Abstract. We propose a simple tractable pair hidden Markov model for pairwise sequence alignment that accounts for the presence of short tandem repeats. Using the framework of gain functions, we design several optimization criteria for decoding this model and describe the resulting decoding algorithms, ranging from the traditional Viterbi and posterior decoding to block-based decoding algorithms specialized for our model. We compare the accuracy of individual decoding algorithms on simulated data and find our approach superior to the classical three-state pair HMM in simulations.
Hidden Markov models (HMMs) are a highly effective means of modeling a family of unaligned sequences...
Motivation: Computationally identifying non-coding RNA regions on the genome has much scope for inve...
optimal character-by-character correspondence between two sequences. It can be readily solved in O(n...
Pairwise alignment and pair hidden Markov models (pHMMs) are basic text-book fare [2]. However, ther...
Background: Sequence alignment has become an indispensable tool in modern molecular biology research...
We describe pair hidden Markov models, with an emphasis on their relationship to evolutionary models...
Motivation: Progressive algorithms are widely used heuristics for the production of alignments among...
Multiple sequence alignments play a central role in Bioinformatics. Most alignment representations a...
We looked at various alignment algorithms with different scoring schemes. We argued that the score o...
International audienceThis article proposes a novel approach to statistical alignment of nucleotide ...
Hidden Markov models (HMMs) have been successfully applied to a variety of problems in molecular bio...
Tandem repeats occur frequently in biological se-quences. They are important for studying genome evo...
Geneticists wish to pairwise align protein sequences in order to determine if\ud the two sequences h...
Pairwise local sequence alignment methods have been the prevailing technique to identify homologous ...
Abstract — Efficient approach are based on probabilistic models, such as the Hidden Markov Models (H...
Hidden Markov models (HMMs) are a highly effective means of modeling a family of unaligned sequences...
Motivation: Computationally identifying non-coding RNA regions on the genome has much scope for inve...
optimal character-by-character correspondence between two sequences. It can be readily solved in O(n...
Pairwise alignment and pair hidden Markov models (pHMMs) are basic text-book fare [2]. However, ther...
Background: Sequence alignment has become an indispensable tool in modern molecular biology research...
We describe pair hidden Markov models, with an emphasis on their relationship to evolutionary models...
Motivation: Progressive algorithms are widely used heuristics for the production of alignments among...
Multiple sequence alignments play a central role in Bioinformatics. Most alignment representations a...
We looked at various alignment algorithms with different scoring schemes. We argued that the score o...
International audienceThis article proposes a novel approach to statistical alignment of nucleotide ...
Hidden Markov models (HMMs) have been successfully applied to a variety of problems in molecular bio...
Tandem repeats occur frequently in biological se-quences. They are important for studying genome evo...
Geneticists wish to pairwise align protein sequences in order to determine if\ud the two sequences h...
Pairwise local sequence alignment methods have been the prevailing technique to identify homologous ...
Abstract — Efficient approach are based on probabilistic models, such as the Hidden Markov Models (H...
Hidden Markov models (HMMs) are a highly effective means of modeling a family of unaligned sequences...
Motivation: Computationally identifying non-coding RNA regions on the genome has much scope for inve...
optimal character-by-character correspondence between two sequences. It can be readily solved in O(n...