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  5. The spread of antimalarial drug resistance: A mathematical model with practical implications for ACT drug policies

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Preprint
English
2008

The spread of antimalarial drug resistance: A mathematical model with practical implications for ACT drug policies

0 Datasets

0 Files

English
2008
Nature Precedings
DOI: 10.1038/npre.2008.1539.1

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Sir Nicholas White
Sir Nicholas White

University Of Cambridge

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Wirichada Pongtavornpinyo
Shunmay Yeung
Ian M. Hastings
+3 more

Abstract

Most malaria-endemic countries are implementing a change in antimalarial drug policy to artemisinin combination therapy (ACT). The impact of different drug choices and implementation strategies is uncertain. A comprehensive model was constructed incorporating important epidemiological and biological factors and used to illustrate the spread of resistance in low and high transmission settings. The model predicts robustly that in low transmission settings drug resistance spreads faster than in high transmission settings, and that in low transmission areas ACTs slows the spread of drug resistance to a partner drug, especially at high coverage rates. This effect decreases exponentially with increasing delay in deploying the ACT and decreasing rates of coverage. A major obstacle to achieving the benefits of high coverage is the current cost of the drugs. This argues strongly for a global subsidy to make ACTs generally available and affordable in endemic areas.

How to cite this publication

Wirichada Pongtavornpinyo, Shunmay Yeung, Ian M. Hastings, Arjen M. Dondorp, Nicholas Day, Sir Nicholas White (2008). The spread of antimalarial drug resistance: A mathematical model with practical implications for ACT drug policies. Nature Precedings, DOI: 10.1038/npre.2008.1539.1.

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Publication Details

Type

Preprint

Year

2008

Authors

6

Datasets

0

Total Files

0

Language

English

Journal

Nature Precedings

DOI

10.1038/npre.2008.1539.1

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