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Spatially explicit predictions of blood parasites in a widely distributed African rainforest bird.

Authors :
Sehgal RN
Buermann W
Harrigan RJ
Bonneaud C
Loiseau C
Chasar A
Sepil I
Valkiƫnas G
Iezhova T
Saatchi S
Smith TB
Source :
Proceedings. Biological sciences [Proc Biol Sci] 2011 Apr 07; Vol. 278 (1708), pp. 1025-33. Date of Electronic Publication: 2010 Sep 29.
Publication Year :
2011

Abstract

Critical to the mitigation of parasitic vector-borne diseases is the development of accurate spatial predictions that integrate environmental conditions conducive to pathogen proliferation. Species of Plasmodium and Trypanosoma readily infect humans, and are also common in birds. Here, we develop predictive spatial models for the prevalence of these blood parasites in the olive sunbird (Cyanomitra olivacea). Since this species exhibits high natural parasite prevalence and occupies diverse habitats in tropical Africa, it represents a distinctive ecological model system for studying vector-borne pathogens. We used PCR and microscopy to screen for haematozoa from 28 sites in Central and West Africa. Species distribution models were constructed to associate ground-based and remotely sensed environmental variables with parasite presence. We then used machine-learning algorithm models to identify relationships between parasite prevalence and environmental predictors. Finally, predictive maps were generated by projecting model outputs to geographically unsampled areas. Results indicate that for Plasmodium spp., the maximum temperature of the warmest month was most important in predicting prevalence. For Trypanosoma spp., seasonal canopy moisture variability was the most important predictor. The models presented here visualize gradients of disease prevalence, identify pathogen hotspots and will be instrumental in studying the effects of ecological change on these and other pathogens.

Details

Language :
English
ISSN :
1471-2954
Volume :
278
Issue :
1708
Database :
MEDLINE
Journal :
Proceedings. Biological sciences
Publication Type :
Academic Journal
Accession number :
20880888
Full Text :
https://doi.org/10.1098/rspb.2010.1720