Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria
Background: Despite aggressive measures to control the population in Nigeria, the population of Nigeria still remains worrisome. Increased birth rates have significantly contributed to Nigeria being referred to as the most populous country in Africa. This study analyses spatial patterns and contribu...
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| Format: | Article |
| Language: | English |
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AOSIS
2017-08-01
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| Series: | South African Family Practice |
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| Online Access: | https://safpj.co.za/index.php/safpj/article/view/4735 |
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| author | Oluwayemisi O Alaba Olusanya E Olubusoye J O Olaomi |
| author_facet | Oluwayemisi O Alaba Olusanya E Olubusoye J O Olaomi |
| author_sort | Oluwayemisi O Alaba |
| collection | DOAJ |
| description | Background: Despite aggressive measures to control the population in Nigeria, the population of Nigeria still remains worrisome. Increased birth rates have significantly contributed to Nigeria being referred to as the most populous country in Africa. This study analyses spatial patterns and contributory factors to fertility levels in different states in Nigeria.
Method: The 2013 Nigerian Demographic Health Survey (NDHS) data were used to investigate the determinants of fertility levels in Nigeria using the geo-additive model. The fertility levels were considered as count data. Negative Binomial distribution was used to handle overdispersion of the dependent variable. Spatial effects were used to identify the hotspots for high fertility levels. Inference was a fully Bayesian approach. Results were presented within 95% credible Interval (CI).
Results: Secondary or higher level of education of the mother, Yoruba ethnicity, Christianity, family planning use, higher wealth index, previous Caesarean birth were all factors associated with lower fertility levels in Nigeria. Age at first birth, staying in rural place of residence, the number of daughters in a household, being gainfully employed, married and living with a partner, community and household effects contribute to the high fertility patterns in Nigeria. The hotspots for high fertility in Nigeria are Kano, Yobe, Benue, Edo and Bayelsa states.
Conclusion: State-specific policies need to be developed to address fertility levels in Nigeria.
(Full text of the research articles are available online at www.medpharm.tandfonline.com/ojfp)
S Afr Fam Pract 2017; DOI: 10.1080/20786190.2017.1292693 |
| format | Article |
| id | doaj-art-b2fd2c5f0a4840bfbbfa78a82851b6c9 |
| institution | Kabale University |
| issn | 2078-6190 2078-6204 |
| language | English |
| publishDate | 2017-08-01 |
| publisher | AOSIS |
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| series | South African Family Practice |
| spelling | doaj-art-b2fd2c5f0a4840bfbbfa78a82851b6c92025-08-20T03:47:11ZengAOSISSouth African Family Practice2078-61902078-62042017-08-0159410.4102/safp.v59i4.47353770Spatial patterns and determinants of fertility levels among women of childbearing age in NigeriaOluwayemisi O Alaba0Olusanya E Olubusoye1J O Olaomi2University of IbadanUniversity of South AfricaUniversity of South AfricaBackground: Despite aggressive measures to control the population in Nigeria, the population of Nigeria still remains worrisome. Increased birth rates have significantly contributed to Nigeria being referred to as the most populous country in Africa. This study analyses spatial patterns and contributory factors to fertility levels in different states in Nigeria. Method: The 2013 Nigerian Demographic Health Survey (NDHS) data were used to investigate the determinants of fertility levels in Nigeria using the geo-additive model. The fertility levels were considered as count data. Negative Binomial distribution was used to handle overdispersion of the dependent variable. Spatial effects were used to identify the hotspots for high fertility levels. Inference was a fully Bayesian approach. Results were presented within 95% credible Interval (CI). Results: Secondary or higher level of education of the mother, Yoruba ethnicity, Christianity, family planning use, higher wealth index, previous Caesarean birth were all factors associated with lower fertility levels in Nigeria. Age at first birth, staying in rural place of residence, the number of daughters in a household, being gainfully employed, married and living with a partner, community and household effects contribute to the high fertility patterns in Nigeria. The hotspots for high fertility in Nigeria are Kano, Yobe, Benue, Edo and Bayelsa states. Conclusion: State-specific policies need to be developed to address fertility levels in Nigeria. (Full text of the research articles are available online at www.medpharm.tandfonline.com/ojfp) S Afr Fam Pract 2017; DOI: 10.1080/20786190.2017.1292693https://safpj.co.za/index.php/safpj/article/view/4735bayesian analysiscount datafertilitynigeriaspatial analysis |
| spellingShingle | Oluwayemisi O Alaba Olusanya E Olubusoye J O Olaomi Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria South African Family Practice bayesian analysis count data fertility nigeria spatial analysis |
| title | Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria |
| title_full | Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria |
| title_fullStr | Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria |
| title_full_unstemmed | Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria |
| title_short | Spatial patterns and determinants of fertility levels among women of childbearing age in Nigeria |
| title_sort | spatial patterns and determinants of fertility levels among women of childbearing age in nigeria |
| topic | bayesian analysis count data fertility nigeria spatial analysis |
| url | https://safpj.co.za/index.php/safpj/article/view/4735 |
| work_keys_str_mv | AT oluwayemisioalaba spatialpatternsanddeterminantsoffertilitylevelsamongwomenofchildbearingageinnigeria AT olusanyaeolubusoye spatialpatternsanddeterminantsoffertilitylevelsamongwomenofchildbearingageinnigeria AT joolaomi spatialpatternsanddeterminantsoffertilitylevelsamongwomenofchildbearingageinnigeria |