Training-free measures based on algorithmic probability identify high nucleosome occupancy in DNA sequences

Author:

Zenil Hector1234ORCID,Minary Peter4

Affiliation:

1. Oxford Immune Algorithmics, Oxford University Innovation, Oxford, UK

2. Algorithmic Dynamics Lab, Unit of Computational Medicine, SciLifeLab, Center for Molecular Medicine, Karolinska Institute, Stockholm, Sweden

3. Algorithmic Nature Group, LABORES for the Natural and Digital Sciences, Paris, France

4. Department of Computer Science, University of Oxford, Oxford, UK

Abstract

AbstractWe introduce and study a set of training-free methods of an information-theoretic and algorithmic complexity nature that we apply to DNA sequences to identify their potential to identify nucleosomal binding sites. We test the measures on well-studied genomic sequences of different sizes drawn from different sources. The measures reveal the known in vivo versus in vitro predictive discrepancies and uncover their potential to pinpoint high and low nucleosome occupancy. We explore different possible signals within and beyond the nucleosome length and find that the complexity indices are informative of nucleosome occupancy. We found that, while it is clear that the gold standard Kaplan model is driven by GC content (by design) and by k-mer training; for high occupancy, entropy and complexity-based scores are also informative and can complement the Kaplan model.

Funder

John Templeton Foundation

Swedish Research Council

Publisher

Oxford University Press (OUP)

Subject

Genetics

Reference47 articles.

1. Characterization of the RNA content of chromatin;Tanmoy;Genome Res.,2010

2. G+C content dominates intrinsic nucleosome occupancy;Tillo;BMC Bioinformatics,2009

3. Determinants of nucleosome positioning;Struhl;Nat. Struct. Mol. Biol.,2013

4. DNA structural correlation in short and long ranges;Gu;J. Phys. Chem. B,2015

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