Transmission Bottleneck Size Estimation from De Novo Viral Genetic Variation

Author:

Shi Yike Teresa1ORCID,Harris Jeremy D1,Martin Michael A12ORCID,Koelle Katia13ORCID

Affiliation:

1. Department of Biology, Emory University , Atlanta, GA , USA

2. Graduate Program in Population Biology, Ecology, and Evolution, Emory University , Atlanta, GA , USA

3. Emory Center of Excellence for Influenza Research and Response (CEIRR) , Atlanta, GA , USA

Abstract

Abstract Sequencing of viral infections has become increasingly common over the last decade. Deep sequencing data in particular have proven useful in characterizing the roles that genetic drift and natural selection play in shaping within-host viral populations. They have also been used to estimate transmission bottleneck sizes from identified donor–recipient pairs. These bottleneck sizes quantify the number of viral particles that establish genetic lineages in the recipient host and are important to estimate due to their impact on viral evolution. Current approaches for estimating bottleneck sizes exclusively consider the subset of viral sites that are observed as polymorphic in the donor individual. However, these approaches have the potential to substantially underestimate true transmission bottleneck sizes. Here, we present a new statistical approach for instead estimating bottleneck sizes using patterns of viral genetic variation that arise de novo within a recipient individual. Specifically, our approach makes use of the number of clonal viral variants observed in a transmission pair, defined as the number of viral sites that are monomorphic in both the donor and the recipient but carry different alleles. We first test our approach on a simulated dataset and then apply it to both influenza A virus sequence data and SARS-CoV-2 sequence data from identified transmission pairs. Our results confirm the existence of extremely tight transmission bottlenecks for these 2 respiratory viruses.

Funder

National Institute of Allergy and Infectious Diseases

Centers of Excellence for Influenza Research and Response

DARPA INTERCEPT

NIH NIAID F31

Publisher

Oxford University Press (OUP)

Subject

Genetics,Molecular Biology,Ecology, Evolution, Behavior and Systematics

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