Predicting malaria epidemics in Burkina Faso with machine learning.

Accurately forecasting the case rate of malaria would enable key decision makers to intervene months before the onset of any outbreak, potentially saving lives. Until now, methods that forecast malaria have involved complicated numerical simulations that model transmission through a community. Here...

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Main Authors: David Harvey, Wessel Valkenburg, Amara Amara
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0253302
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spelling doaj-cad02408f83d41498bde3809f8ecff532021-07-02T04:31:10ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01166e025330210.1371/journal.pone.0253302Predicting malaria epidemics in Burkina Faso with machine learning.David HarveyWessel ValkenburgAmara AmaraAccurately forecasting the case rate of malaria would enable key decision makers to intervene months before the onset of any outbreak, potentially saving lives. Until now, methods that forecast malaria have involved complicated numerical simulations that model transmission through a community. Here we present the first data-driven malaria epidemic early warning system that can predict the 13-week case rate in a primary health facility in Burkina Faso. Using the extraordinarily high-fidelity data of infant consultations taken from the Integrated e-Diagnostic Approach (IeDA) system that has been rolled out throughout Burkina Faso, we train a combination of Gaussian Processes and Random Forest Regressors to estimate the weekly number of malaria cases over a 13 week period. We test our algorithm on historical epidemics and find that for our lowest threshold for an epidemic alert, our algorithm has 30% precision with > 99% recall at raising an alert. This rises to > 99% precision and 5% recall for the high alert threshold. Our two-tailed predictions have an average 1σ and 2σ precision of 5 cases and 30 cases respectively.https://doi.org/10.1371/journal.pone.0253302
collection DOAJ
language English
format Article
sources DOAJ
author David Harvey
Wessel Valkenburg
Amara Amara
spellingShingle David Harvey
Wessel Valkenburg
Amara Amara
Predicting malaria epidemics in Burkina Faso with machine learning.
PLoS ONE
author_facet David Harvey
Wessel Valkenburg
Amara Amara
author_sort David Harvey
title Predicting malaria epidemics in Burkina Faso with machine learning.
title_short Predicting malaria epidemics in Burkina Faso with machine learning.
title_full Predicting malaria epidemics in Burkina Faso with machine learning.
title_fullStr Predicting malaria epidemics in Burkina Faso with machine learning.
title_full_unstemmed Predicting malaria epidemics in Burkina Faso with machine learning.
title_sort predicting malaria epidemics in burkina faso with machine learning.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description Accurately forecasting the case rate of malaria would enable key decision makers to intervene months before the onset of any outbreak, potentially saving lives. Until now, methods that forecast malaria have involved complicated numerical simulations that model transmission through a community. Here we present the first data-driven malaria epidemic early warning system that can predict the 13-week case rate in a primary health facility in Burkina Faso. Using the extraordinarily high-fidelity data of infant consultations taken from the Integrated e-Diagnostic Approach (IeDA) system that has been rolled out throughout Burkina Faso, we train a combination of Gaussian Processes and Random Forest Regressors to estimate the weekly number of malaria cases over a 13 week period. We test our algorithm on historical epidemics and find that for our lowest threshold for an epidemic alert, our algorithm has 30% precision with > 99% recall at raising an alert. This rises to > 99% precision and 5% recall for the high alert threshold. Our two-tailed predictions have an average 1σ and 2σ precision of 5 cases and 30 cases respectively.
url https://doi.org/10.1371/journal.pone.0253302
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