Stochastic models of sequence evolution including insertion—deletion events

Author:

Miklós István1,Novák Ádám2,Satija Rahul2,Lyngsø Rune2,Hein Jotun2

Affiliation:

1. Bioinformatics Group, Alfréd Rényi Institute of Mathematics, Hungarian Academy of Sciences, 1053 Budapest, Reáltanoda u. 13-15, Hungary, , Bioinformatics Group, Department of Statistics, University of Oxford, 1 South Parks Road, OX1 3TG Oxford, UK, Data Mining and Search Research Group, Computer and Automation Institute, Hungarian Academy of Sciences, 1111 Budapest, Lágymányosi u. 11., Hungary

2. Bioinformatics Group, Department of Statistics, University of Oxford, 1 South Parks Road, OX1 3TG Oxford, UK

Abstract

Comparison of sequences that have descended from a common ancestor based on an explicit stochastic model of substitutions, insertions and deletions has risen to prominence in the last decade. Making statements about the positions of insertions-deletions (abbr. indels) is central in sequence and genome analysis and is called alignment. This statistical approach is harder conceptually and computationally, than competing approaches based on choosing an alignment according to some optimality criteria. But it has major practical advantages in terms of testing evolutionary hypotheses and parameter estimation. Basic dynamic approaches can allow the analysis of up to 4—5 sequences. MCMC techniques can bring this to about 10—15 sequences. Beyond this, different or heuristic approaches must be used. Besides the computational challenges, increasing realism in the underlying models is presently being addressed. A recent development that has been especially fruitful is combining statistical alignment with the problem of sequence annotation, making statements about the function of each nucleotide/amino acid. So far gene finding, protein secondary structure prediction and regulatory signal detection has been tackled within this framework. Much progress can be reported, but clearly major challenges remain if this approach is to be central in the analyses of large incoming sequence data sets.

Publisher

SAGE Publications

Subject

Health Information Management,Statistics and Probability,Epidemiology

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1. The Cumulative Indel Model: Fast and Accurate Statistical Evolutionary Alignment;Systematic Biology;2020-07-12

2. Recognition of Herpes Viruses on the Basis of a New Metric for Protein Sequences;Journal of Physics: Conference Series;2019-11-01

3. Genome Alignment;Encyclopedia of Bioinformatics and Computational Biology;2019

4. Recognition of Herpes Viruses on the Basis of a New Metric for Protein Sequences;Communications in Computer and Information Science;2019

5. Potential Functions for Signals and Symbolic Sequences;Braverman Readings in Machine Learning. Key Ideas from Inception to Current State;2018

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