Abstract

BackgroundMathematical modeling constitutes an important tool for planning robust responses to epidemics. This study was conducted to guide the Qatari national response to the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) epidemic. The study investigated the epidemic’s time-course, forecasted health care needs, predicted the impact of social and physical distancing restrictions, and rationalized and justified easing of restrictions.MethodsAn age-structured deterministic model was constructed to describe SARS-CoV-2 transmission dynamics and disease progression throughout the population.ResultsThe enforced social and physical distancing interventions flattened the epidemic curve, reducing the peaks for incidence, prevalence, acute-care hospitalization, and intensive care unit (ICU) hospitalizations by 87%, 86%, 76%, and 78%, respectively. The daily number of new infections was predicted to peak at 12 750 on May 23, and active-infection prevalence was predicted to peak at 3.2% on May 25. Daily acute-care and ICU-care hospital admissions and occupancy were forecast accurately and precisely. By October 15, 2020, the basic reproduction number R0 had varied between 1.07-2.78, and 50.8% of the population were estimated to have been infected (1.43 million infections). The proportion of actual infections diagnosed was estimated at 11.6%. Applying the concept of Rt tuning, gradual easing of restrictions was rationalized and justified to start on June 15, 2020, when Rt declined to 0.7, to buffer the increased interpersonal contact with easing of restrictions and to minimize the risk of a second wave. No second wave has materialized as of October 15, 2020, five months after the epidemic peak.ConclusionsUse of modeling and forecasting to guide the national response proved to be a successful strategy, reducing the toll of the epidemic to a manageable level for the health care system.

Highlights

  • Houssein H Ayoub1, Hiam Chemaitelly2,3, Shaheen Seedat2,3,4, Monia Makhoul2,3,4, Zaina Al Kanaani5, Abdullatif Al Khal5, Einas Al Kuwari5, Adeel A Butt4,5, Peter Coyle5, Andrew Jeremijenko5, Anvar Hassan Kaleeckal5, Ali Nizar Latif5, Riyazuddin Mohammad Shaik5, Hanan Abdul Rahim6, Hadi M Yassine7,8, Mohamed G Al Kuwari9, Hamad Eid Al Romaihi10, Mohamed H Al-Thani10, Roberto Bertollini10, Laith J Abu Raddad2,3,4

  • Qatar has been affected by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) pandemic [6,7,8,9,10,11,12]

  • The nation mounted an evidence-informed national response, in which in addition to early case identification, isolation, and quarantine through contact tracing, diverse standardized and centralized sources of data were generated, including population-based surveys. This wealth of data provided a special opportunity to understand infection transmission dynamics, predict health care needs associated with the resulting disease, coronavirus disease 2019 (COVID-19) [13], and to inform the global epidemiology of this infection

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Summary

Introduction

Houssein H Ayoub, Hiam Chemaitelly, Shaheen Seedat, Monia Makhoul, Zaina Al Kanaani, Abdullatif Al Khal, Einas Al Kuwari, Adeel A Butt, Peter Coyle, Andrew Jeremijenko, Anvar Hassan Kaleeckal, Ali Nizar Latif, Riyazuddin Mohammad Shaik, Hanan Abdul Rahim, Hadi M Yassine, Mohamed G Al Kuwari, Hamad Eid Al Romaihi, Mohamed H Al-Thani, Roberto Bertollini, Laith J Abu Raddad. Qatar 7 B iomedical Research Center, Qatar University, Doha, Qatar 8 D epartment of Biomedical Science, College of Health Sciences, Member of QU Health, Qatar University, Doha, Qatar 9 P rimary Health Care Corporation, Doha, Qatar 10 M inistry of Public Health, Doha, Qatar. Correspondence to: Background Mathematical modeling constitutes an important tool for planning robust responses to epidemics. This study was conducted to guide the Qatari national response to the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) epidemic. The study investigated the epidemic’s time-course, forecasted health care needs, predicted the impact of social and physical distancing restrictions, and rationalized and justified easing of restrictions

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