AbstractDNA microarray technologies together with rapidly increasing genomic sequence information is leading to an explosion in available gene expression data. Currently there is a great need for efficient methods to analyze and visualize these massive data sets. A self-organizing map (SOM) is an unsupervised neural network learning algorithm which has been successfully used for the analysis and organization of large data files. We have here applied the SOM algorithm to analyze published data of yeast gene expression and show that SOM is an excellent tool for the analysis and visualization of gene expression profiles
Background: The availability of parallel, high-throughput microarray and sequencing experiments pose...
Microarray technology can be employed to quantitatively measure the expression of thousands of genes...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
AbstractDNA microarray technologies together with rapidly increasing genomic sequence information is...
DNA microarrays and cell cycle synchronization experiments have made possible the study of the mecha...
DNA microarrays and cell cycle synchronization experiments have made possible the study of the mecha...
DNA microarrays and cell cycle synchronization experiments have made possible the study of the mecha...
AbstractWe propose a novel co-clustering algorithm that is based on self-organizing maps (SOMs). The...
cDNA microarrays permit massively parallel gene expression analysis and have spawned a new paradigm ...
Cluster analysis is one of the crucial steps in gene expression pattern (GEP) analysis. It leads to ...
Modern high-throughput technologies such as microarrays, next generation sequencing and mass spectro...
A method to evaluate and analyze the massive data generated by series of microarray experiments is o...
Array technologies have made it straightforward to monitor simultaneously the expression pattern of ...
Background: 
Self organizing maps (SOM) enable the straightforward portraying of high-dimen...
This paper introduces a comprehensive review of a Growing Hierarchical Self-Organizing Map (GHSOM) r...
Background: The availability of parallel, high-throughput microarray and sequencing experiments pose...
Microarray technology can be employed to quantitatively measure the expression of thousands of genes...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
AbstractDNA microarray technologies together with rapidly increasing genomic sequence information is...
DNA microarrays and cell cycle synchronization experiments have made possible the study of the mecha...
DNA microarrays and cell cycle synchronization experiments have made possible the study of the mecha...
DNA microarrays and cell cycle synchronization experiments have made possible the study of the mecha...
AbstractWe propose a novel co-clustering algorithm that is based on self-organizing maps (SOMs). The...
cDNA microarrays permit massively parallel gene expression analysis and have spawned a new paradigm ...
Cluster analysis is one of the crucial steps in gene expression pattern (GEP) analysis. It leads to ...
Modern high-throughput technologies such as microarrays, next generation sequencing and mass spectro...
A method to evaluate and analyze the massive data generated by series of microarray experiments is o...
Array technologies have made it straightforward to monitor simultaneously the expression pattern of ...
Background: 
Self organizing maps (SOM) enable the straightforward portraying of high-dimen...
This paper introduces a comprehensive review of a Growing Hierarchical Self-Organizing Map (GHSOM) r...
Background: The availability of parallel, high-throughput microarray and sequencing experiments pose...
Microarray technology can be employed to quantitatively measure the expression of thousands of genes...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...