TY - JOUR
T1 - Information index augmented eRG to model vaccination behaviour
T2 - A case study of COVID-19 in the US
AU - Buonomo, Bruno
AU - D'Alise, Alessandra
AU - Della Marca, Rossella
AU - Sannino, Francesco
PY - 2025/6/1
Y1 - 2025/6/1
N2 - Recent pandemics triggered the development of a number of mathematical models and computational tools apt at curbing the socio-economic impact of these and future pandemics. The need to acquire solid estimates from the data led to the introduction of effective approaches such as the epidemiological Renormalization Group (eRG). A recognized relevant factor impacting the evolution of pandemics is the feedback stemming from individuals’ choices. The latter can be taken into account via the information index which accommodates the information–induced perception regarding the status of the disease and the memory of past spread. Therefore, we show how to augment the eRG through the information index. We first develop the behavioural version of the eRG (BeRG) and then test it against the US vaccination campaign for COVID-19. We find that the BeRG improves the description of the pandemic dynamics of the US divisions for which the epidemic peak occurs after the start of the vaccination campaign. Additionally, we observe, via the BeRG model, a behavioural impact on the increase in the number of vaccinated individuals for all US divisions when compared to the original eRG model. The BeRG reasonably captures the COVID-19 vaccination behaviour which has not undergone stressful periods as the nearly linear growth of the vaccinated individuals suggests. Our results strengthen the relevance of taking into account the human behaviour component when modelling pandemic evolution. To inform public health policies, the model can be readily employed to investigate the socio-epidemiological dynamics, including vaccination campaigns, for other world regions.
AB - Recent pandemics triggered the development of a number of mathematical models and computational tools apt at curbing the socio-economic impact of these and future pandemics. The need to acquire solid estimates from the data led to the introduction of effective approaches such as the epidemiological Renormalization Group (eRG). A recognized relevant factor impacting the evolution of pandemics is the feedback stemming from individuals’ choices. The latter can be taken into account via the information index which accommodates the information–induced perception regarding the status of the disease and the memory of past spread. Therefore, we show how to augment the eRG through the information index. We first develop the behavioural version of the eRG (BeRG) and then test it against the US vaccination campaign for COVID-19. We find that the BeRG improves the description of the pandemic dynamics of the US divisions for which the epidemic peak occurs after the start of the vaccination campaign. Additionally, we observe, via the BeRG model, a behavioural impact on the increase in the number of vaccinated individuals for all US divisions when compared to the original eRG model. The BeRG reasonably captures the COVID-19 vaccination behaviour which has not undergone stressful periods as the nearly linear growth of the vaccinated individuals suggests. Our results strengthen the relevance of taking into account the human behaviour component when modelling pandemic evolution. To inform public health policies, the model can be readily employed to investigate the socio-epidemiological dynamics, including vaccination campaigns, for other world regions.
KW - COVID-19
KW - Human behaviour
KW - Information
KW - Mathematical epidemiology
KW - Renormalization group
KW - Vaccination
U2 - 10.1016/j.physa.2025.130429
DO - 10.1016/j.physa.2025.130429
M3 - Journal article
AN - SCOPUS:105001716118
SN - 0378-4371
VL - 667
JO - Physica A: Statistical Mechanics and its Applications
JF - Physica A: Statistical Mechanics and its Applications
M1 - 130429
ER -