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Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana

OBJECTIVE: We mapped and generated hot spots for potential meningitis outbreak from existing data in Upper East region, Ghana. DESIGN: This was a cross-sectional study conducted in 2017 DATA SOURCE: Meningitis data in the Upper East Region from January 2007, to December 2016. MAIN OUTCOME MEASURE: W...

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Autores principales: Akyereko, Ernest, Ameme, Donne, Nyarko, Kofi M, Asiedu-Bekoe, Franklin, Sackey, Samuel, Issah, Kofi, Wuni, Baba, Kenu, Ernest
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ghana Medical Association 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7837342/
https://www.ncbi.nlm.nih.gov/pubmed/33536666
http://dx.doi.org/10.4314/gmj.v54i2s.6
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author Akyereko, Ernest
Ameme, Donne
Nyarko, Kofi M
Asiedu-Bekoe, Franklin
Sackey, Samuel
Issah, Kofi
Wuni, Baba
Kenu, Ernest
author_facet Akyereko, Ernest
Ameme, Donne
Nyarko, Kofi M
Asiedu-Bekoe, Franklin
Sackey, Samuel
Issah, Kofi
Wuni, Baba
Kenu, Ernest
author_sort Akyereko, Ernest
collection PubMed
description OBJECTIVE: We mapped and generated hot spots for potential meningitis outbreak from existing data in Upper East region, Ghana. DESIGN: This was a cross-sectional study conducted in 2017 DATA SOURCE: Meningitis data in the Upper East Region from January 2007, to December 2016. MAIN OUTCOME MEASURE: We used spatial tools in Quantum Geographic Information System (QGIS) and Geoda to draw choropleth map of meningitis incidence, case fatality and hotspot for potential meningitis outbreak RESULTS: A total of 2312 meningitis cases (suspected and confirmed) were recorded from 2016–2017 with median incidence of 15.0cases/100,000 population (min 6.3, max 47.8). Median age of cases was 15 years (IQR: 6–31 years). Most (44.2%) of those affected were 10 years and below. Females (51.2%) constituted the highest proportion. Median incidence from 2007–2011 was 20cases/100,000 population (Min 11.3, Max 39.9) whilst from 2012–2016 was 11.1cases/100,000 populations (Min 6.3, Max 47.8). A total of 28 significant hotspot sub-districts clusters (p=0.024) were identified with 7 High-high risk areas as potential meningitis outbreak spots. CONCLUSION: The occurrence of meningitis is not random, spatial cluster with high -high-risk exist in some sub-districts. Overall meningitis incidence and fatality rate have declined in the region with district variations. Districts with high meningitis incidence and fatality rates should be targeted for intervention. FUNDING: Author EA was supported by the West Africa Health Organization (Ref.: Prog/A17IEpidemSurveillN°57212014/mcrt).
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spelling pubmed-78373422021-02-02 Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana Akyereko, Ernest Ameme, Donne Nyarko, Kofi M Asiedu-Bekoe, Franklin Sackey, Samuel Issah, Kofi Wuni, Baba Kenu, Ernest Ghana Med J Original Article OBJECTIVE: We mapped and generated hot spots for potential meningitis outbreak from existing data in Upper East region, Ghana. DESIGN: This was a cross-sectional study conducted in 2017 DATA SOURCE: Meningitis data in the Upper East Region from January 2007, to December 2016. MAIN OUTCOME MEASURE: We used spatial tools in Quantum Geographic Information System (QGIS) and Geoda to draw choropleth map of meningitis incidence, case fatality and hotspot for potential meningitis outbreak RESULTS: A total of 2312 meningitis cases (suspected and confirmed) were recorded from 2016–2017 with median incidence of 15.0cases/100,000 population (min 6.3, max 47.8). Median age of cases was 15 years (IQR: 6–31 years). Most (44.2%) of those affected were 10 years and below. Females (51.2%) constituted the highest proportion. Median incidence from 2007–2011 was 20cases/100,000 population (Min 11.3, Max 39.9) whilst from 2012–2016 was 11.1cases/100,000 populations (Min 6.3, Max 47.8). A total of 28 significant hotspot sub-districts clusters (p=0.024) were identified with 7 High-high risk areas as potential meningitis outbreak spots. CONCLUSION: The occurrence of meningitis is not random, spatial cluster with high -high-risk exist in some sub-districts. Overall meningitis incidence and fatality rate have declined in the region with district variations. Districts with high meningitis incidence and fatality rates should be targeted for intervention. FUNDING: Author EA was supported by the West Africa Health Organization (Ref.: Prog/A17IEpidemSurveillN°57212014/mcrt). Ghana Medical Association 2020-06 /pmc/articles/PMC7837342/ /pubmed/33536666 http://dx.doi.org/10.4314/gmj.v54i2s.6 Text en Copyright © The Author(s). This is an Open Access article under the CC BY license.
spellingShingle Original Article
Akyereko, Ernest
Ameme, Donne
Nyarko, Kofi M
Asiedu-Bekoe, Franklin
Sackey, Samuel
Issah, Kofi
Wuni, Baba
Kenu, Ernest
Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana
title Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana
title_full Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana
title_fullStr Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana
title_full_unstemmed Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana
title_short Geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of Ghana
title_sort geospatial clustering of meningitis: an early warning system (hotspot) for potential meningitis outbreak in upper east region of ghana
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7837342/
https://www.ncbi.nlm.nih.gov/pubmed/33536666
http://dx.doi.org/10.4314/gmj.v54i2s.6
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