Background: Many current gene prediction methods use only one model to represent proteincoding regions in a genome, and so are less likely to predict the location of genes that have an atypical sequence composition. It is likely that future improvements in gene finding will involve the development of methods that can adequately deal with intra-genomic compositional variation. Results: This work explores a new approach to gene-prediction, based on the Self-Organizing Map, which has the ability to automatically identify multiple gene models within a genome. The current implementation, named RescueNet, uses relative synonymous codon usage as the indicator of protein-coding potential. Conclusions: While its raw accuracy rate can be less than...
Predicting protein-coding genes still remains a significant challenge. Although a variety of computa...
According to the National Human Genome Research Institute the amount of genomic data generated on a ...
Dörr D, Stoye J, Böcker S, Jahn K. Identifying Gene Clusters by Discovering Common Intervals in Inde...
Background: Many current gene prediction methods use only one model to represent proteincoding regi...
BACKGROUND: Many current gene prediction methods use only one model to represent protein-coding regi...
Background: Many current gene prediction methods use only one model to represent protein-coding regi...
With the development of genome sequencing for many organisms, more and more raw sequences need to be...
Next-generation sequencing has generated enormous amount of DNA and RNA sequences that potentially c...
While the genomes of many organisms have been sequenced over the last few years, transforming such r...
[[abstract]]Identifying protein coding genes is one of most important task in newly sequenced genome...
Determining the beginning and end positions of each exon in each protein coding gene within a genome...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
Background: Predicting complete protein-coding genes in human DNA remains a significant challenge. ...
This paper is supposed to bridge the gap between practical experience in using GeneMark for a rapidl...
DOI: 10.1093/nar/gki937© The Authors 2005. Published by Oxford University Press. The definitive vers...
Predicting protein-coding genes still remains a significant challenge. Although a variety of computa...
According to the National Human Genome Research Institute the amount of genomic data generated on a ...
Dörr D, Stoye J, Böcker S, Jahn K. Identifying Gene Clusters by Discovering Common Intervals in Inde...
Background: Many current gene prediction methods use only one model to represent proteincoding regi...
BACKGROUND: Many current gene prediction methods use only one model to represent protein-coding regi...
Background: Many current gene prediction methods use only one model to represent protein-coding regi...
With the development of genome sequencing for many organisms, more and more raw sequences need to be...
Next-generation sequencing has generated enormous amount of DNA and RNA sequences that potentially c...
While the genomes of many organisms have been sequenced over the last few years, transforming such r...
[[abstract]]Identifying protein coding genes is one of most important task in newly sequenced genome...
Determining the beginning and end positions of each exon in each protein coding gene within a genome...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
Background: Predicting complete protein-coding genes in human DNA remains a significant challenge. ...
This paper is supposed to bridge the gap between practical experience in using GeneMark for a rapidl...
DOI: 10.1093/nar/gki937© The Authors 2005. Published by Oxford University Press. The definitive vers...
Predicting protein-coding genes still remains a significant challenge. Although a variety of computa...
According to the National Human Genome Research Institute the amount of genomic data generated on a ...
Dörr D, Stoye J, Böcker S, Jahn K. Identifying Gene Clusters by Discovering Common Intervals in Inde...