| Literature DB >> 20205713 |
Steven W Lindsay1, David G Hole, Robert A Hutchinson, Shane A Richards, Stephen G Willis.
Abstract
BACKGROUND: The world is facing an increased threat from new and emerging diseases, and there is concern that climate change will expand areas suitable for transmission of vector borne diseases. The likelihood of vivax malaria returning to the UK was explored using two markedly different modelling approaches. First, a simple temperature-dependent, process-based model of malaria growth transmitted by Anopheles atroparvus, the historical vector of malaria in the UK. Second, a statistical model using logistic-regression was used to predict historical malaria incidence between 1917 and 1918 in the UK, based on environmental and demographic data. Using findings from these models and saltmarsh distributions, future risk maps for malaria in the UK were produced based on UKCIP02 climate change scenarios.Entities:
Mesh:
Year: 2010 PMID: 20205713 PMCID: PMC2845590 DOI: 10.1186/1475-2875-9-70
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Figure 1Population density in England and Wales in 1911.
Figure 2Malaria risk across Great Britain for the 1961-1990. Shading represents the number of months where the climate could support vivax malaria if it were introduced. Red circles show cases of ague (some of which will have been malaria cases) in the 19th Century [31].
Figure 3Malaria risk across Great Britain for 2015 (a) and 2030 (b). Shading represents the number of months where the climate could support vivax malaria if it were introduced.
Figure 4Climate suitability zone for vivax malaria in the southern UK in 2030 (a) and areas of saltmarsh in 1990 (b). Shading represents the number of months where the climate could support vivax malaria if it were introduced.
Figure 5Maximum-likelihood based model indicating probability of malarial occurrence. Solid triangles represent locations of locally-contracted cases of malaria in 1917/18 [9].
Model selection results from the AIC analysis investigating the importance of environmental and population data on the prevalence of new malaria cases between 1917 and 1918.
| Model factors | AIC-value | Δ-value | |
|---|---|---|---|
| MTW | 2 | 213.2 | 3.7 |
| MTW + APET | 3 | 210.6 | 1.1 |
| MTW + APET + LnP | 4 | 209.5 | 0 |
Presented are those models, of the 32 considered, that (1) had a Δ-value < 6 (defined as the AIC-value of the model minus the smallest of all models) and (2) were not more complicated versions of models having a lower AIC-value. Model factors are abbreviated as: mean temperature during the warmest month (MTW), wetness (APET), and log population density (LnP).