Access
To read this story in full you will need to login or make a payment (see right).
Letter
Nature 439, 576-579 (2 February 2006) | doi:10.1038/nature04503; Received 6 May 2005; Accepted 1 December 2005
Open Innovation Challenges
-
Optimizing Sub-cellular Localization Tags
The Seeker is looking for methods to optimize sub-cellular localization tags for protein expression....
-
Single-cell Analysis Platform
This Challenge is looking for novel approaches to analyzing changes at a single-cell level. This is...
nature jobs
Postdoctoral Position
- Max-Planck-Institute (MPI) of Immunobiology
- Freiburg Germany
Associate Scientific Manager / Scientific Manager-Organic / Medicinal Chemistry
- Syngene International
- Bangalore, Karnataka 560099 India
Malaria early warnings based on seasonal climate forecasts from multi-model ensembles
M. C. Thomson1, F. J. Doblas-Reyes2, S. J. Mason1, R. Hagedorn2, S. J. Connor1, T. Phindela3, A. P. Morse4 & T. N. Palmer2
- International Research Institute for Climate and Society (IRI), The Earth Institute at Columbia University, New York, New York 10964-8000, USA
- European Centre for Medium-Range Weather Forecasts (ECMWF), Shinfield Park, RG2 9AX, Reading, UK
- National Malaria Control Programme, Epidemiology and Disease Control Unit, Ministry of Health, Private Bag 00269, Gaborone, Botswana
- Department of Geography, University of Liverpool, Liverpool, L69 7ZT, UK
Correspondence to: T. N. Palmer2 Correspondence and requests for materials should be addressed to T.N.P. (Email: tim.palmer@ecmwf.int).
Abstract
The control of epidemic malaria is a priority for the international health community and specific targets for the early detection and effective control of epidemics have been agreed1. Interannual climate variability is an important determinant of epidemics in parts of Africa2 where climate drives both mosquito vector dynamics and parasite development rates3. Hence, skilful seasonal climate forecasts may provide early warning of changes of risk in epidemic-prone regions. Here we discuss the development of a system to forecast probabilities of anomalously high and low malaria incidence with dynamically based, seasonal-timescale, multi-model ensemble predictions of climate, using leading global coupled ocean–atmosphere climate models developed in Europe. This forecast system is successfully applied to the prediction of malaria risk in Botswana, where links between malaria and climate variability are well established4, adding up to four months lead time over malaria warnings issued with observed precipitation and having a comparably high level of probabilistic prediction skill. In years in which the forecast probability distribution is different from that of climatology, malaria decision-makers can use this information for improved resource allocation.
To read this story in full you will need to login or make a payment (see right).
MORE ARTICLES LIKE THIS
These links to content published by NPG are automatically generated.
RESEARCH
Evidence that bone morphogenetic protein 4 has multiple biological functions during kidney and urinary tract developmentKidney International Original Article
Quantifying the risk of extreme seasonal precipitation events in a changing climateNature Letters to Editor (31 Jan 2002)
Global seasonal rainfall forecasts using a coupled ocean?atmosphere modelNature Letters to Editor (26 Mar 1998)

