Climate drivers of vector-borne diseases in Africa and their relevance to control programmes
Abstract Background Climate-based disease forecasting has been proposed as a potential tool in climate change adaptation for the health sector. Here we explore the relevance of climate data, drivers and predictions for vector-borne disease control efforts in Africa. Methods Using data from a number...
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doaj-587276ae3f3b479b90e2dfed120172692020-11-25T01:54:35ZengBMCInfectious Diseases of Poverty2049-99572018-08-017112210.1186/s40249-018-0460-1Climate drivers of vector-borne diseases in Africa and their relevance to control programmesMadeleine C. Thomson0Ángel G. Muñoz1Remi Cousin2Joy Shumake-Guillemot3International Research Institute for Climate and Society (IRI), Earth Institute, Columbia UniversityInternational Research Institute for Climate and Society (IRI), Earth Institute, Columbia UniversityInternational Research Institute for Climate and Society (IRI), Earth Institute, Columbia UniversityWorld Health Organization- World Meteorological Organization Joint Climate and Health Office, WMOAbstract Background Climate-based disease forecasting has been proposed as a potential tool in climate change adaptation for the health sector. Here we explore the relevance of climate data, drivers and predictions for vector-borne disease control efforts in Africa. Methods Using data from a number of sources we explore rainfall and temperature across the African continent, from seasonality to variability at annual, multi-decadal and timescales consistent with climate change. We give particular attention to three regions defined as WHO-TDR study zones in Western, Eastern and Southern Africa. Our analyses include 1) time scale decomposition to establish the relative importance of year-to-year, decadal and long term trends in rainfall and temperature; 2) the impact of the El Niño Southern Oscillation (ENSO) on rainfall and temperature at the Pan African scale; 3) the impact of ENSO on the climate of Tanzania using high resolution climate products and 4) the potential predictability of the climate in different regions and seasons using Generalized Relative Operating Characteristics. We use these analyses to review the relevance of climate forecasts for applications in vector borne disease control across the continent. Results Timescale decomposition revealed long term warming in all three regions of Africa – at the level of 0.1–0.3 °C per decade. Decadal variations in rainfall were apparent in all regions and particularly pronounced in the Sahel and during the East African long rains (March–May). Year-to-year variability in both rainfall and temperature, in part associated with ENSO, were the dominant signal for climate variations on any timescale. Observed climate data and seasonal climate forecasts were identified as the most relevant sources of climate information for use in early warning systems for vector-borne diseases but the latter varied in skill by region and season. Conclusions Adaptation to the vector-borne disease risks of climate variability and change is a priority for government and civil society in African countries. Understanding rainfall and temperature variations and trends at multiple timescales and their potential predictability is a necessary first step in the incorporation of relevant climate information into vector-borne disease control decision-making.http://link.springer.com/article/10.1186/s40249-018-0460-1Vector-borne diseasesClimate variabilityClimate changeEl Niño southern oscillationClimate servicesAdaptation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Madeleine C. Thomson Ángel G. Muñoz Remi Cousin Joy Shumake-Guillemot |
spellingShingle |
Madeleine C. Thomson Ángel G. Muñoz Remi Cousin Joy Shumake-Guillemot Climate drivers of vector-borne diseases in Africa and their relevance to control programmes Infectious Diseases of Poverty Vector-borne diseases Climate variability Climate change El Niño southern oscillation Climate services Adaptation |
author_facet |
Madeleine C. Thomson Ángel G. Muñoz Remi Cousin Joy Shumake-Guillemot |
author_sort |
Madeleine C. Thomson |
title |
Climate drivers of vector-borne diseases in Africa and their relevance to control programmes |
title_short |
Climate drivers of vector-borne diseases in Africa and their relevance to control programmes |
title_full |
Climate drivers of vector-borne diseases in Africa and their relevance to control programmes |
title_fullStr |
Climate drivers of vector-borne diseases in Africa and their relevance to control programmes |
title_full_unstemmed |
Climate drivers of vector-borne diseases in Africa and their relevance to control programmes |
title_sort |
climate drivers of vector-borne diseases in africa and their relevance to control programmes |
publisher |
BMC |
series |
Infectious Diseases of Poverty |
issn |
2049-9957 |
publishDate |
2018-08-01 |
description |
Abstract Background Climate-based disease forecasting has been proposed as a potential tool in climate change adaptation for the health sector. Here we explore the relevance of climate data, drivers and predictions for vector-borne disease control efforts in Africa. Methods Using data from a number of sources we explore rainfall and temperature across the African continent, from seasonality to variability at annual, multi-decadal and timescales consistent with climate change. We give particular attention to three regions defined as WHO-TDR study zones in Western, Eastern and Southern Africa. Our analyses include 1) time scale decomposition to establish the relative importance of year-to-year, decadal and long term trends in rainfall and temperature; 2) the impact of the El Niño Southern Oscillation (ENSO) on rainfall and temperature at the Pan African scale; 3) the impact of ENSO on the climate of Tanzania using high resolution climate products and 4) the potential predictability of the climate in different regions and seasons using Generalized Relative Operating Characteristics. We use these analyses to review the relevance of climate forecasts for applications in vector borne disease control across the continent. Results Timescale decomposition revealed long term warming in all three regions of Africa – at the level of 0.1–0.3 °C per decade. Decadal variations in rainfall were apparent in all regions and particularly pronounced in the Sahel and during the East African long rains (March–May). Year-to-year variability in both rainfall and temperature, in part associated with ENSO, were the dominant signal for climate variations on any timescale. Observed climate data and seasonal climate forecasts were identified as the most relevant sources of climate information for use in early warning systems for vector-borne diseases but the latter varied in skill by region and season. Conclusions Adaptation to the vector-borne disease risks of climate variability and change is a priority for government and civil society in African countries. Understanding rainfall and temperature variations and trends at multiple timescales and their potential predictability is a necessary first step in the incorporation of relevant climate information into vector-borne disease control decision-making. |
topic |
Vector-borne diseases Climate variability Climate change El Niño southern oscillation Climate services Adaptation |
url |
http://link.springer.com/article/10.1186/s40249-018-0460-1 |
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