Statistical modelling of CG interdistance across multiple organisms

BMC Bioinformatics. 2018 Oct 15;19(Suppl 10):355. doi: 10.1186/s12859-018-2303-2.

Abstract

Background: Statistical approaches to genetic sequences have revealed helpful to gain deeper insight into biological and structural functionalities, using ideas coming from information theory and stochastic modelling of symbolic sequences. In particular, previous analyses on CG dinucleotide position along the genome allowed to highlight its epigenetic role in DNA methylation, showing a different distribution tail as compared to other dinucleotides. In this paper we extend the analysis to the whole CG distance distribution over a selected set of higher-order organisms. Then we apply the best fitting probability density function to a large range of organisms (>4400) of different complexity (from bacteria to mammals) and we characterize some emerging global features.

Results: We find that the Gamma distribution is optimal for the selected subset as compared to a group of several distributions, chosen for their physical meaning or because recently used in literature for similar studies. The parameters of this distribution, when applied to our larger set of organisms, allows to highlight some biologically relavant features for the considered organism classes, that can be useful also for classification purposes.

Conclusions: The quantification of statistical properties of CG dinucleotide positioning along the genome is confirmed as a useful tool to characterize broad classes of organisms, spanning the whole range of biological complexity.

Keywords: CG dinucleotide; Classification; Distribution fitting; Interdistance distribution.

MeSH terms

  • Animals
  • Chromosomes, Human / genetics
  • DNA Methylation / genetics
  • Dinucleoside Phosphates / genetics*
  • Genome Size
  • Humans
  • Linear Models
  • Mammals / genetics
  • Models, Statistical*

Substances

  • Dinucleoside Phosphates
  • cytidylyl-3'-5'-guanosine