Literature DB >> 26950562

Trends and determinants for early initiation of and exclusive breastfeeding under six months in Vietnam: results from the Multiple Indicator Cluster Surveys, 2000-2011.

Quyen Thi-Tu Bui1, Hwa-Young Lee2, Anh Thi-Kim Le3, Do Van Dung4, Lan Thi-Hoang Vu3.   

Abstract

BACKGROUND: There is strong evidence that breastfeeding (BF) significantly benefits mothers and infants in various ways. Yet the proportion of breastfed babies in Vietnam is low and continues to decline. This study fills an important evidence gap in BF practices in Vietnam.
OBJECTIVE: This paper examines the trend of early initiation of BF and exclusive BF from 2000 to 2011 in Vietnam and explores the determinants at individual and contextual levels.
DESIGN: Data from three waves of the Multiple Indicator Cluster Survey were combined to estimate crude and adjusted trends over time for two outcomes - early initiation of BF and exclusive BF. Three-level logistic regressions were fitted to examine the impacts of both individual and contextual characteristics on early initiation of BF and exclusive BF in the 2011 data.
RESULTS: Both types of BF showed a decreasing trend over time after controlling for individual-level characteristics but this trend was more evident for early initiation of BF. Apart from child's age, individual-level characteristics were not significant predictors of the BF outcomes, but provincial characteristics had a strong association. When controlling for individual-level characteristics, mothers living in provinces with a higher percentage of mothers with more than three children were more likely to have initiated early BF (odds ratio [OR]: 1.06; confidence interval [CI]: 1.02-1.11) but less likely to exclusively breastfeed their babies (OR: 0.94; CI: 0.88-1.01). Mothers living in areas with a higher poverty rate were more likely to breastfeed exclusively (OR: 1.07; CI: 1.02-1.13), and those who delivered by Caesarean section were less likely to initiate early BF.
CONCLUSIONS: Our results suggest that environmental factors are becoming more important for determining BF practices in Vietnam. Intervention programs should therefore not only consider individual factors, but should also consider the potential impact of contextual factors on BF practices.

Entities:  

Keywords:  MICS; Vietnam; breastfeeding; multilevel analysis

Mesh:

Year:  2016        PMID: 26950562      PMCID: PMC4780108          DOI: 10.3402/gha.v9.29433

Source DB:  PubMed          Journal:  Glob Health Action        ISSN: 1654-9880            Impact factor:   2.640


Introduction

Breastfeeding (BF) benefits newborns and mothers in various ways, such as by providing nutrients for facilitating growth or boosting the immunity of babies. Research shows that BF helped reduce about 804,000 deaths among children under five in 2011 – equivalent to nearly 11.6% of deaths among under-five children worldwide (1). It has also been estimated that 44 million disability-adjusted life years (DALYs), which is 10% of DALYs in children under five, were attributed to not receiving BF (1). For these reasons the World Health Organization and the United Nations International Children's Emergency Fund (2) strongly recommend feeding breast milk to infants, especially in the first 6 months after birth. However, rates of BF, including early initiation of BF, defined as being within the first hour after birth, and feeding only breast milk during the first 6 months of life (exclusive BF), have not increased in recent years. Developing countries such as Vietnam have made slow progress in this area (3, 4). According to data presented by Thu et al. in 2012 (5), the proportion of both early initiation of BF and exclusive BF in Vietnam was below 50% in babies born between 2008 and 2010, although the overall proportion of BF in the population reached 98% (6–8). In addition, it is of concern that rates of BF in Vietnam have been trending downwards over the recent years. A few studies have been published on the determinants of early initiation of BF and exclusive BF in Vietnam. Almroth et al. (9) interviewed 118 mothers, fathers, and health workers in Vietnam to assess views on the feasibility of exclusive BF. Poor understanding and appreciation by mothers about the benefits of BF were cited as the main reasons for low BF rates. Duong et al. (10) explored the determinants of early initiation of BF in rural Vietnam using data collected in 2002–2003 and found that mothers’ education level, mothers’ feelings or beliefs about BF, and fathers’ occupation were significant factors that influenced early initiation of BF. On the other hand, a systematic review of BF practices conducted in 2011 suggested that there have been many barriers to BF practices in Vietnam (4). They included individual-level factors associated with mothers and families and (or) ecological factors that referred to community and society. Another study on BF suggested that contextual factors can have important effects on health behaviors and health outcomes (11, 12). However, most of the studies on BF in Vietnam have focused on individual-level factors. Those few studies that have considered contextual factors have used qualitative methods or are outdated (9, 13, 14). There is a need to explore the impact of contextual factors on BF in order to have better understanding of the determinants of BF. This paper has two main aims. The first is to examine the trends in early initiation of BF and exclusive BF in Vietnamese mothers in 2000–2011, while adjusting for individual-level factors. The second goal is to examine the association between both individual- and contextual-level factors and 1) early initiation of BF and 2) exclusive BF in Vietnam.

Methods

Data sources

All individual-level variables were derived from Multiple Indicator Cluster Survey (MICS) in Vietnam. The 2009 Vietnam Population and Housing Census (VPHC) (15) and the 2008 Vietnam Living Standard Survey (VLSS) were used as the source of provincial-level variables (16). The MICS in Vietnam was conducted by the General Statistics Office in collaboration with the Ministry of Health and the Ministry of Labor, Invalids and Social Affairs with the purpose of collecting information on issues affecting the health, development, and living conditions of Vietnamese women and children. Currently, the data from 3 years have been released: 2000 (Wave 2), 2006 (Wave 3), and 2011 (Wave 4). All the results and datasets of the MICS are in the public domain and can be accessed via the related website (17). The 2008 VLSS (16) was conducted nationwide for the purpose of systematic monitoring and supervision of living standards in different population groups in Vietnam. The sample consists of 45,945 households (36,756 households in the income survey and 9,189 households surveyed on both income and expenditure) within 3,063 communes/wards that were representative at the national, regional, urban, rural, and provincial levels. The survey collected information during two periods in 2008 through face-to-face interviews with household heads and key commune officials in the sample enumeration areas (16). The 2009 VPHC (15) was the fourth population census and the third housing census implemented in Vietnam since the nation was reunified in 1975. The census aimed to collect basic data on population and housing for the entire territory of the Socialist Republic of Vietnam and to provide data for research about population trends and housing developments, at both the national and local levels. It responded to the country's need for information: to assess the implementation of the socioeconomic development plans covering 2001 to 2010; for developing the socioeconomic development plans 2011 to 2020, and to monitor Vietnam's performance on the United Nations Millennium Development Goals, to which the Vietnamese Government is committed (18).

Study design

The MICS was conducted at the national level, for urban and rural areas, and for six Vietnamese regions (Red River Delta, Mekong River Delta, Northern Midland and Mountain area, North Central and Central Coastal area, South East, and Central Highlands). The urban and rural areas within each region were identified as the main sampling strata. The sample was selected in two stages. Within each stratum, a certain number of census enumeration areas were selected using the probability proportional to size. A systematic sample of 20 households was drawn from each enumeration area (6–8). Each survey contained three well-structured separate datasets with information on households, women aged 15–49 years, and children under five living in Vietnam.

Measures

Outcome variables

The two binary outcomes of interest are ‘early initiation of BF’ and ‘exclusive BF’ (yes/no). ‘Early initiation of BF’ refers to whether or not the child was breastfed within the first hour after birth. This information was only available in the 2006 and 2011 MICS women's datasets. Mothers with children under 2 years old at the time of the survey were asked when they started BF their child after delivering. Information for the exclusive BF outcome was collected from the 2000, 2006, and 2011 MICS children's datasets. This indicates whether infants received only breast milk (and possibly vitamins, mineral supplements, or medicine) during the first 6 months of their lives. Information about specific kinds of foods, fruits, and fluids the child was given during the 24 h prior to the interview was reported either by mothers with an infant under 6 months of age, or else by caregivers responsible for the infant's consumption of food and fluids within the day prior to interview.

Explanatory variables

The selection of explanatory variables was informed by the literature. Factors theoretically and empirically associated with HIV/AIDS outcomes were identified by reviewing the literature. Among the possible candidates for the explanatory variables, we selected those for which data were available in both 2006 and 2011 for the analysis of early initiation of BF and in all 3 years (2000, 2006, and 2011) for the analysis of exclusive BF.

Individual-level factors

Information about early initiation of BF and exclusive BF was extracted from two distinct datasets, with different variables describing women's and children's characteristics. For the analysis of early initiation of BF, we included demographic variables (mother's age, living area, and ethnicity), socioeconomic variables (mother's education and household wealth), and delivery-related variables such as size of child at birth and place of delivery. For the analysis of exclusive BF, we included demographic variables such as child's age, sex, ethnicity, living area, and socioeconomic variables such as mother's education and household wealth. Vietnam is a multiethnic country with over 50 distinct ethnic groups. The Kinh is the ethnic majority, accounting for about 86% of the population, and the standard of living between the Kinh and the other minorities is quite different. Therefore, mothers’ ethnicity was classified into two groups, Kinh (or Hoa) and non-Kinh. The Chinese ethnic minority Hoa was grouped with the Kinh ethnic majority because both groups have similar living standards. For the socioeconomic status variables, mother's educational level was grouped into five categories: no education (had never been to school), primary (Grades 1 to 5), lower secondary (Grades 6–9), upper secondary (Grades 10–12), and tertiary (professional school, college, or above university). A household wealth status variable captured underlying long-term wealth based on ownership of consumer goods, dwelling characteristics, and water and sanitation. Principal component analysis was used to derive wealth scores, which were used to rank households into wealth quintiles from the poorest to the wealthiest (17). The size of the child at birth was based on the mother's assessment. This was regrouped from five categories (very small, smaller than average, average, larger than average, very large) into three categories: smaller than average, average, and larger than average.

Provincial-level factors

The provincial-level variables included the percentage of poor households in each province according to Vietnamese standards.1 This information was extracted from the 2008 VLSS. Information on the percentage of women aged 15–49 who had more than three children was derived from the VPHC 2009 (15).

Data analysis

Trends in exclusive BF were analyzed across the three waves of the MICS dataset on children. Trends in early initiation of BF were analyzed across the two waves of the MICS dataset on women. Survey year was identified by a ‘wave’ variable (Wave 2, 2000; Wave 3, 2006; and Wave 4, 2011). Logistic regressions described crude and adjusted association between survey year (wave) and each BF outcome. In order to account for the hierarchical structure of the data, where individuals (Level 1) were nested in provinces (Level 2), which were again nested within regions (Level 3), and in order to identify determinants at multiple levels, three-level random intercept logistic modeling was undertaken using the fourth (most recent) wave of the MICS, which took place in 2011 (19). A series of three models were fitted. Model 1, a three-level empty model, was fitted without including any explanatory variables. Variation in the probability of early initiation of BF and exclusive BF was partitioned across the three levels. In Model 2, the sociodemographic model, only individual-level factors were included. The full model, Model 3, expanded upon Model 2 by adding provincial-level factors. In order to further investigate the determinants for the early initiation of BF, multilevel logistic analysis was undertaken in the 2011 women's dataset with the inclusion of a delivery mode variable (Table 7). This variable was not included as a predictor variable in the analysis for examining trends in BF because the variable for delivery mode was only available in the 2011 MICS. Delivery mode was assessed by asking if respondents delivered the baby by Caesarian section or not. The variable for place of birth was dropped because of colinearity.
Table 7

Analysis for determinants of the early initiation of BF, 2011 (including delivery mode variable) (N=1,029)

FactorsEmpty modelModel 1 OR (95% CI)Model 2 OR (95% CI)
Fixed effects
Individual level
Demographic factorsMother's age (years)1.02 (0.99–1.05)1.02 (0.99–1.05)
Ethnicity
 Non-KinhRef
 Kinh0.88 (0.52–1.49)0.94 (0.55–1.60)
Area
 UrbanRef
 Rural0.75 (0.53–1.06)0.73 (0.52–1.04)
Socioeconomic factorsWealth index
 RichestRef
 Fourth0.63 (0.39–1.00)*0.61 (0.38–0.98)
 Middle0.71 (0.43–1.18)0.69 (0.41–1.15)
 Second0.82 (0.47–1.43)0.79 (0.45–1.39)
 Poorest0.87 (0.46–1.53)0.80 (0.42–1.51)
Education of mother
 TertiaryRef
 Upper secondary0.82 (0.53–1.28)0.83 (0.53–1.29)
 Lower secondary0.87 (0.56–1.35)0.87 (0.56–1.36)
 Primary0.61 (0.34–1.09)0.61 (0.34–1.10)
 No education0.79 (0.30–2.08)0.76 (0.28–2.02)
Marital status
 Living with spouseRef
 Widowed/divorced/separated1.53 (0.35–6.56)1.60 (0.37–6.87)
 Never married0.53 (0.05–5.56)0.51 (0.05–5.31)
Delivery-related factorsSize of child at birth
 Smaller than averageRef
 Average0.84 (0.53–1.35)0.86 (0.54–1.37)
 Larger than average0.59 (0.30–1.14)0.58 (0.30–1.13)
Delivery mode
 No Caesarian sectionRef
 Caesarian section***0.10 (0.06–0.17)***0.10 (0.06–0.17)
Visit to prenatal care
 Yes
 No1.15 (0.43–3.08)1.14 (0.42–3.04)
Provincial level
 % women with three children or more1.03 (0.98–1.04)
 % poverty1.01 (0.98–1.05)
Random effects
 Regional (variance)0.0510.0460.028
 Provincial (variance)0.4400.5370.527
 ICCregion (%)1.41.20.7
 ICCprovince (%)13.015.114.4

p<0.05

**p<0.01

p<0.001

marginally significant at p=0.05.

By simultaneously considering both individual and geographical-level variables, Model 3 enabled us to estimate whether the determinants for each BF outcome were compositional, contextual, or both. We restricted our study sample to those who had non-missing responses on all variables. For each model, the results of the fixed effects (measures of association) were shown as odds ratios (OR) with 95% confidence intervals (CIs). The results of random effects (measures of variation) were presented as the variance and intraclass correlation coefficient (ICC) at the regional and provincial levels. The ICC for individuals within the same province, but in different regions, was calculated as follows:The ICC for individuals within the same region was calculated as follows:A p-value<0.05 was regarded as statistically significant. Statistical analyses were performed using STATA 13.0.

Ethical considerations

This paper was based on secondary data from the MICS, VPHC, and VLSS with all identifying information removed. The survey obtained informed consent from the mothers before administering survey questionnaires. All information in the original dataset was collected confidentially (6, 7, 15).

Results

Derivation of the study samples

Figure 1 shows the derivation of study samples from each dataset (i.e. women and children). After applying the exclusion criteria, the study samples comprised 1,347 and 317 observations for the analyses of women and children, respectively.
Fig. 1

Derivation of study samples in each dataset.

Derivation of study samples in each dataset.

Sample characteristics and trends in each type of BF

Figure 2 shows decreasing trends in percentages for early initiation of BF between 2006 and 2011 and exclusive BF between 2000 and 2011 in Vietnam. (As previously mentioned, information for early initiation of BF was not available in the 2000 data.) Early initiation of BF showed a big drop during 2006–2011, while exclusive BF was constant during the same period after declining by about 8% during 2000–2006.
Fig. 2

Trends in early initiation of breastfeeding and exclusive breastfeeding in Vietnam.

Trends in early initiation of breastfeeding and exclusive breastfeeding in Vietnam. Tables 1 and 2 present the prevalence of early initiation of BF and exclusive BF by individual characteristics. Prevalence of early initiation of BF fell in all groups between 2006 and 2011, while in the same years the prevalence of exclusive BF increased for female children, children living in urban areas, non-Kinh mothers, mothers with no education, and mothers in the richest and second poorest quintiles. When we look at the 2011 data, the prevalence of early initiation of BF and the prevalence of exclusive BF were both noticeably higher in mothers whose ethnicity were non-Kinh, belonged to the poorest wealth quintile, and had no education.
Table 1

Descriptive statistics for mothers with children under 2 years old (dataset for early initiation of BF)

2006 (N=891)2011 (N=1,347)


Total N Early initiation of BF (N)%Total N Early initiation of BF (N)%
Mother's age (mean±SD)27.71±5.9127.45±5.54
Ethnicity of mother
 Non-Kinh19113269.128115454.8
 Kinh70040557.91,06638135.7
Area
 Urban21812155.553417332.4
 Rural67341661.881336244.5
Wealth index
 Richest1668853.030110735.5
 Fourth19211559.92668030.1
 Middle19112062.82378335.0
 Second1679456.32219442.5
 Poorest17512068.632217153.1
Education of mother
 Tertiary1227763.129010736.9
 Upper secondary1146758.828210537.2
 Lower secondary43627162.248719640.2
 Primary21812155.51997738.7
 No education11100.0895056.2
Marital status
 Living with spouse86552160.21,32652739.7
 Windowed/divorced/separated131076.914750.0
 Never married13646.27114.3
Size of child at birth
 Smaller than average1509563.31495536.9
 Average61738061.61,07143440.5
 Larger than average1246250.01274636.2
Place of delivery
 At home1479262.61358361.5
 Government hospital48627356.293332634.9
 Other public health facility22115369.221310046.9
 Private health sector371951.4662639.4

BF, breastfeeding

Table 2

Descriptive statistics for mothers with children under 6 months old (dataset for exclusive BF)

2001 (N=291)2006 (N=260)2011 (N=371)



Total N Exclusive BF (N)%Total N Exclusive BF (N)%Total N Exclusive BF (N)%
Child's age (months)3.51±1.913.12±1.793.06±1.92
Ethnicity of mother
 Non-Kinh942324.5892427.0862427.9
 Kinh1973417.31712011.72853010.5
Area
 Urban47817.05447.41361410.3
 Rural2444920.12064019.42354017.0
Sex
 Female1553321.31281914.81833217.5
 Male1362417.61322518.91882211.7
Wealth index
 Richest35514.33925.17879.0
 Fourth471123.448714.66546.2
 Middle46613.047919.1751114.7
 Second611219.74237.157712.3
 Poorest1022322.5842327.4962526.0
Education of mother
 Tertiary1516.73759.1841113.1
 Upper secondary34823.5552618.4861517.4
 Lower secondary971515.50001111311.7
 Primary812024.7141518.564710.9
 No education641320.327821.626830.8
Descriptive statistics for mothers with children under 2 years old (dataset for early initiation of BF) BF, breastfeeding Descriptive statistics for mothers with children under 6 months old (dataset for exclusive BF) Table 3 shows the results of the crude and adjusted logistic regressions of associations between survey year and early initiation of BF. In the crude model, the odds of early initiation of BF in 2011 were significant (p<0.001) and almost 60% lower than the reference year, 2006 (OR: 0.44; CI: 0.37–0.52). When adjusting for individual characteristics, the odds were similar (AOR: 0.42; CI: 0.31–0.52).
Table 3

Crude and multivariable logistic regression for the early initiation of BF in Vietnam, 2006 and 2011 (N=2,238)

CrudeAdjusted


FactorProportionOR95% CIOR95% CI
Year
 200659.9RefRef
 201139.7***0.44(0.37–0.52)***0.42(0.35–0.51)
Mother's age1.00(0.98–1.01)
Ethnicity of mother
 Non-Kinh60.6Ref
 Kinh44.4**0.68(0.51–0.91)
Area
 Urban52.8Ref
 Rural39.10.81(0.65–1.02)
Wealth index
 Richest42.0Ref
 Fourth42.20.92(0.69–1.23)
 Middle47.01.05(0.77–1.44)
 Second48.4**1.08(0.77–1.51)
 Poorest59.21.39(0.95–2.03)
Education of mother
 Tertiary44.6Ref
 Upper secondary43.30.85(0.63–1.14)
 Lower secondary50.70.85(0.65–1.12)
 Primary47.40.60(0.43–0.84)
 No education56.70.86(0.50–1.47)
Marital status
 Living with spouse48.4Ref
 Widowed/divorced/separated58.61.62(0.71–3.70)
 Never married35.00.43(0.16–1.15)
Size of child at birth
 Smaller than average50.2Ref
 Average49.00.95(0.74–1.24)
 Larger than average42.4*0.68(0.47–0.96)
Place of delivery
 At home61.9Ref
 Government hospital42.10.74(0.53–1.04)
 Other public health facility58.61.09(0.77–1.54)
 Private health sector42.90.83(0.50–1.37)

p<0.05

p<0.01

p<0.001. OR, odds ratio; CI, confidence interval.

Crude and multivariable logistic regression for the early initiation of BF in Vietnam, 2006 and 2011 (N=2,238) p<0.05 p<0.01 p<0.001. OR, odds ratio; CI, confidence interval. Table 4 shows the results of the crude and adjusted logistic regressions of associations between survey year and exclusive BF. In the crude model, the odds of exclusive BF in 2006 (OR: 0.84; CI: 0.54–1.29) or 2011 (OR: 0.70; CI: 0.46–1.50) were not significantly different from those in 2000. However, when adjusting for individual characteristics, the odds of exclusive BF were significantly lower in 2006 (AOR: 0.56; CI: 0.32–0.96) and 2011 (AOR: 0.58; CI: 0.36–0.94) compared with those in 2000.
Table 4

Crude and multivariable logistic regression for exclusive BF in Vietnam, 2000, 2006 and 2011 (N=922)

CrudeAdjusted


FactorProportionOR95% CIOR95% CI
Year
 200024.7
 200617.00.84(0.54–1.29)*0.56*(0.32–0.96)
 201116.90.70(0.46–1.50)*0.58*(0.36–0.94)
Child's age (months)0.62***(0.56–0.70)
Ethnicity
 Non-Kinh26.4Ref
 Kinh12.90.44**(0.26–0,74)
Area
 Urban18.8Ref
 Rural11.00.67(0.37–1.23)
Sex
 Female20.6Ref
 Male17.70.80(0.55–1.17)
Wealth index
 Richest10.4Ref
 Fourth15.31.35(0.61–3.01)
 Middle17.91.42(0.61–3.29)
 Second15.71.04(0.42–2.56)
 Poorest29.02.01(0.81–5.00)
Education of mother
 Tertiary11.0Ref
 Upper secondary31.61.27(0.65–2.49)
 Lower secondary18.10.80(0.37–1.72)
 Primary20.70.88(0.40–1.97)
 No education18.70.63(0.26–1.56)

p<0.05

p<0.01

p<0.001.

Crude and multivariable logistic regression for exclusive BF in Vietnam, 2000, 2006 and 2011 (N=922) p<0.05 p<0.01 p<0.001. Tables 5 and 6 present the adjusted odds ratios for women and children who had breastfed (or been breastfed) versus not breastfed (or not been breastfed) in 2011 from the three models. In the null model, the proportion explained by between-region variance of the total variance (the ICC) in the early initiation of BF was quite small (ICCregion=2.2%). By contrast, a larger proportion of the total variance explained by between-province variance was identified (ICCprovince=18.8%).
Table 5

Three-level logistic regression for determinants of the early initiation of BF, 2011 (n=1,347)

FactorEmpty modelModel 1 OR (95% CI)Model 2 OR (95% CI)
Fixed effects
Individual level
Demographic factorsMother's age (years)0.99 (0.97–1.01)0.99 (0.97–1.01)
Ethnicity
 Non-KinhRef
 Kinh0.88 (0.56–1.40)0.92 (0.58–1.47)
Area
 UrbanRef
 Rural0.76 (0.57–1.03)0.75 (0.56–1.02)
Socioeconomic factorsWealth index
 RichestRef
 Fourth0.63 (0.42–0.93)0.62 (0.41–0.92)
 Middle0.74 (0.48–1.15)0.73 (0.47–1.15)
 Second0.96 (0.59–1.55)0.96 (0.59–1.57)
 Poorest0.88 (0.51–1.53)0.85 (0.49–1.48)
Education of mother
 TertiaryRef
 Upper secondary0.95 (0.65–1.40)0.96 (0.65–1.41)
 Lower secondary1.09 (0.75–1.59)1.06 (0.72–1.55)
 Primary0.89 (0.55–1.44)0.86 (0.52–1.41)
 No education0.92 (0.45–1.86)0.84 (0.41–1.73)
Marital status
 Living with spouseRef
 Widowed/divorced/separated1.73 (0.55–5.46)1.74 (0.55–5.56)
 Never married0.33 (0.04–2.85)0.35 (0.04–3.04)
Delivery-related factorsSize of child at birth
 Smaller than averageRef
 Average1.02 (0.69–1.50)1.05 (0.72–1.55)
 Larger than average0.82 (0.48–1.40)0.83 (0.48–1.42)
Place of delivery
 At homeRef
 Government hospital0.71 (0.40–1.27)0.78 (0.43–1.39)
 Other public health facility0.91 (0.51–1.63)1.00 (0.55–1.80)
 Private health sector0.82 (0.38–1.73)0.86 (0.40–1.87)
Prenatal care visits
 Yes
 No0.81 (0.43–1.52)0.85 (0.40–1.87)
Provincial level
 % women with three children or more**1.06 (1.02–1.11)
 % poverty0.99 (0.96–1.02)
Random effects
 Regional (variance)0.0890.0380.051
 Provincial (variance)0.6730.6170.671
 ICCregion (%)2.21.01.3
 ICCprovince (%)18.816.618.0

*p<0.05

p<0.01

***p<0.001. ICC, intraclass correlation coefficient.

Table 6

Three-level logistic regression for the determinants of exclusive BF, 2011 (N=371)

FactorEmpty modelModel 1 OR (95% CI)Model 2 OR (95% CI)
Fixed effects
Individual-level factors
Demographic factorsChild's age (months)***0.58 (0.47–0.71)***0.57 (0.46–0.70)
Ethnicity
 Non-KinhRef
 Kinh0.49 (0.17–1.36)0.59 (0.21–1.72)
Area
 UrbanRef
 Rural0.86 (0.35–2.13)0.90 (0.36–2.27)
Sex
 FemaleRef
 Male0.50 (0.24–1.02)0.51 (0.25–1.05)
Socioeconomic factorsWealth index
 RichestRef
 Fourth0.70 (0.17–2.93)0.74 (0.18–3.06)
 Middle1.56 (0.43–5.62)1.52 (0.42–5.51)
 Second1.42 (0.31–6.22)1.11 (0.23–5.28)
 Poorest2.69 (0.53–13.58)2.24 (0.43–11.77)
Education of mother
 TertiaryRef
 Upper secondary1.21 (0.41–3.58)1.38 (0.46–4.16)
 Lower secondary0.72 (0.22–2.33)0.83 (0.25–2.74)
 Primary0.49 (0.12–2.03)0.58 (0.13–2.50)
 No education0.91 (0.18–4.74)1.11 (0.20–6.17)
Provincial-level factors
 % women with three children or more*0.94 (0.88–1.01)
 % poverty*1.07 (1.02–1.13)
Random effects
 Regional variance0.680.410.10
 Provincial variance0.010.000.14
 ICC – region17.111.12.8
 ICC – province17.311.16.6

p<0.05

**p<0.01

p<0.001.

Three-level logistic regression for determinants of the early initiation of BF, 2011 (n=1,347) *p<0.05 p<0.01 ***p<0.001. ICC, intraclass correlation coefficient. Three-level logistic regression for the determinants of exclusive BF, 2011 (N=371) p<0.05 **p<0.01 p<0.001. In Model 1 as well as in Model 2, the individual-level variables were not significant in association with early initiation of BF (p>0.05). In the full model (Model 2), the proportion of women with more than three children was significantly associated with early initiation of BF (p<0.01). When the proportion of women with more than three children in provinces increased by 1%, the odds of the mothers initiating BF within 1 h after delivery increased by 6% (CI: 2–11%) (see Table 5). Most of the individual-level variance in the early initiation of BF was attributed to provincial-level variance (ICCprovince=18.0%). Even after all the individual- and provincial-level variables were included, there was still considerable between-region and between-province variation in the full model. The results of the multilevel logistic regression with exclusive BF under 6 months as the outcome differed from the results of early initiation of BF analysis. In the null model, the proportion of between-region variance of the total variance was larger than for the early initiation of BF (ICCregion=2.2%, 17.01%, respectively). In Models 1 and 2, of the sociodemographic variables, only child's age was significant in association with exclusive BF. For a 1-month increase in age, infants had a 0.57 times lower odds of receiving exclusive BF (p<0.001). In the full model (Model 2), significant associations were found between two provincial-level variables and exclusive BF. Specifically, when the proportion of poverty increased by 1% in a province, infants under 6 months of age had a 1.07 times higher odds of being exclusively breastfed during the first 6 months of their lives (p<0.05; CI: 1.02–1.13). When the proportion of women with more than three children increased by 1% in a province, infants under 6 months of age had 0.94 times odds of being exclusively breastfed for 6 months after their birth (p<0.05; CI: 0.88–1.01). Caesarean section was a major explanatory variable in the multilevel regression model for the early initiation of BF. The odds of mothers who underwent Caesarean section in their delivery breastfeeding their babies within the first hour after delivery were 90% lower than for other mothers (OR: 0.10; p<0.001; CI: 0.06–0.17) (see Table 7). Analysis for determinants of the early initiation of BF, 2011 (including delivery mode variable) (N=1,029) p<0.05 **p<0.01 p<0.001 marginally significant at p=0.05.

Discussion

The aims of this study were twofold. First, we investigated changes in the early initiation of BF across two time points (2006 and 2011) and exclusive BF across three time points from 2000 to 2011. Second, we examined factors associated with early initiation of BF and exclusive BF using data from the 2011 MICS. Our findings from the first analysis suggest that both rates for the early initiation of BF and exclusive BF decreased over time. This is an unlikely result in developed countries, but consistent with previous studies in Vietnam and other developing countries (5, 20–23). Specifically, the early initiation of BF in our study sample fell sharply between 2006 and 2011 from 59.9% in 2006 to 39.7% in 2011, and exclusive BF fell from 24.7 to 16.9% during the same period. Not only did exclusive BF rates fall, but absolute rates were also low – about 24.7% in 2000 and less than 16.9% in 2011. This is not a new finding; previous studies have already reported very low rates of exclusive BF in Vietnam (10, 24, 25). Among 14 countries in the Asia Pacific region, Vietnam was ranked as the lowest in terms of rate of exclusive BF (26). Our results are consistent with this finding. The declining BF trend for the Vietnamese women in the surveys could be attributed to either the individual characteristics of the respondents or to extrinsic factors. However, an increasing BF trend was evident, even after controlling for important individual factors in the multivariable logistic regression. Therefore, parenting-related extrinsic factors may be contributing to this decline. Caesarean section is one example. The fact that delivering babies through Caesarean section in Vietnam has increased in recent years (27) may be one of the environmental factors affecting BF practice. According to Lumbiganon et al., the proportion of Caesarean sections undertaken in Vietnam reached 36% in 2010, putting Vietnam among the countries with the highest Caesarean section rates in the world (28). Mothers who undergo a Caesarean section are separated from their babies for usually more than 1 h after birth, this being the best time for the early initiation of BF. Even if mothers can be with their babies after surgery, many refuse BF because they fear side effects from the medication that they received during their surgical procedure (29). This might therefore be a discouraging factor for the early initiation of BF (22, 29). Another environmental factor that may deter BF is the significant growth in the infant formula market during the last 15 years. Infant formula companies sometimes mislead consumers with exaggerated advertisements about the benefits of infant formula and even give false information that infant formula is better than breast milk. This type of aggressive marketing may affect mothers’ BF behavior (10, 24). There were some notable findings from the analyses of factors associated with the early initiation of BF and exclusive BF. First, unlike many previous studies showing that individual socioeconomic and demographic factors such as mothers’ level of education, wealth, or residence area were associated with BF (5, 10, 24), we did not find a significant association between individual-level maternal factors and the early initiation of BF or exclusive BF. This suggests that mothers’ individual characteristics may no longer be as important in determining BF outcomes. In other words, education may not be as important for the uptake of knowledge and information about the benefits of BF as has been assumed. Second, our study instead found an association between contextual factors (i.e. factors at the provincial level) and both BF outcomes. First, women living in provinces composed of people with lower levels of economic status (i.e. higher provincial poverty rates) seemed to have higher odds of exclusive BF, although this association was not significant for the early initiation of BF. There are a few possible explanations for this finding. One is the difference in Caesarean section rate among the provinces. Usually, Caesarean section deliveries tend to be more prevalent in affluent provinces than in the poorer provinces (27). As already explained here, this delivery method delays the possible time for the first BF. This was seen in previous studies in Vietnam and China (5, 29) as well as in our analysis (Table 7). Mothers who missed the chance for the early initiation of BF might have more difficulties in maintaining exclusive BF afterwards for both physiological and psychological reasons. Another possible explanation for the association between higher levels of poverty and higher levels of exclusive BF is that mothers in better-off provinces often have more opportunities for exposure to aggressive commercials from infant formula companies. These areas have a larger market for infant formula and are targeted by infant formula companies (30). Understandably, mothers in more developed or wealthy provinces and urban areas are more likely to be able to afford formula milk, compared with mothers in poorer areas (10). Lastly, we found that mothers living in provinces with a higher percentage of women with more than three children were more likely to give their babies the first breast milk within the first hour, but they were less likely to continue with exclusive BF during the first 6 months after birth. Provinces with a high proportion of young children might pay more attention to community programs for encouraging BF. The activities in many such programs tend to focus on encouraging the initiation of BF, for example, stationing health workers in community health centers where they can help mothers to start BF and give information about BF practices. However, they do not always follow up to find out whether mothers continue BF during the 6 months after delivery. Some mothers do not have a strong motivation for continuing BF because they have other young children to take care of. These results suggest that we need to consider not only the environmental factors associated with socioeconomic conditions, but also factors that can be directly related to the mothers’ real life patterns.

Strengths and limitations

Although this study is the first to explore the relationship between contextual factors and the early initiation of BF and exclusive BF in Vietnam using the MICS data, we acknowledge that there are limitations. First, although this study used all the possible information from the MICS data, a large number of observations were dropped, resulting in a fairly small sample. Accordingly it can be argued that our analysis did not have sufficient power for identifying potential differences. This also impacts the generalizability of the results. Second, because all the information about BF experience relied on maternal recall of the events, we acknowledge possible recall bias. However as questions about exclusive BF required respondents to recall events during the 24 h prior to the interview, it can be reasonably assumed that recall bias was not a major issue here. It is, however, possible that questions about the early initiation of BF were affected by recall bias. Recall bias can be reduced by ensuring that respondents have enough time to reflect before answering the questions or by having them think through a sequence of events related to the event at the investigation phase. However, since we used a secondary dataset, this tactic was not possible. Last, the use of secondary data did not allow us to analyze the effects of the various factors that might have influenced BF behavior, such as mother's knowledge about BF and the experience of utilizing BF counseling during prenatal care. Given these limitations, our findings need to be interpreted with some caution.

Conclusion

The results of this study indicate that BF practice in Vietnam is not as heavily affected by individual factors as previously thought. Environmental factors are becoming more important in supporting the adoption of BF practices. Furthermore, our findings suggest that Caesarean section may be a major impediment to BF. Considering this, as well as other well-known negative aspects of Caesarean sections, we suggest that the procedure should be performed only when necessary. Lastly, our empirical findings support the need for the greater regulation of information on infant formula, especially where this can mislead mothers about the benefits of BF versus formula feeding. It is intended that this study will be a cornerstone for further research in this important area. The next steps are to build a stronger evidence base by more specifically examining the links between contextual factors and BF. This will help to inform policy makers as they develop effective intervention programs to promote BF and enhance the nutritional and health status of babies and ultimately children (1).
  18 in total

1.  Have we left some behind? Trends in socio-economic inequalities in breastfeeding initiation: a population-based epidemiological surveillance study.

Authors:  Nathan C Nickel; Patricia J Martens; Dan Chateau; Marni D Brownell; Joykrishna Sarkar; Chun Yan Goh; Elaine Burland; Carole Taylor; Alan Katz
Journal:  Can J Public Health       Date:  2014-07-31

2.  Breast-feeding initiation and exclusive breast-feeding in rural Vietnam.

Authors:  Dat V Duong; Colin W Binns; Andy H Lee
Journal:  Public Health Nutr       Date:  2004-09       Impact factor: 4.022

3.  Premature complementary feeding is associated with poorer growth of vietnamese children.

Authors:  L T Hop; R Gross; T Giay; S Sastroamidjojo; W Schultink; N T Lang
Journal:  J Nutr       Date:  2000-11       Impact factor: 4.798

Review 4.  A situational review of infant and young child feeding practices and interventions in Viet Nam.

Authors:  Phuong Hong Nguyen; Purnima Menon; Mariel Ruel; Nemat Hajeebhoy
Journal:  Asia Pac J Clin Nutr       Date:  2011       Impact factor: 1.662

Review 5.  Maternal and child undernutrition and overweight in low-income and middle-income countries.

Authors:  Robert E Black; Cesar G Victora; Susan P Walker; Zulfiqar A Bhutta; Parul Christian; Mercedes de Onis; Majid Ezzati; Sally Grantham-McGregor; Joanne Katz; Reynaldo Martorell; Ricardo Uauy
Journal:  Lancet       Date:  2013-06-06       Impact factor: 79.321

6.  Exclusive breastfeeding in Vietnam: an attainable goal.

Authors:  Stina Almroth; Maaike Arts; Nguyen Dinh Quang; Pham Thi Thuy Hoa; Carol Williams
Journal:  Acta Paediatr       Date:  2008-05-14       Impact factor: 2.299

7.  Method of delivery and pregnancy outcomes in Asia: the WHO global survey on maternal and perinatal health 2007-08.

Authors:  Pisake Lumbiganon; Malinee Laopaiboon; A Metin Gülmezoglu; João Paulo Souza; Surasak Taneepanichskul; Pang Ruyan; Deepika Eranjanie Attygalle; Naveen Shrestha; Rintaro Mori; Duc Hinh Nguyen; Thi Bang Hoang; Tung Rathavy; Kang Chuyun; Kannitha Cheang; Mario Festin; Venus Udomprasertgul; Maria Julieta V Germar; Gao Yanqiu; Malabika Roy; Guillermo Carroli; Katherine Ba-Thike; Ekaterina Filatova; José Villar
Journal:  Lancet       Date:  2010-01-11       Impact factor: 79.321

8.  Community factors affecting rising caesarean section rates in developing countries: an analysis of six countries.

Authors:  Tiziana Leone; Sabu S Padmadas; Zoë Matthews
Journal:  Soc Sci Med       Date:  2008-07-25       Impact factor: 4.634

9.  Determinants of exclusive breastfeeding in Nigeria.

Authors:  Kingsley E Agho; Michael J Dibley; Justice I Odiase; Sunday M Ogbonmwan
Journal:  BMC Pregnancy Childbirth       Date:  2011-01-11       Impact factor: 3.007

10.  Suboptimal breastfeeding practices are associated with infant illness in Vietnam.

Authors:  Nemat Hajeebhoy; Phuong H Nguyen; Priya Mannava; Tuan T Nguyen; Lan Tran Mai
Journal:  Int Breastfeed J       Date:  2014-08-01       Impact factor: 3.461

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  13 in total

1.  Cohort profile: maternal lifestyle and diet in relation to pregnancy, postpartum and infant health outcomes in Vietnam: A multicentre prospective cohort study.

Authors:  Cong Luat Nguyen; Phung Thi Hoang Nguyen; Tan Khac Chu; Anh Vo Van Ha; Ngoc Minh Pham; Dat Van Duong; Dung Van Do; Hong Kim Tang; Colin W Binns; Andy H Lee
Journal:  BMJ Open       Date:  2017-09-05       Impact factor: 2.692

2.  Predictors of exclusive breastfeeding and consumption of soft, semi-solid or solid food among infants in Boucle du Mouhoun, Burkina Faso: A cross-sectional survey.

Authors:  Jenny A Cresswell; Rasmané Ganaba; Sophie Sarrassat; Simon Cousens; Henri Somé; Abdoulaye Hama Diallo; Veronique Filippi
Journal:  PLoS One       Date:  2017-06-22       Impact factor: 3.240

3.  Physical Activity During Pregnancy is Associated with Improved Breastfeeding Outcomes: A Prospective Cohort Study.

Authors:  Phung Thi Hoang Nguyen; Colin W Binns; Cong Luat Nguyen; Anh Vo Van Ha; Khac Tan Chu; Dat Van Duong; Dung Van Do; Andy H Lee
Journal:  Int J Environ Res Public Health       Date:  2019-05-16       Impact factor: 3.390

4.  Trends in early initiation of breastfeeding in Bangladesh and a multilevel analysis approach to find its determinants.

Authors:  Foyez Ahmmed; Muhammad Mahabub Rahaman Manik
Journal:  Sci Rep       Date:  2021-03-03       Impact factor: 4.379

5.  The Association between a Novel Baby-Friendly Hospital Program and Equitable Support for Breastfeeding in Vietnam.

Authors:  Caroline M Joyce; Sherry Shu-Yeu Hou; Binh T T Ta; Duong Hoang Vu; Roger Mathisen; Ilona Vincent; Vinh Nguyen Duc; Arijit Nandi
Journal:  Int J Environ Res Public Health       Date:  2021-06-22       Impact factor: 3.390

6.  Factors associated with breastfeeding intent among mothers of newborn babies in Da Nang, Viet Nam.

Authors:  Phuong Thi Kim Nguyen; Hoang Thi Tran; Thuy Thi Thanh Thai; Kirsty Foster; Christine L Roberts; Ben J Marais
Journal:  Int Breastfeed J       Date:  2018-01-11       Impact factor: 3.461

7.  Trends and factors associated with early initiation of breastfeeding in Namibia: analysis of the Demographic and Health Surveys 2000-2013.

Authors:  M N Ndirangu; S M Gatimu; H M Mwinyi; D C Kibiwott
Journal:  BMC Pregnancy Childbirth       Date:  2018-05-16       Impact factor: 3.007

8.  Factors associated with delayed initiation of breastfeeding: a survey in Northern Uganda.

Authors:  David Mukunya; James K Tumwine; Victoria Nankabirwa; Grace Ndeezi; Isaac Odongo; Josephine Tumuhamye; Justin Bruno Tongun; Samuel Kizito; Agnes Napyo; Vincentina Achora; Beatrice Odongkara; Thorkild Tylleskar
Journal:  Glob Health Action       Date:  2017       Impact factor: 2.640

9.  Factors associated with delayed initiation of breastfeeding: a cross-sectional study in South Sudan.

Authors:  Justin Bruno Tongun; Mohammed Boy Sebit; David Mukunya; Grace Ndeezi; Victoria Nankabirwa; Thorkild Tylleskar; James K Tumwine
Journal:  Int Breastfeed J       Date:  2018-07-05       Impact factor: 3.461

10.  Early feeding practices and associated factors in Sudan: a cross-sectional analysis from multiple Indicator cluster survey.

Authors:  Manar E Abdel-Rahman; Asmaa El-Heneidy; Lenka Benova; Laura Oakley
Journal:  Int Breastfeed J       Date:  2020-05-14       Impact factor: 3.461

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