %, respectively)( Reference Sandjaja, Budiman and Harahap 5 ).

Dietary diversity is one of the key elements of a quality diet, and it is thought to enhance the probability of the adequate intake of essential nutrients to promote good health. A more diverse diet is highly correlated with adequate energy and protein( Reference Swindale and Bilinsky 6 ), micronutrients( Reference Steyn, Nel and Nantel 7 , Reference Kennedy, Pedro and Seghieri 8 ), animal source food (ASF) protein intake and diet variety/balance( Reference Kennedy, Ballard and Dop 9 ).

ASF are of a better quality than plant source foods for supplying micronutrients and protein, because the former contain more of such elements with better bioavailability( Reference Neumann, Bwibo and Murphy 10 ). The most important micronutrients contained in ASF are Fe, Zn, Ca, riboflavin, vitamin A and vitamin B12. Hence, relatively small amounts of ASF can substantially increase nutrient adequacy( Reference Murphy and Allen 11 ). ASF consumption has been positively associated with better growth and mental development, less morbidity and anaemia, as well as higher immune function( Reference Michaelsen, Hoppe and Roos 12 ). Among school children in Kenya, food interventions containing milk and meat had a positive effect on height gain( Reference Grillenberger, Neumann and Murphy 13 ). Neumann et al.( Reference Neumann, Harris and Rogers 14 ) show that a child would need to consume 1·7–2·0 kg of maize and beans in a day to meet energy, Fe and Zn requirements. Similarly, children cannot meet daily Ca requirements if they rely solely on cereal-based diets.

In Indonesia, the practice of ‘infant and young child feeding’ among children aged 6–23 months showed that 54·2 % consumed meat/fish/poultry, 48·3 % consumed eggs and 8·8 % consumed milk. In terms of dietary diversity, 58·2 % of the children consumed ≥4 food groups( 15 ).

The objective of the current research was to study the interactions of dietary diversity, ASF consumption and height-for-age z score (HAZ) by examining the relationship between dietary diversity and nutrient intake adequacy among children aged 12–59 months over the course of a year. This longitudinal observation, with four dietary assessments over the 1-year period, was expected to better capture children’s typical dietary intake.

Methods

Study design and area

The current work was a longitudinal observational study without controls conducted in Bandung city, an urban area with a population of 2·4 million, around 120 km from Indonesia’s capital, Jakarta. The period of observation was 1 year with four assessments. The longitudinal study design was selected to capture the dynamics of feeding and care practices among children.

Subjects

The subjects were apparently healthy male and female children aged 12–59 months. Children who had symptoms of chronic/congenital diseases or disabilities, or who were twins or multiple births were not included in the study. During screening, we did not find any children who were severely malnourished (weight-for-height z-score <−3·00 sd). To obtain a better picture of the full age range (12–59 months), the children were stratified according to age groups of 12–23, 24–35, 36–47 and 48–59 months.

Sample size and sampling procedure

To detect a difference of 1 year length/height increment of 6 (9·48 sd) cm, a P value of 0·05, a power of 80 % and an anticipated dropout of 30 %, fifty-three subjects per age group were required( Reference Whitley and Ball 16 ). The study included 220 children (55 children×4 age groups).

The children were selected from eleven out of thirty growth monitoring posts (Posyandu), with the lowest mean for the HAZ included in previous studies assessing the sensitivity and specificity of dietary diversity scores with micronutrient intake (L Marlina, unpublished results). Each Posyandu covered 50–150 children under 5 years of age. The children from the eleven selected Posyandu were listed, and those meeting the inclusion criteria were grouped into their age strata. When the total number of children was more than that required within their age group, a simple random selection was used, with a goal of five children in each age group in every Posyandu.

Data collection procedures

Each subject underwent four assessments – at baseline, follow-up I, follow-up II and at endline – with intervals of 16–20 weeks between assessments. The interviews were conducted using structured, pre-tested questionnaires at each visit. Each interview took approximately 40 min for each mother/caregiver. The questionnaires for mothers/caregivers consisted of questions on household demographic data, socio-economic status, mothers/caregivers’ knowledge of health and nutrition, child care practices, child morbidity and the households’ access to water and sanitation. The children’s food intake was assessed using repeated 24-h recall of 2 non-consecutive days during each visit. Thus, within 1 year, there were 8 food recall d/child for those who fully participated. A set of food models was displayed to help mothers/caregivers estimate portion sizes when recalling the amounts of all of the foods and beverages consumed by their children on the recall days, from when the children woke up in the morning until they went to sleep in the evening, including any night feedings. The types of foods and ingredients, the ways in which the foods were prepared and the brands of certain foods (especially milk, dairy products and manufactured snacks) were recorded. The interviews and dietary assessments were conducted by trained enumerators, who also performed the weight and height/length measurements at baseline and endline using standardised procedures and equipment( Reference Gibson 17 ).

Ethical considerations

The researchers explained the study’s purpose and procedures at enrolment. Only subjects who gave written informed consent were recruited. Assurance was given that participation was voluntary and that no negative consequences would result for those who decided not to participate in the study or for those who withdrew during the study period. The study protocol received ethical clearance from the Ethical Committee of the Faculty of Medicine, Universitas Indonesia.

Data analysis

The data from the questionnaires were entered in SPSS version 16.0, and those from the dietary assessment were entered and converted into energy and nutrient intake using the NutriSurvey software program (www.nutrisurvey.de) based on Indonesian Food Composition Tables.

The data analysis was conducted using IBM SPSS version 20.0. Where appropriate, the data were checked for normality of distribution using the Kolmogorov–Smirnov test of normality. One of the two 24-h dietary recalls during each visit was selected randomly to measure the dietary diversity, which was calculated based on the nine food groups according to the Guidelines for Measuring Household and Individual Dietary Diversity:( Reference Kennedy, Ballard and Dop 9 ) (i) cereals/tubers/grains; (ii) meat, poultry, fish (flesh foods); (iii) milk and dairy products (excluding sweetened condensed milk); (iv) eggs; (v) nuts/legumes; (vi) vitamin A-rich fruits, vegetables and tubers; (vii) other fruits; (viii) other vegetables; and (ix) fats and oil. The dietary diversity was divided into ‘diverse diet’ (indicated by the consumption of ≥6 out of the 9 food groups) and ‘less diverse diet’ (indicated by the consumption of <6 out of the 9 food groups). Six food groups were used as the cut-off in this study based on a previous study conducted in an urban area of Mali( Reference Hatløy, Torheim and Oshaug 18 ), which was corroborated by another study in Bandung City that set the optimal cut-off point for the number of food groups that could identify micronutrient intake inadequacy among children aged 23–59 months with high sensitivity and specificity at 5·5 (Marlina, unpublished results). Subsequently, ASF were further subdivided into flesh foods (fish/seafoods, red meat, chicken and processed foods) and milk/dairy (powdered and liquid milk).

The estimation for the proportion of children with energy and nutrient intake inadequacy was calculated at baseline and endline using the PC-Side program based on two repeated 24-h recalls. The Indonesian’s RDA( 19 ) was used as the reference for nutrient adequacy. The estimated average intake (EAR) cut-off point method was applied to calculate vitamin A, Zn and Ca inadequacies( Reference Gibson 17 , 20 ). This study used the conversion factors for calculating the EAR provided by the WHO/FAO in 2006( 20 ). As the EAR for energy and protein intake was not specified, this study used 77 % of the RDA as the cut-off value to estimate the EAR, and in turn to calculate energy and protein intake inadequacies( Reference Gibson 17 ). The cut-off for inadequacy was calculated based on each child’s actual age at each visit. Nevertheless, among children aged 36–47 months, the baseline and endline used the same cut-off, even though the children were ≥48 months old at endline and ‘by reference’ had different cut-offs. For Fe, the conversion factor for children aged ≤9 years was not provided because of high variability and the skewed nature of the distribution of the requirement for Fe in this population sub-group. Hence, a full-probability method was recommended to estimate the prevalence of Fe inadequacy( 20 ). This study used 10 % of Fe bioavailability( Reference Gibson and Ferguson 21 ). Among breast-fed children, a medium amount of breastmilk consumption was used to calculate energy and nutrient intake( 22 ).

In the bivariate and multivariate analyses, the frequency of food group consumption, dietary diversity and energy and nutrient intake adequacy was categorised into two groups based on a 1-year observation period (derived from the four 24-h dietary recalls, one for each visit): ‘less frequently consumed’ and ‘more frequently consumed’ for each food type. The former indicated that the respective food group was consumed in <3 out of the four dietary recalls and the latter meant that it was consumed in ≥3 out of the four dietary recalls. The dietary diversity was categorised as ‘had diverse diet in <3 visits’ when the subject consumed ≥6 food groups in <3 out of the four dietary recalls, and as ‘had diverse diet in ≥3 visits’ when the subject had consumed ≥6 food groups in ≥3 out of the four dietary recalls.

The energy and nutrient intake adequacy was categorised as ‘had adequate intake in ≥3 visits’ when the adequacy was met in ≥3 out of the four dietary recalls, and as ‘had adequate intake in <3 visits’ when the adequacy was only met in <3 out of the four dietary recalls. A different categorisation was used for Zn adequacy, that is, ‘had adequate intake in ≥3 visits’ when the adequacy was met in ≥2 out of the four dietary recalls, to accommodate the very low proportion of subjects with adequate Zn intake.

The bivariate analysis was performed to assess the association between the frequency of consumption of certain food groups and the dietary diversity category with energy intake adequacy and HAZ at endline. Subsequently, a multivariate linear regression analysis was used to understand the roles of food group consumption, dietary diversity and energy and nutrient intake adequacy in explaining the HAZ at endline, controlling for demographic characteristics and the HAZ at baseline. The regression test used a <0·05 level of significance. The household wealth index was constructed using a principle component analysis of the variable households’ ownership of motorcycles, refrigerators and houses in addition to the type of drinking water source. The household wealth index was divided into tertiles.

Results

The study enrolled 227 children at baseline (56·4 % female and 43·6 % male). By the end of the study, 210 (92·5 %) children had undergone the endline assessment, and 203 (89·4 %) had undergone all four assessments. Any incomplete assessments were mainly the result of the children moving to other places or visiting relatives at the time of data collection. The proportions of loss to follow-up were 3·5 % at follow-up I, 6·6 % at follow-up II and 7·0 % at endline.

Baseline characteristics

There were no significant differences in the baseline characteristics (age, weight, length/height and nutritional status) between children who missed one or more assessments and those who attended all of the assessments (data not shown).

The overall prevalence of stunting was 34·4 %, with the highest being among children aged 12–23 months and the lowest among children aged 24–35 months. The prevalence of wasting was highest among children aged 12–23 months and lowest among children aged 48–59 months (Table 1), but the differences were not significant. The length increment between baseline and endline was 7·1 (sd 1·6) cm (n 211), with the highest (8·6 (sd 1·9) cm) among children aged 12–23 months and the lowest (5·8 (sd 1·0) cm) among children aged 48–59 months. The length increment among children aged 12–23 months was significantly higher (P<0·05) than the other age groups. The proportion of mothers with ≥12 years of schooling was 42·7 %, and only about one-third of the households had a regular monthly income (34·8 %). Moreover, only 33·9 % of the households resided in their own house. Access to a private toilet facility was available in 73·1 % of the households.

Table 1 Characteristics of the subjects at baseline (Mean values and standard deviations)

HAZ, height-for-age z score; WAZ, weight-for-age z score; WHZ, weight-for-height z score; BMIZ, BMI z score.

Breast-feeding and introduction to complementary foods

All of the children in the study, except one, were ever breast-fed. Among the children aged 12–23 months, 75 % were breast-fed at baseline and 13·5 % remained breast-fed at endline. Among the children who were no longer breast-fed, the majority were weaned in their 2nd year of life. Four in every ten mothers gave prelacteal foods/fluids to their children within the 1st week after birth. Complementary foods were introduced when the children were 6 months old (43·2 %), younger than 6 months (41·9 %) or older than 6 months (14·9 %).

Dietary diversity

Table 2 presents the dietary diversity across the visits. Cereal/tubers and fats/oil were consumed by almost all of the children across all of the visits. Eggs were more commonly consumed than nuts/legumes. Nevertheless, the consumption of these two food groups showed similar patterns: that is, it slightly increased from baseline to the next 4 months (follow-up I), and it did not change much afterwards. The consumption of flesh foods, milk and dairy products and vitamin A-rich fruits/vegetables was significantly different across visits. Although the consumption of flesh foods and milk and dairy products slightly increased across visits, the consumption of vitamin A-rich fruits and vegetables unexpectedly decreased.

Table 2 Consumption of diverse diet and dietary diversity score across visits (%)

* P<0·05 (χ 2 test).

With respect to the number of food groups, there was no significant difference in the number of food groups consumed across visits. About 50 % of the children consumed 5–6 food groups in a day, and less than half of the children had good food variety (consumed ≥6 food groups). The proportion of the children who had diverse diets in ≥3 visits was 27·2 %. The dietary diversity was not significantly different across visits or age groups (data not shown).

Animal source food consumption

Among the ASF, eggs were most commonly consumed, and their consumption was consistently high across visits (Table 3). Within the flesh food group, chicken and processed meats (such as sausage, meatballs and chicken nuggets) were most commonly consumed by the children across visits. Fish and seafood were only consumed by approximately 13 % of the children, whereas red meat was consumed by very few (<10 %). At endline, significantly more of the children had consumed liquid milk than at baseline (44·5 v. 32·3 %, respectively). The consumption of powdered milk significantly increased from baseline to follow-up II, but it decreased significantly at endline (20·4 %), even lower than the value at baseline. This decrease was particularly observed among children aged 24–35 months.

Table 3 Consumption of animal source foods across visits (%)

Dietary diversity, animal source food consumption and adequacy of energy and nutrient intake

The majority of the children consumed adequate energy (72·2 %) and protein (80·2 %) throughout the 1-year period of observation (Table 4). The adequacy of micronutrient intake was more problematic, with only 35·7, 14·5 and 4·1 % of the children achieving adequate intake in ≥3 visits of vitamin A, Ca and Zn, respectively. During the 1-year period, the proportion of children with adequate Ca intake in ≥3 visits was significantly higher in the ‘diverse diet in ≥3 visits’ group than in the ‘diverse diet in <3 visits’ group (27·3 v. 9·7 %, respectively). The adequate intake of energy and other nutrients, in contrast, was not significantly associated with dietary diversity.

Table 4 Energy and nutrient inadequacy at baseline and endline by age group (%)( 20 , Reference Gibson and Ferguson 21 , 23 ) Footnote *

BL, baseline; EL, endline.

* Calculated using PC SIDE, except for Fe (full-probability approach).

RDA for children aged 12–47 months was 4184 kJ (1000 kcal) and for children aged 48–59 months it was 6485·2 kJ (1550 kcal), and the cut-off for inadequacy was <77 % RDA.

RDA for children aged 12–47 months was 25 g and for children aged 48–59 months it was 39 g, and the cut-off for inadequacy was <77 % RDA.

§ RDA for children aged 12–47 months was 400 retinol equivalents and for children aged 48–59 months it was 450 retinol equivalents, and the cut-off for inadequacy was the values <RDA divided by conversion factor of 1·4.

|| RDA for children aged 12–47 months and 48–59 months was 500 mg, and the cut-off for inadequacy was the values <RDA divided by conversion factor of 1·2.

RDA for children aged 12–47 months was 8·2 mg and for children aged 48–59 months it was 9·7 mg, and the cut-off for inadequacy was the values <RDA divided by conversion factor of 1·2.

** RDA for children aged 12–47 months was 8 mg and for children aged 48–59 months it was 9 mg, and the cut-off for inadequacy was calculated using full-probability approach with 10 % bioavailability.

Among the three types of ASF, the consumption of flesh foods was not significantly associated with energy and nutrient adequacy, as examined in this study. The proportion of children with adequate vitamin A, Ca and Zn intake in ≥3 visits was higher among the children who more frequently consumed milk and dairy products than among those with less frequent consumption (41·4 v. 26·4 % for vitamin A, P=0·022; 18·6 v. 8·0 % for Ca, P=0·029; and 37·9 v. 12·6 % for Zn, P<0·001). The results were similar for frequent egg consumption and protein intake adequacy (83·1 v. 65·6 %, P=0·022).

Dietary diversity, animal source food consumption, adequacy of energy and nutrient intake and height-for-age z score

A multiple linear regression analysis was performed to assess the roles of good dietary diversity, ASF consumption and adequacy of energy and nutrient intake on HAZ at endline by controlling for demographic characteristics and baseline HAZ. Table 5 shows that dietary diversity was not significantly associated with the HAZ at endline (P=0·358). Similarly, Table 6 indicates that the three types of ASF were not significantly associated with HAZ at endline. The consumption of the grains/cereal and fat/oil groups was not included in the regression analysis, as >95 % of the children consumed these two food groups across visits. Regarding adequacy, the adequate intake of energy and nutrients in ≥3 visits was not among the significant predictors of the children’s HAZ at endline (data not shown).

Table 5 Multiple linear regression analysis to explain the influence of dietary diversity on HAZ-score at endline of the children aged 12–59 months (Unstandardised and standardised coefficients with their standard errors)

Table 6 Multiple linear regression analysis to explain the influence of animal source foods consumption on HAZ-score at endline of the children aged 12–59 months (Unstandardised and standardised coefficients with their standard errors)

FVT, fruits vegetables tubers.

* 0=less frequently consumed (consumed in <3 out of the four dietary recalls), 1=more frequently consumed (consumed in ≥3 out of four dietary recalls).

Discussion

The results of this study indicated that more frequent consumption of a diverse diet was not associated with HAZ at endline after controlling for demographic characteristics and baseline HAZ. Similarly, the consumption of diverse food groups was not significantly associated with HAZ at endline. The findings were not in line with previous studies examining the association between dietary diversity and HAZ or stunting. Two national-scale studies among children aged 12–36 months in Ethiopia( Reference Arimond and Ruel 24 ) and among children aged 6–59 months in Bangladesh( Reference Rah, Akhter and Semba 25 ) showed that food-group diversity was significantly associated with increased HAZ or reduced stunting. Another analysis of data on multiple countries confirmed the importance of minimum acceptable diet, including dietary diversity, as an independent factor of child growth, including stunting( Reference Marriott, White and Hadden 26 ).

Nevertheless, a study among 6–42-month-old Senegalese children demonstrated that a 7-day dietary diversity index was not significantly associated with height-for-age after adjusting for the child’s age. The association remained non-significant after adjustment for other variables( Reference Ntab, Simondon and Milet 27 ).

Comparable studies longitudinally measuring the dietary diversity, nutrient adequacy and linear growth of children are relatively rare. A study in the Philippines showed that dietary diversity’s ability to predict nutrient adequacy diminished with increasing age, indicating that nine food groups might not be diverse enough for older children( Reference Eckhardt, Suchindran and Gordon-Larsen 28 ). A study among children aged 6–17 months in Madagascar found no significant association between the cross-sectional infant and child feeding index at each of three visits, with 3-month intervals and length-for-age z-score (LAZ), at the end of the study after adjusting for confounders( Reference Moursi, Martin-Prevel and Eymard-Duvernay 29 ). However, when the longitudinal approach was used (created by summing up the index score over the three visits), it showed that the mean LAZ increased as the scores of the feeding index increased, suggesting that the longitudinal index was a good predictor of child growth.

In terms of dietary diversity, ASF consumption is strongly recommended because its nutrient density increases the likelihood of a child meeting the nutrient requirements( 30 ). A study among Cambodian children aged 12–59 months indicated that consuming a diverse diet, specifically ASF, was significantly associated with a reduction in stunting( Reference Darapheak, Takano and Kizuki 31 ). An analysis using the National Nutrition Surveillance data in Indonesia showed a significant relationship between stunting in 0–59-month-old children and the proportion of household expenditure on ASF in households living in poor urban areas( Reference Sari, de Pee and Bloem 32 ). The risk of stunting was 22 % lower in households, with a higher rather than a lower quintile expenditure of ASF. The authors suggested that the higher household expenditure be used as a proxy for higher ASF consumption, but such an association was not apparent in this study.

The non-significant association between feeding practice and linear growth found in the present study, despite the use of a longitudinal approach to better capture the dietary habits, remains unclear. An explanation may be related to the difference in length/height increments across age. The linear growth of older children, particularly those aged >36 months old, is less sensitive to their food consumption( Reference Ntab, Simondon and Milet 27 ). Comparing our results with those from the Madagascar study, which used a similar approach, the children in our study were much older. Nevertheless, previous studies have suggested that the significant association included children from various age groups.

As elaborated in previous reviews and studies, a higher dietary diversity may indicate a higher likelihood of meeting daily energy and nutrient requirements that positively influence nutritional status among young children( Reference Rah, Akhter and Semba 25 , Reference Arimond and Ruel 33 ). The results of the present study demonstrated that frequent consumption of a diverse diet over a 1-year period was significantly associated with adequate intake of Ca.

In addition, the present study also showed that consumption of milk and dairy products was associated with vitamin A, Ca and Zn adequacy. Studies have shown that milk is rich in nutrients, particularly Zn and good-quality proteins, which makes it a suitable food for supporting growth, particularly among young children( Reference Michaelsen, Hoppe and Roos 12 ). In addition, milk intake is related to an increasing level of insulin-like growth factor-1( Reference Hoppe, Mølgaard and Michaelsen 34 ). There was a proposal that a diet containing 25–33 % protein from milk would significantly improve the nutritional status of moderately malnourished children, and 50 g powdered milk provides about 36–56 % of protein requirements( Reference Golden 35 ).

Of particular importance is the fact that the proportion of children who consumed milk and dairy products was high. Liquid milk in a ready-to-drink package (125–250 ml) is a favourite snack among children, as it is readily available for purchase from many vendors in the study area. In Indonesia, most of the milk available is fortified with various micronutrients depending on the brand and the categories within each brand. On the basis of the most frequently consumed brand of milk in this study, 20 g of powdered milk contains approximately 120 µg of vitamin A, 288 mg of Ca, 2·1 mg of Fe and 9·5 mg of Zn, whereas 125 ml of liquid milk contains 75 µg of vitamin A, 100 mg of Ca, 0·6 mg of Fe and 0·5 mg of Zn.

Eggs – another type of ASF frequently consumed by the children in the present study – were significantly associated with adequate protein intake. Eggs were generally cheaper, easy to prepare and preferred by the children. A recent review highlighted eggs’ potential to increase dietary diversity and nutrient intake( Reference Iannotti, Lutter and Bunn 36 ). In the current study, the consistent consumption of eggs over the 1-year study period was associated with consistent adequate intake of protein. Other types of ASF, that is, poultry/fish/meat, were not significantly associated with energy and nutrient adequacy. Poultry contains a protein similar to that found in red meat, but only about half the Fe and Zn. In this study, meat was most commonly consumed in the form of relatively cheap processed meats (such as sausage, nuggets and meatballs) that were readily available in convenience stores and from street food vendors. However, the nutrient content of processed meats varies depending on quality and price. The proportion of children who consumed non-processed meats was very low (6·5 % on average across the four visits).

Micronutrient (Zn, Fe and Ca) intake inadequacies were very prevalent across all of the age groups. Nevertheless, the magnitude of inadequate energy, protein and micronutrient intake in this study was lower than that found in an earlier study in Indonesia( Reference Sandjaja, Budiman and Harahap 5 ). The difference might lie in the different approach used to estimate nutrient intake inadequacies. We used an approach that measured the ‘usual’ intake based on two repeated 24-h recalls. The approach better estimated the prevalence of inadequate intake of nutrients at the population level, compared with the classical method of calculating the percentage of children with a nutrient intake below the RDA( Reference Carriquiry 37 ).

The proportion of children with an inadequate intake of vitamin A was lowest among those aged 12–23 months, possibly affected by breastmilk intake. Assuming that the children had moderate breastmilk intake (about 500 ml of breastmilk/d), the vitamin A intake from the breastmilk would be approximately 345 µg( 22 ). Because the breastmilk intake decreased as the children aged, the proportion of vitamin A intake inadequacy increased, and among older children the higher proportion consuming flesh foods and milk and dairy products could not circumvent the inadequate vitamin A intake. This situation was worsened by the decreasing proportion of children consuming vitamin A-rich fruit and vegetables.

The high proportion of inadequate intake of Zn was in line with a recent review showing that Indonesia has a high prevalence of Zn deficiency (>25 %), using food balance sheet supply data as the basis for the estimation( Reference Wessells and Brown 38 ). The review also demonstrated that the contribution of Zn from ASF was negatively correlated with the estimated prevalence of inadequate Zn intake. In countries with a high prevalence of Zn intake inadequacy, about 12 % of the dietary Zn was obtained from ASF, compared with 51·2 % in countries with low prevalence of Zn intake inadequacy. Despite a high prevalence of ASF consumption, this study showed a high prevalence of Zn intake inadequacy, indicating that the ASF consumption was not adequate in quality and/or quantity.

In general, the proportion of inadequate micronutrient intake was higher at endline than at baseline and across age groups. The higher proportion of inadequate micronutrient intake at endline signified that as the children got older it was more difficult to fulfil the micronutrient requirements. Despite a significantly higher proportion of children who consumed milk and dairy products at endline than at baseline, the increased proportion was mainly because of an increased consumption of liquids with lower nutrient content than powdered milk (the consumption of which was significantly lower at endline than at baseline). The decreased intake of breastmilk and powdered milk (as important contributors of micronutrients) at endline might also explain the observed increase in stunting prevalence at endline (from 45·6 % at baseline to 50·0 % at endline). The increased prevalence, however, was not significant.

Despite high ASF consumption, only approx 50 % of the children had high dietary diversity. The overall dietary diversity was steady within the 1-year observation period across age groups. The consumption of flesh foods (including processed meats) and milk/dairy products significantly increased across the four visits, whereas the consumption of vitamin A-rich fruits and vegetables unexpectedly decreased. Fruit and vegetables are an important source of vitamins and minerals, particularly among children with limited access to ASF. In addition, they are also an important source of dietary fibre.

This study examined the dynamics of food consumption, particularly in regard to dietary diversity and ASF; however, a trend was not apparent. Thus, a more refined dietary diversity indicator might be needed, such as measurements that include the quantity (amount) and quality (diversity) of food consumption. Although the sample size was adequate to detect changes in length increments across the 1-year observation period, it was not adequate to capture the changes in dietary diversity patterns or food consumption.

In conclusion, the consumption of diverse diets and ASF was not a significant predictor of HAZ among children aged 12–59 months. However, the consumption of diverse diets was significantly associated with Ca intake adequacy. Regarding food groups, ASF consumption was significantly associated with adequate intake of protein and micronutrients, particularly vitamin A, Ca and Zn. Thus, our findings do not discontinue the communication on the benefits of diverse diet, including ASF, in supporting the linear growth of young children.

Acknowledgements

The authors thank Lina Marlina for field establishment and Abas Basuni Jahari for statistical analysis assistance.

This study was supported by PT Sari Husada Generasi Mahardhika and PT Nutricia Indonesia Sejahtera (grant number: 172/Legal/SH-SEAMEO/XII/10). Both authors report grants from PT Sari Husada Generasi Mahardhika and PT Nutricia Indonesia Sejahtera during the study. The donors had no role in the study design, analysis or the writing of this article.

Both authors were involved in the concept and design of the study, data collection, data analysis, interpretation of results, manuscript writing and approval. There were no conflicts of interest.

Footnotes

Disclaimer: Publication of these papers was supported by unrestricted educational grants from PT Sarihusada Generasi Mahardhika and PT Nutricia Indonesia Sejahtera. The papers included in this supplement were invited by the Guest Editors and have undergone the standard journal formal review process. They may be cited. The Guest Editors declare that there are no conflicts of interest.

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Figure 0

Table 1 Characteristics of the subjects at baseline (Mean values and standard deviations)

Figure 1

Table 2 Consumption of diverse diet and dietary diversity score across visits (%)

Figure 2

Table 3 Consumption of animal source foods across visits (%)

Figure 3

Table 4 Energy and nutrient inadequacy at baseline and endline by age group (%)(20,21,23)*

Figure 4

Table 5 Multiple linear regression analysis to explain the influence of dietary diversity on HAZ-score at endline of the children aged 12–59 months (Unstandardised and standardised coefficients with their standard errors)

Figure 5

Table 6 Multiple linear regression analysis to explain the influence of animal source foods consumption on HAZ-score at endline of the children aged 12–59 months (Unstandardised and standardised coefficients with their standard errors)