Analysis of inoculation strategies during COVID-19 pandemic with an agent-based simulation approach

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Date

2025

Authors

Oray Kulaç
Ayhan Özgür Toy
Kamil Erkan Kabak

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Elsevier Ltd

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Green Open Access

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Abstract

Background: The severity of recent Coronavirus (COVID-19) pandemics has revealed the importance of development of inoculation strategies in case of limited vaccine availability. Authorities have implemented inoculation strategies based on perceived risk factors such as age and existence of other chronic health conditions for survivability from the disease. However various other factors can be considered for identifying the preferred inoculation strategies depending on the vaccine availability and disease spread levels. This study explores the effectiveness of inoculating different groups of population in case of various vaccine availabilities and disease spread levels by means of some performance metrics namely: Attack Rate (AR) Death Rate (DR) and Hospitalization Rate (HR). Method: In this study we have implemented a highly detailed Agent-Based Simulation (ABS) model that extends classical SEIR Model by including five more additional states: Asymptomatic (A) Quarantine (Q) Hospitalized (H) Dead (D) and Immune (M) which can be used as a decision support tool to prioritize the groups of the population inoculated. The approach employs the modelling of daily mobility of individuals their interactions and transmission of virus among individuals. The population is heterogeneously clustered according to age family size work status transportation and leisure preferences with 17 different groups in order to find the most appropriate one to inoculate. Three different Disease Spread Levels (DSL) (low mid high) are experimented with four different Vaccine Available Percentages (VAP) (25% 50% 75% and 85%) with a total of 84 scenarios. Results: As the benchmark under the No Vaccine case Attack Rate Hospitalization Rate and Death Rate goes as high as 99.53% 16.96% and 1.38% respectively. Corresponding highest performance metrics (rates) are 72.33% 15.95% and 1.35% for VAP = 25%, 50.25% 9.55% and 0.94% for VAP = 50%, 24.53% 2.62% and 0.25% for VAP = 75%, and 11.51% 0.002% and 0.08% for VAP = 85%. The results of our study shows that the common practice of inoculation based on the age of individual does not yield the best outcome in terms of performance metrics across all DSL and VAP values. The groups containing workers and students that represent highly interactive individuals i.e. Group (9 10) Group (9 11 10‾) and Group (9 10 11 12‾) emerge as a commonly recommended choice for inoculation in the majority of cases. As expected we observe that the higher is the VAP levels the more is the number of alternative inoculation groups. Conclusions: Findings of this study present that: (i) inoculation considerably decreases the number of infected individuals the number of deaths and the number of hospitalized individuals due to the disease (ii) the best inoculation group/groups with respect to performance metrics varies depending on the vaccine availability percentages and disease spread levels (iii) simultaneous implementation of both inoculation and precautions like lock-down social distances and quarantines yields a stronger impact on disease spread and its consequences. © 2025 Elsevier B.V. All rights reserved.

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Keywords

Agent-based Simulation, Covid-19, Inoculation Strategies, Pandemic, Covid-19 Vaccines, Coronavirus, Health Risks, Vaccines, Agent Based Simulation, Coronaviruses, Death Rates, Disease Spread, Inoculation Strategy, Pandemic, Perceived Risk, Performance Metrices, Risk Factors, Simulation Approach, Covid-19, Agent Based Simulation Model, Article, Asymptomatic Coronavirus Disease 2019, Attack Rate, Cloud Computing, Compartment Model, Coronavirus Disease 2019, Data Accuracy, Data Quality, Decision Support System, Employment Status, Experimental Design, Family Size, Hospitalization, Human, Inoculation, Leisure, Mortality Rate, Pandemic, Performance Indicator, Probability, Quarantine, Risk Factor, Simulation, Social Interaction, Social Status, Susceptible Exposed Infectious Recovered Model, Traffic And Transport, Work Environment, Computer Simulation, Epidemiology, Prevention And Control, Severe Acute Respiratory Syndrome Coronavirus 2, Vaccination, Sars-cov-2 Vaccine, Computer Simulation, Covid-19 Vaccines, Hospitalization, Humans, Pandemics, Sars-cov-2, Vaccination, Coronavirus, Health risks, Vaccines, Agent based simulation, Coronaviruses, Death rates, Disease spread, Inoculation strategy, Pandemic, Perceived risk, Performance metrices, Risk factors, Simulation approach, COVID-19, agent based simulation model, Article, asymptomatic coronavirus disease 2019, attack rate, cloud computing, compartment model, coronavirus disease 2019, data accuracy, data quality, decision support system, employment status, experimental design, family size, hospitalization, human, inoculation, leisure, mortality rate, pandemic, performance indicator, probability, quarantine, risk factor, simulation, social interaction, social status, susceptible exposed infectious recovered model, traffic and transport, work environment, computer simulation, epidemiology, prevention and control, Severe acute respiratory syndrome coronavirus 2, vaccination, SARS-CoV-2 vaccine, Computer Simulation, COVID-19 Vaccines, Hospitalization, Humans, Pandemics, SARS-CoV-2, Vaccination, Agent-Based Simulation, COVID-19, Pandemic, Inoculation Strategies, Hospitalization, Adult, COVID-19 Vaccines, SARS-CoV-2, Vaccination, Humans, COVID-19, Computer Simulation, Middle Aged, Pandemics, Models, Biological

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Computers in Biology and Medicine

Volume

186

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109564

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