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A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats

BACKGROUND: For remote identification of mosquito habitats the first step is often to construct a discrete tessellation of the region. In applications where complex geometries do not need to be represented such as urban habitats, regular orthogonal grids are constructed in GIS and overlaid on satell...

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Autores principales: Jacob, Benjamin G, Muturi, Ephantus J, Funes, Jose E, Shililu, Josephat I, Githure, John I, Kakoma, Ibulaimu I, Novak, Robert J
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2006
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1636646/
https://www.ncbi.nlm.nih.gov/pubmed/17062142
http://dx.doi.org/10.1186/1475-2875-5-91
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author Jacob, Benjamin G
Muturi, Ephantus J
Funes, Jose E
Shililu, Josephat I
Githure, John I
Kakoma, Ibulaimu I
Novak, Robert J
author_facet Jacob, Benjamin G
Muturi, Ephantus J
Funes, Jose E
Shililu, Josephat I
Githure, John I
Kakoma, Ibulaimu I
Novak, Robert J
author_sort Jacob, Benjamin G
collection PubMed
description BACKGROUND: For remote identification of mosquito habitats the first step is often to construct a discrete tessellation of the region. In applications where complex geometries do not need to be represented such as urban habitats, regular orthogonal grids are constructed in GIS and overlaid on satellite images. However, rice land vector mosquito aquatic habitats are rarely uniform in space or character. An orthogonal grid overlaid on satellite data of rice-land areas may fail to capture physical or man-made structures, i.e paddies, canals, berms at these habitats. Unlike an orthogonal grid, digitizing each habitat converts a polygon into a grid cell, which may conform to rice-land habitat boundaries. This research illustrates the application of a random sampling methodology, comparing an orthogonal and a digitized grid for assessment of rice land habitats. METHODS: A land cover map was generated in Erdas Imagine V8.7(® )using QuickBird data acquired July 2005, for three villages within the Mwea Rice Scheme, Kenya. An orthogonal grid was overlaid on the images. In the digitized dataset, each habitat was traced in Arc Info 9.1(®). All habitats in each study site were stratified based on levels of rice stage RESULTS: The orthogonal grid did not identify any habitat while the digitized grid identified every habitat by strata and study site. An analysis of variance test indicated the relative abundance of An. arabiensis at the three study sites to be significantly higher during the post-transplanting stage of the rice cycle. CONCLUSION: Regions of higher Anopheles abundance, based on digitized grid cell information probably reflect underlying differences in abundance of mosquito habitats in a rice land environment, which is where limited control resources could be concentrated to reduce vector abundance.
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spelling pubmed-16366462006-11-16 A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats Jacob, Benjamin G Muturi, Ephantus J Funes, Jose E Shililu, Josephat I Githure, John I Kakoma, Ibulaimu I Novak, Robert J Malar J Research BACKGROUND: For remote identification of mosquito habitats the first step is often to construct a discrete tessellation of the region. In applications where complex geometries do not need to be represented such as urban habitats, regular orthogonal grids are constructed in GIS and overlaid on satellite images. However, rice land vector mosquito aquatic habitats are rarely uniform in space or character. An orthogonal grid overlaid on satellite data of rice-land areas may fail to capture physical or man-made structures, i.e paddies, canals, berms at these habitats. Unlike an orthogonal grid, digitizing each habitat converts a polygon into a grid cell, which may conform to rice-land habitat boundaries. This research illustrates the application of a random sampling methodology, comparing an orthogonal and a digitized grid for assessment of rice land habitats. METHODS: A land cover map was generated in Erdas Imagine V8.7(® )using QuickBird data acquired July 2005, for three villages within the Mwea Rice Scheme, Kenya. An orthogonal grid was overlaid on the images. In the digitized dataset, each habitat was traced in Arc Info 9.1(®). All habitats in each study site were stratified based on levels of rice stage RESULTS: The orthogonal grid did not identify any habitat while the digitized grid identified every habitat by strata and study site. An analysis of variance test indicated the relative abundance of An. arabiensis at the three study sites to be significantly higher during the post-transplanting stage of the rice cycle. CONCLUSION: Regions of higher Anopheles abundance, based on digitized grid cell information probably reflect underlying differences in abundance of mosquito habitats in a rice land environment, which is where limited control resources could be concentrated to reduce vector abundance. BioMed Central 2006-10-24 /pmc/articles/PMC1636646/ /pubmed/17062142 http://dx.doi.org/10.1186/1475-2875-5-91 Text en Copyright © 2006 Jacob et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Jacob, Benjamin G
Muturi, Ephantus J
Funes, Jose E
Shililu, Josephat I
Githure, John I
Kakoma, Ibulaimu I
Novak, Robert J
A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats
title A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats
title_full A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats
title_fullStr A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats
title_full_unstemmed A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats
title_short A grid-based infrastructure for ecological forecasting of rice land Anopheles arabiensis aquatic larval habitats
title_sort grid-based infrastructure for ecological forecasting of rice land anopheles arabiensis aquatic larval habitats
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1636646/
https://www.ncbi.nlm.nih.gov/pubmed/17062142
http://dx.doi.org/10.1186/1475-2875-5-91
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