Remote sensing as a landscape epidemiologic tool to identify villages at high risk for malaria transmission.
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Challenges in using geographic information systems (GIS) to understand and control malaria in IndonesiaAn information value based analysis of physical and climatic factors affecting dengue fever and dengue haemorrhagic fever incidenceAvian diversity and West Nile virus: testing associations between biodiversity and infectious disease riskAvian GIS models signal human risk for West Nile virus in MississippiHydrological modeling of geophysical parameters of arboviral and protozoan disease vectors in Internally Displaced People camps in Gulu, UgandaThe spatial distribution of ross river virus infections in Brisbane: Significance of residential location and relationships with vegetation typesDeveloping GIS-based eastern equine encephalitis vector-host models in Tuskegee, AlabamaUsing a dynamic hydrology model to predict mosquito abundances in flood and swamp waterIdentifying populations potentially exposed to agricultural pesticides using remote sensing and a Geographic Information SystemIdentifying landscape features associated with Rift Valley fever virus transmission, Ferlo region, Senegal, using very high spatial resolution satellite imageryLand cover, land use and malaria in the Amazon: a systematic literature review of studies using remotely sensed dataEvaluation of environmental data for identification of Anopheles (Diptera: Culicidae) aquatic larval habitats in Kisumu and Malindi, KenyaSurveillance of arthropod vector-borne infectious diseases using remote sensing techniques: a reviewUsing high spatial resolution remote sensing for risk mapping of malaria occurrence in the Nouna district, Burkina Faso.Temporal and spatial stability of Anopheles gambiae larval habitat distribution in Western Kenya highlandsSpatial heterogeneity and temporal evolution of malaria transmission risk in Dakar, Senegal, according to remotely sensed environmental data.Earth observation, geographic information systems and Plasmodium falciparum malaria in sub-Saharan Africa.Pathogenic landscapes: interactions between land, people, disease vectors, and their animal hosts.On epidemiology and geographic information systems: a review and discussion of future directionsLandscape determinants and remote sensing of anopheline mosquito larval habitats in the western Kenya highlands.Tobacco smoke in the development and therapy of periodontal disease: progress and questions.Spatial analysis of land cover determinants of malaria incidence in the Ashanti Region, Ghana.Multisensor earth observations to characterize wetlands and malaria epidemiology in Ethiopia.Studying relationships between environment and malaria incidence in Camopi (French Guiana) through the objective selection of buffer-based landscape characterisations.Achieving operational hydrologic monitoring of mosquitoborne diseaseRemote and field level quantification of vegetation covariates for malaria mapping in three rice agro-village complexes in Central Kenya.Dengue spatial and temporal patterns, French Guiana, 2001.Utilization of combined remote sensing techniques to detect environmental variables influencing malaria vector densities in rural West AfricaEffect of rice cultivation patterns on malaria vector abundance in rice-growing villages in Mali.Using remote sensing to map larval and adult populations of Anopheles hyrcanus (Diptera: Culicidae) a potential malaria vector in Southern FranceSpatial patterns of malaria reported deaths in Yunnan Province, China.Spatial and demographic patterns of cholera in Ashanti region - GhanaAnopheles gambiae complex along The Gambia river, with particular reference to the molecular forms of An. gambiae s.s.Geomatics in injury prevention: the science, the potential and the limitations.Bancroftian filariasis distribution and diurnal temperature differences in the southern Nile deltaSpatial dependency of V. cholera prevalence on open space refuse dumps in Kumasi, Ghana: a spatial statistical modelling.The infectious diseases impact statement: a mechanism for addressing emerging diseases.Remote sensing and human health: new sensors and new opportunities.Remote sensing and geographic information systems: charting Sin Nombre virus infections in deer miceA supervised land cover classification of a western Kenya lowland endemic for human malaria: associations of land cover with larval Anopheles habitats
P2860
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P2860
Remote sensing as a landscape epidemiologic tool to identify villages at high risk for malaria transmission.
description
1994 nî lūn-bûn
@nan
1994年の論文
@ja
1994年学术文章
@wuu
1994年学术文章
@zh
1994年学术文章
@zh-cn
1994年学术文章
@zh-hans
1994年学术文章
@zh-my
1994年学术文章
@zh-sg
1994年學術文章
@yue
1994年學術文章
@zh-hant
name
Remote sensing as a landscape ...... risk for malaria transmission.
@en
Remote sensing as a landscape ...... risk for malaria transmission.
@nl
type
label
Remote sensing as a landscape ...... risk for malaria transmission.
@en
Remote sensing as a landscape ...... risk for malaria transmission.
@nl
prefLabel
Remote sensing as a landscape ...... risk for malaria transmission.
@en
Remote sensing as a landscape ...... risk for malaria transmission.
@nl
P2093
P921
P1476
Remote sensing as a landscape ...... risk for malaria transmission
@en
P2093
A D Rodriguez
D R Roberts
E Rejmankova
M A Spanner
M H Rodriguez
S W Dister
P304
P356
10.4269/AJTMH.1994.51.271
P407
P577
1994-09-01T00:00:00Z