Fitness Estimation for Viral Variants in the Context of Cellular Coinfection

Abstract

Animal models are frequently used to characterize the within-host dynamics of emerging zoonotic viruses. More recent studies have also deep-sequenced longitudinal viral samples originating from experimental challenges to gain a better understanding of how these viruses may evolve in vivo and between transmission events. These studies have often identified nucleotide variants that can replicate more efficiently within hosts and also transmit more effectively between hosts. Quantifying the degree to which a mutation impacts viral fitness within a host can improve identification of variants that are of particular epidemiological concern and our ability to anticipate viral adaptation at the population level. While methods have been developed to quantify the fitness effects of mutations using observed changes in allele frequencies over the course of a host’s infection, none of the existing methods account for the possibility of cellular coinfection. Here, we develop mathematical models to project variant allele frequency changes in the context of cellular coinfection and, further, integrate these models with statistical inference approaches to demonstrate how variant fitness can be estimated alongside cellular multiplicity of infection. We apply our approaches to empirical longitudinally sampled H5N1 sequence data from ferrets. Our results indicate that previous studies may have significantly underestimated the within-host fitness advantage of viral variants. These findings underscore the importance of considering the process of cellular coinfection when studying within-host viral evolutionary dynamics.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jun 23, 2021
Source ID
10.3390/v13071216

Entities

People

  • Brent E. Allman
  • Huisheng Zhu
  • Katia Koelle

Organizations

  • Defense Advanced Research Projects Agency

Tags

Fields of Study

  • Biology
  • Mathematics

Readers

  • Computational Modeling and Simulation
  • Infectious Disease/Epidemiology
  • Molecular Genetics

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference