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Improving nutrition in Maharashtra
Trends in outcomes, determinants and interventions
between 2006 and 2020
VERSION: September 24, 2021
This slide deck is an evolving work in progress, with updates being made frequently. If you want to use or
cite this, please email us at IFPRI-POSHAN@cgiar.org to receive the most updated version
Nutrition on India’s policy agenda
• The Prime Minister's Overarching Scheme for Holistic Nutrition or POSHAN Abhiyaan or National Nutrition Mission, is
Government of India's flagship effort to improve maternal and child nutrition outcomes by 2022.
• India launched POSHAN Abhiyaan on 8th March 2018. The contours of the Mission are being updated in 2021.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2014 (6 mo): New
administration
established);
Nutrition community
develops LAA 2014
2015: NITI Aayog
established; Policy
priorities: Digital
India, Aadhar,
Sanitation Mission;
nutrition still a
“learning agenda”.
Other social welfare
programs reviewed
(e.g., NREGA)
2016: Stated policy
priorities
implemented.
Nutrition mission
inputs received from
multiple groups; July
finance ministry
meeting on nutrition
2017: Final nutrition
strategy unveiled by
NITI Aayog in
September;
acknowledges
underlying issues
(poverty, etc.) but
actions still focused
on ICDS-health
programs
2018: Nutrition
Mission launched in
March – strong ICDS-
Health-Sanitation
link. Poverty/food
insecurity still not
central to agenda
2019: Election year.
Nutrition Mission
strongly visible and
implemented (focus
on BCC, awareness);
poverty alleviation
not part of nutrition
agenda
2021: Mission
POSHAN 2.0
launched in Union
Budget 2021 to
improve nutritional
outcomes.
Data and analysis
• Data sources for trends analysis: National Family Health Survey (NFHS-3 (2005-06), NFHS-4 (2015-16)
and NFHS-5 (2019-20).
– Child nutrition outcomes: all child data
– Adult nutrition outcomes: man or woman data
– Immediate and underlying determinants: last-child data
– Intervention coverage: last-child data
• Data sources for head count analysis: Census 2011 data to project district-level population of
children under 5 year, women aged 15-49, men aged 15-54 for the year 2019
– Number of pregnant and lactating women at district-level are estimated using HMIS data for the year 2019 and
prevalence from NFHS-5 factsheet
• All the indicators are mapped to the POSHAN Abhiyaan monitoring framework
• Descriptive statistics were estimated, and trend analysis was conducted to examine changes in
outcomes, determinants, and coverage of interventions across the three time periods (2005-06,
2015-16 and 2019-20)
• District level headcount of undernutrition outcomes was computed using undernutrition prevalence
and projected population data for 2019
Note: NFHS-5 data source: Factsheets and state reports for 22 states/UTs
Background
Nutrition
outcomes
Determinants
Intervention
coverage
MORTALITY & NUTRITION OUTCOMES
Infant & child mortality rates in Maharashtra, per 1,000 live
births (2005-06, 2015-16 & 2019-20)
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets (2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Maharashtra 2005-06 Maharashtra 2015-16 Maharashtra 2019-20
32 16* 17 38 24* 23 47 29* 28
0
20
40
60
80
100
2005-06 2015-16 2019-20 2005-06 2015-16 2019-20 2005-06 2015-16 2019-20
Neonatal mortality rate Infant mortality rate Under-five mortality rate
Mortality
rate
(per
1000)
India average
*p<0.05, difference between 2005-06 and 2015-16 at the state level
Trends in undernutrition outcomes in Maharashtra
(2005-06, 2015-16 & 2019-20)
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets (2019-20)
Undernutrition among children <5y Undernutrition among women (15-49y)
Note: Data on children < 5y who had low birth weight not available in NFHS-5 factsheets (2019-20)
1In NFHS-3, 25.7% of data was missing, while 4.9% of data was missing in NFHS-4.
2NA refers to the unavailability of data for a particular indicator in the NFHS-5 state and district factsheets (2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
221 201 2NA 47 34* 35 17 27* 26 6 12* 11 39 38 36 64 54* 69 36 23* 21 48 48 55 58 49 46
0
20
40
60
80
100
Low birth weight Stunting Wasting Severe wasting Underweight Anemia Underweight Anemia
(non-pregnant)
Anemia
(pregnant)
%
*p<0.05, difference between 2005-06 and 2015-16 at the state level
Maharashtra 2005-06 Maharashtra 2015-16 Maharashtra 2019-20 India average
Inter-district variability in undernutrition outcomes
in Maharashtra (2019-20)
Source: NFHS-5 state & district factsheets (2019-20)
Undernutrition among children
<5y
Undernutrition among women
(15-49y)
District average 2019-20
State average 2019-20
Background
Nutrition
outcomes
Determinants
Intervention
coverage
35 26 11 36 69 21 55 46
0
20
40
60
80
100
Stunting Wasting Severe wasting Underweight Anemia Underweight Anemia
(non pregnant)
Anemia
(pregnant)
%
Trends in overweight/obesity & non-communicable diseases
in Maharashtra (2005-06, 2015-16 & 2019-20)
Note: Data on blood pressure and sugar levels not available in NFHS-3 (2005-06)
1NA refers to the unavailability of data for a particular indicator in the specified NFHS round.
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets (2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
5
2*
4 14 23* 23 12 24* 25 1NA 10 19 1NA 18 21 1NA 5 6 1NA 7 7
0
20
40
60
80
100
Overweight/ obesity
child
Overweight/ obesity
women
Overweight/ obesity
men
High blood pressure
women
High blood pressure
men
High sugar level
women
High sugar level
men
%
*p<0.05, difference between 2005-06 and 2015-16 at the state level
Maharashtra 2005-06 Maharashtra 2015-16 Maharashtra 2019 -20 India average
Inter-district variability in overweight/obesity & non-
communicable diseases in Maharashtra (2019-20)
Note: Data on prevalence of overweight among men not available at district level in NFHS-5 (2019-20). District level information not available in NFHS 3 (2005-06).
Source: NFHS-5 state & district factsheets (2019-20)
District average 2019-20
State average 2019-20
Background
Nutrition
outcomes
Determinants
Intervention
coverage
4 23 25 19 21 6 7
0
20
40
60
80
100
Overweight/
obesity
child
Overweight/
obesity
women
Overweight/
obesity
men
High blood
pressure
women
High blood
pressure
men
High sugar level
women
High sugar level
men
%
Stunting among children <5 years in Maharashtra
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 34%
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Note: Stunting prevalence ≥30% is considered to be very high for public health significance. Source: de Onis et al. (2018).
Prevalence in state = 35%
Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp) District Change (pp)
1 Parbhani -10.2 6 Wardha -5.4
2 Akola -7.0 7 Washim -4.7
3 Nagpur -6.4 8 Aurangabad -3.9
4 Amravati -5.9 9 Jalna -3.8
5 Yavatmal -5.7 10 Nanded -3.8
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of stunted children <5 years in Maharashtra (2019-20)
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Top 10 districts with highest
burden
District
Stunted
children
(number)
1 Thane 359,615
2 Nashik 235,325
3 Pune 230,914
4 Mumbai Suburban 229,629
5 Solapur 130,435
6 Jalgaon 128,986
7 Aurangabad 123,051
8 Ahmadnagar 119,041
9 Nanded 109,521
10 Buldana 101,039
Note: The unit of the numbers in the graph above is thousands
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
Wasting among children <5 years in Maharashtra
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 27% Prevalence in state = 26%
Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp) District Change (pp)
1 Garhchiro -18.2 6 Nashik -6.8
2 Thane -12.4 7 Osmanabad -6.5
3 Raigarh -10.0 8 Kolhapur -6.4
4 Nandurbar -8.7 9 Latur -6.1
5 Gondiya -7.8 10 Yavatmal -5.2
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Note: Wasting prevalence ≥15% is considered to be very high for public health significance. Source: de Onis et al. (2018).
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of wasted children <5 years in Maharashtra (2019-20)
Top 10 districts with highest burden
District
Wasted
children
(number)
1 Pune 236,180
2 Thane 156,891
3 Nashik 151,679
4 Mumbai Suburban 114,814
5 Nagpur 113,687
6 Jalgaon 108,377
7 Aurangabad 94,987
8 Ahmadnagar 93,505
9 Solapur 83,363
10 Buldana 71,176
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
Severe wasting among children <5 years in Maharashtra
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 12% Prevalence in state = 11%
Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp) District Change (pp)
1 Parbhani -10.2 6 Wardha -5.4
2 Akola -7.0 7 Washim -4.7
3 Nagpur -6.4 8 Aurangabad -3.9
4 Amravati -5.9 9 Jalna -3.8
5 Yavatmal -5.7 10 Nanded -3.8
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of severely wasted children <5 years in Maharashtra
(2019-20)
Top 10 districts with highest burden
District
Wasted
children
(number)
1 Pune 105,303
2 Nagpur 66,875
3 Nashik 63,571
4 Thane 61,699
5 Mumbai Suburban 44,444
6 Aurangabad 42,456
7 Solapur 35,392
8 Chandrapur 33,934
9 Yavatmal 33,606
10 Buldana 33,231
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
2019-20
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Underweight children <5 years in Maharashtra
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 38% Prevalence in state = 36%
Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp) District Change (pp)
1 Garhchiroli -14.5 6 Akola -9.8
2 Thane -11.3 7 Gondiya -7.6
3 Yavatmal -11.0 8 Wardha -7.5
4 Raigarh -9.9 9 Washim -7.4
5 Osmanabad -9.8 10 Mumbai Suburban -6.5
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Note: Underweight prevalence ≥30% is considered to be very high for public health significance (used similar cut-off as stunting). Source: de Onis et al. (2018).
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of underweight children <5 years in Maharashtra
(2019-20)
Top 10 districts with highest burden
District
Underweight
children
(number)
1 Thane 271,474
2 Nashik 249,823
3 Pune 245,958
4 Ahmadnagar 154,716
5 Aurangabad 154,353
6 Mumbai Suburban 151,851
7 Jalgaon 131,118
8 Solapur 118,218
9 Nagpur 113,353
10 Nanded 107,087
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
Anemia among children <5 years in Maharashtra
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 54% Prevalence in state = 69%
Districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp)
1 Mumbai Suburban -3.3
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Note: : Anemia prevalence ≥40% is considered to be a severe public health problem. Source: WHO (2011).
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of anemic children <5 years in Maharashtra
(2019-20)
Top 10 districts with highest burden
District
Anemic
children
(number)
1 Thane 537,615
2 Pune 396,620
3 Mumbai Suburban 363,757
4 Nashik 337,127
5 Jalgaon 271,956
6 Solapur 228,853
7 Ahmadnagar 217,581
8 Nagpur 211,761
9 Aurangabad 208,469
10 Nanaded 207,971
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
Underweight women, 15-49 years in Maharashtra
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 24% Prevalence in state = 21%
Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp) District Change (pp)
1 Wardha -12.2 6 Satara -7.4
2 Gondiya -12.1 7 Bhandara -7.4
3 Parbhani -10.9 8 Nanded -6.6
4 Akola -8.9 9 Washim -6.6
5 Sindhudurg -8.2 10 Amravati -6.6
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Note: Underweight prevalence ≥40% is considered as very high prevalence. Source: WHO (1995)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Underweight women, 15-49 years in Maharashtra (2019-20)
Top 10 districts with highest burden
District
Underweight
women
(number)
1 Thane 683,614
2 Pune 608,660
3 Nashik 490,549
4 Mumbai Suburban 372,130
5 Ahmadnagar 301,662
6 Jalgaon 285,414
7 Solapur 280,639
8 Nagpur 268,054
9 Kolhapur 239,774
10 Nanded 232,582
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
Anemia among non-pregnant women, 15-49 years in
Maharashtra (2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 48% Prevalence in state = 55%
Districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp)
1 Ratnagiri -4.0
2 Sangli -3.4
3 Sindhudurg -2.8
4 Mumbai City -2.7
5 Mumbai Suburban -0.6
Source: NFHS-4 (2015-16) & NFHS-5 district and state factsheets (2019-20)
Note: Anemia prevalence ≥40% is considered to be a severe public health problem. Source: WHO (2011).
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of non-pregnant anemic women, 15-49 years
in Maharashtra (2019-20)
Top 10 districts with highest burden
District
Anemic non-
pregnant women
(number)
1 Thane 2,126,799
2 Pune 1,652,076
3 Mumbai Suburban 1,515,974
4 Nashik 1,061,578
5 Nagpur 846,486
6 Jalgaon 839,528
7 Solapur 734,691
8 Ahmadnagar 708,554
9 Kolhapur 625,660
10 Aurangabad 594,759
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
Anemia among pregnant women, 15-49 years
(2015-16 & 2019-20)
2015-16 2019-20
Prevalence in state = 49% Prevalence in state = 46%
Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20
District Change (pp) District Change (pp)
1 Satara -36.2 6 Yavatmal -14.7
2 Mumbai City -22.2 7 Nanded -12.0
3 Sangli -17.9 8 Parbhani -9.4
4 Solapur -16.9 9 Wardha -6.9
5 Gondiya -15.1 10 Amravati -6.4
Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20)
Note: : Anemia prevalence ≥40% is considered to be a severe public health problem. Source: WHO (2011).
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Note: The unit of the numbers in the maps above is in percentage (%)
Number of pregnant anemic women, 15-49 years
in Maharashtra (2019-20)
Top 10 districts with highest burden
District
Anemic
pregnant
women
(number)
1 Nashik 97,867
2 Jalgaon 54,726
3 Mumbai City 41,118
4 Aurangabad 37,876
5 Ahmadnagar 36,463
6 Nanded 35,948
7 Dhule 32,294
8 Kolhapur 31,141
9 Palghar 31,132
10 Solapur 29,423
Note: The unit of the numbers in the graph above is thousands
Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each
district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011.
Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
2019-20
NUTRITION DETERMINANTS
Mixed picture on infant feeding practices: Early initiation of breastfeeding improved between 2006 and 2016 but declined between 2016 and 2020.
Exclusive breastfeeding steadily improved between 2006 and 2020. Timely introduction of complementary foods remained stable between 2006 and
2016 before increasing between 2016 and 2020. Among maternal determinants, women with BMI<18.5 declined substantially between 2006 and 2020.
Consumed IFA 100+ days improved between 2006 and 2020. Morbidity among children did not change much between 2006 and 2020.
Trends in immediate determinants in Maharashtra
(2005-06, 2015-16 & 2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
(%)
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheet (2019-20)
Note: Data on continued breastfeeding at 2 years, egg and/or flesh foods consumption, sweet beverage consumption, and bottle feeding of infants not available in NFHS-5 factsheets (2019-20)/state report
0Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
Inter-district variability in immediate determinants
in Maharashtra (2019-20)
District average 2019-20
State average 2019-20
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Source: NFHS-5 district & state factsheets (2019-20)
Note: Data on continued breastfeeding at 2 years not available in NFHS-5 factsheets (2019-20)
1NA refers to the unavailability of data for a particular indicator in the NFHS-5 state and district factsheets (2019-20)
53 71 53 1NA 9 1NA 1NA 1NA 21 48 9 3
0
20
40
60
80
100
Early
initiation
of
breastfeeding
Exclusive
breastfeeding
Timely
introduction
of
complementary
foods
Continued
breastfeeding
at
2
years
Adequate
diet
Egg
and/or
flesh
consumption,
6-23m
Sweet
beverage
consumption
Bottle
feeding
of
infants,
0-
23m
Women
with
body
mass
index
<18.5
kg/m2
Consumed
IFA
100+
days
Diarrhea
in
the
last
two
weeks
ARI
in
the
last
two
weeks
%
Trends in underlying determinants in Maharashtra
(2005-06, 2015-16 & 2019-20)
All underlying determinants improved steadily between 2006 and 2020. Women who are literate improved between 2006 and 2016 but declined slightly
between 2016 and 2020. Girls married before age of 18 years declined substantially between 2006 and 2020. Households with improved sanitation facility
declined slightly between 2006 and 2016 before improving between 2016 and 2020.
Background
Nutrition
outcomes
Determinants
Intervention
coverage
(%)
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets and state reports (2019-20)
Note 1: Safe disposal of feces not available in NFHS-5 factsheets (2019-20)/state report and data on HHs with hand washing facility not available in NFHS-3 (2005-06) and NFHS-5 factsheets (2019-20)/state report. Data on open defecation and HHs
with BPL card for 2019-2020 are taken from NFHS-5 state reports.
Note 2: Several of these determinants are applicable for maternal undernutrition as well
0Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
Inter-district variability in underlying determinants in
Maharashtra (2019-20)
District average (2019-20)
State average (2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Source: NFHS-5 district and state factsheets (2019-20)
Note 1: Data on open defecation, safe disposal of feces, and HHs with BPL card not available in NFHS-5 factsheets (2019-20). Data on HHs with hand washing facility not available in NFHS-3 and NFHS-5 factsheets (2019)-20.
Note 2: Several of these determinants are applicable for maternal undernutrition as well
1NA refers to the unavailability of data for a particular indicator in the NFHS-5 state and district factsheets (2019-20)
85 50 22 8 94 72 1NA 1NA
1NA 1NA 98
0
20
40
60
80
100
Women
who are
literate
Women
with ≥10
years
education
Girls
married
before age
of 18 years
Women 15-
19 years
with child
or pregnant
HHs with
improved
drinking
water
source
HHs with
improved
sanitation
facility
HHs with
hand
washing
facility
Open
defecation
Safe
disposal of
feces
HHs with
BPL card
HHs with
electricity
%
COVERAGE OF NUTRITION INTERVENTIONS
Trends in coverage of
interventions in Maharashtra
across the first 1000 days,
(2005-06, 2015-16 & 2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
(%)
Pregnancy: Modest improvements in ANC first trimester between 2006
and 2020 (9pp), with coverage >70% in 2020. Coverage of at least 4 ANC
improved between 2006 and 2016 (12pp) but declined slightly between
2016 and 2020 (2pp). Despite considerable improvements between
2006 and 2020, coverage of food supplementation, and health and
nutrition education was <50% in 2020.
Delivery and Postnatal: Large improvements in institutional delivery,
skilled birth attendance, and postnatal care for mothers and children
between 2006 and 2020 (28-88pp), with coverage >80% in 2020. Despite
considerable improvements between 2006 and 2020, coverage of food
supplementation, and health and nutrition education was <50% in 2020.
Early Childhood: Considerable improvements in provision of full
immunization, vitamin A, ORS during diarrhea and counselling on child
growth between 2006 and 2020 (15-52pp), with coverage ≥60% in 2020.
Despite improvements between 2006 and 2020, coverage of weighing
and zinc during diarrhea was <60% in 2020.
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets and state reports (2019-20).
Note: Interventions’ coverage is based on the last child data.
0Indicator comparable between NFHS-3 and NFHS-4 but differs slightly from NFHS-5.
Note 1: Data missing for 2019-20 is not available in the NFHS-5 factsheets (2019-20). Information on use of bed nets during
pregnancy not available in NFHS-3 data (2005-06).
Note 2: Data on food supplementation and health and nutrition education during pregnancy and post-natal care, and
weight measurement during childhood and counselling on child growth for 2019-20 are taken from NFHS-5 State Reports.
Note 3: Refer to district dashboard for the inter-district variability in the coverage of interventions.
Coverage of nutrition related interventions in Maharashtra :
district dashboard (2019-20)
Background
Nutrition
outcomes
Determinants
Intervention
coverage
Source: NFHS-5 district factsheets and state reports (2019-2020)
Note 1: Data missing for 2019-20 is not available in the NFHS-5 factsheets and state reports (2019-20).
District name
Demand
for
FP
satisfied
Iodized
salt
Any
ANC
visits
ANC
first
trimester
≥4
ANC
Received
MCP
card
Received
IFA
tab/syrup
Tetanus
injection
Deworming
Weighing
Birth
preparedness
counselling
Breastfeeding
counselling
Counselling
on
keeping
baby
warm
Cord
care
counselling
Food
supplementation
Health
&
nutrition
education
Malaria
prevention-
use
of
bed
nets
Institutional
birth
Financial
assistance
(JSY)
Skilled
birth
attendant
Postnatal
care
for
mothers
Postnatal
care
for
babies
Food
supplementation
Health
&
nutrition
education
Full
immunization
Vitamin
A
Paediatric
IFA
Deworming
Care
seeking
for
ARI
ORS
during
diarrhea
Zinc
during
diarrhea
Food
supplementation
(6-35
months)
Weighing
Counselling
on
child
growth
MAHARASHTRA 96.2 70.9 70.3 95.5 85.7 90.1 22.4 94.7 10.2 93.8 85.4 89.1 73.5 72.2 77.5 59.5 27.3
Ahmednagar 95.5 71.4 76.6 94.4 87.0 91.2 17.5 97.9 9.1 95.0 90.9 92.9 83.5 69.9 84.2 66.0 28.3
Akola 95.2 75.1 76.3 98.3 88.2 92.9 30.2 97.7 15.8 86.4 82.3 92.2 69.5 88.3 75.8 70.6 41.1
Amravati 98.5 89.1 71.7 99.1 83.9 93.8 35.8 91.3 17.2 89.7 80.2 79.4 92.5 85.9 78.5 61.5 20.5
Aurangabad 98.9 65.2 57.2 95.0 85.8 86.2 20.1 94.8 6.6 96.3 76.4 82.6 56.7 69.2 64.2 55.1 30.8
Bhandara 95.4 83.7 79.0 99.4 97.9 94.8 50.2 100.0 25.2 98.4 87.5 90.1 87.0 83.9 55.3
Bid 96.3 65.6 56.8 97.6 85.2 78.3 18.5 94.0 3.5 90.8 79.8 80.6 75.9 82.4 62.9 58.6 17.7
Buldana 97.8 73.6 72.7 100.0 94.3 95.5 39.7 93.9 18.1 92.4 86.7 84.8 85.9 89.2 67.4 56.1 32.5
Chandrapur 97.4 76.6 68.5 100.0 94.9 94.0 43.0 99.6 11.9 96.5 92.3 97.0 95.0 86.8 72.7
Dhule 98.0 61.2 63.2 93.7 80.3 80.5 21.9 77.2 9.1 84.2 77.2 74.9 56.6 55.7 75.2 55.6 23.2
Gadchiroli 97.7 84.6 86.8 98.0 96.5 91.4 45.3 97.3 35.1 98.2 91.5 93.7 97.9 88.1
Gondiya 98.0 69.0 66.2 98.7 92.9 98.3 52.6 99.1 26.3 98.3 90.0 89.2 88.2 77.4 73.6
Hingoli 99.0 82.5 66.6 98.8 79.6 88.5 27.7 94.0 13.3 95.3 82.4 85.1 76.9 72.1 69.5 37.5 22.1
Jalgaon 96.8 60.3 58.4 91.0 73.4 82.2 11.2 86.5 4.8 81.9 74.5 78.5 61.3 57.9 61.8
Jalna 97.6 56.0 58.4 96.1 83.2 78.3 14.6 92.8 9.0 86.5 74.0 78.9 54.3 70.1 68.7 48.1 14.8
Kolhapur 97.7 71.5 81.8 95.3 92.8 88.3 20.4 99.2 14.8 93.6 95.2 91.5 67.2 66.0 79.8
Latur 97.8 74.6 72.6 100.0 90.6 86.4 34.5 94.7 6.1 93.4 93.3 92.5 79.2 88.7 64.5 65.4 32.3
Mumbai 98.3 86.2 87.1 93.1 89.0 95.4 13.3 99.5 8.6 98.3 90.6 95.9 77.8
Mumbai Suburban 99.5 58.1 72.2 92.6 75.7 90.1 20.6 98.1 7.3 98.5 91.5 97.2 73.6
Nagpur 97.6 78.1 71.4 96.6 93.8 92.8 37.0 100.0 7.5 96.6 91.4 90.8 89.4 95.6 65.0
Nanded 96.9 62.5 53.5 96.7 80.0 89.8 18.6 94.8 8.1 92.6 76.1 79.3 75.7 70.5 81.6 60.4 19.9
Nandurbar 97.6 51.0 58.2 99.2 81.6 91.0 16.3 76.3 26.8 77.9 74.4 74.2 72.4 68.2 77.2 64.7 29.1
Nashik 91.6 66.9 66.4 96.0 79.7 81.3 12.5 90.5 12.7 89.9 76.5 83.4 70.4 58.7 76.3 62.2 13.4
Osmanabad 97.5 83.9 89.2 95.8 91.3 91.7 17.5 98.1 6.6 99.0 94.4 95.1 89.3 67.9 71.2 43.9 15.1
Palghar 86.5 84.7 86.3 92.9 86.3 94.4 11.8 94.2 18.5 95.7 97.0 96.5 94.0 72.7 70.9
Parbhani 95.1 58.6 47.4 89.0 68.9 82.0 14.7 85.6 12.8 90.8 64.4 66.8 52.0 52.9 74.5 49.8 18.1
Pune 97.0 79.6 68.6 93.1 85.7 90.7 15.7 98.0 4.9 98.5 84.2 95.2 58.1 69.9 94.3
Raigarh 80.3 83.8 83.1 98.4 91.9 96.6 18.2 96.6 11.0 97.6 93.0 92.9 92.3 73.8 82.4
Ratnagiri 91.1 64.6 78.6 97.0 87.9 93.2 22.7 97.8 8.7 95.6 89.7 92.2 77.2 77.3
Sangli 98.8 66.0 80.1 97.1 91.6 97.4 33.3 98.0 13.1 97.6 95.6 95.0 75.0 80.4
Satara 93.9 77.5 81.7 96.7 91.1 93.8 16.3 97.1 8.9 97.9 94.5 95.1 82.8 78.3 77.7 72.4 24.5
Sindhudurg 94.9 70.3 73.4 100.0 93.3 96.8 32.8 100.0 14.7 98.6 96.7 98.2 76.3 78.9
Solapur 96.5 81.3 81.9 96.0 89.2 90.5 17.8 96.2 8.4 96.3 89.6 89.2 83.6 65.9 80.7 51.3 34.7
Thane 97.5 58.9 70.2 93.4 86.9 97.4 28.2 93.6 7.0 93.9 87.2 93.3 74.9 68.7
Wardha 97.9 87.9 70.4 98.6 91.3 93.4 47.9 98.8 12.3 99.0 89.9 90.5 92.4 87.1
Washim 96.5 63.4 60.0 99.2 90.0 79.5 19.4 92.9 16.7 83.1 83.4 83.4 71.6 77.9 79.4 57.9 18.6
Yavatmal 94.6 77.1 66.9 98.8 88.3 94.6 26.3 96.3 16.6 96.8 85.6 91.7 74.7 71.0 97.3
Pre-
pregnancy
Pregnancy Delivery & postnatal Early childhood
0
20
40
60
80
100
Overweight/
obesity
child
Overweight/
obesity
women
Overweight/
obesity
men
High blood
pressure
women
High blood
pressure
men
High sugar
level
women
High sugar
level
men
%
2005-06 2015-16 2019-20
Children: Stunting prevalence declined by 13 percentage points (pp) from 2006 to
2016 and remained stable thereafter. Wasting increased by 10pp from 2006 to 2016
while remained stable thereafter. Underweight declined slightly by 1-2pp over time.
Anemia declined by 10pp from 2006 to 2016 but increased by 15pp from 2016 to
2020. Overweight/obesity declined by 3pp from 2006 and 2016 but increased by 2pp
from 2016 to 2020.
Women: Underweight declined by 13pp from 2006 to 2016 and by 2pp from 2016 to
2020. Anemia among non-pregnant women remained stable from 2006 to 2016 but
increased by 7pp from 2016 to 2020; anemia among pregnant women declined by 9pp
from 2006 to 2016 and by 3pp from 2016 to 2020. Overweight/obesity increased by
9pp from 2006 to 2016 and remained stable thereafter.
Men: Overweight/obesity increased by 12pp from 2006 to 2016 and remained stable
thereafter.
Attention is needed to improve (%s in 2020):
• Outcomes: Stunting (35%), underweight (36%), wasting (26%) and anemia in
children (69%); anemia in non-pregnant (55%) and pregnant (46%) women
• Immediate determinants: Early initiation of breastfeeding (53%); timely
complementary feeding (53%); Adequate diet (9%); 100+ IFA (48%)
• Underlying determinants: Women with 10 years education (50%)
• Coverage of interventions: Food supplementation (45-49%) and health and
nutrition education (40-43%) for women; zinc during diarrhea (27%)
Trends in nutrition outcomes, determinants and coverage of interventions in Maharashtra (2006, 2016 and 2020)
Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state & district factsheets (2019-20)
⁰Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
1NA refers to the unavailability of data for a particular indicator in the specified NFHS round.
Undernutrition outcomes Overweight/obesity and non communicable diseases
Immediate determinants Key takeaways
Underlying determinants
Interventions across the first 1000 days
1NA 1NA 1NA 1NA
0
20
40
60
80
100
Stunting Wasting Severe wasting Underweight
child
Anemia
child
Underweight
women
Anemia
Non pregnant
women
Anemia
Pregnant
women
%
2019-20 2015-16 2005-06
(%)
(%)
(%)
Annex: Methodological notes
• Nutrition outcomes, their immediate and underlying determinants, and nutrition related interventions were identified following the Poshan Abhiyaan
monitoring framework.
• The selected indicators were harmonized across the National Family Health Survey (NFHS) 3 (2005-06) and 4 (2015-16) data and NFHS 5 factsheets (2019).
For those indicators that were not comparable, details were specified in a footnote.
• The method of women sampling across the three NFHS rounds was compared:
• Descriptive statistics were estimated, and trend analysis was conducted to examine changes in outcomes, determinants, and coverage of interventions
across the three time periods. Further, top 10 districts with the highest change in prevalence between 2016 & 2019 were identified. Statistical software Stata
16.0 and R were used to perform the analyses.
• District level headcount of undernutrition outcomes was computed using undernutrition prevalence and projected population data for the year 2019.
o The prevalence P was calculated as children/women with nutritional deficit (q) divided by the eligible sample of children/women (n) in the district (j) and expressed in percentage as: Pj= (qj/nj)
×100
o The headcount was calculated as the product of P and the total eligible population N for each district: Hj= Pj×Nj
• Findings were visualized using spatial maps, bar graphs and line plots. The maps and other graphs were prepared on R and Excel, respectively.
• Cut-off values for public health significance were based on WHO guidelines on all indicators
https://apps.who.int/iris/bitstream/handle/10665/332223/9789241516952-eng.pdf?ua=1 except severe wasting (based on agreement with UNICEFF)
NFHS – 3 (2005-2006) NFHS-4 (2015-2016) NFHS-5 (2019-2020)
• Target sample size in NFHS-3 was fixed
in terms of ever married women age
15-49 years
• All eligible women age 15-49 i.e. all
women age 15-49 who are usual
members of the selected households
or who spent the night before the
survey in the selected households
were eligible to be interviewed in the
survey.
• Information on sampling strategy not
available yet
Annex: Indicator definitions
Mortality and nutrition outcomes
Neonatal mortality rate Neonatal mortality rate per 1000 live births
Infant mortality rate Infant mortality rate per 1000 live births
Under-five mortality rate Under-five mortality rate (U5MR) per 1000 live births
Low birth weight Percentage of live births in the five years preceding the survey with a reported birth weight less than 2.5 kg, based on either a written record or the mother's recall
Stunting among children Percentage of children age 0-59 months who are stunted i.e. height-for-age z score < -2SD
Wasting among children Percentage of children age 0-59 months who are wasted i.e. weight-for-height z score < -2SD
Severe wasting among children Percentage of children age 0-59 months who are wasted i.e. weight-for-height z score < -3SD
Underweight children Percentage of children age 0-59 months who are underweight i.e. weight-for-age z score < -2SD
Anemia among children Percentage of children age 6-59 months who are anemic i.e. (Hb <11.0 g/dl)
Underweight women Percentage of women age 15-49 whose Body Mass Index (BMI) is below normal (BMI <18.5 kg/m2)
Anemia among non-pregnant women Percentage of non-pregnant women age 15-49 who are anemic (<12.0 g/dl)
Anemia among pregnant women Percentage of pregnant women age 15-49 who are anemic (<11.0 g/dl)
Overweight/obesity - children Percentage of children age 0-59 months who are overweight i.e. weight-for-height z score > 2SD
Overweight/obesity - women Percentage of men age 15-54 who are overweight or obese (BMI ≥25.0 kg/m2)
Overweight/obesity - men Percentage of men age 15-54 who are overweight or obese (BMI ≥25.0 kg/m2)
High blood pressure among women^ Percentage of women age 15-49 with elevated blood pressure (Systolic >140 mm Hg or diastolic >90 mm Hg)
High blood pressure among men^ Percentage of men age 15-54 with elevated blood pressure (Systolic >140 mm Hg or diastolic >90 mm Hg)
High sugar level among women^ Percentage of women age 15-49 with elevated blood pressure (Systolic >140 mm Hg or diastolic >90 mm Hg)
High sugar level among men^ Percentage of men age 15-54 with high blood sugar levels (141-160 mg/dl)
^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet
Annex: Indicator definitions
^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet
Immediate determinants
Early initiation of breastfeeding Percentage of children under age 3 years breastfed within one hour of birth for the last child born in the 3 years before the survey
Exclusive breastfeeding Percentage of youngest children under age 6 months living with mother who were exclusively breastfed
Timely introduction of
complementary foods0
1Percentage of youngest children age 6-8 months living with mother who received solid or semi-solid food; 2Percentage of youngest children age 6-8 months
living with mother who received solid or semi-solid food and breastmilk
Continued breastfeeding at 2 years$ Percentage of youngest children 12–23 months of age who were fed breast milk during the previous day
Adequate diet0 Percentage of youngest children 6–23 months of age who consumed a minimum acceptable diet during the previous day
Eggs and/or flesh foods
consumption$
Percentage of youngest children 6–23 months of age who consumed egg and/or flesh food during the previous day
Sweet beverage$ Percentage of youngest children 6–23 months of age who consumed a sweet beverage during the previous day
Bottle feeding for infants$ Percentage of youngest children 0–23 months of age who were fed from a bottle with a nipple during the previous day
Women with body mass index <18.5
kg/m2 0
1Percentage of women age 15-49 with a youngest child < 5 years who have BMI below normal (BMI <18.5 kg/m2) ; 2Percentage of women age 15-49 whose BMI
is below normal (BMI <18.5 kg/m2)
Consumed IFA 100+ days Percentage of mothers age 15-49 who consumed iron folic acid for 100 days or more during the last pregnancy in last five years preceding the survey
Diarrhea in the last two weeks0 1Percentage of youngest children under age five who had diarrhoea in the two weeks preceding the survey; 2Percentage of children under age 5 who had
diarrhoea in the 2 weeks preceding the survey
ARI in the last two weeks0 1Percentage of youngest children under age five who had symptoms of acute respiratory infection (ARI) in the two weeks preceding the survey; 2Percentage of
children under age five who had symptoms of acute respiratory infection (ARI) in the two weeks preceding the survey
Annex: Indicator definitions
^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; @Indicator not available in NFHS-5 factsheets but available in NFHS-5 states reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet
Underlying determinants
Women who are literate0 1Percentage of women age 15-49 with a birth in five years preceding the survey who are literate i.e. those who completed standard 6 or higher and can read a
whole sentence; 2Percentage of women age 15-49 who are literate i.e. those who completed standard 9 or higher and can read a whole sentence or part of a
sentence.
Women with ≥10 years education0 1Percentage of women age 15-49 with a birth in five years preceding the survey with 10 or more years of schooling; 2Percentage of women age 15-49 with 10 or
more years of schooling
Girls 20-24 years married before age
of 18 years0
1Percentage of women aged 20-24 years with a birth in five years preceding the survey who were married before age 18 years; 2Percentage of women aged 20-24
years who were married before age 18 years
Women 15-19 years with child or
pregnant
Percentage of currently married women aged 15-49 who had their first birth before age 20 years and in the five years preceding the survey
HHs with improved drinking water
source0
1Percentage of youngest children under age 5 living in household that use an improved source of drinking water; 2Population living in households that use an
improved sanitation facility
HHs with improved sanitation facility0 1Percentage of youngest children under age 5 living in household that uses improved toilet facility; 2Population living in households that use an improved sanitation
facility
HHs with hand washing facility^$ Percentage of youngest children under age 5 living in household that had soap and water for washing hands
Open defecation@ Percentage of youngest children under age 5 living in household that has no toilet facility/defecates in open
Safe disposal of feces$ Percentage of youngest children living with mother whose stools were disposed of safely
HHs with BPL card@ Percentage of youngest children under age 5 living in households with BPL card
HHs with electricity0 1Percentage of youngest children under age 5 living in household that has electricity; 2Population living in households with electricity
Annex: Indicator definitions
^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet; @Indicator not available in NFHS-5 factsheets but available in NFHS-5 state reports
Interventions
Demand for FP satisfied@ Percentage of currently married women age 15-49 with demand for family planning satisfied by modern methods
Iodized salt0 1Percentage of women age 15-49 living in HHs that use iodized salt; 2Percentage of households using iodized salt
Any ANC visits$ Percentage of women age 15-49 with a live birth in the five years who received at least one ANC for the last birth
ANC first trimester Percentage of women (15-49 years of age) attended by any provider during the first trimester of pregnancy that led to the birth of the youngest child in the last 2
years
≥ 4ANC Percentage of mothers age 15-49 who had at least 4 antenatal care visits for last birth in the 5 years before the survey
Received MCP card Percentage of mothers who registered last pregnancy in the 5 years preceding the survey for which she received a Mother and Child Protection (MCP) card
Received IFA tab/syrup@ Percentage of women who received IFA (given or purchased) tablets during the pregnancy for their most recent live birth in the 5 years preceding the survey
Tetanus injection Percentage of women whose last birth was protected against neonatal tetanus (for last birth in the five years preceding the survey )
Deworming- pregnancy@ Percentage of women who took an intestinal parasite drug during the pregnancy for their most recent live birth in the 5 years preceding the survey
Weighing- pregnancy@ Percentage of women age 15-49 with a live birth in the five years preceding the survey who were weighed during ANC for the last birth
Birth preparedness counselling$ Percentage of women who had at least one contact with a health worker in the three months preceding the survey and were counselled on birth preparedness;
calculated among women age 15-49 who gave birth in the five years preceding the survey
Breastfeeding counselling@ Percentage of women who met with a community health worker in the last three months of pregnancy and received advice on breastfeeding (for the last
pregnancy in the five years preceding the survey)
Counselling on keeping baby warm@ Percentage of women who met with a community health worker in the last three months of pregnancy and received advice on keeping the baby warm for their
most recent live birth in the five years preceding the survey
Cord care counselling^@ Percentage of women who met with a community health worker in the last three months of pregnancy and received advice on cord care for their most recent live
birth in the five years preceding the survey
Food supplementation - pregnancy@ Percentage of youngest children under age 5 whose mother received supplementary food from AWC during pregnancy
Health & nutrition education –
pregnancy@
Percentage of mothers who received health and nutrition education from an Anganwadi Centre (AWC) during last pregnancy in the five years preceding the survey
Malaria prevention- use of bed nets^$ Percentage of women who used mosquito net during the pregnancy for their most recent live birth in the 5 years preceding the survey
Annex: Indicator definitions
^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet; @Indicator not available in NFHS-5 factsheets but available in NFHS-5 state reports
Interventions
Institutional birth0 1Percentage of women age 15-49 who gave birth in health/institutional facility for their most recent live birth in the 5 years preceding the survey;
2Percentage of live births to women age 15-49 in the five years preceding the survey that took place in a health/institutional facility
Financial assistance (JSY)@ Percentage of women who received financial assistance under JSY for their most recent live birth that took place in institutional facility in the 5 years
preceding the survey
Skilled birth attendant0 1Percentage of women whose last delivery was attended by a skilled health personnel for their most recent live birth in the 5 years preceding the survey;
2Percentage of births attended by skilled health personnel for births in the 5 years before the survey
Postnatal care for mothers Percentage of mothers who received postnatal care from a doctor/nurse/LHV/ANM/midwife/other health personnel within 2 days of delivery for their
most recent live birth in the five years preceding the survey
Postnatal care for babies Percentage of children who received postnatal care from a doctor /nurse /LHV /ANM /midwife /other health personnel within 2 days of delivery for last
birth in the 5 years before the survey
Food supplementation – postnatal@ Percentage of youngest children under age 5 whose mother received supplementary food from AWC while breastfeeding
Health & nutrition education – postnatal@ Percentage of youngest children under age 5 whose mother received health check-ups from AWC while breastfeeding
Full immunization0 1Percentage of youngest living children age 12-23 months fully vaccinated based on information from either vaccination card or mother's recall;
2Percentage of children age 12-23 months fully vaccinated based on information from either vaccination card or mother's recall
Vitamin A – early childhood0 1Percentage of youngest children age 6-59 months who received Vitamin A supplementation in the last 6 months preceding the survey; 2 Percentage of
children age 9-35 months who received a vitamin A dose in the last 6 months
Pediatric IFA0@ Percentage of youngest children age 6-59 months who received iron supplements in the past 7 days preceding the survey
Deworming – early childhood0@ Percentage of youngest children age 6-59 months who received deworming tablets in the last 6 months preceding the survey
Care seeking for ARI0 1Percentage of youngest children under age 5 years with fever or symptoms of ARI in the 2 weeks preceding the survey taken to a health facility or health
provider; 2Percentage of children under age 5 years with fever or symptoms of ARI in the 2 weeks preceding the survey taken to a health facility or health
provider
ORS during diarrhea0 1Percentage of youngest children under age 5 years with diarrhoea in the 2 weeks preceding the survey who received oral rehydration salts (ORS);
2Percentage of children under age 5 years with diarrhoea in the 2 weeks preceding the survey who ORS
Zinc during diarrhea0 1Percentage of youngest children under age 5 years with diarrhoea in the 2 weeks preceding the survey who received zinc; 2Percentage of children
under age 5 years with diarrhoea in the 2 weeks preceding the survey who received zinc
Food supplementation (children 6-35
months)$
Percentage of youngest children age 6-35 months who received food supplements from AWC in the 12 months preceding the survey
Weighing – early childhood@ Percentage of youngest children under age 5 who were weighed at AWC in the 12 months preceding the survey
Counselling on child growth@ Percentage of youngest children under age 5 whose mother received counselling from an AWC after child was weighed in the 12 months preceding the
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Improving nutrition in Maharashtra:Trends in outcomes, determinants and interventions between 2006 and 2020

  • 1. Improving nutrition in Maharashtra Trends in outcomes, determinants and interventions between 2006 and 2020 VERSION: September 24, 2021 This slide deck is an evolving work in progress, with updates being made frequently. If you want to use or cite this, please email us at IFPRI-POSHAN@cgiar.org to receive the most updated version
  • 2. Nutrition on India’s policy agenda • The Prime Minister's Overarching Scheme for Holistic Nutrition or POSHAN Abhiyaan or National Nutrition Mission, is Government of India's flagship effort to improve maternal and child nutrition outcomes by 2022. • India launched POSHAN Abhiyaan on 8th March 2018. The contours of the Mission are being updated in 2021. Background Nutrition outcomes Determinants Intervention coverage 2014 (6 mo): New administration established); Nutrition community develops LAA 2014 2015: NITI Aayog established; Policy priorities: Digital India, Aadhar, Sanitation Mission; nutrition still a “learning agenda”. Other social welfare programs reviewed (e.g., NREGA) 2016: Stated policy priorities implemented. Nutrition mission inputs received from multiple groups; July finance ministry meeting on nutrition 2017: Final nutrition strategy unveiled by NITI Aayog in September; acknowledges underlying issues (poverty, etc.) but actions still focused on ICDS-health programs 2018: Nutrition Mission launched in March – strong ICDS- Health-Sanitation link. Poverty/food insecurity still not central to agenda 2019: Election year. Nutrition Mission strongly visible and implemented (focus on BCC, awareness); poverty alleviation not part of nutrition agenda 2021: Mission POSHAN 2.0 launched in Union Budget 2021 to improve nutritional outcomes.
  • 3. Data and analysis • Data sources for trends analysis: National Family Health Survey (NFHS-3 (2005-06), NFHS-4 (2015-16) and NFHS-5 (2019-20). – Child nutrition outcomes: all child data – Adult nutrition outcomes: man or woman data – Immediate and underlying determinants: last-child data – Intervention coverage: last-child data • Data sources for head count analysis: Census 2011 data to project district-level population of children under 5 year, women aged 15-49, men aged 15-54 for the year 2019 – Number of pregnant and lactating women at district-level are estimated using HMIS data for the year 2019 and prevalence from NFHS-5 factsheet • All the indicators are mapped to the POSHAN Abhiyaan monitoring framework • Descriptive statistics were estimated, and trend analysis was conducted to examine changes in outcomes, determinants, and coverage of interventions across the three time periods (2005-06, 2015-16 and 2019-20) • District level headcount of undernutrition outcomes was computed using undernutrition prevalence and projected population data for 2019 Note: NFHS-5 data source: Factsheets and state reports for 22 states/UTs Background Nutrition outcomes Determinants Intervention coverage
  • 5. Infant & child mortality rates in Maharashtra, per 1,000 live births (2005-06, 2015-16 & 2019-20) Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets (2019-20) Background Nutrition outcomes Determinants Intervention coverage Maharashtra 2005-06 Maharashtra 2015-16 Maharashtra 2019-20 32 16* 17 38 24* 23 47 29* 28 0 20 40 60 80 100 2005-06 2015-16 2019-20 2005-06 2015-16 2019-20 2005-06 2015-16 2019-20 Neonatal mortality rate Infant mortality rate Under-five mortality rate Mortality rate (per 1000) India average *p<0.05, difference between 2005-06 and 2015-16 at the state level
  • 6. Trends in undernutrition outcomes in Maharashtra (2005-06, 2015-16 & 2019-20) Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets (2019-20) Undernutrition among children <5y Undernutrition among women (15-49y) Note: Data on children < 5y who had low birth weight not available in NFHS-5 factsheets (2019-20) 1In NFHS-3, 25.7% of data was missing, while 4.9% of data was missing in NFHS-4. 2NA refers to the unavailability of data for a particular indicator in the NFHS-5 state and district factsheets (2019-20) Background Nutrition outcomes Determinants Intervention coverage 221 201 2NA 47 34* 35 17 27* 26 6 12* 11 39 38 36 64 54* 69 36 23* 21 48 48 55 58 49 46 0 20 40 60 80 100 Low birth weight Stunting Wasting Severe wasting Underweight Anemia Underweight Anemia (non-pregnant) Anemia (pregnant) % *p<0.05, difference between 2005-06 and 2015-16 at the state level Maharashtra 2005-06 Maharashtra 2015-16 Maharashtra 2019-20 India average
  • 7. Inter-district variability in undernutrition outcomes in Maharashtra (2019-20) Source: NFHS-5 state & district factsheets (2019-20) Undernutrition among children <5y Undernutrition among women (15-49y) District average 2019-20 State average 2019-20 Background Nutrition outcomes Determinants Intervention coverage 35 26 11 36 69 21 55 46 0 20 40 60 80 100 Stunting Wasting Severe wasting Underweight Anemia Underweight Anemia (non pregnant) Anemia (pregnant) %
  • 8. Trends in overweight/obesity & non-communicable diseases in Maharashtra (2005-06, 2015-16 & 2019-20) Note: Data on blood pressure and sugar levels not available in NFHS-3 (2005-06) 1NA refers to the unavailability of data for a particular indicator in the specified NFHS round. Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets (2019-20) Background Nutrition outcomes Determinants Intervention coverage 5 2* 4 14 23* 23 12 24* 25 1NA 10 19 1NA 18 21 1NA 5 6 1NA 7 7 0 20 40 60 80 100 Overweight/ obesity child Overweight/ obesity women Overweight/ obesity men High blood pressure women High blood pressure men High sugar level women High sugar level men % *p<0.05, difference between 2005-06 and 2015-16 at the state level Maharashtra 2005-06 Maharashtra 2015-16 Maharashtra 2019 -20 India average
  • 9. Inter-district variability in overweight/obesity & non- communicable diseases in Maharashtra (2019-20) Note: Data on prevalence of overweight among men not available at district level in NFHS-5 (2019-20). District level information not available in NFHS 3 (2005-06). Source: NFHS-5 state & district factsheets (2019-20) District average 2019-20 State average 2019-20 Background Nutrition outcomes Determinants Intervention coverage 4 23 25 19 21 6 7 0 20 40 60 80 100 Overweight/ obesity child Overweight/ obesity women Overweight/ obesity men High blood pressure women High blood pressure men High sugar level women High sugar level men %
  • 10. Stunting among children <5 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 34% Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Note: Stunting prevalence ≥30% is considered to be very high for public health significance. Source: de Onis et al. (2018). Prevalence in state = 35% Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) District Change (pp) 1 Parbhani -10.2 6 Wardha -5.4 2 Akola -7.0 7 Washim -4.7 3 Nagpur -6.4 8 Aurangabad -3.9 4 Amravati -5.9 9 Jalna -3.8 5 Yavatmal -5.7 10 Nanded -3.8 Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 11. Number of stunted children <5 years in Maharashtra (2019-20) Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Top 10 districts with highest burden District Stunted children (number) 1 Thane 359,615 2 Nashik 235,325 3 Pune 230,914 4 Mumbai Suburban 229,629 5 Solapur 130,435 6 Jalgaon 128,986 7 Aurangabad 123,051 8 Ahmadnagar 119,041 9 Nanded 109,521 10 Buldana 101,039 Note: The unit of the numbers in the graph above is thousands Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 12. Wasting among children <5 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 27% Prevalence in state = 26% Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) District Change (pp) 1 Garhchiro -18.2 6 Nashik -6.8 2 Thane -12.4 7 Osmanabad -6.5 3 Raigarh -10.0 8 Kolhapur -6.4 4 Nandurbar -8.7 9 Latur -6.1 5 Gondiya -7.8 10 Yavatmal -5.2 Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Note: Wasting prevalence ≥15% is considered to be very high for public health significance. Source: de Onis et al. (2018). Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 13. Number of wasted children <5 years in Maharashtra (2019-20) Top 10 districts with highest burden District Wasted children (number) 1 Pune 236,180 2 Thane 156,891 3 Nashik 151,679 4 Mumbai Suburban 114,814 5 Nagpur 113,687 6 Jalgaon 108,377 7 Aurangabad 94,987 8 Ahmadnagar 93,505 9 Solapur 83,363 10 Buldana 71,176 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 14. Severe wasting among children <5 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 12% Prevalence in state = 11% Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) District Change (pp) 1 Parbhani -10.2 6 Wardha -5.4 2 Akola -7.0 7 Washim -4.7 3 Nagpur -6.4 8 Aurangabad -3.9 4 Amravati -5.9 9 Jalna -3.8 5 Yavatmal -5.7 10 Nanded -3.8 Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 15. Number of severely wasted children <5 years in Maharashtra (2019-20) Top 10 districts with highest burden District Wasted children (number) 1 Pune 105,303 2 Nagpur 66,875 3 Nashik 63,571 4 Thane 61,699 5 Mumbai Suburban 44,444 6 Aurangabad 42,456 7 Solapur 35,392 8 Chandrapur 33,934 9 Yavatmal 33,606 10 Buldana 33,231 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. 2019-20 Background Nutrition outcomes Determinants Intervention coverage
  • 16. Underweight children <5 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 38% Prevalence in state = 36% Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) District Change (pp) 1 Garhchiroli -14.5 6 Akola -9.8 2 Thane -11.3 7 Gondiya -7.6 3 Yavatmal -11.0 8 Wardha -7.5 4 Raigarh -9.9 9 Washim -7.4 5 Osmanabad -9.8 10 Mumbai Suburban -6.5 Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Note: Underweight prevalence ≥30% is considered to be very high for public health significance (used similar cut-off as stunting). Source: de Onis et al. (2018). Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 17. Number of underweight children <5 years in Maharashtra (2019-20) Top 10 districts with highest burden District Underweight children (number) 1 Thane 271,474 2 Nashik 249,823 3 Pune 245,958 4 Ahmadnagar 154,716 5 Aurangabad 154,353 6 Mumbai Suburban 151,851 7 Jalgaon 131,118 8 Solapur 118,218 9 Nagpur 113,353 10 Nanded 107,087 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 18. Anemia among children <5 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 54% Prevalence in state = 69% Districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) 1 Mumbai Suburban -3.3 Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Note: : Anemia prevalence ≥40% is considered to be a severe public health problem. Source: WHO (2011). Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 19. Number of anemic children <5 years in Maharashtra (2019-20) Top 10 districts with highest burden District Anemic children (number) 1 Thane 537,615 2 Pune 396,620 3 Mumbai Suburban 363,757 4 Nashik 337,127 5 Jalgaon 271,956 6 Solapur 228,853 7 Ahmadnagar 217,581 8 Nagpur 211,761 9 Aurangabad 208,469 10 Nanaded 207,971 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 20. Underweight women, 15-49 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 24% Prevalence in state = 21% Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) District Change (pp) 1 Wardha -12.2 6 Satara -7.4 2 Gondiya -12.1 7 Bhandara -7.4 3 Parbhani -10.9 8 Nanded -6.6 4 Akola -8.9 9 Washim -6.6 5 Sindhudurg -8.2 10 Amravati -6.6 Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Note: Underweight prevalence ≥40% is considered as very high prevalence. Source: WHO (1995) Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 21. Underweight women, 15-49 years in Maharashtra (2019-20) Top 10 districts with highest burden District Underweight women (number) 1 Thane 683,614 2 Pune 608,660 3 Nashik 490,549 4 Mumbai Suburban 372,130 5 Ahmadnagar 301,662 6 Jalgaon 285,414 7 Solapur 280,639 8 Nagpur 268,054 9 Kolhapur 239,774 10 Nanded 232,582 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 22. Anemia among non-pregnant women, 15-49 years in Maharashtra (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 48% Prevalence in state = 55% Districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) 1 Ratnagiri -4.0 2 Sangli -3.4 3 Sindhudurg -2.8 4 Mumbai City -2.7 5 Mumbai Suburban -0.6 Source: NFHS-4 (2015-16) & NFHS-5 district and state factsheets (2019-20) Note: Anemia prevalence ≥40% is considered to be a severe public health problem. Source: WHO (2011). Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 23. Number of non-pregnant anemic women, 15-49 years in Maharashtra (2019-20) Top 10 districts with highest burden District Anemic non- pregnant women (number) 1 Thane 2,126,799 2 Pune 1,652,076 3 Mumbai Suburban 1,515,974 4 Nashik 1,061,578 5 Nagpur 846,486 6 Jalgaon 839,528 7 Solapur 734,691 8 Ahmadnagar 708,554 9 Kolhapur 625,660 10 Aurangabad 594,759 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 24. Anemia among pregnant women, 15-49 years (2015-16 & 2019-20) 2015-16 2019-20 Prevalence in state = 49% Prevalence in state = 46% Top 10 districts with highest reduction in prevalence between 2015-16 & 2019-20 District Change (pp) District Change (pp) 1 Satara -36.2 6 Yavatmal -14.7 2 Mumbai City -22.2 7 Nanded -12.0 3 Sangli -17.9 8 Parbhani -9.4 4 Solapur -16.9 9 Wardha -6.9 5 Gondiya -15.1 10 Amravati -6.4 Source: NFHS-4 (2015-16) & NFHS-5 district & state factsheets (2019-20) Note: : Anemia prevalence ≥40% is considered to be a severe public health problem. Source: WHO (2011). Background Nutrition outcomes Determinants Intervention coverage Note: The unit of the numbers in the maps above is in percentage (%)
  • 25. Number of pregnant anemic women, 15-49 years in Maharashtra (2019-20) Top 10 districts with highest burden District Anemic pregnant women (number) 1 Nashik 97,867 2 Jalgaon 54,726 3 Mumbai City 41,118 4 Aurangabad 37,876 5 Ahmadnagar 36,463 6 Nanded 35,948 7 Dhule 32,294 8 Kolhapur 31,141 9 Palghar 31,132 10 Solapur 29,423 Note: The unit of the numbers in the graph above is thousands Source: IFPRI estimates - The headcount was calculated as the product of the undernutrition prevalence and the total eligible projected population for each district in 2019. Prevalence estimates were obtained from NFHS 5 (2019-20) and projected population for 2019 was estimated using Census 2011. Note: The total number of children <5 years is 8,917,169, pregnant women 15-49 years is 2,309,503, and non-pregnant women 15-49 years is 33,176,376. Background Nutrition outcomes Determinants Intervention coverage 2019-20
  • 27. Mixed picture on infant feeding practices: Early initiation of breastfeeding improved between 2006 and 2016 but declined between 2016 and 2020. Exclusive breastfeeding steadily improved between 2006 and 2020. Timely introduction of complementary foods remained stable between 2006 and 2016 before increasing between 2016 and 2020. Among maternal determinants, women with BMI<18.5 declined substantially between 2006 and 2020. Consumed IFA 100+ days improved between 2006 and 2020. Morbidity among children did not change much between 2006 and 2020. Trends in immediate determinants in Maharashtra (2005-06, 2015-16 & 2019-20) Background Nutrition outcomes Determinants Intervention coverage (%) Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheet (2019-20) Note: Data on continued breastfeeding at 2 years, egg and/or flesh foods consumption, sweet beverage consumption, and bottle feeding of infants not available in NFHS-5 factsheets (2019-20)/state report 0Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
  • 28. Inter-district variability in immediate determinants in Maharashtra (2019-20) District average 2019-20 State average 2019-20 Background Nutrition outcomes Determinants Intervention coverage Source: NFHS-5 district & state factsheets (2019-20) Note: Data on continued breastfeeding at 2 years not available in NFHS-5 factsheets (2019-20) 1NA refers to the unavailability of data for a particular indicator in the NFHS-5 state and district factsheets (2019-20) 53 71 53 1NA 9 1NA 1NA 1NA 21 48 9 3 0 20 40 60 80 100 Early initiation of breastfeeding Exclusive breastfeeding Timely introduction of complementary foods Continued breastfeeding at 2 years Adequate diet Egg and/or flesh consumption, 6-23m Sweet beverage consumption Bottle feeding of infants, 0- 23m Women with body mass index <18.5 kg/m2 Consumed IFA 100+ days Diarrhea in the last two weeks ARI in the last two weeks %
  • 29. Trends in underlying determinants in Maharashtra (2005-06, 2015-16 & 2019-20) All underlying determinants improved steadily between 2006 and 2020. Women who are literate improved between 2006 and 2016 but declined slightly between 2016 and 2020. Girls married before age of 18 years declined substantially between 2006 and 2020. Households with improved sanitation facility declined slightly between 2006 and 2016 before improving between 2016 and 2020. Background Nutrition outcomes Determinants Intervention coverage (%) Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets and state reports (2019-20) Note 1: Safe disposal of feces not available in NFHS-5 factsheets (2019-20)/state report and data on HHs with hand washing facility not available in NFHS-3 (2005-06) and NFHS-5 factsheets (2019-20)/state report. Data on open defecation and HHs with BPL card for 2019-2020 are taken from NFHS-5 state reports. Note 2: Several of these determinants are applicable for maternal undernutrition as well 0Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5
  • 30. Inter-district variability in underlying determinants in Maharashtra (2019-20) District average (2019-20) State average (2019-20) Background Nutrition outcomes Determinants Intervention coverage Source: NFHS-5 district and state factsheets (2019-20) Note 1: Data on open defecation, safe disposal of feces, and HHs with BPL card not available in NFHS-5 factsheets (2019-20). Data on HHs with hand washing facility not available in NFHS-3 and NFHS-5 factsheets (2019)-20. Note 2: Several of these determinants are applicable for maternal undernutrition as well 1NA refers to the unavailability of data for a particular indicator in the NFHS-5 state and district factsheets (2019-20) 85 50 22 8 94 72 1NA 1NA 1NA 1NA 98 0 20 40 60 80 100 Women who are literate Women with ≥10 years education Girls married before age of 18 years Women 15- 19 years with child or pregnant HHs with improved drinking water source HHs with improved sanitation facility HHs with hand washing facility Open defecation Safe disposal of feces HHs with BPL card HHs with electricity %
  • 31. COVERAGE OF NUTRITION INTERVENTIONS
  • 32. Trends in coverage of interventions in Maharashtra across the first 1000 days, (2005-06, 2015-16 & 2019-20) Background Nutrition outcomes Determinants Intervention coverage (%) Pregnancy: Modest improvements in ANC first trimester between 2006 and 2020 (9pp), with coverage >70% in 2020. Coverage of at least 4 ANC improved between 2006 and 2016 (12pp) but declined slightly between 2016 and 2020 (2pp). Despite considerable improvements between 2006 and 2020, coverage of food supplementation, and health and nutrition education was <50% in 2020. Delivery and Postnatal: Large improvements in institutional delivery, skilled birth attendance, and postnatal care for mothers and children between 2006 and 2020 (28-88pp), with coverage >80% in 2020. Despite considerable improvements between 2006 and 2020, coverage of food supplementation, and health and nutrition education was <50% in 2020. Early Childhood: Considerable improvements in provision of full immunization, vitamin A, ORS during diarrhea and counselling on child growth between 2006 and 2020 (15-52pp), with coverage ≥60% in 2020. Despite improvements between 2006 and 2020, coverage of weighing and zinc during diarrhea was <60% in 2020. Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state factsheets and state reports (2019-20). Note: Interventions’ coverage is based on the last child data. 0Indicator comparable between NFHS-3 and NFHS-4 but differs slightly from NFHS-5. Note 1: Data missing for 2019-20 is not available in the NFHS-5 factsheets (2019-20). Information on use of bed nets during pregnancy not available in NFHS-3 data (2005-06). Note 2: Data on food supplementation and health and nutrition education during pregnancy and post-natal care, and weight measurement during childhood and counselling on child growth for 2019-20 are taken from NFHS-5 State Reports. Note 3: Refer to district dashboard for the inter-district variability in the coverage of interventions.
  • 33. Coverage of nutrition related interventions in Maharashtra : district dashboard (2019-20) Background Nutrition outcomes Determinants Intervention coverage Source: NFHS-5 district factsheets and state reports (2019-2020) Note 1: Data missing for 2019-20 is not available in the NFHS-5 factsheets and state reports (2019-20). District name Demand for FP satisfied Iodized salt Any ANC visits ANC first trimester ≥4 ANC Received MCP card Received IFA tab/syrup Tetanus injection Deworming Weighing Birth preparedness counselling Breastfeeding counselling Counselling on keeping baby warm Cord care counselling Food supplementation Health & nutrition education Malaria prevention- use of bed nets Institutional birth Financial assistance (JSY) Skilled birth attendant Postnatal care for mothers Postnatal care for babies Food supplementation Health & nutrition education Full immunization Vitamin A Paediatric IFA Deworming Care seeking for ARI ORS during diarrhea Zinc during diarrhea Food supplementation (6-35 months) Weighing Counselling on child growth MAHARASHTRA 96.2 70.9 70.3 95.5 85.7 90.1 22.4 94.7 10.2 93.8 85.4 89.1 73.5 72.2 77.5 59.5 27.3 Ahmednagar 95.5 71.4 76.6 94.4 87.0 91.2 17.5 97.9 9.1 95.0 90.9 92.9 83.5 69.9 84.2 66.0 28.3 Akola 95.2 75.1 76.3 98.3 88.2 92.9 30.2 97.7 15.8 86.4 82.3 92.2 69.5 88.3 75.8 70.6 41.1 Amravati 98.5 89.1 71.7 99.1 83.9 93.8 35.8 91.3 17.2 89.7 80.2 79.4 92.5 85.9 78.5 61.5 20.5 Aurangabad 98.9 65.2 57.2 95.0 85.8 86.2 20.1 94.8 6.6 96.3 76.4 82.6 56.7 69.2 64.2 55.1 30.8 Bhandara 95.4 83.7 79.0 99.4 97.9 94.8 50.2 100.0 25.2 98.4 87.5 90.1 87.0 83.9 55.3 Bid 96.3 65.6 56.8 97.6 85.2 78.3 18.5 94.0 3.5 90.8 79.8 80.6 75.9 82.4 62.9 58.6 17.7 Buldana 97.8 73.6 72.7 100.0 94.3 95.5 39.7 93.9 18.1 92.4 86.7 84.8 85.9 89.2 67.4 56.1 32.5 Chandrapur 97.4 76.6 68.5 100.0 94.9 94.0 43.0 99.6 11.9 96.5 92.3 97.0 95.0 86.8 72.7 Dhule 98.0 61.2 63.2 93.7 80.3 80.5 21.9 77.2 9.1 84.2 77.2 74.9 56.6 55.7 75.2 55.6 23.2 Gadchiroli 97.7 84.6 86.8 98.0 96.5 91.4 45.3 97.3 35.1 98.2 91.5 93.7 97.9 88.1 Gondiya 98.0 69.0 66.2 98.7 92.9 98.3 52.6 99.1 26.3 98.3 90.0 89.2 88.2 77.4 73.6 Hingoli 99.0 82.5 66.6 98.8 79.6 88.5 27.7 94.0 13.3 95.3 82.4 85.1 76.9 72.1 69.5 37.5 22.1 Jalgaon 96.8 60.3 58.4 91.0 73.4 82.2 11.2 86.5 4.8 81.9 74.5 78.5 61.3 57.9 61.8 Jalna 97.6 56.0 58.4 96.1 83.2 78.3 14.6 92.8 9.0 86.5 74.0 78.9 54.3 70.1 68.7 48.1 14.8 Kolhapur 97.7 71.5 81.8 95.3 92.8 88.3 20.4 99.2 14.8 93.6 95.2 91.5 67.2 66.0 79.8 Latur 97.8 74.6 72.6 100.0 90.6 86.4 34.5 94.7 6.1 93.4 93.3 92.5 79.2 88.7 64.5 65.4 32.3 Mumbai 98.3 86.2 87.1 93.1 89.0 95.4 13.3 99.5 8.6 98.3 90.6 95.9 77.8 Mumbai Suburban 99.5 58.1 72.2 92.6 75.7 90.1 20.6 98.1 7.3 98.5 91.5 97.2 73.6 Nagpur 97.6 78.1 71.4 96.6 93.8 92.8 37.0 100.0 7.5 96.6 91.4 90.8 89.4 95.6 65.0 Nanded 96.9 62.5 53.5 96.7 80.0 89.8 18.6 94.8 8.1 92.6 76.1 79.3 75.7 70.5 81.6 60.4 19.9 Nandurbar 97.6 51.0 58.2 99.2 81.6 91.0 16.3 76.3 26.8 77.9 74.4 74.2 72.4 68.2 77.2 64.7 29.1 Nashik 91.6 66.9 66.4 96.0 79.7 81.3 12.5 90.5 12.7 89.9 76.5 83.4 70.4 58.7 76.3 62.2 13.4 Osmanabad 97.5 83.9 89.2 95.8 91.3 91.7 17.5 98.1 6.6 99.0 94.4 95.1 89.3 67.9 71.2 43.9 15.1 Palghar 86.5 84.7 86.3 92.9 86.3 94.4 11.8 94.2 18.5 95.7 97.0 96.5 94.0 72.7 70.9 Parbhani 95.1 58.6 47.4 89.0 68.9 82.0 14.7 85.6 12.8 90.8 64.4 66.8 52.0 52.9 74.5 49.8 18.1 Pune 97.0 79.6 68.6 93.1 85.7 90.7 15.7 98.0 4.9 98.5 84.2 95.2 58.1 69.9 94.3 Raigarh 80.3 83.8 83.1 98.4 91.9 96.6 18.2 96.6 11.0 97.6 93.0 92.9 92.3 73.8 82.4 Ratnagiri 91.1 64.6 78.6 97.0 87.9 93.2 22.7 97.8 8.7 95.6 89.7 92.2 77.2 77.3 Sangli 98.8 66.0 80.1 97.1 91.6 97.4 33.3 98.0 13.1 97.6 95.6 95.0 75.0 80.4 Satara 93.9 77.5 81.7 96.7 91.1 93.8 16.3 97.1 8.9 97.9 94.5 95.1 82.8 78.3 77.7 72.4 24.5 Sindhudurg 94.9 70.3 73.4 100.0 93.3 96.8 32.8 100.0 14.7 98.6 96.7 98.2 76.3 78.9 Solapur 96.5 81.3 81.9 96.0 89.2 90.5 17.8 96.2 8.4 96.3 89.6 89.2 83.6 65.9 80.7 51.3 34.7 Thane 97.5 58.9 70.2 93.4 86.9 97.4 28.2 93.6 7.0 93.9 87.2 93.3 74.9 68.7 Wardha 97.9 87.9 70.4 98.6 91.3 93.4 47.9 98.8 12.3 99.0 89.9 90.5 92.4 87.1 Washim 96.5 63.4 60.0 99.2 90.0 79.5 19.4 92.9 16.7 83.1 83.4 83.4 71.6 77.9 79.4 57.9 18.6 Yavatmal 94.6 77.1 66.9 98.8 88.3 94.6 26.3 96.3 16.6 96.8 85.6 91.7 74.7 71.0 97.3 Pre- pregnancy Pregnancy Delivery & postnatal Early childhood
  • 34. 0 20 40 60 80 100 Overweight/ obesity child Overweight/ obesity women Overweight/ obesity men High blood pressure women High blood pressure men High sugar level women High sugar level men % 2005-06 2015-16 2019-20 Children: Stunting prevalence declined by 13 percentage points (pp) from 2006 to 2016 and remained stable thereafter. Wasting increased by 10pp from 2006 to 2016 while remained stable thereafter. Underweight declined slightly by 1-2pp over time. Anemia declined by 10pp from 2006 to 2016 but increased by 15pp from 2016 to 2020. Overweight/obesity declined by 3pp from 2006 and 2016 but increased by 2pp from 2016 to 2020. Women: Underweight declined by 13pp from 2006 to 2016 and by 2pp from 2016 to 2020. Anemia among non-pregnant women remained stable from 2006 to 2016 but increased by 7pp from 2016 to 2020; anemia among pregnant women declined by 9pp from 2006 to 2016 and by 3pp from 2016 to 2020. Overweight/obesity increased by 9pp from 2006 to 2016 and remained stable thereafter. Men: Overweight/obesity increased by 12pp from 2006 to 2016 and remained stable thereafter. Attention is needed to improve (%s in 2020): • Outcomes: Stunting (35%), underweight (36%), wasting (26%) and anemia in children (69%); anemia in non-pregnant (55%) and pregnant (46%) women • Immediate determinants: Early initiation of breastfeeding (53%); timely complementary feeding (53%); Adequate diet (9%); 100+ IFA (48%) • Underlying determinants: Women with 10 years education (50%) • Coverage of interventions: Food supplementation (45-49%) and health and nutrition education (40-43%) for women; zinc during diarrhea (27%) Trends in nutrition outcomes, determinants and coverage of interventions in Maharashtra (2006, 2016 and 2020) Source: NFHS-3 (2005-06), NFHS-4 (2015-16) & NFHS-5 state & district factsheets (2019-20) ⁰Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5 1NA refers to the unavailability of data for a particular indicator in the specified NFHS round. Undernutrition outcomes Overweight/obesity and non communicable diseases Immediate determinants Key takeaways Underlying determinants Interventions across the first 1000 days 1NA 1NA 1NA 1NA 0 20 40 60 80 100 Stunting Wasting Severe wasting Underweight child Anemia child Underweight women Anemia Non pregnant women Anemia Pregnant women % 2019-20 2015-16 2005-06 (%) (%) (%)
  • 35. Annex: Methodological notes • Nutrition outcomes, their immediate and underlying determinants, and nutrition related interventions were identified following the Poshan Abhiyaan monitoring framework. • The selected indicators were harmonized across the National Family Health Survey (NFHS) 3 (2005-06) and 4 (2015-16) data and NFHS 5 factsheets (2019). For those indicators that were not comparable, details were specified in a footnote. • The method of women sampling across the three NFHS rounds was compared: • Descriptive statistics were estimated, and trend analysis was conducted to examine changes in outcomes, determinants, and coverage of interventions across the three time periods. Further, top 10 districts with the highest change in prevalence between 2016 & 2019 were identified. Statistical software Stata 16.0 and R were used to perform the analyses. • District level headcount of undernutrition outcomes was computed using undernutrition prevalence and projected population data for the year 2019. o The prevalence P was calculated as children/women with nutritional deficit (q) divided by the eligible sample of children/women (n) in the district (j) and expressed in percentage as: Pj= (qj/nj) ×100 o The headcount was calculated as the product of P and the total eligible population N for each district: Hj= Pj×Nj • Findings were visualized using spatial maps, bar graphs and line plots. The maps and other graphs were prepared on R and Excel, respectively. • Cut-off values for public health significance were based on WHO guidelines on all indicators https://apps.who.int/iris/bitstream/handle/10665/332223/9789241516952-eng.pdf?ua=1 except severe wasting (based on agreement with UNICEFF) NFHS – 3 (2005-2006) NFHS-4 (2015-2016) NFHS-5 (2019-2020) • Target sample size in NFHS-3 was fixed in terms of ever married women age 15-49 years • All eligible women age 15-49 i.e. all women age 15-49 who are usual members of the selected households or who spent the night before the survey in the selected households were eligible to be interviewed in the survey. • Information on sampling strategy not available yet
  • 36. Annex: Indicator definitions Mortality and nutrition outcomes Neonatal mortality rate Neonatal mortality rate per 1000 live births Infant mortality rate Infant mortality rate per 1000 live births Under-five mortality rate Under-five mortality rate (U5MR) per 1000 live births Low birth weight Percentage of live births in the five years preceding the survey with a reported birth weight less than 2.5 kg, based on either a written record or the mother's recall Stunting among children Percentage of children age 0-59 months who are stunted i.e. height-for-age z score < -2SD Wasting among children Percentage of children age 0-59 months who are wasted i.e. weight-for-height z score < -2SD Severe wasting among children Percentage of children age 0-59 months who are wasted i.e. weight-for-height z score < -3SD Underweight children Percentage of children age 0-59 months who are underweight i.e. weight-for-age z score < -2SD Anemia among children Percentage of children age 6-59 months who are anemic i.e. (Hb <11.0 g/dl) Underweight women Percentage of women age 15-49 whose Body Mass Index (BMI) is below normal (BMI <18.5 kg/m2) Anemia among non-pregnant women Percentage of non-pregnant women age 15-49 who are anemic (<12.0 g/dl) Anemia among pregnant women Percentage of pregnant women age 15-49 who are anemic (<11.0 g/dl) Overweight/obesity - children Percentage of children age 0-59 months who are overweight i.e. weight-for-height z score > 2SD Overweight/obesity - women Percentage of men age 15-54 who are overweight or obese (BMI ≥25.0 kg/m2) Overweight/obesity - men Percentage of men age 15-54 who are overweight or obese (BMI ≥25.0 kg/m2) High blood pressure among women^ Percentage of women age 15-49 with elevated blood pressure (Systolic >140 mm Hg or diastolic >90 mm Hg) High blood pressure among men^ Percentage of men age 15-54 with elevated blood pressure (Systolic >140 mm Hg or diastolic >90 mm Hg) High sugar level among women^ Percentage of women age 15-49 with elevated blood pressure (Systolic >140 mm Hg or diastolic >90 mm Hg) High sugar level among men^ Percentage of men age 15-54 with high blood sugar levels (141-160 mg/dl) ^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5 1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet
  • 37. Annex: Indicator definitions ^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5 1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet Immediate determinants Early initiation of breastfeeding Percentage of children under age 3 years breastfed within one hour of birth for the last child born in the 3 years before the survey Exclusive breastfeeding Percentage of youngest children under age 6 months living with mother who were exclusively breastfed Timely introduction of complementary foods0 1Percentage of youngest children age 6-8 months living with mother who received solid or semi-solid food; 2Percentage of youngest children age 6-8 months living with mother who received solid or semi-solid food and breastmilk Continued breastfeeding at 2 years$ Percentage of youngest children 12–23 months of age who were fed breast milk during the previous day Adequate diet0 Percentage of youngest children 6–23 months of age who consumed a minimum acceptable diet during the previous day Eggs and/or flesh foods consumption$ Percentage of youngest children 6–23 months of age who consumed egg and/or flesh food during the previous day Sweet beverage$ Percentage of youngest children 6–23 months of age who consumed a sweet beverage during the previous day Bottle feeding for infants$ Percentage of youngest children 0–23 months of age who were fed from a bottle with a nipple during the previous day Women with body mass index <18.5 kg/m2 0 1Percentage of women age 15-49 with a youngest child < 5 years who have BMI below normal (BMI <18.5 kg/m2) ; 2Percentage of women age 15-49 whose BMI is below normal (BMI <18.5 kg/m2) Consumed IFA 100+ days Percentage of mothers age 15-49 who consumed iron folic acid for 100 days or more during the last pregnancy in last five years preceding the survey Diarrhea in the last two weeks0 1Percentage of youngest children under age five who had diarrhoea in the two weeks preceding the survey; 2Percentage of children under age 5 who had diarrhoea in the 2 weeks preceding the survey ARI in the last two weeks0 1Percentage of youngest children under age five who had symptoms of acute respiratory infection (ARI) in the two weeks preceding the survey; 2Percentage of children under age five who had symptoms of acute respiratory infection (ARI) in the two weeks preceding the survey
  • 38. Annex: Indicator definitions ^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; @Indicator not available in NFHS-5 factsheets but available in NFHS-5 states reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5 1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet Underlying determinants Women who are literate0 1Percentage of women age 15-49 with a birth in five years preceding the survey who are literate i.e. those who completed standard 6 or higher and can read a whole sentence; 2Percentage of women age 15-49 who are literate i.e. those who completed standard 9 or higher and can read a whole sentence or part of a sentence. Women with ≥10 years education0 1Percentage of women age 15-49 with a birth in five years preceding the survey with 10 or more years of schooling; 2Percentage of women age 15-49 with 10 or more years of schooling Girls 20-24 years married before age of 18 years0 1Percentage of women aged 20-24 years with a birth in five years preceding the survey who were married before age 18 years; 2Percentage of women aged 20-24 years who were married before age 18 years Women 15-19 years with child or pregnant Percentage of currently married women aged 15-49 who had their first birth before age 20 years and in the five years preceding the survey HHs with improved drinking water source0 1Percentage of youngest children under age 5 living in household that use an improved source of drinking water; 2Population living in households that use an improved sanitation facility HHs with improved sanitation facility0 1Percentage of youngest children under age 5 living in household that uses improved toilet facility; 2Population living in households that use an improved sanitation facility HHs with hand washing facility^$ Percentage of youngest children under age 5 living in household that had soap and water for washing hands Open defecation@ Percentage of youngest children under age 5 living in household that has no toilet facility/defecates in open Safe disposal of feces$ Percentage of youngest children living with mother whose stools were disposed of safely HHs with BPL card@ Percentage of youngest children under age 5 living in households with BPL card HHs with electricity0 1Percentage of youngest children under age 5 living in household that has electricity; 2Population living in households with electricity
  • 39. Annex: Indicator definitions ^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5 1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet; @Indicator not available in NFHS-5 factsheets but available in NFHS-5 state reports Interventions Demand for FP satisfied@ Percentage of currently married women age 15-49 with demand for family planning satisfied by modern methods Iodized salt0 1Percentage of women age 15-49 living in HHs that use iodized salt; 2Percentage of households using iodized salt Any ANC visits$ Percentage of women age 15-49 with a live birth in the five years who received at least one ANC for the last birth ANC first trimester Percentage of women (15-49 years of age) attended by any provider during the first trimester of pregnancy that led to the birth of the youngest child in the last 2 years ≥ 4ANC Percentage of mothers age 15-49 who had at least 4 antenatal care visits for last birth in the 5 years before the survey Received MCP card Percentage of mothers who registered last pregnancy in the 5 years preceding the survey for which she received a Mother and Child Protection (MCP) card Received IFA tab/syrup@ Percentage of women who received IFA (given or purchased) tablets during the pregnancy for their most recent live birth in the 5 years preceding the survey Tetanus injection Percentage of women whose last birth was protected against neonatal tetanus (for last birth in the five years preceding the survey ) Deworming- pregnancy@ Percentage of women who took an intestinal parasite drug during the pregnancy for their most recent live birth in the 5 years preceding the survey Weighing- pregnancy@ Percentage of women age 15-49 with a live birth in the five years preceding the survey who were weighed during ANC for the last birth Birth preparedness counselling$ Percentage of women who had at least one contact with a health worker in the three months preceding the survey and were counselled on birth preparedness; calculated among women age 15-49 who gave birth in the five years preceding the survey Breastfeeding counselling@ Percentage of women who met with a community health worker in the last three months of pregnancy and received advice on breastfeeding (for the last pregnancy in the five years preceding the survey) Counselling on keeping baby warm@ Percentage of women who met with a community health worker in the last three months of pregnancy and received advice on keeping the baby warm for their most recent live birth in the five years preceding the survey Cord care counselling^@ Percentage of women who met with a community health worker in the last three months of pregnancy and received advice on cord care for their most recent live birth in the five years preceding the survey Food supplementation - pregnancy@ Percentage of youngest children under age 5 whose mother received supplementary food from AWC during pregnancy Health & nutrition education – pregnancy@ Percentage of mothers who received health and nutrition education from an Anganwadi Centre (AWC) during last pregnancy in the five years preceding the survey Malaria prevention- use of bed nets^$ Percentage of women who used mosquito net during the pregnancy for their most recent live birth in the 5 years preceding the survey
  • 40. Annex: Indicator definitions ^ Indicator not available in NFHS-3; $ Indicator not available in NFHS-5 factsheets/state reports; 0 Indicator comparable between NFHS-3 and NFHS-4 but differs slightly with NFHS-5 1 Definition per NFHS-3/NFHS-4 ; 2 Definition as per NFHS-5 factsheet; @Indicator not available in NFHS-5 factsheets but available in NFHS-5 state reports Interventions Institutional birth0 1Percentage of women age 15-49 who gave birth in health/institutional facility for their most recent live birth in the 5 years preceding the survey; 2Percentage of live births to women age 15-49 in the five years preceding the survey that took place in a health/institutional facility Financial assistance (JSY)@ Percentage of women who received financial assistance under JSY for their most recent live birth that took place in institutional facility in the 5 years preceding the survey Skilled birth attendant0 1Percentage of women whose last delivery was attended by a skilled health personnel for their most recent live birth in the 5 years preceding the survey; 2Percentage of births attended by skilled health personnel for births in the 5 years before the survey Postnatal care for mothers Percentage of mothers who received postnatal care from a doctor/nurse/LHV/ANM/midwife/other health personnel within 2 days of delivery for their most recent live birth in the five years preceding the survey Postnatal care for babies Percentage of children who received postnatal care from a doctor /nurse /LHV /ANM /midwife /other health personnel within 2 days of delivery for last birth in the 5 years before the survey Food supplementation – postnatal@ Percentage of youngest children under age 5 whose mother received supplementary food from AWC while breastfeeding Health & nutrition education – postnatal@ Percentage of youngest children under age 5 whose mother received health check-ups from AWC while breastfeeding Full immunization0 1Percentage of youngest living children age 12-23 months fully vaccinated based on information from either vaccination card or mother's recall; 2Percentage of children age 12-23 months fully vaccinated based on information from either vaccination card or mother's recall Vitamin A – early childhood0 1Percentage of youngest children age 6-59 months who received Vitamin A supplementation in the last 6 months preceding the survey; 2 Percentage of children age 9-35 months who received a vitamin A dose in the last 6 months Pediatric IFA0@ Percentage of youngest children age 6-59 months who received iron supplements in the past 7 days preceding the survey Deworming – early childhood0@ Percentage of youngest children age 6-59 months who received deworming tablets in the last 6 months preceding the survey Care seeking for ARI0 1Percentage of youngest children under age 5 years with fever or symptoms of ARI in the 2 weeks preceding the survey taken to a health facility or health provider; 2Percentage of children under age 5 years with fever or symptoms of ARI in the 2 weeks preceding the survey taken to a health facility or health provider ORS during diarrhea0 1Percentage of youngest children under age 5 years with diarrhoea in the 2 weeks preceding the survey who received oral rehydration salts (ORS); 2Percentage of children under age 5 years with diarrhoea in the 2 weeks preceding the survey who ORS Zinc during diarrhea0 1Percentage of youngest children under age 5 years with diarrhoea in the 2 weeks preceding the survey who received zinc; 2Percentage of children under age 5 years with diarrhoea in the 2 weeks preceding the survey who received zinc Food supplementation (children 6-35 months)$ Percentage of youngest children age 6-35 months who received food supplements from AWC in the 12 months preceding the survey Weighing – early childhood@ Percentage of youngest children under age 5 who were weighed at AWC in the 12 months preceding the survey Counselling on child growth@ Percentage of youngest children under age 5 whose mother received counselling from an AWC after child was weighed in the 12 months preceding the survey