Modelling the COVID-19 pandemic in context: An international participatory approach

R. Aguas, L. White, N. Hupert, R. Shretta, W. Pan-Ngum, O. Celhay, A. Moldokmatova, F. Arifi, A. Mirzazadeh, H. Sharifi, K. Adib, M.N. Sahak, C. Franco, R. Coutinho, P. Ariana, Penelope A. Hancock, Roberto André Kraenkel, S. Saralamba, N. Luangasanatip, S.P. SilalJ. Norman, R. Hounsell, S.T. Than Tun, Y.N. Aung, B.A. Emmanuel, B. Getachew, S. Adele, S.A. Omoleke, R.U. Zaman, N. Letchford, D.M. Parker, S. Pokharel, D. Lata, S. Chen, S.S. Kyaw, I.N.D. Lubis, I. Alona, J.R.C. Medina, C.E.G. Mercado, S. Eybpoosh, I. Mamadu, M. Marzouk, N.F. de Colombi, L. Suárez-Idueta, F. Obando, L. Freitas, M.G. Klein, D. Scales, D. Aizhan, C. Zhumalieva, A. Estebesova, A. Mukambetov, S. Ibragimov, A. Kubatova, P. Chanthavialy, A.H. Salim, S. Venkatesan, K.C. Sarin, P. Shrestha, S.A. Saeedzai, J. Hsieh, M. Soukavong, Y. Yunanda, H. Harsono, M.H. Fariba, V. Mabombo, N. Advani, N. Jabin, R. Naidoo, P. Wattanasri, A.-P. Nwosu, S. Obiesie

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Abstract

The SARS-CoV-2 pandemic has had an unprecedented impact on multiple levels of society. Not only has the pandemic completely overwhelmed some health systems but it has also changed how scientific evidence is shared and increased the pace at which such evidence is published and consumed, by scientists, policymakers and the wider public. More significantly, the pandemic has created tremendous challenges for decision-makers, who have had to implement highly disruptive containment measures with very little empirical scientific evidence to support their decision-making process. Given this lack of data, predictive mathematical models have played an increasingly prominent role. In high-income countries, there is a long-standing history of established research groups advising policymakers, whereas a general lack of translational capacity has meant that mathematical models frequently remain inaccessible to policymakers in low-income and middle-income countries. Here, we describe a participatory approach to modelling that aims to circumvent this gap. Our approach involved the creation of an international group of infectious disease modellers and other public health experts, which culminated in the establishment of the COVID-19 Modelling (CoMo) Consortium. Here, we describe how the consortium was formed, the way it functions, the mathematical model used and, crucially, the high degree of engagement fostered between CoMo Consortium members and their respective local policymakers and ministries of health.
Original languageEnglish
Article numbere003126
JournalBMJ Global Health
Volume5
Early online date23 Dec 2020
DOIs
Publication statusPublished - 23 Dec 2020

Bibliographical note

Funding RA is funded by the Bill and Melinda Gates Foundation (OPP1193472). LW is funded by the Li Ka Shing Foundation. CF is funded by grant #2017/26770-8, São Paulo Research Foundation (FAPESP). The CoMo Consortium has support from the Oxford University COVID-19 Research Response Fund (ref: 0009280). Scientific writing assistance and editorial support was provided by Adam Bodley, according to Good Publication Practice guidelines.

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