Inferring the distribution of fitness effects in patient-sampled and experimental virus populations: two case studies.
Ana Y Morales-ArceParul JohriJeffrey D JensenPublished in: Heredity (2022)
We here propose an analysis pipeline for inferring the distribution of fitness effects (DFE) from either patient-sampled or experimentally-evolved viral populations, that explicitly accounts for non-Wright-Fisher and non-equilibrium population dynamics inherent to pathogens. We examine the performance of this approach via extensive power and performance analyses, and highlight two illustrative applications - one from an experimentally-passaged RNA virus, and the other from a clinically-sampled DNA virus. Finally, we discuss how such DFE inference may shed light on major research questions in virus evolution, ranging from a quantification of the population genetic processes governing genome size, to the role of Hill-Robertson interference in dictating adaptive outcomes, to the potential design of novel therapeutic approaches to eradicate within-patient viral populations via induced mutational meltdown.
Keyphrases
- case report
- physical activity
- body composition
- type diabetes
- genetic diversity
- molecular dynamics simulations
- oxidative stress
- gene expression
- diabetic rats
- risk assessment
- metabolic syndrome
- adipose tissue
- dna methylation
- single molecule
- antimicrobial resistance
- multidrug resistant
- endothelial cells
- circulating tumor cells
- data analysis