Assume that K independent copies are made from a common prototype DNA sequence whose length is a random variable. In this paper, the problem of aligning those copies and therefore the problem of estimating the prototype sequence that produced the copies is addressed. A hidden Markov chain is used to model the copying procedure, and a reversible jump Markov chain Monte Carlo algorithm is used to sample the parameters of the model from their posterior distribution. Using the sample obtained, the Bayesian model and the prototype sequence may be selected using the maximum a posteriori estimate. A prior distribution for the prototype DNA sequence that incorporates a correlation among neighbouring bases is also considered. In addition, an analysi...
The purpose of this study is to infer evolutionary trees through the Markov chain Monte Carlo algori...
We propose a heuristic approach to the detection of evidence for recombination and gene conversion i...
AbstractThe statistical approach to DNA sequence evolution involves the stochastic modelling of the ...
Hidden Markov models (HMMs) are a class of stochastic models that have proven to be powerful tools f...
This article presents a statistical method for detecting recombination in DNA sequence alignments, w...
This article presents a statistical method for detecting recombination in DNA sequence alignments, w...
A recently proposed method for detecting mosaic structures in DNA sequence alignments is based on th...
The increasing availability of high throughput sequencing technologies poses several challenges conc...
The increasing availability of high throughput sequencing technologies poses several challenges conc...
This article presents a statistical method for detecting recombination in DNA sequence alignments, w...
DNA copy number variations (CNVs), which involve the deletion or duplication of subchromosomal segme...
We present a new stochastic method for finding the optimal alignment of DNA sequences. The method wo...
Multiple Sequence Alignment (MSA) is one of the basic tool for interpreting the information obtained...
Abstract — Efficient approach are based on probabilistic models, such as the Hidden Markov Models (H...
In human cells there are usually two copies of each chromosome, but in cancer cells abnormalities co...
The purpose of this study is to infer evolutionary trees through the Markov chain Monte Carlo algori...
We propose a heuristic approach to the detection of evidence for recombination and gene conversion i...
AbstractThe statistical approach to DNA sequence evolution involves the stochastic modelling of the ...
Hidden Markov models (HMMs) are a class of stochastic models that have proven to be powerful tools f...
This article presents a statistical method for detecting recombination in DNA sequence alignments, w...
This article presents a statistical method for detecting recombination in DNA sequence alignments, w...
A recently proposed method for detecting mosaic structures in DNA sequence alignments is based on th...
The increasing availability of high throughput sequencing technologies poses several challenges conc...
The increasing availability of high throughput sequencing technologies poses several challenges conc...
This article presents a statistical method for detecting recombination in DNA sequence alignments, w...
DNA copy number variations (CNVs), which involve the deletion or duplication of subchromosomal segme...
We present a new stochastic method for finding the optimal alignment of DNA sequences. The method wo...
Multiple Sequence Alignment (MSA) is one of the basic tool for interpreting the information obtained...
Abstract — Efficient approach are based on probabilistic models, such as the Hidden Markov Models (H...
In human cells there are usually two copies of each chromosome, but in cancer cells abnormalities co...
The purpose of this study is to infer evolutionary trees through the Markov chain Monte Carlo algori...
We propose a heuristic approach to the detection of evidence for recombination and gene conversion i...
AbstractThe statistical approach to DNA sequence evolution involves the stochastic modelling of the ...