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Home Prevalence of and factors associated with anaemia in women of reproductive age in Bangladesh, Maldives and Nepal: Evidence from nationally-representative survey data
Prevalence of and factors associated with anaemia in women of reproductive age in Bangladesh, Maldives and Nepal: Evidence from nationally-representative survey data
Prevalence of and factors associated with anaemia in women of reproductive age in Bangladesh, Maldives and Nepal: Evidence from nationally-representative survey data

Competing Interests: The authors have declared that no competing interests exist.

‡ These authors are joint senior authors on this work.

Article Type: research-article Article History
Abstract

Background

Anaemia is a significant public health problem in most South-Asian countries, causing increased maternal and child mortality and morbidity. This study aimed to estimate the prevalence of and factors associated with anaemia in women of reproductive age in Bangladesh, Maldives, and Nepal.

Methods

We used the nationally-representative Demographic and Health Surveys Program data collected from women of reproductive age (15–49 years) in 2011 in Bangladesh (n = 5678), 2016 in Maldives (n = 6837), and 2016 in Nepal (n = 6419). Anaemia was categorized as mild (haemoglobin [Hb] of 10.0–10.9 g/dL for pregnant women and 11.0–11.9 g/dL for non-pregnant women), moderate (Hb of 7.0–9.9 g/dL for pregnant women and 8.0–10.9 g/dL for non-pregnant women), and severe (Hb <7.0 g/dL for pregnant women and <8.0 g/dL for non-pregnant women). Multinomial logistic regression analyses were used to identify factors associated with anaemia.

Results

The prevalence of anaemia was 41.8% in Bangladesh, 58.5% in Maldives, and 40.6% in Nepal. In Bangladesh, postpartum amenorrhoeic, non-educated, and pregnant women were more likely to have moderate/severe anaemia compared to women who were menopausal, had secondary education, and were not pregnant, respectively. In Maldives, residence in urban areas, underweight, having undergone female sterilization, current pregnancy, and menstruation in the last six weeks were associated with increased odds of moderate/severe anaemia. In Nepal, factors associated with increased odds of moderate/severe anaemia were having undergone female sterilization and current pregnancy.

Conclusion

Anaemia remains a significant public health issue among 15-49-year-old women in Bangladesh, Maldives, and Nepal, which requires urgent attention. Effective policies and programmes for the control and prevention of anaemia should take into account the unique factors associated with anaemia identified in each country. In all three countries, strategies for the prevention and control of anaemia should particularly focus on women who are pregnant, underweight, or have undergone sterilization.

Rahman,Rahman,Aziz Rahman,Szymlek-Gay,Uddin,Islam,and Gopichandran: Prevalence of and factors associated with anaemia in women of reproductive age in Bangladesh, Maldives and Nepal: Evidence from nationally-representative survey data

Introduction

Anaemia is a significant public health problem worldwide, especially in South Asia [15]. Globally, half a billion women of reproductive age are affected by anaemia, with the largest proportion living in South Asia [6]. Although the worldwide prevalence of anaemia decreased from 33% to 29% between 1995 and 2011 among non-pregnant women, and from 43% to 38% among pregnant women, it remains a major public health threat requiring urgent attention to meet one of the six recent Global Nutrition Targets of reducing anaemia by 50% in women of reproductive age by 2025 [6]. Despite substantial economic growth, South Asia has made little progress in reducing anaemia. A WHO study has suggested that over 50% of women of reproductive age are affected by anaemia in some South-Asian countries [7]. In 2012, South Asia also accounted for 38% of the world’s years lost to disability associated with anaemia [8, 9].

Anaemia is an indicator of poor nutrition and health [6] and is associated with decreased work productivity due to reduced work capacity, which in turn leads to reduced personal income and substantial economic losses to the country [4, 10]. Anaemia contributes to increased risk of miscarriages and premature birth in mothers, and low birth weight, suboptimal growth and impaired learning in children [11], which may also persist into adulthood. The annual physical productivity losses caused by anaemia are approximately $3.64 per capita, which is 0.81% of Gross Domestic Product in ten selected developing countries [12]. This small individual loss may aggregate the effect, particularly in developing countries in which physical labour is dominant [10] and accrues billions of dollars in human capital. In South Asia, this productivity loss is estimated to cost $4.2 billion annually [12].

The WHO estimates that approximately half of all anaemia cases is due to iron deficiency with other contributing factors including genetic disorders, chronic infections, and micronutrient deficiencies [2, 3, 8, 13]. Other factors such as socioeconomic, demographic, anthropometric, and lifestyle factors have also been shown to play a role in the development of anaemia [3, 4, 14, 15]. Several studies have been conducted on anaemia among women in South Asia, showing an association with multiple risk factors [3, 4, 15, 16]. However, these studies did not categorize the severity of anaemia and its association with risk factors. Therefore, in this study, we estimated the prevalence of anaemia and identified factors associated with anaemia in women of reproductive age (15–49 years) in Bangladesh, Maldives, and Nepal.

Methods

Data sources

We used data from the 2011 Bangladesh Demographic and Health Survey conducted from 8 July 2011 to 27 December 2011, the 2016 Nepal Demographic and Health Survey carried out from 19 June 2016 to 31 January 2017, and the 2016 Maldives Demographic and Health Survey conducted from 17 March 2016 to 27 November 2017 –these data were collected as part of the Demographic and Health Surveys Program and are publicly available at https://dhsprogram.com/. Each dataset included values for haemoglobin (Hb) concentrations or data for the presence of anaemia along with socioeconomic, demographic, anthropometric, and lifestyle data for women of reproductive age (15–49 years). The details of the survey process and sampling, household selection, blood collection, and Hb determination have been reported for each country [1719]. In brief, all three surveys used a multi-stage cluster sampling approach. Capillary blood samples were collected using a finger-prick method, and Hb concentration was determined using a battery-operated photometer and a disposable microcuvette (HemoCue rapid testing methodology) [1719].

Dependent variable–anaemia

Women of reproductive age (15–49 years) were included in this analysis if they had data for Hb concentration or data for the presence of anaemia. We used the adjusted Hb concentration available in the datasets. Hb concentrations were adjusted for all three countries for altitude and smoking as described previously [1720]. Anaemia was defined according to the WHO classification as Hb <11 g/dL for pregnant women and <12 g/dL for non-pregnant women [21]. Anaemia was further categorized as mild (Hb of 10.0–10.9 g/dL for pregnant women and 11.0–11.9 g/dL for non-pregnant women), moderate (Hb of 7.0–9.9 g/dL for pregnant women and 8.0–10.9 g/dL for non-pregnant women, and severe (Hb <7.0 g/dL for pregnant women and <8.0 g/dL for non-pregnant women) [21]. However, due to a small number of women presenting with severe anaemia, the moderate and severe anaemia categories were combined into a moderate/severe category (Hb <10.0 g/dL for pregnant women and <11.0 g/dL for non-pregnant women) [21].

Independent variables–factors associated with anaemia

Factors were chosen based on previous literature reporting the risk of developing anaemia in women in low- and middle-income countries including Nepal, Bangladesh, Pakistan, India, and Tanzania [3, 4, 10, 14, 15, 2224]. Socioeconomic and demographic variables included: participants’ current age; place of residence; education level; occupation; husband’s education level; husband’s occupation; sources of drinking water; toilet facilities; and household wealth status. Reproductive characteristics included: total number of children ever birthed; age at first birth; current contraception use; birth in the last 3 years; current pregnancy status; last birth by caesarean section; currently breastfeeding; fertility status; ever had a terminated pregnancy; and menstruated in the last 6 weeks. Behavioural characteristics included cigarette smoking. Weight and height were measured using the Demographic and Health Surveys Program protocols. Body mass index (BMI) was calculated as weight in kilograms divided by height in meters squared. BMI was used to identify underweight, normal weight, and overweight/obesity according to the WHO classification [25]. Self-reported age was categorized into three groups, and household wealth status was categorized into five groups based on principal component analysis [1719], which were then recoded into three groups as poor (poorer + poorest), medium, and rich (richer + richest).

Statistical analyses

Descriptive statistics were used to summarize background characteristics and the prevalence of anaemia for each country. Chi-square test was used to determine the associations between the independent and outcome variables where p-value of <0.05 was taken as statistically significant in each country. Predictor variables associated at p<0.05 were considered in multiple multinomial logistic regression models to capture the effect of each independent variable with the outcome variable which had three categories (no anaemia, mild, moderate/severe). Both unadjusted/crude odds ratios (cORs) and adjusted odds ratios (aORs) are reported for these analyses along with 95% confidence intervals (CIs). Effects of collinearity were checked for in all models and found to be low with variance inflation factors ≤2 for all independent variables. All statistical analyses were performed using SPSS 26 (IBM Windows Version) software. All tests were two-sided.

Ethical statement

The study used secondary data from the Demographic and Health Surveys Program that are publicly available. The details of ethical procedures followed by the Demographic and Health Surveys Program can be found elsewhere [26].

Results

A total of 5678 women of reproductive age from Bangladesh were included in this study. Most women were aged between 35–49 years (36.7%) and 65.3% resided in rural areas. The overall prevalence of anaemia in Bangladesh was 41.8%, with 6.8% of all women presenting with moderate/severe anaemia and 35.0% with mild anaemia. Anaemia was more prevalent in women residing in rural areas (44.2%); if the woman (46.2%) or her husband (45.5%) had no education; in women whose husband had an agricultural occupation (47.3%); in women who lived in a household with a tube well as a source of drinking water (43.2%); in women from households with no toilet (53%); and in women who were poor (48.2%), underweight (51.1%), gave birth to ≥3 children (45.1%), underwent sterilization (47.5%), were currently pregnant (49%), were currently breastfeeding (46.3%), had postpartum amenorrhea (56.4%), or did not menstruate in the last six weeks (45.1%) (p<0.001; Table 1).

Table 1
Characteristics of 15-49-year-old women participating in the 2011 Bangladesh Demographic and Health Survey.
General CharacteristicsTotal N (%)Prevalence of Anaemia, N (%)P-Value
Moderate/severeMildNo Anaemia
Current Age56780.704
15–24 Years1701 (30.0)117 (6.9)583 (34.3)1001 (58.8)
25–34 Years1894 (33.4)262 (6.8)1355 (35.1)2243 (58.1)
35–49 Years2083 (36.7)9 (7.7)47 (40.2)61 (52.1)
Place of Residence5678<0.001
Urban1970 (34.7)118 (6.0)615 (31.2)1237 (62.8)
Rural3708 (65.3)270 (7.3)1370 (36.9)2068 (55.8)
Religion56780.001
Islam5022 (88.4)333 (6.6)1717 (34.2)2972 (59.2
Hindu623 (11.0)54 (8.7)255 (40.9)314 (50.4)
Other33 (0.6)1 (0.3)13 (39.4)19 (57.6)
Education Level5678<0.001
No Education1457 (25.7)130 (8.9)544 (37.3)783 (53.7)
Primary1746 (30.8)131 (7.5)640 (36.7)975 (55.8)
Secondary2050 (36.1)103 (5.0)685 (33.4)1262 (61.6)
Higher425 (7.5)24 (5.6)116 (27.3)285 (67.1)
Occupation56780.035
Agricultural170 (3.0)21 (12.4)58 (34.1)91 (53.5)
Professional/Services330 (5.8)23 (7.0)126 (38.2)181 (54.8)
Other/Don’t Work5178 (91.2)344 (6.6)1801 (34.8)3033 (58.6)
Husband’s Education Level5678<0.001
No Education1640 (28.9)127 (7.7)620 (37.8)893 (54.5)
Primary1625 (28.6)129 (7.9)579 (35.6)917 (56.4)
Secondary1612 (28.4)89 (5.5)538 (33.4)985 (61.1)
Higher801 (14.1)43 (5.4)248 (31.0)510 (63.7)
Husband’s Occupation5678<0.001
Agricultural1679 (29.6)144 (8.6)650 (38.7)885 (52.7)
Non-Agricultural2178 (38.4)130 (6.0)725 (33.3)1323 (60.7)
Business1246 (21.9)78 (6.3)413 (33.1)755 (60.6)
Professional/Services364 (6.4)25 (6.9)114 (31.3)225 (61.8)
Other/Don’t Work211 (3.7)11 (5.2)83 (39.4.2)117 (55.5)
Sources of Drinking Water5678<0.001
Tube Well4499 (79.2)306 (6.8)1636 (36.4)2557 (56.8)
Piped Water619 (10.9)37 (6.0)157 (25.4)425 (68.7)
Other560 (9.9)45 (8.0)192 (34.3)323 (57.7)
Toilet Facilities5678<0.001
Flush Toilet9588 (16.9)52 (5.4)247 (25.8)659 (68.8)
Pit Latrine3812 (67.1)267 (7.0)1381 (36.2)2164 (56.8)
Other719 (12.7)50 (7.0)276 (38.4)393 (54.7)
No Toilet189 (3.3)19 (10.1)81 (42.9)89 (47.1)
Household Wealth Status5678<0.001
Poor2065 (36.4)176 (8.5)820 (39.7)1069 (51.8)
Medium1078 (19.0)73 (6.8)391 (36.3)614 (57.0)
Rich2535 (44.6)139 (5.5)774 (30.5)1622 (64.0)
BMI5678<0.001
Underweight (<18.5 kg/m2)1360 (24.0)115 (8.4)585 (42.7)670 (48.9)
Normal (18.5–24.99 kg/m2)3296 (58.0)233 (6.9)1151 (34.0)1999 (59.1)
Overweight/Obese (≥25.0 kg/m2)1022(18.0)29 (4.4)181 (27.7)444 (67.9)
Total Number of Children Ever Birthed5678<0.001
≥3 Children2518 (44.3)196 (7.8)940 (37.3)1382 (54.9)
1–2 Children1588 (45.6)148 (5.7)857 (33.1)1583 (61.2)
No Children572 (10.1)44 (7.7)188 (32.9)340 (59.4)
Age at First Birth51020.667
15–24 Years4863 (95.2)328 (6.7)1706 (35.1)2829 (58.2)
25–34 Years243 (4.3)14 (5.9)90 (37.7)135 (56.5)
Current Contraception Use5678<0.001
Female Sterilization261 (4.6)20 (7.7)104 (39.8)137 (52.5)
Using Other Method3020 (53.2)140 (4.6)1036 (34.3)1844 (61.1)
Not Using any Method2397 (42.2)228 (9.5)845 (35.3)1324 (55.2)
Birth in the Last 3 Years56780.007
Yes1431 (25.2)111 (7.8)537 (37.5)783 (54.7)
No4247 (74.8)277 (6.5)1448 (34.1)2522 (59.4)
Current Pregnancy Status5678<0.001
Yes357 (6.3)81 (22.7)94 (26.3)182 (51.0)
No5321 (93.7)307 (5.8)1891 (35.5)3123 (58.7)
Last Birth by Caesarean Section22670.031
Yes332 (14.6)13 (3.9)114 (34.3)205 (61.7)
No1935 (85.4)144 (7.4)704 (36.4)1087 (56.2)
Currently Breastfeeding5678<0.001
Yes1417 (25.0)103 (7.3)552 (39.0)762 (53.8)
No4261 (75.0)285 (6.7)1433 (33.6)2543 (59.7)
Fertility Status5325<0.001
Fecund3814 (71.6)185 (4.9)1345 (35.3)2284 (59.9)
Pregnant356 (6.7)80 (22.5)94 (26.4)182 (51.1)
Postpartum Amenorrhoeic289 (5.4)40 (13.8)123 (42.6)126 (43.6)
Infecund, Menopausal866 (16.3)55 (6.4)297 (34.3)514 (59.4)
Ever had a Terminated Pregnancy56780.810
Yes1286 (22.6)93 (7.2)449 (34.9)744 (22.5)
No4392 (77.4)295 (6.7)1536 (35.0)2561 (58.3)
Menstruated in the Last 6 Weeks5678<0.001
Yes3919 (69.0)207 (5.3)1373 (35.0)2339 (59.7)
No1759 (31.0)181 (10.3)612 (34.8)966 (54.9)

P-value obtained from Chi-square test.

Women who had no education were 2.58 (95% CI: 1.46–4.55; p = 0.001) times more likely to have moderate/severe anaemia than women who had secondary education (Table 2). Women who were postpartum amenorrhoeic were approximately five times (aOR = 4.81, 95% CI: 1.63–14.17; p = 0.004) more likely to be moderately/severely anaemic than infecund, menopausal women. Pregnant women were more likely to be moderately/severely anaemic than non-pregnant women (aOR = 10.93, 95% CI: 3.53–33.70; p<0.001). Overweight/obesity was associated with decreased odds of moderate/severe anaemia compared to normal weight (aOR = 0.43, 95% CI: 0.21–0.92; p = 0.028). Factors associated with increased odds of mild anaemia were: women’s professional/services occupation compared to other non-agricultural occupations or current unemployment (aOR = 1.87, 95% CI: 1.14–3.03; p = 0.011); having given birth to ≥3 children compared to having given birth to no children (aOR = 1.26, 95% CI: 1.01–1.57; p = 0.038); and currently breastfeeding compared to not breastfeeding (aOR = 1.37, 95% CI: 1.12–1.67; p = 0.002) (Table 2). The following factors were associated with decreased odds of mild anaemia: non-agricultural occupation of the husband compared to no current employment or occupations other than agricultural, business or professional/services (aOR = 0.49, 95% CI: 0.27–0.91; p = 0.023); use of contraception other than sterilization compared to not using contraception (aOR = 0.68, 95% CI: 0.52–0.88; p = 0.003); and overweight/obesity compared to normal weight (aOR = 0.70, 95% CI: 0.51–0.96; p = 0.024) (Table 2).

Table 2
Factors associated with anaemia among women of reproductive age in Bangladesh (n = 5678).
General CharacteristicsModerate/severe AnaemiaMild Anaemia
cOR [95% CI]P-ValueaOR [95% CI]P-ValuecOR [95% CI]P-ValueaOR [95% CI]P-Value
Place of Residence
Rural (Ref.)1.001.001.001.00
Urban0.73 [0.58–0.92]0.0071.16 [0.73–1.85]0.5210.75 [0.67–0.85]<0.0011.11 [0.88–1.40]0.381
Religion
Other (Ref.)1.001.001.001.00
Islam2.13 [0.28–15.95]0.4620.63 [0.28–15.95]0.4620.84 [0.42–1.71]0.5370.37 [0.10–1.60]0.183
Hindu3.27 [0.43–24.92]0.2531.27 [0.43–24.92]0.4561.19 [0.58–2.45]0.6430.48 [0.11–2.11]0.329
Education Level
Secondary (Ref.)1.001.001.001.00
No Education1.97 [1.25–3.11]0.0042.58 [1.46–4.55]0.0011.71 [1.34–2.17]<0.0011.00 [0.59–1.72]0.989
Primary1.60 [1.01–2.51]0.0441.58 [0.97–2.56]0.0641.61 [1.27–2.05]<0.0011.17 [0.72–1.90]0.534
Higher0.97 [0.61–1.54]0.8951.19 [0.44–3.25]0.7361.33 [1.05–1.70]0.0161.13 [0.74–1.75]0.601
Occupation
Other/Don’t Work (Ref.)1.001.001.001.00
Agricultural2.04 [1.25–3.13]0.0041.41 [0.53–3.77]0.4921.07 [0.77–1.50]0.6781.16 [0.65–2.06]0.616
Professional/Services1.12 [0.72–1.75]0.6191.70 [0.66–4.39]0.2741.17 [0.93–1.48]0.1841.87 [1.14–3.03]0.011
Husband’s Education Level
Secondary (Ref.)1.001.001.001.00
No Education1.69 [1.17–2.42]0.0050.95 [0.53–1.71]0.8731.43 [1.19–1.72]<0.0010.84 [0.54–1.31]0.447
Primary1.67 [1.16–2.40]0.0061.47 [0.89–244]0.1381.30 [1.08–1.56]0.0050.91 [0.61–1.35]0.625
Higher1.07 [0.73–1.57]0.7211.16 [0.46–2.89]0.7561.12 [0.93–1.35]0.2170.94 [0.64–1.36]0.935
Husband’s Occupation
Other/Don’t Work (Ref.)1.001.001.001.00
Agricultural1.73 [0.91–3.29]0.0941.35 [0.29–6.36]0.7071.03 [0.77–1.40]0.8200.61 [0.33–1.14]0.112
Non-Agricultural1.05 [0.55–1.99]0.8931.12 [0.24–5.24]0.8830.77 [0.58–1.04]0.0870.49 [0.27–0.91]0.023
Business1.10 [0.57–2.13]0.7891.06 [0.22–5.06]0.9470.77 [0.57–1.05]0.0960.56 [0.30–1.10]0.067
Professional/Services1.18 [0.56–2.49]0.6602.26 [0.37–14.10]0.3780.71 [0.50–1.02]0.0670.75 [0.34–1.58]0.464
Sources of Drinking Water
Other (Ref.)1.001.001.001.00
Tube Well0.86 [0.62–1.12]0.3720.80 [0.42–1.53]0.4941.08 [0.89–1.30]0.4461.53 [1.04–2.26]0.031
Piped Water0.63 [0.40–0.99]0.0440.91 [0.34–2.46]0.8500.62 [0.48-.803]<0.0011.32 [0.78–2.34]0.301
Toilet Facilities
No Toilet (Ref.)1.001.001.001.00
Flush Toilet0.37 [0.21-.654]0.0010.52 [0.17–1.53]0.2330.41 [0.30–0.58]<0.0010.89 [0.48–1.62]0.677
Pit Latrine0.58 [0.35-.964]0.0360.73 [0.34–0.16]0.4240.70 [0.52–0.96]0.0241.09 [0.66–1.80]0.756
Other0.60 [0.34–1.06]0.0780.59 [0.24–1.45]0.2470.77 [0.55–1.08]0.1331.28 [0.72–2.28]0.408
Household Wealth Status
Medium (Ref.)1.001.001.001.00
Poor1.39 [1.04–1.85]0.0281.20 [0.73–1.98]0.4811.21 [1.03–1.41]0.0191.02 [0.79–1.34]0.866
Rich0.72 [0.54–0.97]0.0311.01 [0.56–1.80]0.9860.75 [0.64–0.87]<0.0010.77 [0.58–1.02]0.766
BMI
Normal (18.5–24.99 kg/m2) (Ref.)1.001.001.001.00
Underweight (<18.5 kg/m2)1.45 [1.14–1.84]0.0030.96 [0.64–1.43]0.8341.47 [1.29–1.68]<0.0011.20 [0.98–1.48]0.085
Overweight/Obese (≥25.0 kg/m2)0.55 [0.40–0.77]<0.0010.43 [0.21–0.92]0.0280.65 [0.55–0.76]<0.0010.70 [0.51–0.96]0.024
Total Number of Children Ever Birthed
No Children (Ref.)1.001.001.001.00
≥3 Children1.10 [0.77–1.55]0.6061.31 [0.87–1.97]0.2021.23 [1.01–1.50]0.0391.26 [1.01–1.57]0.038
1–2 Children0.72 [0.51–1.03]0.0740.72 [0.51–1.03]0.6740.98 [0.80–1.19]0.8330.76 [0.80–1.19]0.837
Current Contraception Use
Not Using any Method (Ref.)1.001.001.001.00
Female Sterilization0.85 [0.52–1.38]0.5091.15 [0.35–3.80]0.8141.19 [0.91–1.56]0.2061.41 [0.79–2.50]0.245
Using Other Method0.44 [0.35–0.55]<0.0010.88 [0.50–1.57]0.6630.88 [0.79–0.99]0.0300.68 [0.52–0.88]0.004
Current Pregnancy Status
No (Ref.)1.001.001.001.00
Yes4.53 [3.40–6.03]<0.00110.93 [3.53–33.70]<0.0010.85 [0.66–1.10]0.2221.08 [0.59–1.95]0.819
Last Birth by Caesarean Section
No (Ref.)1.001.001.001.00
Yes0.479 [0.27–0.86]0.0140.76 [0.39–1.52]0.4430.86 [0.67–1.10]0.2280.99 [0.73–1.32]0.919
Currently Breastfeeding
No (Ref.)1.001.001.001.00
Yes1.21 [0.95–1.53]0.1251.31 [0.87–1.98]0.1961.29 [1.13–1.46]<0.0011.37 [1.12–1.67]0.002
Fertility Status
Infecund, Menopausal (Ref.)1.001.001.001.00
Fecund0.76 [0.55–1.04]0.0841.07 [0.31–3.63]0.9161.02 [0.87–1.19]0.8141.22 [0.73–2.05]0.450
Pregnant4.11 [2.80–6.02]<0.00110.93 [3.53–33.70]<0.0010.89 [0.67–1.19]0.4431.08 [0.59–1.95]0.819
Postpartum Amenorrhoeic2.97 [1.89–4.66]<0.0014.81 [1.63–14.17]0.0041.69 [1.27–2.25]<0.0011.29 [0.78–2.15]0.327
Menstruated in the Last 6 Weeks
No (Ref.)1.001.001.001.00
Yes0.47 [0.38–0.58]<0.0011.36 [0.60–3.12]0.4630.928 [0.82–1.10]0.2170.97 [0.69–1.38]0.870

Ref: Reference; CI: Confidence Interval.

P-value obtained from multiple multinomial logistic regression models.

Table 3 shows that among 6837 women of reproductive age in Maldives, 37.1% were aged 25–34 years, 3.7% were pregnant, and 88.2% resided in rural areas. The overall prevalence of anaemia in Maldives was 58.5%, mild anaemia was present in 46.4% of all women while moderate/severe anaemia affected 12.1% of all women. Anaemia was more prevalent (p<0.001) among women who were aged 35–49 years (61.2%), were living in urban areas (73.2%), had higher education (63.0%), used bottled water (65.5%), were rich (65.1%), were underweight (66.9%), gave birth to ≥3 children (62.1%), were not currently pregnant (58.6%), were fecund (58.9%), or among those who menstruated in the last six weeks (59.9%).

Table 3
Characteristics of 15-49-year-old women participating in the 2016 Maldives Demographic and Health Survey.
General CharacteristicsTotal N (%)Prevalence of Anaemia, N (%)P-Value
Moderate/severeMildNo Anaemia
Current Age6837<0.001
15–24 Years1869 (27.3)203 (24.5)263 (31.8)361 (43.7)
25–34 Years2539 (37.1)263 (10.4)1220 (48.1)1056 (41.6)
35–49 Years2429 (35.5)361 (14.9)1124 (46.3)944 (38.9)
Place of Residence6837<0.001
Urban806 (11.8)148 (18.4)442 (54.8)216 (26.8)
Rural6031 (88.2)679 (11.3)2731 (45.3)2621 (43.5)
Education Level6837<0.001
No Education320 (4.7)54 (16.9)142 (44.4)124 (38.8)
Primary1888 (27.6)250 (13.2)871 (46.1)767 (40.6)
Secondary3598 (52.6)375 (10.4)1658 (46.1)1565 (43.5)
Higher1031 (15.1)148 (14.4)502 (48.7)381 (37.0)
Occupation68370.007
Agricultural22 (0.3)3 (13.6)8 (36.4)11 (50.0)
Professional/Services534 (7.8)71 (13.3)249 (46.6)214 (40.1)
Other2445 (35.8)330 (13.5)1164 (47.6)951 (38.9)
Don’t Work3836 (56.1)423 (11.0)1752 (45.7)1661 (43.3)
Husband’s Education Level50210.067
No Education913 (18.2)65 (13.7)223 (47.1)185 (39.1)
Primary1605 (32.0)211 (13.1)749 (46.7)645 (40.2)
Secondary2009 (40.0)220 (11.0)929 (46.2)860 (42.8)
Higher494 (9.8)77 (15.6)232 (47.0)185 (37.4)
Husband’s Occupation68370.308
Agricultural925 (13.5)111912.0)416 (45.0)398 (43.0)
Non-Agricultural1417 (20.7)171 (12.1)672 (47.4)574 (40.5)
Professional/Services669 (9.8)93 (13.9)284 (42.5)292 (43.6)
Other/Don’t Work3826 (56.0)452 (11.8)1801 (47.1)1573 (41.1)
Sources of Drinking Water6837<0.001
Piped Water1002 (14.7)119 (11.9)468 (46.7)415 (41.5)
Rain Water4632 (67.7)532 (11.5)2097 (45.3)2003 (43.2)
Bottled Water1094 (16.0)163 (14.9)554 (50.6)377 (34.5)
Other109 (1.6)13 (11.95)54 (49.5)42 (38.5)
Toilet Facilities68370.551
Flush Toilet6755 (98.8)815 (12.1)3132 (46.4)2808 (41.6)
Pit Latrine12 (0.2)2 (0.2)4 (33.3)6 (50.0)
No Toilet70 (1.0)10 (14.3)37 (52.9)23 (32.9)
Household Wealth Status6837<0.001
Poor3829 (56.0)439 (11.5)1746 (45.6)1644 (42.9)
Medium1863 (27.3)206 (11.1)864 (46.4)793 (42.6)
Rich1145 (16.7)182 (15.9)563 (49.2)400 (34.9)
BMI6837<0.001
Underweight (<18.5 kg/m2)644 (9.4)97 (15.1)333 (51.7)214 (33.2)
Normal (18.5–24.99 kg/m2)2615 (38.2)331 (12.7)1254 (48.0)1030 (39.4)
Overweight/Obese (≥25.0 kg/m2)3578 (52.4)399 (11.2)1586 (44.3)1593 (44.5)
Total Number of Children Ever Birthed6837<0.001
≥3 Children2014 (29.5)289 (14.3)962 (47.8)763 (37.9)
1–2 Children2817 (41.2)313 (11.1)1325 (47.0)1179 (41.9)
No Children2006 (29.3)225 (11.2)886 (44.2)895 (44.6)
Age at First Birth48310.002
15–24 Years3831 (79.3)477 (12.5)1841 (48.1)1513 (39.5)
25–49 Years1000 (20.7)122 (12.7)432 (44.8)410 (42.5)
Current Contraception Use68370.001
Female Sterilization251 (3.7)46 (18.3)131 (52.2)74 (29.5)
Using Other Method760 (11.1)91 (12.0)356 (46.8)313 (41.2)
Not Using any Method5826 (85.2)690 (11.8)2686 (46.1)2450 (42.1)
Birth in the Last 3 Years68370.001
Yes1503 (22.0)140 (9.3)717 (47.7)646 (43.0)
No5334 (78.0)687 (12.9)2456 (46.0)2191 (41.1)
Current Pregnancy Status6837<0.001
Yes255 (3.7)54 (21.2)91 (35.7)110 (43.1)
No6582 (96.3)773 (11.7)3082 (46.8)2727 (41.4)
Last Birth by Caesarean Section23560.194
Yes964 (40.9)83 (8.6)464 (48.1)417 (43.3)
No1392 (59.1)151 (10.8)662 (47.6)579 (41.6)
Currently Breastfeeding68370.001
Yes1110 (16.2)99 (8.9)514 (46.3)497 (44.8)
No5727 (83.8)728 (12.7)2659 (46.4)2340 (40.9)
Smoking Cigarettes68370.547
Yes60 (0.9)9 (15.0)30 (50.0)21 (35.0)
No6777 (99.1)818 (12.1)3143 (46.4)2816 (41.6)
Fertility Status6837<0.001
Fecund4844 (70.0)573 (11.8)2280 (47.1)1991 (41.1)
Pregnant255 (3.7)54 (21.2)91 (35.7)110 (43.1)
Postpartum Amenorrhoeic250 (3.7)21 (8.4)107 (42.8)122 (48.8)
Infecund, Menopausal1488 (21.8)179 (12.0)695 (46.7)614 (41.3)
Ever had a Terminated Pregnancy68370.596
Yes986 (14.4)120 (12.2)471 (47.8)395 (40.1)
No5851 (85.6)707 (12.1)2702 (46.2)2442 (41.7)
Menstruated in the Last 6 Weeks6837<0.001
Yes5477 (80.1)673 (12.3)2607 (47.6)2197 (40.1)
No1360 (19.9)154 (11.3)566 (41.6)640 (47.1)

P-value obtained from Chi-square test.

The multiple multinomial logistic analyses in Table 4 showed that the following factors increased the odds of developing moderate/severe anaemia: residence in urban areas compared to residence in rural areas (aOR = 2.98, 95% CI: 1.93–4.68; p<0.001); underweight compared to normal weight (aOR = 1.96, 95% CI: 1.20–3.19; p = 0.004); having undergone female sterilization compared to not using any contraceptive methods (aOR = 1.71, 95% CI: 1.13–2.59; p = 0.011); current pregnancy compared to not being currently pregnant (aOR = 3.47, 95% CI: 2.11–5.69; p<0.001); and menstruation in the last six weeks compared to no menstruation in the last six weeks (aOR = 1.53, 95% CI: 1.14–1.91; p = 0.005). Overweight/obesity was associated with reduced odds of moderate/severe anaemia compared to normal weight (aOR = 0.64, 95% CI: 0.53–0.78; p<0.001). Factors associated with increased odds of mild anaemia (p<0.05) were residence in urban areas compared to residence in rural areas; underweight compared to normal weight; having undergone female sterilization compared to not using any contraceptive methods; or menstruation in the last six weeks compared to no menstruation in the last six weeks. Women from rich households, overweight/obese women, and women who gave birth to their first child at the age of 25–49 years had reduced odds of mild anaemia (p<0.05) compared to women from households of medium wealth, women with normal weight, and women who gave birth to their first child before 25 years of age, respectively (Table 4).

Table 4
Factors associated with anaemia among women of reproductive age in Maldives (n = 6837).
General CharacteristicsModerate/severe AnaemiaMild Anaemia
cOR [95% CI]P-ValueaOR [95% CI]P-ValuecOR [95% CI]P-ValueaOR [95% CI]P-Value
Current Age
15–24 Years (Ref.)1.001.001.001.00
25–34 Years0.63 [0.53–0.78]<0.0011.66 [0.98–2.70]0.0510.83 [0.74–0.95]0.0051.34 [0.98–1.82]0.068
35–49 Years0.65 [0.55–0.78]<0.0011.15 [0.73–1.74]0.5360.97 [0.87–1.09]0.6211.29 [1.00–1.67]0.050
Place of Residence
Rural (Ref.)1.001.001.001.00
Urban2.65 [2.11–3.31]<0.0012.98 [1.93–4.68]<0.0011.96 [1.66–2.22]<0.0012.46 [1.79–3.38]<0.001
Education Level
Secondary (Ref.)1.001.001.001.00
No Education1.82 [1.30–2.55]0.0011.13 [0.75–1.71]0.5530.87 [0.67–1.15]0.3180.87 [0.65–1.17]0.369
Primary1.36 [1.13–1.63]0.0010.93 [0.71–1.21]0.5860.86 [0.74–1.02]0.0770.88 [0.74–1.06]0.171
Higher1.62 [1.30–2.02]<0.0011.13 [0.83–1.55]0.1700.80 [0.69–0.94]0.0041.15 [0.94–1.41]0.178
Sources of Drinking Water
Other (Ref.)1.001.001.001.00
Piped Water0.93 [0.48–1.78]0.8191.01 [0.39–2.60]0.9870.88 [0.58–1.34]0.5450.71 [0.40–1.26]0.247
Rain Water0.86 [0.46–1.61]0.6341.15 [0.46–2.90]0.7680.81 [0.55–1.22]0.8140.74 [0.43–1.28]0.281
Bottled Water1.40 [0.74–2.67]0.3131.25 [0.48–3.25]0.6451.14 [0.75–1.75]0.5370.88 [0.49–1.56]0.655
Household Wealth Status
Medium (Ref.)1.001.001.001.00
Poor1.75 [1.39–2.21]<0.0010.94 [0.75–1.17]0.5581.29 [1.10–1.62]0.0020.97 [0.84–1.12]0.699
Rich1.03 [0.85–1.24]0.7710.92 [0.63–1.35]0.6760.98 [0.87–1.10]0.6700.77 [0.59–0.99]0.042
BMI
Normal (18.5–24.99 kg/m2) (Ref.)1.001.001.001.00
Underweight (<18.5 kg/m2)1.41 [1.08–1.85]0.0131.96 [1.20–3.19]0.0041.23 [1.06–1.55]0.0121.90 [1.34–2.71]<0.001
Overweight/Obese (≥25.0 kg/m2)0.78 [0.66–0.92]0.0030.64 [0.53–0.78]<0.0010.82 [0.73–0.91]<0.0010.76 [0.66–0.86]<0.001
Total Number of Children Ever Birthed
No Children (Ref.)1.001.001.001.00
≥3 Children1.51 [1.23–1.84]<0.0011.26 [0.98–1.61]0.0691.27 [1.12–1.46]<0.0011.05 [0.49–2.26]0.900
1–2 Children1.10 [0.88–1.28]0.5780.80 [0.23–2.85]0.7241.14 [1.01–1.28]0.0410.94 [0.46–1.95]0.862
Age at First Birth
15–24 Years (Ref.)1.001.001.001.00
25–49 Years1.26 [1.10–1.51]0.0100.90 [0.70–1.17]0.4271.24 [1.10–1.39]<0.0010.78 [0.66–0.93]0.004
Current Contraception Use
Not Using any Method (Ref.)1.001.001.001.00
Female Sterilization2.21 [1.51–3.22]<0.0011.71 [1.13–2.59]0.0111.62 [1.21–2.16]0.0011.49 [1.09–2.03]0.012
Using Other Method1.03 [0.81–1.32]0.8020.96 [0.73–1.26]0.7581.04 [0.88–1.22]0.6550.95 [0.79–1.13]0.533
Birth in the Last 3 Years
No (Ref.)1.001.001.001.00
Yes0.69 [0.57–0.85]<0.0010.83 [0.60–1.16]0.3160.99 [0.88–1.12]0.8731.08 [0.88–0.14]0.471
Current Pregnancy Status
No (Ref.)1.001.001.001.00
Yes1.73 [1.24–2.42]0.0013.47 [2.11–5.69]<0.0010.73 [0.55–0.97]0.3001.15 [0.78–1.68]0.485
Currently Breastfeeding
No (Ref.)1.001.001.001.00
Yes0.64 [0.51–0.81]<0.0010.82 [0.57–1.18]0.2840.91 [0.80–1.04]0.1720.85 [0.68–1.10]0.142
Fertility Status
Infecund, Menopausal (Ref.)1.001.001.001.00
Fecund0.99 [0.82–1.20]0.8951.00 [0.81–1.27]0.9701.01 [0.89–1.15]0.8541.02 [0.87–1.21]0.783
Pregnant1.68 [1.17–2.43]0.0053.47 [2.11–5.69]<0.0010.73 [0.55–0.98]0.0391.15 [0.78–1.68]0.485
Postpartum Amenorrhoeic0.59 [0.37–0.97]0.0361.15 [0.66–2.24]0.6350.78 [0.60–1.03]0.0760.97 [0.69–1.36]0.848
Menstruated in the Last 6 Weeks
No (Ref.)1.001.001.001.00
Yes1.27 [1.05–1.55]0.0161.53 [1.14–1.91]0.0051.34 [1.18–1.52]<0.0011.22 [1.01–1.47]0.035

Ref: Reference; CI: Confidence Interval.

P-value obtained from multiple multinomial logistic regression models.

Of the 6419 women of reproductive age in Nepal, 39.1% were aged 15–24 years, and 64.4% resided in urban areas (Table 5). The overall prevalence of anaemia in Nepal was 40.6%, while moderate/severe anaemia was present among 6.9% of all women and mild anaemia was present in 33.7% of all women. Anaemia was more prevalent (p<0.001) among women who were aged 15–24 years (43.5%), were Muslim (51.1%), had sources of drinking water other than tube well or tap water (49.2%), had no toilet (50.9%), came from households of medium wealth (47.5%), were underweight (47.2%), underwent female sterilization (53.5%), gave birth in the last three years (45.5%), were currently pregnant (43.3%), did not smoke (41.4%), or had postpartum amenorrhoea (45.7%).

Table 5
Characteristics of 15-49-year-old women participating in the 2016 Nepal Demographic and Health Survey.
General CharacteristicsTotal N (%)Prevalence of Anaemia, N (%)P-Value
Moderate/severeMildNo Anaemia
Current Age6419<0.001
15–24 Years2512 (39.1)185 (7.4)906 (36.1)1421 (56.6)
25–34 Years1910 (29.8)134 (7.0)648 (33.9)1128 (59.1)
35–49 Years1997 (31.1)132 (6.6)603 (30.2)1262 (63.2)
Place of Residence64190.741
Urban4134 (64.4)298 (7.2)1385 (33.5)2451 (59.3)
Rural2285 (35.6)153 (6.6)772 (33.8)1360 (59.5)
Religion6419<0.001
Hindu5590 (87.1)401 (7.2)1888 (33.8)3301 (59.1)
Buddhist306 (4.8)16 (5.279 (25.8)211 (69.0)
Islam282 (4.4)22 (7.8)122 (43.3)138 (48.9)
Kirat76 (1.2)4 (5.3)17 (22.4)55 (72.4)
Christian165 (2.6)8 (4.8)51 (30.9)106 (64.2)
Education Level64190.052
No Education2173 (33.9)160 (7.4)736 (33.9)1277 (58.8)
Primary1020 (15.9)73 (7.2)314 (30.8)633 (62.1)
Secondary2333 (36.3)164 (7.0)828 (35.5)1341 (57.5)
Higher893 (13.9)54 (6.0)279 (31.2)560 (62.7)
Occupation64190.002
Agricultural3200 (49.9)200 (6.3)1059 (33.1)1941 (60.7)
Professional/Services787 (12.3)55 (7.0)237 (30.1)495 (62.9)
Other406 (6.3)24 (5.9)142 (35.0)240 (59.1)
Don’t Work2026 (31.6)172 (8.5)719 (35.5)1135 (56.0)
Husband’s Education Level49360.009
No Education761 (15.4)64 (8.4)286 (37.6)411 (54.0)
Primary1134 (23.0)84 (7.4)342 (30.2)708 (62.4)
Secondary2165 (43.9)139 (6.4)211 (32.8)1315 (60.7)
Higher876 (17.7)66 (7.5)290 (33.1)520 (59.4)
Husband’s Occupation64190.003
Agricultural1089 (17.0)71 (6.5)368 (33.8)650 (59.7)
Business1652 (25.7)129 (7.8)585 (35.4)938 (56.8)
Professional/Services1600 (24.9)110 (6.9)473 (29.6)1017 (63.6)
Other/Don’t Work2078 (32.4)141 (6.8)731 (35.2)1206 (58.0)
Sources of Drinking Water6419<0.001
Tap Water2121 (33.0)114 (5.4)663 (26.5)1444 (68.1)
Tube Well1190 (18.5)59 (5.0)342 (28.7)789 (66.3)
Other3108 (48.4)278 (8.9)1252 (40.3)1578 (50.8)
Toilet Facilities6419<0.001
Flush Toilet4777 (74.4)322 (6.7)1492 (31.2)2963 (62.0)
Pit Latrine518 (8.1)36 (6.9)201 (38.8)281 (54.2)
Other425 (6.6)31 (7.3)170 (40.0)224 (52.7)
No Toilet699 (10.9)62 (8.9)294 (42.1)343 (49.1)
Household Wealth Status6419<0.001
Poor2666 (41.5)159 (6.0)819 (30.7)1688 (63.3)
Medium1320 (20.6)104 (7.9)523 (39.6)693 (52.5)
Rich2433 (37.9)188 (7.7)815 (33.5)1430 (58.8)
BMI6419<0.001
Underweight (<18.5 kg/m2)1060 (16.5)87 (8.2)415 (39.0)562 (52.8)
Normal (18.5–24.99 kg/m2)4095 (63.8)304 (7.3)1450 (34.7)2426 (58.0)
Overweight/Obese (≥25.0 kg/m2)1264 (19.7)46 (5.5)199 (23.9)589 (70.6)
Total Number of Children Ever Birthed64190.200
≥3 Children2203 (34.3)153 (6.9)730 (33.15)1320 (59.9)
1–2 Children2385 (37.2)156 (6.5)785 (32.9)1444 (60.5)
No Children1831 (28.5)142 (7.8)642 (35.1)1047 (28.5)
Age at First Birth45880.246
15–24 Years4266 (93)283 (6.8)1388 (33.2)2511 (60.0)
25–49 Years322 (7.0)18 (5.7)94 (29.8)203 (64.4)
Current Contraception Use6419<0.001
Female Sterilization688 (10.7)78 (11.3)290 (42.2)320 (46.5)
Using Other Method1901 (29.6)95 (5.0)533 (28.0)1273 (67.0)
Not Using any Method3830 (59.7)278 (7.3)1334 (34.8)2218 (57.9)
Birth in the Last 3 Years6419<0.001
Yes1386 (21.6)100 (7.2)531 (38.3)755 (54.5)
No5033 (78.4)351 (7.0)1626 (32.3)3056 (60.7)
Current Pregnancy Status6419<0.001
Yes289 (4.5)48 (16.6)77 (26.6)164 (56.7)
No6130 (95.5)403 (6.6)2080 (33.9)3647 (59.5)
Last Birth by Caesarean Section20200.620
Yes181 (9.0)16 (8.8)65 (35.9)100 (55.2)
No1839 (91.0)127 (6.9)665 (36.2)1047 (56.9)
Currently Breastfeeding64190.003
Yes1479 (23.0)103 (7.0)551 (37.3)825 (55.8)
No4940 (77.0)348 (7.0)1606 (32.5)2986 (60.0)
Smoking Cigarettes6419<0.001
Yes424 (6.6)24 (5.7)101 (23.8)299 (70.5)
No5995 (93.4)427 (7.1)2056 (34.3)3512 (58.6)
Fertility Status6419<0.001
Fecund5087 (79.2)329 (6.5)1751 (34.4)3007 (59.1)
Pregnant289 (4.5)48 (16.6)77 (26.0)164 (56.7)
Postpartum Amenorrhoeic324 (5.0)26 (8.0)122 (37.7)176 (54.3)
Infecund, Menopausal719 (11.2)48 (6.7)207 (28.7)464 (64.5)
Ever had a Terminated Pregnancy64190.543
Yes1333 (20.8)95 (7.1)431 (32.3)807 (60.5)
No5086 (79.2)356 (7.0)1726 (33.9)3004 (59.1)
Menstruated in the Last 6 Weeks64190.058
Yes5117 (79.7)344 (6.7)1747 (34.1)3026 (59.1)
No1302 (20.3)1079 (8.2)410 (31.5)785 (60.3)

P-value obtained from Chi-square test.

Factors associated with increased odds of moderate/severe anaemia included having undergone female sterilization compared to not using any contraceptive methods (aOR = 2.04, 95% CI: 1.45–2.86; p<0.001); or current pregnancy compared to not being currently pregnant (aOR = 2.72, 95% CI: 1.68–4.43; p<0.001) (Table 6). Factors associated with decreased odds of moderate/severe anaemia were agricultural occupation compared to not being currently employed (aOR = 0.77, 95% CI: 0.61–0.98; p = 0.037); living in a household with tap water (aOR = 0.57, 95% CI: 0.44–0.73; p<0.001) or tube well (aOR = 0.55, 95% CI: 0.40–0.76; p<0.001) as the source of drinking water compared to other sources of drinking water; and overweight/obesity compared to normal weight (aOR = 0.60, 95% CI: 0.44–0.80; p = 0.001) (Table 6). Factors associated with increased odds of mild anaemia (p<0.05) were having undergone female sterilization compared to not using any contraceptive methods; having given birth in the last three years compared to not having given birth in the last three years; and being fecund compared to being infecund/menopausal. Factors associated with decreased odds of mild anaemia (p<0.05) were tap water or tube well as the source of drinking water compared to other sources of drinking water; living in a poor household compared to living in a household of medium wealth; and using methods of contraception other than sterilization compared to not using any methods of contraception. Overweight/obesity was associated with lower odds of mild anaemia compared to normal weight. In addition, women with primary or higher education were less likely to be affected by mild anaemia compared to women with secondary education. Cigarette smoking was associated with lower odds of mild anaemia compared to not smoking (aOR = 0.64, 95% CI: 0.50–0.83; p = 0.001) (Table 6).

Table 6
Factors associated with anaemia among women of reproductive age in Nepal (n = 6419).
General CharacteristicsModerate/severe AnaemiaMild Anaemia
cOR [95% CI]P-ValueaOR [95% CI]P-ValuecOR [95% CI]P-ValueaOR [95% CI]P-Value
Current Age
15–24 Years (Ref.)1.001.001.001.00
25–34 Years0.80 [0.64–1.02]0.0690.97 [0.68–1.38]0.8610.75 [0.66–0.85]<0.0011.01 [0.83–1.22]0.903
35–49 Years0.91 [0.72–1.16]0.4461.03 [0.78–1.36]0.8500.90 [0.79–1.02]0.1091.07 [0.92–1.25]0.392
Religion
Christian (Ref.)1.001.001.001.00
Hindu1.61 [0.80–3.33]0.1991.43 [0.68–2.98]0.3461.19 [0.85–1.67]0.3171.12 [0.80–1.61]0.530
Buddhist1.01 [0.42–2.42]0.9921.15 [0.47–2.81]0.7580.78 [0.51–1.19]0.2450.91 [0.59–1.41]0.681
Islam2.11 [0.91–4.93]0.0841.18 [0.49–2.82]0.7121.84 [1.22–2.78]0.0041.25 [0.83–1.97]0.310
Kirat0.96 [0.28–3.34]0.9531.05 [0.30–3.70]0.9400.64 [0.34–1.22]0.1740.68 [0.35–1.34]0.248
Education Level
Secondary (Ref.)1.001.001.001.00
No Education1.03 [0.81–1.29]0.8370.98 [0.72–1.33]0.8711.16 [0.98–1.37]0.0930.86 [0.73–1.02]0.091
Primary0.94 [0.71–1.26]0.6930.94 [0.69–1.29]0.7191.00 [0.82–1.21]0.9660.79 [0.66–0.94]0.008
Higher0.79 [0.57–1.09]0.1490.76 [0.54–1.07]0.1131.24 [1.05–1.50]0.0120.83 [0.69–0.99]0.036
Occupation
Don’t Work (Ref.)1.001.001.001.00
Agricultural0.68 [0.55-.844]<0.0010.77 [0.61–0.98]0.0370.86 [0.76–0.97]0.0140.93 [0.82–1.07]0.323
Professional/Services0.73 [0.53–1.01]0.0581.07 [0.76–1.51]0.7420.76 [0.63–0.91]0.0021.04 [0.85–1.26]0.724
Other0.66 [0.42–1.03]0.0700.75 [0.47–1.17]0.1970.93 [0.74–1.17]0.5561.05 [0.82–1.32]0.703
Husband’s Occupation
Other/Don’t Work (Ref.)1.001.001.001.00
Agricultural0.93 [0.69–1.26]0.6581.04 [0.72–1.49]0.8600.93 [0.80–1.09]0.3961.15 [0.95–1.40]0.164
Business1.18 [0.91–1.52]0.2091.11 [0.82–1.50]0.4871.03 [0.90–1.18]0.6861.06 [0.89–1.25]0.491
Professional/Services0.93 [0.71–1.20]0.5620.92 [0.68–1.26]0.6100.77 [0.67–0.89]<0.0010.86 [0.73–1.02]0.089
Sources of Drinking Water
Other (Ref.)1.001.001.001.00
Tap Water0.45 [0.36–0.56]<0.0010.57 [0.44–0.73]<0.0010.49 [0.44–0.56]<0.0010.61 [0.53–0.70]<0.001
Tube Well0.42 [0.32–0.57]<0.0010.55 [0.40–0.76]<0.0010.55 [0.47–0.63]<0.0010.67 [0.57–0.79]<0.001
Toilet Facilities
No Toilet (Ref.)1.001.001.001.00
Flush Toilet0.60 [0.45–0.81]0.0010.98 [0.70–1.35]0.8640.59 [0.50–0.70]<0.0010.85 [0.71–1.03]0.095
Pit Latrine0.71 [0.46–1.10]0.1251.05 [0.65–1.64]0.8350.84 [0.66–1.06]0.1381.12 [0.87–1.44]0.373
Other0.77 [0.48–1.22]0.2580.83 [0.51–1.36]0.4610.89 [0.69–1.14]0.3460.93 [0.71–1.22]0.610
Household Wealth Status
Medium (Ref.)1.001.001.001.00
Poor0.63 [0.48–0.82]0.0010.83 [0.63–1.10]0.2030.64 [0.56–0.74]<0.0010.78 [0.67–0.91]0.001
Rich0.88 [0.68–1.13]0.3111.08 [0.82–1.44]0.5740.76 [0.66–0.87]<0.0010.92 [0.79–1.08]0.296
BMI
Normal (18.5–24.99 kg/m2) (Ref.)1.001.001.001.00
Underweight (<18.5 kg/m2)1.25 [0.96–1.61]0.0931.18 [0.91–1.54]0.2221.24 [1.07–1.43]0.0031.11 [0.96–1.29]0.165
Overweight/Obese (≥25.0 kg/m2)0.61 [0.46–0.80]<0.0010.60 [0.44–0.80]0.0010.60 [0.52–0.69]<0.0010.65 [0.55–0.76]<0.001
Current Contraception Use
Not Using any Method (Ref.)1.001.001.001.00
Female Sterilization1.95 [1.47–2.57]<0.0012.04 [1.45–2.86]<0.0011.51 [1.23–1.80]<0.0011.45 [1.18–1.78]<0.001
Using Other Method0.60 [0.47–0.76]<0.0010.78 [0.58–1.03]0.0830.70 [0.62–0.79]<0.0010.77 [0.66–0.89]<0.001
Birth in the Last 3 Years
No (Ref.)1.001.001.001.00
Yes1.15 [0.91–1.45]0.2371.12 [0.70–1.79]0.6401.32 [1.17–1.50]<0.0011.40 [1.08–1.83]0.013
Current Pregnancy Status
No (Ref.)1.001.001.001.00
Yes2.65 [0.89–3.71]<0.0012.72 [1.68–4.43]<0.0010.82 [0.64–1.09]0.1670.89 [0.63–1.25]0.495
Currently Breastfeeding
No (Ref.)1.001.001.001.00
Yes1.07 [0.85–1.35]0.5630.97 [0.61–1.54]0.8931.24 [1.10–1.41]0.0010.93 [0.72–1.21]0.604
Smoking Cigarettes
No (Ref.)1.001.001.001.00
Yes0.66 [0.43–1.01]0.0570.74 [0.47–1.17]0.1990.58 [0.46–0.73]<0.0010.64 [0.50–0.83]0.001
Fertility Status
Infecund, Menopausal (Ref.)1.001.001.001.00
Fecund1.06 [0.77–1.45]0.7301.07 [0.76–1.51]0.7131.31 [1.10–1.55]0.0031.28 [1.05–1.54]0.011
Pregnant2.83 [1.83–4.38]<0.0012.72 [1.68–4.43]<0.0011.05 [0.77–1.44]0.7520.89 [0.63–1.25]0.495
Postpartum Amenorrhoeic1.43 [0.86–2.37]0.1691.27 [0.71–2.28]0.4191.55 [1.17–2.06]0.0021.10 [0.81–1.55]0.505

Ref: Reference; CI: Confidence Interval.

P-value obtained from multiple multinomial logistic regression models.

Discussion

This study reported the prevalence of and factors associated with anaemia among women of reproductive age in three South-Asian countries using recent nationally-representative data. The overall prevalence of anaemia was 41.8% in Bangladesh, 58.5% in Maldives, and 40.6% in Nepal. The high prevalence of anaemia among women in Bangladesh, Maldives and Nepal are in line with previous studies [15, 27, 28]. However, the prevalence of anaemia found in this study is higher than the global prevalence of anaemia of 32.8% in 2016 [29].

Our findings align with previous studies examining factors associated with anaemia at a global level and in the South-Asian region. Factors associated with greater odds of anaemia in our study were low BMI, sterilization, current pregnancy, low education level, having given birth in the last three years, and menstruation in the last six weeks whereas having access to safe water or hygienic toilets were found to protect against anaemia.

Women of reproductive age are more vulnerable to anaemia due to blood loss associated with menstruation and childbirth and due to haemodilution during pregnancy. In addition, the low socioeconomic status in this region compared with other parts of the world may contribute to poor dietary intakes and thus high prevalence of micronutrient deficiencies in addition to high occurrence of infectious and parasitic diseases, and haemoglobinopathies which all can contribute to the development of anaemia. National nutritional programmes such as iron and folic acid supplementation, homestead food production programs and other programmes implemented by governments and stakeholders might have contributed to reducing anaemia prevalence in Bangladesh and Nepal in the last two decades [30] although further efforts to address this problem are clearly needed.

Women with low BMI (<18.5 kg/m2) had higher odds of anaemia which is consistent with previous studies in South-Asian countries [4, 10, 15, 27, 31]. This may be due to undernourished women lacking necessary micronutrients which may lead to anaemia. Provision of micronutrient programmes for disadvantaged women of reproductive age should therefore be considered. In this study, overweight and obesity were found to be associated with lower odds of anaemia compared to normal weight. However, dissimilar results have been documented in previous research where overweight and obesity were found to be a risk factor for anaemia among women of reproductive age [32, 33]. A possible explanation may be that overweight/obese women in our study might have had greater nutrient intakes compared to underweight/normal weight women that could have resulted in greater Hb concentrations. For example, a study carried out in Chinese women noted that overweight/obese women had higher iron intakes than normal weight women [32] which may be due to higher energy consumption thus higher micronutrient intake.

Using contraceptive methods other than sterilization showed a strong association with decreased odds of anaemia. A study in Nepal highlighted that the use of Depo-Provera injections had a significant positive impact on Hb concentrations in women [34]. Reduction of menstrual bleeding linked with the use of hormonal contraceptives could be the possible underlying mechanism. Low level of education was associated with increased odds of anaemia. The plausible explanation could be that a low level of education prevents women from obtaining employment or leads to poorly paid employment which may result in low income. This limits household earnings and reduces the purchasing ability of good quality and quantity of foods and routine medical check-up, and may also lead to infections and parasitic diseases, which are often associated with poverty. Our findings are consistent with previous studies in low- and middle-income countries, showing increased risk of anaemia among women living in poor families [10, 22]. This is in contrast to other studies carried out in Nepal and Pakistan that reported negative associations of wealth with anaemia [22, 35]. Several studies have also shown that higher education increases the odds of becoming mildly anaemic [27, 36, 37] while our findings disagree with previous studies because we noted that higher education decreased the risk of being mildly anaemic.

Multiple periods of breastfeeding of successive children, repeated pregnancies, and menstruation in the last six weeks have also been found to be associated with anaemia [15, 28]. In addition, current pregnancy was found as an important risk factor for anaemia among women in all three countries in our study. Anaemia during pregnancy is a global burden and 56% of pregnant women have been reported to be at risk of anaemia in low-income countries [38]. Pregnant women are more prone to anaemia [23] due to physiological changes such as increases in blood volume, and increased demand for iron and other micronutrients due to fetal demand [39].

Having access to safe sources of drinking water (i.e., tap water and tube wells) was found as a marginally protective factor for reducing anaemia among women in Nepal and Bangladesh. Using unhygienic toilets was associated with an increased chance of anaemia because unhygienic toilets may contribute to parasitic diseases which can lead to chronic blood loss as a result of gastrointestinal parasite infestation [15].

The strength of this study is the inclusion of the most current nationally-representative survey data. The limitations include a cross-sectional design, therefore no causal relationship between anaemia and predictor variables can be established. Secondly, anaemia can be caused by malaria, parasitic infections, infectious diseases, genetic haemoglobin disorders, or inadequate dietary intake, however this information was not available in the data sources. Thus, there is a need for longitudinal studies, and inclusion of a comprehensive list of potential factors associated with anaemia in future research.

Conclusions

Our findings show that anaemia remains at an unacceptable level in Bangladesh, Maldives, and Nepal despite improvements in education, sanitation and other socioeconomic conditions. There is an urgent need for effective policies and programmes to reduce the burden of anaemia in these three South-Asian countries. All future programmes developed to prevent and control anaemia in Bangladesh, Maldives and Nepal should target the at-risk groups identified in this study.

Acknowledgements

The authors thank the Demographic and Health Surveys Program for providing the survey data free of cost.

References

PHNguyen, SScott, RAvula, LMTran. Trends and drivers of change in the prevalence of anaemia among 1 million women and children in India, 2006 to 2016. BMJ Glob Heal. 2018; 112. 10.1136/bmjgh-2018-001010

QLi, FLiang, WLiang, WShi, YHan. Prevalence of Anemia and Its Associated Risk Factors Among 6-Months-Old Infants in Beijing. Front Pediatr. 2019;7: 17. 10.3389/fped.2019.00001

SGautam, HMin, HKim, HJId. Determining factors for the prevalence of anemia in women of reproductive age in Nepal: Evidence from recent national survey data. PLoS One. 2019;14: 117. 10.1371/journal.pone.0218288

KLHarding, VMAguayo, GNamirembe, PWebb. Determinants of anemia among women and children in Nepal and Pakistan: An analysis of recent national survey data. Matern Child Nutr. 2018;14: 113. 10.1111/mcn.12478

BKSartorius, KSartorius. Global infant mortality trends and attributable determinants–an ecological study using data from 192 countries for the. 1990; 115. 10.1186/s12963-014-0029-6

World Health Organization. Global Nutrition Targets 2025 Anaemia Policy Brief. Geneva; 2012.

WHO. Global Health Observatory Data Repository/World Health Statistics. [cited 11 Feb 2020]. Available: https://data.worldbank.org/indicator/SH.ANM.ALLW.ZS

GAStevens, MMFinucane, LMDe-Regil, CJPaciorek, SRFlaxman, FBranca, et al Global, regional, and national trends in haemoglobin concentration and prevalence of total and severe anaemia in children and pregnant and non-pregnant women for 1995–2011: A systematic analysis of population-representative data. Lancet Glob Heal. 2013;1: 1625. http://10.1016/S2214-109X(13)70001-9

NJKassebaum, RJasrasaria, MNaghavi, SKWulf, NJohns, RLozano, et al A systematic analysis of global anemia burden from 1990 to 2010. Blood. 2014;123: 615624. 10.1182/blood-2013-06-508325

10 

YBalarajan, URamakrishnan, EÖzaltin, AHShankar, VSubramanian S. Anaemia in low-income and middle-income countries. Lancet. 2011;378: 21232135. 10.1016/S0140-6736(10)62304-5

11 

ANambiema, ARobert, IYaya. Prevalence and risk factors of anemia in children aged from 6 to. BMC Public Health. 2019;19: 19. 10.1186/s12889-018-6343-3

12 

SHorton, JRoss. The economics of iron deficiency. Food Policy. 2003;28: 5175. 10.1016/j.foodpol.2006.08.002

13 

Organization WH. Global nutrition targets 2025: Policy brief series (No. WHO/NMH/NHD/14.2). Geneva, Switzerland: World Health Organization; 2014.

14 

MSadeghian, AFatourechi, MLesanpezeshki, EAhmadnezhad. Prevalence of anemia and correlated factors in the reproductive age women in rural areas of tabas. J Fam Reprod Heal. 2013;7: 139

15 

MKamruzzaman, MGRabbani, ASaw, MASayem, MGHossain. Differentials in the prevalence of anemia among non-pregnant, ever-married women in Bangladesh: Multilevel logistic regression analysis of data from the 2011 Bangladesh Demographic and Health Survey. BMC Womens Health. 2015;15: 411. 10.1186/s12905-015-0162-9

16 

NBaig-Ansari, SHBadruddin, RKarmaliani, HHarris, IJehan, OPasha, et al Anemia prevalence and risk factors in pregnant women in an urban area of Pakistan. Food Nutr Bull. 2008;29: 132139. 10.1177/156482650802900207

17 

Ministry of Health (MOH) [Maldives] and ICF. Maldives Demographic and Health Survey 2016–17. Malé, Maldives, and Rockville, Maryland, USA: MOH and ICF; 2018.

18 

Ministry of Health N. Nepal Demographic and Health Survey 2016. Kathmandu, Nepal: Ministry of Health, Nepal; 2017 Available: http://www.mohp.gov.np

19 

National Institute of Population Research and Training (NIPORT). Bangladesh demographic and health survey 2011. Mitra and Associates, and ICF International. 2016. (Bangladesh), Training (Firm), Mitra and Associates Demographic, Macro International. Institute for Resource Development. Surveys, Health; 2011.

20 

ASharman. Anemia testing in population-based surveys: general information and guidelines for country monitors and program managers. Calverton, Maryland USA: ORC Macro; 2000.

21 

World Health Organization. Haemoglobin concentrations for the diagnosis of anaemia and assessment of severity. Geneva, Switzerland: World Health Organization; 2011.

22 

YSBalarajan, WWFawzi, VSubramanian S. Changing patterns of social inequalities in anaemia among women in india: Cross-sectional study using nationally representative data. BMJ Open. 2013;3 10.1136/bmjopen-2012-002233

23 

GStephen, MMgongo, THussein Hashim, JKatanga, BStray-Pedersen, SEMsuya. Anaemia in Pregnancy: Prevalence, Risk Factors, and Adverse Perinatal Outcomes in Northern Tanzania. Anemia. 2018;2018 10.1155/2018/1846280

24 

SNMassawe, ENUrassa, LNystrom, GLindmark. Anaemia in women of reproductive age in Dar-es-Salaam, Tanzania. East Afr Med J. 2002;79: 461466. 10.4314/eamj.v79i9.9117

25 

World Health Organization. BMI Classification 2019. 2019 [cited 18 Oct 2019]. Available: http://apps.who.int/bmi/index.jsp?introPage=intro_3.html.

26 

The DHS Program. Demographic and Health Surveys. Protecting the Privacy of DHS Survey Respondents. 2020 [cited 11 Dec 2019]. Available: https://dhsprogram.com/What-We-Do/Protecting-the-Privacy-of-DHS-Survey-Respondents.cfm

27 

MEBentley, PLGriffiths. The burden of anemia among women in India. Eur J Clin Nutr. 2003; 5260. 10.1038/sj.ejcn.1601504

28 

KAAlene, AMDohe. Prevalence of Anemia and Associated Factors among Pregnant Women in an Urban Area of Eastern Ethiopia. Anemia. 2014;2014: 7 10.1155/2014/561567 Research

29 

SNShanita, ASHanisa, ARahim, NAfifah, STLee, AKNorimah, et al Prevalence of Anaemia and Iron Deficiency among Primary Schoolchildren in Malaysia. Int J Environ Res Public Heal. 2018;15 10.3390/ijerph15112332

30 

ATalukder, NJHaselow, AKOsei, EVillate, DReario, HKroeun, et al Homestead food production model contributes to improved household food security and nutrition status of young children and women in poor populations. Lessons learned from scaling-up programs in Asia (Bangladesh, Cambodia, Nepal and Philippines). F Actions Sci Reports J F actions. 2010 Available: http://journals.openedition.org/factsreports/404

31 

BGhose, SYaya, STang. Anemia status in relation to body mass index among women of childbearing age in Bangladesh. Asia Pacific J Public Heal. 2016;28: 611619. 10.1177/1010539516660374

32 

YQin, AMelse-Boonstra, XPan, BYuan, YDai, JZhao, et al Anemia in relation to body mass index and waist circumference among Chinese women. Nutr J. 2013;12: 10 10.1186/1475-2891-12-10

33 

LZhao, XZhang, YShen, XFang, YWang, FWang. Obesity and iron deficiency: a quantitative meta‐analysis. Obes Rev. 2015;16: 10811093. 10.1111/obr.12323

34 

RKChandyo, TAStrand, RJUlvik, RKAdhikari, MUlak, HDixit, et al Prevalence of iron deficiency and anemia among healthy women of reproductive age in Bhaktapur, Nepal. Eur J Clin Nutr. 2007;61: 262 10.1038/sj.ejcn.1602508

35 

ZMakhoul, DTaren, BDuncan, PPandey, CThomson, JWinzerling, et al Risk factors associated with anemia, iron deficiency and iron deficiency anemia in rural Nepali pregnant women. Southeast Asian J Trop Med Public Heal. 2012;43: 735

36 

ALAdamu, ACrampin, NKayuni, AAmberbir, OKoole, APhiri, et al Prevalence and risk factors for anemia severity and type in Malawian men and women: Urban and rural differences. Popul Health Metr. 2017;15: 115. 10.1186/s12963-016-0118-9

37 

VPerumal. Reproductive risk factors assessment for anaemia among pregnant women in India using a multinomial logistic regression model. Trop Med Int Heal. 2014;19: 841851. 10.1111/tmi.12312

38 

Robert E.Black, Cesar G.Victora, Susan P.Walker, Zulfiqar A.Bhutta, ParulChristian, MEMercedes De Onis et al Maternal and child undernutrition and overweight in low-income and middle-income countries. Lancet. 2013;382: 427451. 10.1016/S0140-6736(13)60937-X

39 

Anemia in Pregnancy—Health Encyclopedia—University of Rochester Medical Center. [cited 12 Mar 2020]. Available: https://www.urmc.rochester.edu/encyclopedia/content.aspx?ContentTypeID=90&ContentID=P02428