Modelling COVID-19 mutant dynamics: understanding the interplay between viral evolution and disease transmission dynamics

Author:

Saldaña FernandoORCID,Stollenwerk NicoORCID,Aguiar MaíraORCID

Abstract

AbstractUnderstanding virus mutations is critical for shaping public health interventions. These mutations lead to complex multi-strain dynamics often underrepresented in models. Aiming to understand the factors influencing variants’ fitness and evolution, we explore several scenarios of virus spreading to gain qualitative insight into the factors dictating which variants ultimately predominate at the population level. To this end, we propose a two-strain stochastic model that accounts for asymptomatic transmission, mutations, and the possibility of disease import. We find that variants with milder symptoms are likely to spread faster than those with severe symptoms. This is because severe variants can prompt affected individuals to seek medical help earlier, potentially leading to quicker identification and isolation of cases. However, milder or asymptomatic cases may spread more widely, making it harder to control the spread. Therefore, increased transmissibility of milder variants can still result in higher hospitalizations and fatalities due to widespread infection. The proposed model highlights the interplay between viral evolution and transmission dynamics. Offering a nuanced view of factors influencing variant spread, the model provides a foundation for further investigation into mitigating strategies and public health interventions.

Publisher

Cold Spring Harbor Laboratory

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