Predicting the distribution of urinary schistosomiasis in Tanzania using satellite sensor data
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Risk profiling of schistosomiasis using remote sensing: approaches, challenges and outlookMapping Soil Transmitted Helminths and Schistosomiasis under Uncertainty: A Systematic Review and Critical Appraisal of EvidenceDetermining global population distribution: methods, applications and dataGeostatistical model-based estimates of Schistosomiasis prevalence among individuals aged ≤ 20 years in West Africa.Modelling age-heterogeneous Schistosoma haematobium and S. mansoni survey data via alignment factors.Risk maps for range expansion of the Lyme disease vector, Ixodes scapularis, in Canada now and with climate changeA comparative study of the spatial distribution of schistosomiasis in Mali in 1984-1989 and 2004-2006Integrated monitoring and evaluation and environmental risk factors for urogenital schistosomiasis and active trachoma in Burkina Faso before preventative chemotherapy using sentinel sites.Predicting the distribution of canine leishmaniasis in western Europe based on environmental variables.Use of geospatial modeling to predict Schistosoma mansoni prevalence in Nyanza Province, Kenya.Risk analysis for occurrences of schistosomiasis in the coastal area of Porto de Galinhas, Pernambuco, BrazilTools from ecology: useful for evaluating infection risk models?Modelling malaria risk in East Africa at high-spatial resolution.Bayesian geostatistical prediction of the intensity of infection with Schistosoma mansoni in East Africa.Remote sensing as a tool to survey endemic diseases in Brazil.Rapid assessment of Schistosoma mansoni: the validity, applicability and cost-effectiveness of the Lot Quality Assurance Sampling method in Uganda.Spatial epidemiology of human schistosomiasis in Africa: risk models, transmission dynamics and controlBayesian spatial analysis and disease mapping: tools to enhance planning and implementation of a schistosomiasis control programme in Tanzania.Epidemiology and control of human schistosomiasis in TanzaniaRemote sensing and disease control in China: past, present and futureGeographical information system and predictive risk maps of urinary schistosomiasis in Ogun State, Nigeria.Bayesian spatial analysis of a national urinary schistosomiasis questionnaire to assist geographic targeting of schistosomiasis control in Tanzania, East AfricaRemote sensing, geographical information system and spatial analysis for schistosomiasis epidemiology and ecology in AfricaGenital schistosomiasis and its unacknowledged role on HIV transmission in the STD intervention studies.Modeling the risk of transmission of schistosomiasis in Akure North Local Government Area of Ondo State, Nigeria using satellite derived environmental dataDEWORMING DELUSIONS? MASS DRUG ADMINISTRATION IN EAST AFRICAN SCHOOLS.Epidemiology and geography of Schistosoma mansoni in Uganda: implications for planning control.The Estrada Real project and endemic diseases: the case of schistosomiasis, geoprocessing and tourism.A geoprocessing approach for studying and controlling schistosomiasis in the state of Minas Gerais, Brazil.Improving spatial prediction of Schistosoma haematobium prevalence in southern Ghana through new remote sensors and local water access profiles.Environmental factors and the risk of urinary schistosomiasis in Ile Oluji/Oke Igbo local government area of Ondo State.Spatial analysis and identification of environmental risk factors affecting the distribution of Indoplanorbis and Lymnaea species in semi-arid and irrigated areas of Haryana, India.Terrestrial Remotely Sensed Imagery in Support of Public Health: New Avenues of Research Using Object-Based Image AnalysisGeographical and behavioral risks associated with Schistosoma haematobium infection in an area of complex transmission
P2860
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P2860
Predicting the distribution of urinary schistosomiasis in Tanzania using satellite sensor data
description
2001 nî lūn-bûn
@nan
2001 թուականի Դեկտեմբերին հրատարակուած գիտական յօդուած
@hyw
2001 թվականի դեկտեմբերին հրատարակված գիտական հոդված
@hy
2001年の論文
@ja
2001年論文
@yue
2001年論文
@zh-hant
2001年論文
@zh-hk
2001年論文
@zh-mo
2001年論文
@zh-tw
2001年论文
@wuu
name
Predicting the distribution of ...... ia using satellite sensor data
@ast
Predicting the distribution of ...... ia using satellite sensor data
@en
type
label
Predicting the distribution of ...... ia using satellite sensor data
@ast
Predicting the distribution of ...... ia using satellite sensor data
@en
prefLabel
Predicting the distribution of ...... ia using satellite sensor data
@ast
Predicting the distribution of ...... ia using satellite sensor data
@en
P2093
P2860
P921
P1476
Predicting the distribution of ...... ia using satellite sensor data
@en
P2093
C M Kihamia
D J Rogers
N J Lwambo
P2860
P304
P356
10.1046/J.1365-3156.2001.00798.X
P577
2001-12-01T00:00:00Z