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Inferring Viral Transmission Pathways from Within-Host Variation.

Ivan O A SpechtBrittany A PetrosGage Kahl MorenoTaylor Brock-FisherLydia A KrasilnikovaMark SchifferliKatherine YangPaul CronanOlivia GlennonStephen F SchaffnerDaniel J ParkBronwyn L MacInnisAl OzonoffBen FryMichael D MitzenmacherPatrick VarillyPardis C Sabeti
Published in: medRxiv : the preprint server for health sciences (2023)
Genome sequencing can offer critical insight into pathogen spread in viral outbreaks, but existing transmission inference methods use simplistic evolutionary models and only incorporate a portion of available genetic data. Here, we develop a robust evolutionary model for transmission reconstruction that tracks the genetic composition of within-host viral populations over time and the lineages transmitted between hosts. We confirm that our model reliably describes within-host variant frequencies in a dataset of 134,682 SARS-CoV-2 deep-sequenced genomes from Massachusetts, USA. We then demonstrate that our reconstruction approach infers transmissions more accurately than two leading methods on synthetic data, as well as in a controlled outbreak of bovine respiratory syncytial virus and an epidemiologically-investigated SARS-CoV-2 outbreak in South Africa. Finally, we apply our transmission reconstruction tool to 5,692 outbreaks among the 134,682 Massachusetts genomes. Our methods and results demonstrate the utility of within-host variation for transmission inference of SARS-CoV-2 and other pathogens, and provide an adaptable mathematical framework for tracking within-host evolution.
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