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Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria

BACKGROUND: One of the challenges facing the Global Polio Eradication Initiative is efficiently directing limited resources, such as specially trained personnel, community outreach activities, and satellite vaccinator tracking, to the most at-risk areas to maximize the impact of interventions. A val...

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Autores principales: Upfill-Brown, Alexander M, Lyons, Hil M, Pate, Muhammad A, Shuaib, Faisal, Baig, Shahzad, Hu, Hao, Eckhoff, Philip A, Chabot-Couture, Guillaume
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4066838/
https://www.ncbi.nlm.nih.gov/pubmed/24894345
http://dx.doi.org/10.1186/1741-7015-12-92
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author Upfill-Brown, Alexander M
Lyons, Hil M
Pate, Muhammad A
Shuaib, Faisal
Baig, Shahzad
Hu, Hao
Eckhoff, Philip A
Chabot-Couture, Guillaume
author_facet Upfill-Brown, Alexander M
Lyons, Hil M
Pate, Muhammad A
Shuaib, Faisal
Baig, Shahzad
Hu, Hao
Eckhoff, Philip A
Chabot-Couture, Guillaume
author_sort Upfill-Brown, Alexander M
collection PubMed
description BACKGROUND: One of the challenges facing the Global Polio Eradication Initiative is efficiently directing limited resources, such as specially trained personnel, community outreach activities, and satellite vaccinator tracking, to the most at-risk areas to maximize the impact of interventions. A validated predictive model of wild poliovirus circulation would greatly inform prioritization efforts by accurately forecasting areas at greatest risk, thus enabling the greatest effect of program interventions. METHODS: Using Nigerian acute flaccid paralysis surveillance data from 2004-2013, we developed a spatial hierarchical Poisson hurdle model fitted within a Bayesian framework to study historical polio caseload patterns and forecast future circulation of type 1 and 3 wild poliovirus within districts in Nigeria. A Bayesian temporal smoothing model was applied to address data sparsity underlying estimates of covariates at the district level. RESULTS: We find that calculated vaccine-derived population immunity is significantly negatively associated with the probability and number of wild poliovirus case(s) within a district. Recent case information is significantly positively associated with probability of a case, but not the number of cases. We used lagged indicators and coefficients from the fitted models to forecast reported cases in the subsequent six-month periods. Over the past three years, the average predictive ability is 86 ± 2% and 85 ± 4% for wild poliovirus type 1 and 3, respectively. Interestingly, the predictive accuracy of historical transmission patterns alone is equivalent (86 ± 2% and 84 ± 4% for type 1 and 3, respectively). We calculate uncertainty in risk ranking to inform assessments of changes in rank between time periods. CONCLUSIONS: The model developed in this study successfully predicts districts at risk for future wild poliovirus cases in Nigeria. The highest predicted district risk was 12.8 WPV1 cases in 2006, while the lowest district risk was 0.001 WPV1 cases in 2013. Model results have been used to direct the allocation of many different interventions, including political and religious advocacy visits. This modeling approach could be applied to other vaccine preventable diseases for use in other control and elimination programs.
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spelling pubmed-40668382014-06-24 Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria Upfill-Brown, Alexander M Lyons, Hil M Pate, Muhammad A Shuaib, Faisal Baig, Shahzad Hu, Hao Eckhoff, Philip A Chabot-Couture, Guillaume BMC Med Research Article BACKGROUND: One of the challenges facing the Global Polio Eradication Initiative is efficiently directing limited resources, such as specially trained personnel, community outreach activities, and satellite vaccinator tracking, to the most at-risk areas to maximize the impact of interventions. A validated predictive model of wild poliovirus circulation would greatly inform prioritization efforts by accurately forecasting areas at greatest risk, thus enabling the greatest effect of program interventions. METHODS: Using Nigerian acute flaccid paralysis surveillance data from 2004-2013, we developed a spatial hierarchical Poisson hurdle model fitted within a Bayesian framework to study historical polio caseload patterns and forecast future circulation of type 1 and 3 wild poliovirus within districts in Nigeria. A Bayesian temporal smoothing model was applied to address data sparsity underlying estimates of covariates at the district level. RESULTS: We find that calculated vaccine-derived population immunity is significantly negatively associated with the probability and number of wild poliovirus case(s) within a district. Recent case information is significantly positively associated with probability of a case, but not the number of cases. We used lagged indicators and coefficients from the fitted models to forecast reported cases in the subsequent six-month periods. Over the past three years, the average predictive ability is 86 ± 2% and 85 ± 4% for wild poliovirus type 1 and 3, respectively. Interestingly, the predictive accuracy of historical transmission patterns alone is equivalent (86 ± 2% and 84 ± 4% for type 1 and 3, respectively). We calculate uncertainty in risk ranking to inform assessments of changes in rank between time periods. CONCLUSIONS: The model developed in this study successfully predicts districts at risk for future wild poliovirus cases in Nigeria. The highest predicted district risk was 12.8 WPV1 cases in 2006, while the lowest district risk was 0.001 WPV1 cases in 2013. Model results have been used to direct the allocation of many different interventions, including political and religious advocacy visits. This modeling approach could be applied to other vaccine preventable diseases for use in other control and elimination programs. BioMed Central 2014-06-04 /pmc/articles/PMC4066838/ /pubmed/24894345 http://dx.doi.org/10.1186/1741-7015-12-92 Text en Copyright © 2014 Upfill-Brown et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/4.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Upfill-Brown, Alexander M
Lyons, Hil M
Pate, Muhammad A
Shuaib, Faisal
Baig, Shahzad
Hu, Hao
Eckhoff, Philip A
Chabot-Couture, Guillaume
Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria
title Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria
title_full Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria
title_fullStr Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria
title_full_unstemmed Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria
title_short Predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in Nigeria
title_sort predictive spatial risk model of poliovirus to aid prioritization and hasten eradication in nigeria
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4066838/
https://www.ncbi.nlm.nih.gov/pubmed/24894345
http://dx.doi.org/10.1186/1741-7015-12-92
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