Objective
The environment is one of the most crucial determinants of health. The Global Burden of Disease report estimates an emerging impact in terms of disability and reducing the quality of life worldwide, particularly for the aging populations. One of the root causes of this decline is likely to derive from the interaction of socio-environmental risk factors and sub-clinical conditions and the consequent increase of the primary non-communicable disease (dementia, COPD, cerebrovascular and chronic ischemic heart diseases). The multi-dimensional nature causal pathways of these interactions are still mostly unknown. In this complex scenario, where the relationship between exposure and outcomes is so different and multifaceted, the Health Impact Assessment (HIA) process is the standard tool that provides an overview of the matter, from the screening of health risk factors to the introduction of new health policies and the monitoring of effects. A complete digital approach for HIA that could dynamically adapt to the variability of the determinants and their interaction is still poorly investigated. Artificial Intelligence algorithms offer innovative and high-performance possibilities for HIA implementations, improving elaboration and resizing of complex information and data. This proposal aims to develop a technological toolkit for dynamic, intelligent HIA toolkit to predict the health impact of health-related features, forecasting the trajectories of disability and quality of life reduction. This method will use environmental, socio-economic, geographical, and clinical characteristics, managed and elaborated with a federated learning architecture. The generated models will be adjusted for lifestyle and individual conditions data sourced from large population-based digital surveys. The models will be trained and validated on three different exposures to the steel plants' pollution: Taranto in southern Italy, Rybnik in Poland, and Flanders in Belgium.
Fields of science
Programme(s)
Funding Scheme
RIA - Research and Innovation actionCoordinator
00161 Roma
Italy
See on map
Participants (9)
Legal entity other than a subcontractor which is affiliated or legally linked to a participant. The entity carries out work under the conditions laid down in the Grant Agreement, supplies goods or provides services for the action, but did not sign the Grant Agreement. A third party abides by the rules applicable to its related participant under the Grant Agreement with regard to eligibility of costs and control of expenditure.
74121 Taranto
See on map
70121 Bari
See on map
3500 Hasselt
See on map
30-059 Krakow
See on map
50676 Koln
See on map
The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
171 21 Nea Smyrni
See on map
The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
41000 Sevilla
See on map
The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
70126 Bari
See on map
70121 Bari
See on map
Partners (2)
IP4 1QJ Ipswich
See on map
OX1 2JD Oxford
See on map