Login / Signup

Inferring population genetics parameters of evolving viruses using time-series data.

Tal ZingerMaoz GelbartDanielle MillerPleuni S PenningsAdi Stern
Published in: Virus evolution (2019)
With the advent of deep sequencing techniques, it is now possible to track the evolution of viruses with ever-increasing detail. Here, we present Flexible Inference from Time-Series (FITS)-a computational tool that allows inference of one of three parameters: the fitness of a specific mutation, the mutation rate or the population size from genomic time-series sequencing data. FITS was designed first and foremost for analysis of either short-term Evolve & Resequence (E&R) experiments or rapidly recombining populations of viruses. We thoroughly explore the performance of FITS on simulated data and highlight its ability to infer the fitness/mutation rate/population size. We further show that FITS can infer meaningful information even when the input parameters are inexact. In particular, FITS is able to successfully categorize a mutation as advantageous or deleterious. We next apply FITS to empirical data from an E&R experiment on poliovirus where parameters were determined experimentally and demonstrate high accuracy in inference.
Keyphrases
  • single cell
  • electronic health record
  • big data
  • body composition
  • physical activity
  • healthcare
  • gene expression
  • data analysis
  • machine learning
  • copy number
  • deep learning
  • social media
  • health information