Agent-based Modeling of Urban Exposome Interventions: Prospects, Model Architectures and Methodological Challenges

Publication date

2022-10-10

Authors

Sonnenschein, TabeaORCID 0000-0001-6592-9548ISNI 0000000527561040
Scheider, S.ORCID 0000-0002-2267-4810ISNI 0000000382824363
de Wit, G Ardine
Tonne, Cathryn
Vermeulen, RoelORCID 0000-0003-4082-8163ISNI 0000000396780074

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Document Type

Article
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cc_by

Abstract

With ever more people living in cities worldwide, it becomes increasingly important to understand and improve the impact of the urban habitat on livability, health behaviors and health outcomes. However, implementing interventions that tackle the exposome in complex urban systems can be costly and have long-term, sometimes unforeseen, impacts. Hence, it is crucial to assess the health impact, cost-effectiveness, and social distributional impacts of possible urban exposome interventions before implementing them. Spatial agent-based modeling can capture complex behavior-environment interactions, exposure dynamics, and social outcomes in a spatial context. This paper discusses model architectures and methodological challenges for successfully modeling urban exposome interventions using spatial agent-based modeling. We review the potential and limitations of the method; model components required to capture active and passive exposure and intervention effects; human-environment interactions and their integration into the macro-level health impact assessment and social costs benefit analysis; strategies for model calibration. Major challenges for a successful application of agent-based modeling to urban exposome intervention assessment are (1) the design of realistic behavioral models that can capture different types of exposure and that respond to urban interventions, (2) the mismatch between the possible granularity of exposure estimates and the evidence for corresponding exposure-response functions, (3) the scalability issues that emerge when aiming to estimate long-term effects such as health and social impacts based on high-resolution models of human-environment interactions, (4) as well as the data- and computational complexity of calibrating the resulting agent-based model. Although challenges exist, strategies are proposed to improve the implementation of ABM in exposome research.

Keywords

urban exposome, agent-based modeling, social cost–benefit analysis, scenario modeling, urban health interventions, complex systems, SDG 3 - Good Health and Well-being

Citation

Sonnenschein, T, Scheider, S, de Wit, G A, Tonne, C & Vermeulen, R 2022, 'Agent-based Modeling of Urban Exposome Interventions : Prospects, Model Architectures and Methodological Challenges', Exposome, vol. 2, no. 1, osac009, pp. 1-14. https://doi.org/10.1093/exposome/osac009