Data-model fusion to better understand emerging pathogens and improve infectious disease forecasting.
about
Climate change and Ixodes tick-borne diseases of humansClimate, environmental and socio-economic change: weighing up the balance in vector-borne disease transmissionSequential modelling of the effects of mass drug treatments on anopheline-mediated lymphatic filariasis infection in Papua New GuineaBayesian calibration of simulation models for supporting management of the elimination of the macroparasitic disease, Lymphatic Filariasis.Improving the modeling of disease data from the government surveillance system: a case study on malaria in the Brazilian AmazonProjection of Climate Change Influences on U.S. West Nile Virus VectorsSurveillance of dengue fever virus: a review of epidemiological models and early warning systems.Remote sensing of climatic anomalies and West Nile virus incidence in the northern Great Plains of the United States.Integrated assessment of biological invasions.Coinfection by Ixodes Tick-Borne Pathogens: Ecological, Epidemiological, and Clinical Consequences.Continental-scale, data-driven predictive assessment of eliminating the vector-borne disease, lymphatic filariasis, in sub-Saharan Africa by 2020.Climate change and species interactions: ways forward.Role of monkeys in the sylvatic cycle of chikungunya virus in Senegal.Tick-, mosquito-, and rodent-borne parasite sampling designs for the National Ecological Observatory NetworkObserving changing ecological diversity in the AnthropoceneThe role of data assimilation in predictive ecology
P2860
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P2860
Data-model fusion to better understand emerging pathogens and improve infectious disease forecasting.
description
2011 nî lūn-bûn
@nan
2011 թուականի Յուլիսին հրատարակուած գիտական յօդուած
@hyw
2011 թվականի հուլիսին հրատարակված գիտական հոդված
@hy
2011年の論文
@ja
2011年論文
@yue
2011年論文
@zh-hant
2011年論文
@zh-hk
2011年論文
@zh-mo
2011年論文
@zh-tw
2011年论文
@wuu
name
Data-model fusion to better un ...... nfectious disease forecasting.
@ast
Data-model fusion to better un ...... nfectious disease forecasting.
@en
type
label
Data-model fusion to better un ...... nfectious disease forecasting.
@ast
Data-model fusion to better un ...... nfectious disease forecasting.
@en
prefLabel
Data-model fusion to better un ...... nfectious disease forecasting.
@ast
Data-model fusion to better un ...... nfectious disease forecasting.
@en
P2860
P50
P356
P1476
Data-model fusion to better un ...... nfectious disease forecasting.
@en
P2093
Gregory E Glass
Richard S Ostfeld
P2860
P304
P356
10.1890/09-1409.1
P577
2011-07-01T00:00:00Z