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Participatory Modeling: Building Citizen Science Intelligence for Pandemic Preparedness and Response (January- February 2023)

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Date
2023
Author
DSE
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Abstract
Introduction Citizen science (CS) is an emerging approach in public health to harness the collective intelligence of individuals to augment traditional scientific efforts. However, citizens viewpoint, especially the hard to-reach population, is lacking in current outbreak-related literature. We aim to understand the awareness, readiness and feasibility of outbreak-related CS, including digitally enabled CS, in low-income and middle-income countries. Methods This mixed-method study was conducted in nine countries between October 2022 and June 2023. Recruitment through civil society targeted the general population, marginalised/indigenous groups, youth and community health workers. Participants (aged ?18 years) completed a quantitative survey, and a subset participated in focus group discussions (FGDs). Results 2912 participants completed the survey and 4 FGDs were conducted in each country. Incorporating participants perspectives, CS is defined as the practice of active public participation, collaboration and communication in all aspects of scientific research to increase public knowledge, create awareness, build trust and facilitate information flow between citizens, governments and scientists. In Bangladesh, Indonesia, the Philippines, Cameroon and Kenya, majority were unaware of outbreak-related CS. In India and Uganda, majority were aware but unengaged, while in Nepal and Zimbabwe, majority participated in CS before. Engagement approaches should consider different social and cultural contexts, while addressing incentivisation, attitudes and practicality factors. Overall, 76.0% expressed interest in digital CS but needed training to build skills and confidence. Digital CS was perceived as convenient, safer for outbreak-related activities and producing better quality and quantity of data. However, there were concerns over non-inclusion of certain groups, data security and unclear communication. Conclusion CS interventions need to be relatable and address context-specific factors influencing CS
Subject
Participatory Modeling; Science intelligence; Pandemic
URI
https://amref.org/wp-content/uploads/2024/05/Building-Citizen-Science-Intelligence-for-Outbreak-Preparedness-and-Response.pdf
https://www.researchgate.net/publication/379102188_Building_citizen_science_intelligence_for_outbreak_preparedness_and_response_a_mixed-method_study_in_nine_countries_to_assess_knowledge_readiness_and_feasibility
http://knowhub.aphrc.org/handle/123456789/1238
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  • 2023 [6]

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