Author
Listed:
- Deshan Perera
(University of Calgary)
- Evan Li
(University of Calgary)
- Paul MK Gordon
(University of Calgary)
- Frank Meer
(University of Calgary)
- Tarah Lynch
(Provincial Public Health Laboratory South)
- John Gill
(University of Calgary
University of Calgary)
- Deirdre L. Church
(University of Calgary
University of Calgary)
- A. P. Jason Koning
(University of Calgary
University of Calgary
University of Calgary)
- Christian D. Huber
(The Pennsylvania State University)
- Guido Marle
(University of Calgary)
- Alexander Platt
(Perelman School of Medicine at the University of Pennsylvania)
- Quan Long
(University of Calgary
University of Calgary
University of Calgary
University of Calgary)
Abstract
Modern sequencing instruments bring unprecedented opportunity to study within-host viral evolution in conjunction with viral transmissions between hosts. However, no computational simulators are available to assist the characterization of within-host dynamics. This limits our ability to interpret epidemiological predictions incorporating within-host evolution and to validate computational inference tools. To fill this need we developed Apollo, a GPU-accelerated, out-of-core tool for within-host simulation of viral evolution and infection dynamics across population, tissue, and cellular levels. Apollo is scalable to hundreds of millions of viral genomes and can handle complex demographic and population genetic models. Apollo can replicate real within-host viral evolution; accurately recapturing observed viral sequences from HIV and SARS-CoV-2 cohorts derived from initial population-genetic configurations. For practical applications, using Apollo-simulated viral genomes and transmission networks, we validated and uncovered the limitations of a widely used viral transmission inference tool.
Suggested Citation
Deshan Perera & Evan Li & Paul MK Gordon & Frank Meer & Tarah Lynch & John Gill & Deirdre L. Church & A. P. Jason Koning & Christian D. Huber & Guido Marle & Alexander Platt & Quan Long, 2025.
"Apollo: a comprehensive GPU-powered within-host simulator for viral evolution and infection dynamics across population, tissue, and cell,"
Nature Communications, Nature, vol. 16(1), pages 1-17, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-60988-8
DOI: 10.1038/s41467-025-60988-8
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