Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia
The main objective of this study was to develop a malaria risk map for Bahir Dar City, Amhara, which is situated south of Lake Tana on the Ethiopian plateau. Rainfall, temperature, altitude, slope and land use/land cover (LULC), as well as proximity measures to lake, river and health facilities, wer...
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doaj-4f13de5df89142db908222338122e7452020-11-25T03:53:40ZengPAGEPress PublicationsGeospatial Health1827-19871970-70962018-05-0113110.4081/gh.2018.660468Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, EthiopiaAmare Sewnet Minale0Kalkidan Alemu1Department of Geography and Environmental Studies, Bahir Dar University, Bahir DarDepartment of Geography and Environmental Studies, Bahir Dar University, Bahir DarThe main objective of this study was to develop a malaria risk map for Bahir Dar City, Amhara, which is situated south of Lake Tana on the Ethiopian plateau. Rainfall, temperature, altitude, slope and land use/land cover (LULC), as well as proximity measures to lake, river and health facilities, were investigated using remote sensing and geographical information systems. The LULC variable was derived from a 2012 SPOT satellite image by supervised classification, while 30-m spatial resolution measurements of altitude and slope came from the Shuttle Radar Topography Mission. Metrological data were collected from the National Meteorological Agency, Bahir Dar branch. These separate datasets, represented as layers in the computer, were combined using weighted, multi-criteria evaluations. The outcome shows that rainfall, temperature, slope, elevation, distance from the lake and distance from the river influenced the malaria hazard the study area by 35%, 15%, 10%, 7%, 5% and 3%, respectively, resulting in a map showing five areas with different levels of malaria hazard: very high (11.2%); high (14.5%); moderate (63.3%); low (6%); and none (5%). The malaria risk map, based on this hazard map plus additional information on proximity to health facilities and current LULC conditions, shows that Bahir Dar City has areas with very high (15%); high (65%); moderate (8%); and low (5%) levels of malaria risk, with only 2% of the land completely riskfree. Such risk maps are essential for planning, implementing, monitoring and evaluating disease control as well as for contemplating prevention and elimination of epidemiological hazards from endemic areas.http://geospatialhealth.net/index.php/gh/article/view/660MalariaHazardGISRemote sensingRisk computation modelWeighted multi criteriaEthiopia. |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Amare Sewnet Minale Kalkidan Alemu |
spellingShingle |
Amare Sewnet Minale Kalkidan Alemu Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia Geospatial Health Malaria Hazard GIS Remote sensing Risk computation model Weighted multi criteria Ethiopia. |
author_facet |
Amare Sewnet Minale Kalkidan Alemu |
author_sort |
Amare Sewnet Minale |
title |
Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia |
title_short |
Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia |
title_full |
Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia |
title_fullStr |
Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia |
title_full_unstemmed |
Mapping malaria risk using geographic information systems and remote sensing: The case of Bahir Dar City, Ethiopia |
title_sort |
mapping malaria risk using geographic information systems and remote sensing: the case of bahir dar city, ethiopia |
publisher |
PAGEPress Publications |
series |
Geospatial Health |
issn |
1827-1987 1970-7096 |
publishDate |
2018-05-01 |
description |
The main objective of this study was to develop a malaria risk map for Bahir Dar City, Amhara, which is situated south of Lake Tana on the Ethiopian plateau. Rainfall, temperature, altitude, slope and land use/land cover (LULC), as well as proximity measures to lake, river and health facilities, were investigated using remote sensing and geographical information systems. The LULC variable was derived from a 2012 SPOT satellite image by supervised classification, while 30-m spatial resolution measurements of altitude and slope came from the Shuttle Radar Topography Mission. Metrological data were collected from the National Meteorological Agency, Bahir Dar branch. These separate datasets, represented as layers in the computer, were combined using weighted, multi-criteria evaluations. The outcome shows that rainfall, temperature, slope, elevation, distance from the lake and distance from the river influenced the malaria hazard the study area by 35%, 15%, 10%, 7%, 5% and 3%, respectively, resulting in a map showing five areas with different levels of malaria hazard: very high (11.2%); high (14.5%); moderate (63.3%); low (6%); and none (5%). The malaria risk map, based on this hazard map plus additional information on proximity to health facilities and current LULC conditions, shows that Bahir Dar City has areas with very high (15%); high (65%); moderate (8%); and low (5%) levels of malaria risk, with only 2% of the land completely riskfree. Such risk maps are essential for planning, implementing, monitoring and evaluating disease control as well as for contemplating prevention and elimination of epidemiological hazards from endemic areas. |
topic |
Malaria Hazard GIS Remote sensing Risk computation model Weighted multi criteria Ethiopia. |
url |
http://geospatialhealth.net/index.php/gh/article/view/660 |
work_keys_str_mv |
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