iIntroduction:/i Owing to the vast devastation that COVID-10 wrecked on the global community, some hold the misconception that COVID-19 was intractable, that our health systems were weak and that the global community lacked adequate resilience to contain the outbreak from escalating to a pandemic. With such misconceptions, some stakeholders are canvassing new pandemic treaties and new pandemic preparedness and response strategies for the future. This study aims to interrogate further COVID-19 and the pandemic response to establish new lessons learned on which future remedial policies and actions will be based, not on misconceptions. iMethods: /iAn exploratory research method was adopted, applying the tools of desk review/data extraction, input-output device, time-frame analysis, management by objective and rational decision approach. iResult:/i This study found that SARS-CoV-2 is a delicate virus; that COVID-19, pre se, is a mild illness; that the global community was, and is still very resilient; that avoidable mismanagement of the global response enabled the outbreak to escalate to a devastating pandemic; that if existing and emerging global resilient capacities were fully harnessed and applied, COVID-19 would have been effectively controlled by March 2021. iConclusion:/i The study concludes that SARS-CoV-2 and COVID-19 could not have devastated our resilient global community if not for the avoidable mismanagement of the global response. The study recommends among others, that member-states conduct post-pandemic reviews that will establish better mechanism for multilateral engagements that will achieve the dual mandate of safeguarding national interest in flux-free multilateral cooperation.
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Emmanuel Chukwuma Obiano (Tue,) studied this question.
www.synapsesocial.com/papers/69401efa2d562116f28f984e — DOI: https://doi.org/10.11648/j.cajph.20251106.19
Emmanuel Chukwuma Obiano
Central African Journal of Public Health
Taraba State University
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