H-MIP | Human-Mosquito Interaction Project: Host-vector networks, mobility, and the socio-ecological context of mosquito-borne disease

Summary
This project will use mobile phone positioning, DNA fingerprinting, and citizen science, combined with traditional socio-demographic methods to trace the host-vector biting networks through which mosquito-borne diseases flow and illuminate the behavioural, socio-demographic, and environmental mechanisms that shape these networks in a spatially explicit manner. It will merge this ground-breaking data with existing datasets on population, urban structure, land cover, and climate, analysing it using network techniques, spatial models, and machine learning to test hypotheses about the determinants of these networks. The results will make it possible to improve dynamic models of mosquito-borne disease and recommend targeted policy interventions for reducing disease risk in Europe and around the world. In doing so, it will address the critical need for greater social science perspective iThis project will use citizen science, mobile phone geo-localization, genetic analysis, surveys, interviews, and cutting-edge modelling techniques to trace the host-vector contact networks through which mosquito-borne diseases flow, illuminate the mobility patterns and other behavioural mechanisms that shape these networks, and evaluate policy interventions aimed at reducing the risk of these diseases in urban and suburban settings. In doing so, it will address the critical need for greater social science perspective in mosquito-borne disease research, making it possible to improve disease models and public health management through a fuller understanding of the socio-ecological context driving dengue, chikungunya, Zika and other mosquito-borne diseases that place enormous burdens on society and exacerbate social inequality across the globe. It will draw on the the PI’s unique interdisciplinary background, straddling socio-demography, public policy, and disease ecology, and his pioneering work on citizen science in public health research and mobile phone tracking in demographic research.
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More information & hyperlinks
Web resources: https://cordis.europa.eu/project/id/853271
Start date: 01-04-2020
End date: 31-03-2025
Total budget - Public funding: 1 960 828,00 Euro - 1 960 828,00 Euro
Cordis data

Original description

This project will use mobile phone positioning, DNA fingerprinting, and citizen science, combined with traditional socio-demographic methods to trace the host-vector biting networks through which mosquito-borne diseases flow and illuminate the behavioural, socio-demographic, and environmental mechanisms that shape these networks in a spatially explicit manner. It will merge this ground-breaking data with existing datasets on population, urban structure, land cover, and climate, analysing it using network techniques, spatial models, and machine learning to test hypotheses about the determinants of these networks. The results will make it possible to improve dynamic models of mosquito-borne disease and recommend targeted policy interventions for reducing disease risk in Europe and around the world. In doing so, it will address the critical need for greater social science perspective iThis project will use citizen science, mobile phone geo-localization, genetic analysis, surveys, interviews, and cutting-edge modelling techniques to trace the host-vector contact networks through which mosquito-borne diseases flow, illuminate the mobility patterns and other behavioural mechanisms that shape these networks, and evaluate policy interventions aimed at reducing the risk of these diseases in urban and suburban settings. In doing so, it will address the critical need for greater social science perspective in mosquito-borne disease research, making it possible to improve disease models and public health management through a fuller understanding of the socio-ecological context driving dengue, chikungunya, Zika and other mosquito-borne diseases that place enormous burdens on society and exacerbate social inequality across the globe. It will draw on the the PI’s unique interdisciplinary background, straddling socio-demography, public policy, and disease ecology, and his pioneering work on citizen science in public health research and mobile phone tracking in demographic research.

Status

SIGNED

Call topic

ERC-2019-STG

Update Date

27-04-2024
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Horizon 2020
H2020-EU.1. EXCELLENT SCIENCE
H2020-EU.1.1. EXCELLENT SCIENCE - European Research Council (ERC)
ERC-2019
ERC-2019-STG