Epidemiological modelling in refugee and internally displaced people settlements: challenges and ways forward
Joseph Aylett-Bullock (United Nations, Durham University)
Robert Tucker Gilman (The University of Manchester)
Ian Hall (The University of Manchester)
David Kennedy (London School of Hygiene & Tropical Medicine/Public Health England)
Egmond Samir Evers (United Nations)
Anjali Katta (United Nations)
Hussien Ahmed (United Nations)
Kevin Fong (University College London)
Tina Comes (TU Delft - Technology, Policy and Management, TU Delft - Technology, Policy and Management)
Mariken Gaanderse (TU Delft - Technology, Policy and Management)
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Abstract
The spread of infectious diseases such as COVID-19 presents many challenges to healthcare systems and infrastructures across the world, exacerbating inequalities and leaving the world's most vulnerable populations at risk. Epidemiological modelling is vital to guiding evidence-informed or data-driven decision making. In forced displacement contexts, and in particular refugee and internally displaced people (IDP) settlements, it meets several challenges including data availability and quality, the applicability of existing models to those contexts, the accurate modelling of cultural differences or specificities of those operational settings, the communication of results and uncertainties, as well as the alignment of strategic goals between diverse partners in complex situations. In this paper, we systematically review the limited epidemiological modelling work applied to refugee and IDP settlements so far, and discuss challenges and identify lessons learnt from the process. With the likelihood of disease outbreaks expected to increase in the future as more people are displaced due to conflict and climate change, we call for the development of more approaches and models specifically designed to include the unique features and populations of refugee and IDP settlements. To strengthen collaboration between the modelling and the humanitarian public health communities, we propose a roadmap to encourage the development of systems and frameworks to share needs, build tools and coordinate responses in an efficient and scalable manner, both for this pandemic and for future outbreaks.