With remarkable increase of genomic sequence data of a wide range of species, novel tools are needed for comprehensive analyses of the big sequence data. Self-Organizing Map (SOM) is an effective tool for clustering and visualizing high-dimensional data such as oligonucleotide composition on one map. By modifying the conventional SOM, we have previously developed Batch-Learning SOM (BLSOM), which allows classification of sequence fragments according to species, solely depending on the oligonucleotide composition. In the present study, we introduce the oligonucleotide BLSOM used for characterization of vertebrate genome sequences. We first analyzed pentanucleotide compositions in 100 kb sequences derived from a wide range of vertebrate genom...
A Self-Organizing Map (SOM) is an effective tool for clustering and visualizing high-dimensional com...
Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organi...
Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organi...
With the remarkable increase of genomic sequence data of microorganisms, novel tools are needed for...
With the remarkable increase in genomic sequence data from various organisms, novel tools are needed...
Copyright © 2015 Akihito Kikuchi et al.This is an open access article distributed under theCreative ...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
An unsupervised clustering algorithm Kohonen's SOM is an effective tool for clustering and visualizi...
Abstract Since oligonucleotide composition in the genome sequence varies significantly among species...
Motivation: Self-Organizing Maps (SOMs) are readily-available bioinformatics methods for clustering ...
With a remarkable increase in genomic sequencedataof awide rangeof species, novel tools areneeded fo...
In this paper, we introduce an algorithm of Self-Organizing Maps(SOM) which can map the genome seque...
A self-organizing map (SOM) is an artificial neural network algorithm that can learn from the traini...
A self-organizing map (SOM) was developed as a novel bioinformatics strategy for phylogenetic classi...
The advent of sequencing technologies allows to reassess the relationship between species in the hie...
A Self-Organizing Map (SOM) is an effective tool for clustering and visualizing high-dimensional com...
Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organi...
Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organi...
With the remarkable increase of genomic sequence data of microorganisms, novel tools are needed for...
With the remarkable increase in genomic sequence data from various organisms, novel tools are needed...
Copyright © 2015 Akihito Kikuchi et al.This is an open access article distributed under theCreative ...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
An unsupervised clustering algorithm Kohonen's SOM is an effective tool for clustering and visualizi...
Abstract Since oligonucleotide composition in the genome sequence varies significantly among species...
Motivation: Self-Organizing Maps (SOMs) are readily-available bioinformatics methods for clustering ...
With a remarkable increase in genomic sequencedataof awide rangeof species, novel tools areneeded fo...
In this paper, we introduce an algorithm of Self-Organizing Maps(SOM) which can map the genome seque...
A self-organizing map (SOM) is an artificial neural network algorithm that can learn from the traini...
A self-organizing map (SOM) was developed as a novel bioinformatics strategy for phylogenetic classi...
The advent of sequencing technologies allows to reassess the relationship between species in the hie...
A Self-Organizing Map (SOM) is an effective tool for clustering and visualizing high-dimensional com...
Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organi...
Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organi...