Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020

Abstract Background There are growing demands for predicting the prospects of achieving the global elimination of neglected tropical diseases as a result of the institution of large-scale nation-wide intervention programs by the WHO-set target year of 2020. Such predictions will be uncertain due to...

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Main Authors: Edwin Michael, Brajendra K. Singh, Benjamin K. Mayala, Morgan E. Smith, Scott Hampton, Jaroslaw Nabrzyski
Format: Article
Language:English
Published: BMC 2017-09-01
Series:BMC Medicine
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12916-017-0933-2
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spelling doaj-6d13a5b4f9f944cba6351a8d9f99d2312020-11-25T02:27:32ZengBMCBMC Medicine1741-70152017-09-0115112310.1186/s12916-017-0933-2Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020Edwin Michael0Brajendra K. Singh1Benjamin K. Mayala2Morgan E. Smith3Scott Hampton4Jaroslaw Nabrzyski5Department of Biological Sciences, University of Notre DameDepartment of Biological Sciences, University of Notre DameDepartment of Biological Sciences, University of Notre DameDepartment of Biological Sciences, University of Notre DameCenter for Research Computing, University of Notre DameCenter for Research Computing, University of Notre DameAbstract Background There are growing demands for predicting the prospects of achieving the global elimination of neglected tropical diseases as a result of the institution of large-scale nation-wide intervention programs by the WHO-set target year of 2020. Such predictions will be uncertain due to the impacts that spatial heterogeneity and scaling effects will have on parasite transmission processes, which will introduce significant aggregation errors into any attempt aiming to predict the outcomes of interventions at the broader spatial levels relevant to policy making. We describe a modeling platform that addresses this problem of upscaling from local settings to facilitate predictions at regional levels by the discovery and use of locality-specific transmission models, and we illustrate the utility of using this approach to evaluate the prospects for eliminating the vector-borne disease, lymphatic filariasis (LF), in sub-Saharan Africa by the WHO target year of 2020 using currently applied or newly proposed intervention strategies. Methods and Results We show how a computational platform that couples site-specific data discovery with model fitting and calibration can allow both learning of local LF transmission models and simulations of the impact of interventions that take a fuller account of the fine-scale heterogeneous transmission of this parasitic disease within endemic countries. We highlight how such a spatially hierarchical modeling tool that incorporates actual data regarding the roll-out of national drug treatment programs and spatial variability in infection patterns into the modeling process can produce more realistic predictions of timelines to LF elimination at coarse spatial scales, ranging from district to country to continental levels. Our results show that when locally applicable extinction thresholds are used, only three countries are likely to meet the goal of LF elimination by 2020 using currently applied mass drug treatments, and that switching to more intensive drug regimens, increasing the frequency of treatments, or switching to new triple drug regimens will be required if LF elimination is to be accelerated in Africa. The proportion of countries that would meet the goal of eliminating LF by 2020 may, however, reach up to 24/36 if the WHO 1% microfilaremia prevalence threshold is used and sequential mass drug deliveries are applied in countries. Conclusions We have developed and applied a data-driven spatially hierarchical computational platform that uses the discovery of locally applicable transmission models in order to predict the prospects for eliminating the macroparasitic disease, LF, at the coarser country level in sub-Saharan Africa. We show that fine-scale spatial heterogeneity in local parasite transmission and extinction dynamics, as well as the exact nature of intervention roll-outs in countries, will impact the timelines to achieving national LF elimination on this continent.http://link.springer.com/article/10.1186/s12916-017-0933-2Neglected tropical diseasesVector-borne diseasesLymphatic filariasisSub-Saharan AfricaSpatial scaleParasite transmission heterogeneity
collection DOAJ
language English
format Article
sources DOAJ
author Edwin Michael
Brajendra K. Singh
Benjamin K. Mayala
Morgan E. Smith
Scott Hampton
Jaroslaw Nabrzyski
spellingShingle Edwin Michael
Brajendra K. Singh
Benjamin K. Mayala
Morgan E. Smith
Scott Hampton
Jaroslaw Nabrzyski
Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020
BMC Medicine
Neglected tropical diseases
Vector-borne diseases
Lymphatic filariasis
Sub-Saharan Africa
Spatial scale
Parasite transmission heterogeneity
author_facet Edwin Michael
Brajendra K. Singh
Benjamin K. Mayala
Morgan E. Smith
Scott Hampton
Jaroslaw Nabrzyski
author_sort Edwin Michael
title Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020
title_short Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020
title_full Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020
title_fullStr Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020
title_full_unstemmed Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020
title_sort continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-saharan africa by 2020
publisher BMC
series BMC Medicine
issn 1741-7015
publishDate 2017-09-01
description Abstract Background There are growing demands for predicting the prospects of achieving the global elimination of neglected tropical diseases as a result of the institution of large-scale nation-wide intervention programs by the WHO-set target year of 2020. Such predictions will be uncertain due to the impacts that spatial heterogeneity and scaling effects will have on parasite transmission processes, which will introduce significant aggregation errors into any attempt aiming to predict the outcomes of interventions at the broader spatial levels relevant to policy making. We describe a modeling platform that addresses this problem of upscaling from local settings to facilitate predictions at regional levels by the discovery and use of locality-specific transmission models, and we illustrate the utility of using this approach to evaluate the prospects for eliminating the vector-borne disease, lymphatic filariasis (LF), in sub-Saharan Africa by the WHO target year of 2020 using currently applied or newly proposed intervention strategies. Methods and Results We show how a computational platform that couples site-specific data discovery with model fitting and calibration can allow both learning of local LF transmission models and simulations of the impact of interventions that take a fuller account of the fine-scale heterogeneous transmission of this parasitic disease within endemic countries. We highlight how such a spatially hierarchical modeling tool that incorporates actual data regarding the roll-out of national drug treatment programs and spatial variability in infection patterns into the modeling process can produce more realistic predictions of timelines to LF elimination at coarse spatial scales, ranging from district to country to continental levels. Our results show that when locally applicable extinction thresholds are used, only three countries are likely to meet the goal of LF elimination by 2020 using currently applied mass drug treatments, and that switching to more intensive drug regimens, increasing the frequency of treatments, or switching to new triple drug regimens will be required if LF elimination is to be accelerated in Africa. The proportion of countries that would meet the goal of eliminating LF by 2020 may, however, reach up to 24/36 if the WHO 1% microfilaremia prevalence threshold is used and sequential mass drug deliveries are applied in countries. Conclusions We have developed and applied a data-driven spatially hierarchical computational platform that uses the discovery of locally applicable transmission models in order to predict the prospects for eliminating the macroparasitic disease, LF, at the coarser country level in sub-Saharan Africa. We show that fine-scale spatial heterogeneity in local parasite transmission and extinction dynamics, as well as the exact nature of intervention roll-outs in countries, will impact the timelines to achieving national LF elimination on this continent.
topic Neglected tropical diseases
Vector-borne diseases
Lymphatic filariasis
Sub-Saharan Africa
Spatial scale
Parasite transmission heterogeneity
url http://link.springer.com/article/10.1186/s12916-017-0933-2
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