About this item:

690 Views | 955 Downloads

Author Notes:

Correspondence: Julie A Clennon, Department of Biostatistics and Bioinformatics, Rollins School of Public Health, Emory University, Atlanta, GA; Email: jclenno@emory.edu

Authors' Contributions: JAC was involved in the planning and conducting larval collections, the rearing and identifying mosquitoes, and the statistical analyses and drafted the manuscript.

AK participated in larval collection. MM helped rear and identify mosquitoes.

CS obtained funding and partook in planning and project oversight.

GEG was involved in planning, participated in the interpretation of statistical analyses and took part in editing the manuscript.

Each author has read and approved the final manuscript.

Acknowledgments: We would like to express our thanks to Chief Mapanza, Headmen Chilumbwe and Namwalinda, and the residents living in the Nachiko Stream area.

We are thankful to Dr. Douglas Norris for use of field and laboratory equipment, and appreciate Christen Fornadel's assistance with molecular identification of mosquitoes.

We would like to thank Dr. Sungano Mharakurwa and Dr. Philip Thuma for their oversight and coordination of JHMRI and MIAM staff and facilities.

Dr. Gonzalo Vazquez-Prokopec provided many valuable comments.

Disclosures: The authors declare that they have no competing interests.

Subjects:

Research Funding:

This study was supported by a National Institutes of Health postdoctoral fellowship (#2-T32-AI07417) and Johns Hopkins Malaria Research Institute pilot grants awarded to Dr. Clive Shiff and Dr. Douglas Norris.

This project was also supported by JHMRI GIS core facility funds of Dr. Gregory Glass.

Identifying malaria vector breeding habitats with remote sensing data and terrain-based landscape indices in Zambia

Tools:

Journal Title:

International Journal of Health Geographics

Volume:

Volume 9, Number 58

Publisher:

, Pages 1-13

Type of Work:

Article | Final Publisher PDF

Abstract:

Background Malaria, caused by the parasite Plasmodium falciparum, is a significant source of morbidity and mortality in southern Zambia. In the Mapanza Chiefdom, where transmission is seasonal, Anopheles arabiensis is the dominant malaria vector. The ability to predict larval habitats can help focus control measures. Methods A survey was conducted in March-April 2007, at the end of the rainy season, to identify and map locations of water pooling and the occurrence anopheline larval habitats; this was repeated in October 2007 at the end of the dry season and in March-April 2008 during the next rainy season. Logistic regression and generalized linear mixed modeling were applied to assess the predictive value of terrain-based landscape indices along with LandSat imagery to identify aquatic habitats and, especially, those with anopheline mosquito larvae. Results Approximately two hundred aquatic habitat sites were identified with 69 percent positive for anopheline mosquitoes. Nine species of anopheline mosquitoes were identified, of which, 19% were An. arabiensis. Terrain-based landscape indices combined with LandSat predicted sites with water, sites with anopheline mosquitoes and sites specifically with An. arabiensis. These models were especially successful at ruling out potential locations, but had limited ability in predicting which anopheline species inhabited aquatic sites. Terrain indices derived from 90 meter Shuttle Radar Topography Mission (SRTM) digital elevation data (DEM) were better at predicting water drainage patterns and characterizing the landscape than those derived from 30 m Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) DEM. Conclusions The low number of aquatic habitats available and the ability to locate the limited number of aquatic habitat locations for surveillance, especially those containing anopheline larvae, suggest that larval control maybe a cost-effective control measure in the fight against malaria in Zambia and other regions with seasonal transmission. This work shows that, in areas of seasonal malaria transmission, incorporating terrain-based landscape models to the planning stages of vector control allows for the exclusion of significant portions of landscape that would be unsuitable for water to accumulate and for mosquito larvae occupation. With increasing free availability of satellite imagery such as SRTM and LandSat, the development of satellite imagery-based prediction models is becoming more accessible to vector management coordinators.

Copyright information:

© 2010 Clennon et al

This is an Open Access work distributed under the terms of the Creative Commons Attribution 2.0 Generic License (http://creativecommons.org/licenses/by/2.0/).

Creative Commons License

Export to EndNote