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Agent-Based Simulation Framework for Epidemic Forecasting during Hajj Seasons in Saudi Arabia
The religious pilgrimage of Hajj is one of the largest annual gatherings in the world. Every year approximately three million pilgrims travel from all over the world to perform Hajj in Mecca in Saudi Arabia. The high population density of pilgrims in confined settings throughout the Hajj rituals can...
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Published in: | Information (Basel) 2021-08, Vol.12 (8), p.325 |
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description | The religious pilgrimage of Hajj is one of the largest annual gatherings in the world. Every year approximately three million pilgrims travel from all over the world to perform Hajj in Mecca in Saudi Arabia. The high population density of pilgrims in confined settings throughout the Hajj rituals can facilitate infectious disease transmission among the pilgrims and their contacts. Infected pilgrims may enter Mecca without being detected and potentially transmit the disease to other pilgrims. Upon returning home, infected international pilgrims may introduce the disease into their home countries, causing a further spread of the disease. Computational modeling and simulation of social mixing and disease transmission between pilgrims can enhance the prevention of potential epidemics. Computational epidemic models can help public health authorities predict the risk of disease outbreaks and implement necessary intervention measures before or during the Hajj season. In this study, we proposed a conceptual agent-based simulation framework that integrates agent-based modeling to simulate disease transmission during the Hajj season from the arrival of the international pilgrims to their departure. The epidemic forecasting system provides a simulation of the phases and rituals of Hajj following their actual sequence to capture and assess the impact of each stage in the Hajj on the disease dynamics. The proposed framework can also be used to evaluate the effectiveness of the different public health interventions that can be implemented during the Hajj, including size restriction and screening at entry points. |
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Every year approximately three million pilgrims travel from all over the world to perform Hajj in Mecca in Saudi Arabia. The high population density of pilgrims in confined settings throughout the Hajj rituals can facilitate infectious disease transmission among the pilgrims and their contacts. Infected pilgrims may enter Mecca without being detected and potentially transmit the disease to other pilgrims. Upon returning home, infected international pilgrims may introduce the disease into their home countries, causing a further spread of the disease. Computational modeling and simulation of social mixing and disease transmission between pilgrims can enhance the prevention of potential epidemics. Computational epidemic models can help public health authorities predict the risk of disease outbreaks and implement necessary intervention measures before or during the Hajj season. In this study, we proposed a conceptual agent-based simulation framework that integrates agent-based modeling to simulate disease transmission during the Hajj season from the arrival of the international pilgrims to their departure. The epidemic forecasting system provides a simulation of the phases and rituals of Hajj following their actual sequence to capture and assess the impact of each stage in the Hajj on the disease dynamics. The proposed framework can also be used to evaluate the effectiveness of the different public health interventions that can be implemented during the Hajj, including size restriction and screening at entry points.</description><identifier>ISSN: 2078-2489</identifier><identifier>EISSN: 2078-2489</identifier><identifier>DOI: 10.3390/info12080325</identifier><language>eng</language><publisher>Basel: MDPI AG</publisher><subject>Agent-based models ; Calendars ; Coronaviruses ; COVID-19 vaccines ; Disease control ; Disease prevention ; Disease transmission ; Epidemics ; Forecasting ; Hajj ; Health surveillance ; Immunization ; Infectious diseases ; mass gatherings ; Mathematical models ; modeling ; Pandemics ; Pilgrimages ; Pilgrims ; Population density ; Public health ; Regions ; Religion ; Severe acute respiratory syndrome coronavirus 2 ; Simulation</subject><ispartof>Information (Basel), 2021-08, Vol.12 (8), p.325</ispartof><rights>2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). 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subjects | Agent-based models Calendars Coronaviruses COVID-19 vaccines Disease control Disease prevention Disease transmission Epidemics Forecasting Hajj Health surveillance Immunization Infectious diseases mass gatherings Mathematical models modeling Pandemics Pilgrimages Pilgrims Population density Public health Regions Religion Severe acute respiratory syndrome coronavirus 2 Simulation |
title | Agent-Based Simulation Framework for Epidemic Forecasting during Hajj Seasons in Saudi Arabia |
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