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National Nutrition and Health Survey 2014
Second round

Nigeria, 2014
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Reference ID
NGA-NBS-NNHS-2014-v1.0
Producer(s)
National Bureau of Statistics (NBS)
Metadata
Documentation in PDF DDI/XML JSON
Created on
Dec 21, 2016
Last modified
Dec 21, 2016
Page views
234551
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  • Study Description
  • Data Dictionary
  • Downloads
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  • Identification
  • Version
  • Scope
  • Coverage
  • Producers and sponsors
  • Sampling
  • Survey instrument
  • Data collection
  • Data processing
  • Data appraisal
  • Data Access
  • Disclaimer and copyrights
  • Contacts
  • Metadata production
  • Identification

    Survey ID number

    NGA-NBS-NNHS-2014-v1.0

    Title

    National Nutrition and Health Survey 2014

    Subtitle

    Second round

    Abbreviation or Acronym

    NNHS 2014

    Translated Title

    No Translation

    Country
    Name Country code
    Nigeria NGA
    Study type

    Other Household Survey [hh/oth]

    Series Information

    This survey report presents the results of a national nutrition survey conducted in all the 36 States of Nigeria and federal capital territory (FCT) from 9th February to 5th May 2014 to assess the nutritional and health status of children under 5 years of age and of women in the reproductive age group (15-49 years). In Borno state where 9 local government areas were excluded at sampling stage for security reasons. Hence, result from Borno state is not representative of the whole state.
    It is a second round survey aimed to provide reliable data for planning and monitoring of key activities, the first being conducted in 24 states from July to August 2013. In addition to being scaled up to the national level, this new survey presents some additional new key indicators: household access to safe drinking water and sanitation have all been reviewed.

    Abstract

    Nigeria is one of the six countries that accounts for half of all child deaths from malnutrition worldwide. Every year, one million children under five die, 45% of them due to causes attributed to malnutrition. Prevalence of child malnutrition vary significantly across the six geopolitical zones:
    children living in the North West and in the North East stand out as being particularly disadvantaged (percent stunted in North West and North East is 50 and 47 respectively, compared to 29 in North Central, 20 in the South South and in the South West, and 10 in the South East). Similar patterns emerge for underweight and wasting. Malnutrition prevalence among women of reproductive age are also high and geographically non homogenous. The prevalence of malnutrition among women ranges from 2 percent in the South East to 10 percent in the North East and rates are particularly high for adolescents (15-19 years) as compared to women aged 20-49 years (16 versus 3 percent). A positive association was also noted between women and child nutritional status.
    This situation has profound implications for health and human development, and presents a major obstacle to the attainment of the Millennium Development Goals4 (MDG) in the country.

    In terms of child – and women – health and nutrition, these targets aim to reduce by two thirds the under-five mortality rate and by three quarters the maternal mortality ratio, reversing at the same time the incidence of malaria and other major diseases, and doubling the proportion of people with access to safe drinking water and sanitation facilities. In addition to targeting the MDGs, in October 2012, Nigeria launched the “Saving One Million Lives” initiative aimed to improve health outcomes by specifically saving one million lives by 2015.

    The objectives of the survey are:

    1. Determine the prevalence of underweight, stunting, and overweight among children 0 to 59 months of age,
    2. Determine the prevalence of acute malnutrition among children 6 to 59 months of age using weight for height (WHZ) and bilateral edema and Mid Upper Arm Circumference (MUAC) and bilateral edema,
    3. Assess infant and young child feeding practice: ever breastfed, early initiation of breastfeeding, exclusive breastfeeding, minimum meal frequency, minimum dietary diversity and minimum acceptable diet among children age 0-23 months,
    4. Estimate coverage of vitamin A supplementation and de-worming among children 6 to 59 and 12 to 59 months of age respectively within the last six months,
    5. Determine the coverage of DPT3/Penta3 and measles vaccination among children 12 to 23 months of age, and assess the prevalence of diarrhoea and Acute Respiratory Infection (ARI) and relative treatment among children under five years of age.
    6. Determine the ownership and access of Mosquito Nets and anti-malarial treatment of children under age 5,
    7. Determine the prevalence of acute malnutrition among women 15 to 49 years of age using MUAC,
    8. Assess the practice of skilled birth attendants, contraceptive prevalence rate and use of iron supplementation during pregnancy among women 15 to 49 years,
    9. Determine access to improved drinking water, and sanitation facility and under 3 years children's faeces disposal practice.
    Kind of Data

    Sample survey data [ssd]

    Unit of Analysis

    Households.

    Version

    Version Description

    Version 1.0(June, 2016).

    Version Date

    2014-12-03

    Version Notes

    Version 1.0(June, 2016). The first version to be released.

    Scope

    Notes

    The indicators have been divided into five macro-areas:

    • Nutritional status of children under 5 years of age [including Malnutrition, Infant and Young Child Feeding practices (IYCFP), Vitamin A supplementation and Deworming;
    • Health status of children under 5 years of age [vaccination, diarrhoea, Acute Respiratory Infection (ARI), fever prevalence and diagnosis and treatment of malaria];
    • Nutritional status of women in the reproductive age group (15 – 49 years);
    • Health status of women in the reproductive age group (15 – 49 years);
    • Household access to safe drinking water, sanitation facilities and mosquito net.
    Topics
    Topic Vocabulary
    Health World Bank
    Health Systems & Financing World Bank
    HIV/AIDS World Bank
    Malaria World Bank
    Nutrition World Bank
    Population & Reproductive Health World Bank
    Pandemic Flu (including H1N1, Avian Flu) World Bank

    Coverage

    Geographic Coverage

    National State Local Government Area

    Universe

    The survey covered all household members (usual residents), all women aged 15-49 years resident in the household, and all children aged 0-4 years (under age 5) resident in the household.

    Producers and sponsors

    Primary investigators
    Name Affiliation
    National Bureau of Statistics (NBS) Federal Government of Nigeria (FGN)
    Producers
    Name Affiliation Role
    National Population commission Federal Government of Nigeria (FGN) Technical Assistance
    Federal Ministry of Health Federal Government of Nigeria (FGN) Technical Assistance
    United Nations Children’s Fund United Nations System Technical Assistance
    Funding Agency/Sponsor
    Name Abbreviation Role
    United Nations Children’s Fund UNICEF Funding
    Micronutrient Initiative MI Funding
    Nigeria's Saving One Million Lives Initiative Funding
    United State Agency International Development USAID Funding
    UKAID Funding

    Sampling

    Sampling Procedure

    The National nutrition and health survey used Standardised Monitoring and Assessment of Relief and Transitions (SMART) methods.
    Data were collected from a total of 25,567 households, 20,939 children under-five years of age and 23,942 women of reproductive age.
    The 36 states and Federal Capital Territory (FCT) constitute the domains of the survey. The domains used by MICS and DHS are similar, which allows comparison of results, the only exception being the state of Borno, where 9 Local Governmental Areas (LGA) were excluded for security reasons. Therefore, results for Borno are not representative of the whole state.

    It is a cross-sectional household survey using a two stage cluster sampling representative at the state level.
    At first stage, clusters were drawn randomly and independently for each survey domain from the national master sample frame with the support from National Population Commission according to the probability proportional to size (PPS) method.

    The second stage of sampling consists of selecting households within each cluster by using systematic random selection. The team leader verified the population and/or number of households in the cluster by updating the cluster household listing form through detailed enumeration with a support from the village chief or community leader. With total number of households, the team leader calculated the sampling interval and drew a random start number using random number table. Within each selected household, the head of household or next adult was interviewed and all women and children were measured.
    In clusters with more than 250 households, segmentation was used to divide the cluster into areas of equal number of households. One segment was randomly chosen, the second stage of sampling was completed for the segment and all selected households were interviewed.

    In order to be able to estimate most of the indicators with reasonable precision, the sample size for the survey is calculated using a prevalence of Global Acute Malnutrition (GAM), based on children age 6-59 months. Indicators with narrow age range; 0-23, 6-23 and 12-23 months will be estimated with reasonable precision for each state. However, indicators with narrower age group such as 0-5, 12-15, 20-23 months and very low prevalence, such as treatment of children with ARI and Malaria, will be estimated at zonal level by pooling the data from the survey domain within each zone.
    The sample size for the survey was based on sample calculation for the prevalence of Global Acute Malnutrition (GAM) in children of age 6-59 months. The indicators with age ranges of one year or more; 0-23, 6-23 and 12-23 months were found to have reasonable precision for state level estimates.
    Those indicators with narrower age ranges such as 0-5, 12-15, 20-23 months and very low prevalence such as treatment of children with ARI and malaria are estimated only at zonal level by aggregating the state level data within each zone.
    Significantly different health and demographic conditions are found across Nigeria. In general, the southern half of the country has smaller family sizes and better health and nutrition conditions. These differences were accounted for in two separate sample calculations (for Northern and Southern states), thus two different sample sizes were used to achieve similar level of precision at a national level.

    Deviations from the Sample Design

    No Deviation

    Response Rate

    Overall 23,942 women and 20,939 children were interviewed. The response rate was 100%.

    Weighting

    Survey weights were calculated based on populations provided from the master sample frame and number of valid cases. The state level results were self-weighted as per the sample design. The national results were weighted by the survey weights. Three sets of survey weights were used for household, woman level, and child level results, respectively.

    Survey instrument

    Questionnaires

    The Questionnaire include indicators that have been divided into five macro-areas:
    Section 1: Nutritional status of children under 5 years of age [including Malnutrition, Infant and Young Child Feeding practices (IYCFP), Vitamin A supplementation and Deworming;
    Section 2: Health status of children under 5 years of age [vaccination, diarrhoea, Acute Respiratory Infection (ARI), fever prevalence and diagnosis and treatment of malaria];
    Section 3: Nutritional status of women in the reproductive age group (15 - 49 years);
    Section 4: Health status of women in the reproductive age group (15 - 49 years);
    Section 5: Household access to safe drinking water, sanitation facilities and mosquito net.

    Methodology notes

    Data collection on mobile devices provided many advantages. As data quality was reviewed during the data collection and supervision, strong rigor was ensured for the survey data. The double data entry steps were eliminated and the time needed to process the data after fieldwork was reduced. The data analysis and preliminary results were available in two weeks after data collection. The rapid production of survey results allowed the government and partners to ensure greater consensus on conditions across the 36 states plus Federal Capital Territory and make more informed decisions quickly on the conditions identified by the national survey.

    Data collection

    Dates of Data Collection
    Start End Cycle
    2014-02-10 2014-05-05 85 days
    Time periods
    Start date End date Cycle
    2014-05-15 2015-05-15 12 Months
    Mode of data collection
    • Face-to-face [f2f]
    Data Collectors
    Name Affiliation Abbreviation
    National Bureau of Statistics Federal Government of Nigeria NBS
    National Population Commission Federal Government of Nigeria NPopC
    Federal Ministry of Health Federal Government of Nigeria FMOH
    United Nations Children’s Fund Federal Government of Nigeria UNICEF
    Supervision

    The National Bureau of Statistics (NBS) the National Population Commission (NPopC), Federal Ministry of Health (FMOH) and UNICEF selected 108 persons to be involved in the survey. Of the 108 individuals, 99 constituted the survey teams and 9 individuals were assigned as standby to replace any interviewers who drop out during the data collection period. Of the 99 individuals, 81 of were assigned to 27 survey teams (3 individuals per team), 10 supervisors, 1 national coordinator, 1 assistant national coordinator, 2 technical coordinators and 4 regional coordinators.
    The role of the supervisors were to coordinate the field work and other field activities such as management of the field teams, supplies and equipments, coordinate with locasl authorities concerning the survey. etc

    Data Collection Notes

    The National nutrition and health survey conducted fieldwork from the 9th of February to the 5th of May 2014. After the first training, the data collection tools on tablets were field tested for one day.
    The capacity of teams to use the tablets, to send the data to a central data bases and survey data quality were evaluated. As the data collection on tablets was accepted quickly by interviewer teams and data were complete and of good quality, the survey was approved for launch by the technical committee.
    All teams in the northern training were assigned to complete data collection in the state of the training Katsina. This allowed close supervision of the teams by all supervision staff during the first week of training. After review of the data of Katsina state, the tools were cleared for use for the National Nutrition and Health Survey 2014.
    The candidates were selected based on their experience in surveys and language skills in order to interview the respondents in their native language as much as possible. English language fluency was also required. At least 2 enumerators per team were be a female and all survey staff were required to wear culturally appropriate clothes. In the some parts of the country, it was decided to have all the 3 survey team members to be female in order not to be refused to approach households or concessions as men are not allowed to enter households to measure children and women.

    Data processing

    Data Editing

    Data quality was reviewed daily during the first week of data collection and weekly during the remainder of field work. The review of data quality comprised downloading the raw data in CSV format, converting the data to STATA, ENA and GPS data formats and producing the plausibility checks from the ENA software and analysis of timing of data collection and missing data.
    The data on the daily standardization of anthropometric tools allowed quick detection and replacement of broken or non-functioning scales, height boards or MUAC strips. All supervision teams traveled with replacement scales, height boards, MUAC strips, tablets and other survey materials to resupply teams.
    The GPS points of survey data collection were mapped to compare against selected clusters to identify obvious sampling errors. The daily sign-in of the data collection team along with GPS data allowed validation that personnel were in the field in the assigned geographic point as planned.

    The data were assessed to ensure that data were sent daily from the tablets to the server and that all teams were following the sampling plans as trained. The time and date stamps on each data point provided data to review the number of interviews per day and the duration of each interview. The timestamps were evaluated to determine if data were collected at appropriate times during the day, not before 7AM or after 8PM.
    The data were evaluated by team for missing data. If any variable had more than 5% missing data then supervision staff were alerted and asked to pay specific attention to the data collection of those teams
    with missing data. Anthropometric data quality was reviewed by % of data with WHO flags, sex ratio,

    Data appraisal

    Estimates of Sampling Error

    No Sampling error

    Data Access

    Access authority
    Name Affiliation URL Email
    National Bureau of Statistics (NBS) Federal Government of Nigeria (FGN) www.nigerianstat.gov.ng feedback@nigerianstat.gov.ng
    Confidentiality
    Is signing of a confidentiality declaration required? Confidentiality declaration text
    yes The confidentiality of the individual respondent is protected by law (Statistical Act 2007) This is published in the Official Gazette of the Federal republic of Nigeria No. 60 vol. 94 of 11th June 2007. See section 26 para.2. Punitive measures for breeches of confidentiality are outlined in section 28 of the same Act.
    Access conditions

    A comprehensive data access policy is been developed by NBS, however section 27 of the Statistical Act 2007 outlines the data access obligation of data producers which includes the realease of properly anonymized micro data.

    Citation requirements

    National Bureau of Statistics, Nigeria, National Nutrition and Health Survey 2014-v1.0

    Disclaimer and copyrights

    Disclaimer

    The user of the data acknowledges that the original collector of the data, the authorized distributor of the data, and the relevant funding agency bear no responsibility for use of the data or for interpretations or inferences based upon such uses.

    Copyright

    © NBS 2016

    Contacts

    Contacts
    Name Affiliation Email URL
    Dr. Yemi Kale (Statistician-General) National Bureau of Statistics (NBS) yemikale@nigerianstat.gov.ng http://www.nigerianstat.gov.ng
    Isiaka Olarewaju (HOD, RSHSD) National Bureau of Statistics (NBS) iolarewaju@nigerianstat.gov.ng http://www.nigerianstat.gov.ng
    Mr. Fafunmi E.A (HOD ICT) National Bureau of Statistics (NBS) biyifafunmi@nigerianstat.gov.ng http://www.nigerianstat.gov.ng
    Mr. Adebisi (Sampler, NBS) National Bureau of Statistics (NBS) http://www.nigerianstat.gov.ng
    Stanley Chitekwe (Chief of Nutrition Section) UNICEF schitekwe@unicef.org
    Sara Gari-Sanchis (WCARO Nutrition Monitoring Specialist) UNICEF sgarisanchis@unicef.org
    Assaye Bulti: (UNICEF Nutrition Consultant) UNICEF bassaye@unicef.org
    Irenonse Victoria (Data Archivist, National Bureau of Statistics) National Bureau of Statistics (NBS) Irenonsevic@yahoo.com http://www.nigerianstat.gov.ng

    Metadata production

    DDI Document ID

    DDI-NGA-NBS-NNHS-2014-v1.0

    Producers
    Name Abbreviation Affiliation Role
    National Bureau of Statistics NBS Federal Government of Nigeria (FGN) Metadata Producer
    Date of Metadata Production

    2016-08-23

    Metadata version

    DDI Document version

    Version 1.0 (June, 2016).

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