about
Sensitivity analysis of infectious disease models: methods, advances and their applicationMethods for Quantification of Soil-Transmitted Helminths in Environmental Media: Current Techniques and Recent AdvancesBalance between clinical and environmental responses to infectious diseasesLeveraging rural energy investment for parasitic disease control: schistosome ova inactivation and energy co-benefits of anaerobic digesters in rural ChinaEnvironmental health in China: progress towards clean air and safe waterSpatially explicit modeling of schistosomiasis risk in eastern China based on a synthesis of epidemiological, environmental and intermediate host genetic dataGreenhouse gas emission reductions from domestic anaerobic digesters linked with sustainable sanitation in rural China.Cautioning the use of degree-day models for climate change projections in the presence of parametric uncertaintyDevelopmental models for estimating ecological responses to environmental variability: structural, parametric, and experimental issues.Spatially-Explicit Simulation Modeling of Ecological Response to Climate Change: Methodological Considerations in Predicting Shifting Population Dynamics of Infectious Disease VectorsNearly 400 million people are at higher risk of schistosomiasis because dams block the migration of snail-eating river prawns.Delays reducing waterborne and water-related infectious diseases in China under climate change.Estimating the Risk of Domestic Water Source Contamination Following Precipitation EventsQuantitative detection of Schistosoma japonicum cercariae in water by real-time PCR.Geographic and ecologic heterogeneity in elimination thresholds for the major vector-borne helminthic disease, lymphatic filariasis.Model approaches for estimating the influence of time-varying socio-environmental factors on macroparasite transmission in two endemic regions.Genetic assignment methods for gaining insight into the management of infectious disease by understanding pathogen, vector, and host movementAnalytical methods for quantifying environmental connectivity for the control and surveillance of infectious disease spreadStirred, not shaken: genetic structure of the intermediate snail host Oncomelania hupensis robertsoni in an historically endemic schistosomiasis areaPolymorphic microsatellites in the human bloodfluke, Schistosoma japonicum, identified using a genomic resourceThe challenge of effective surveillance in moving from low transmission to elimination of schistosomiasis in China.Surveillance systems for neglected tropical diseases: global lessons from China's evolving schistosomiasis reporting systems, 1949-2014Regional disparities in the burden of disease attributable to unsafe water and poor sanitation in ChinaGenetic Evidence of Contemporary Dispersal of the Intermediate Snail Host of Schistosoma japonicum: Movement of an NTD Host Is Facilitated by Land Use and Landscape Connectivity.Convergence of non-communicable and infectious diseases in low- and middle-income countries.Approaches to genotyping individual miracidia of Schistosoma japonicum.Food supply and food safety issues in China.Modelling environmentally-mediated infectious diseases of humans: transmission dynamics of schistosomiasis in China.Estimating the microbiological risks associated with inland flood events: Bridging theory and models of pathogen transport.Associations between weather and microbial load on fresh produce prior to harvest.Transport and public health in China: the road to a healthy future.Development of a novel PCR assay capable of detecting a single Schistosoma japonicum cercaria recovered from Oncomelania hupensis.Spatial and temporal variability in schistosome cercarial density detected by mouse bioassays in village irrigation ditches in Sichuan, China.Agrochemicals increase risk of human schistosomiasis by supporting higher densities of intermediate hosts.Modeling environmentally mediated rotavirus transmission: The role of temperature and hydrologic factors.Climate change and ecosystem disruption: the health impacts of the North American Rocky Mountain pine beetle infestation.Fighting Waterborne Infectious DiseasesEstimating the elimination feasibility in the 'end game' of control efforts for parasites subjected to regular mass drug administration: Methods and their application to schistosomiasisEmerging human infectious diseases and the links to global food productionSpatiotemporal Error in Rainfall Data: Consequences for Epidemiologic Analysis of Waterborne Diseases
P50
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P50
description
investigador
@es
researcher
@en
wetenschapper
@nl
name
Justin Remais
@en
Justin Remais
@nl
type
label
Justin Remais
@en
Justin Remais
@nl
prefLabel
Justin Remais
@en
Justin Remais
@nl
P31
P496
0000-0002-0223-4615