Modern high-throughput technologies such as microarrays, next generation sequencing and mass spectrometry provide huge amounts of data per measurement and challenge traditional analyses. New strategies of data processing, visualization and functional analysis are inevitable. This thesis presents an approach which applies a machine learning technique known as self organizing maps (SOMs). SOMs enable the parallel sample- and feature-centered view of molecular phenotypes combined with strong visualization and second-level analysis capabilities. We developed a comprehensive analysis and visualization pipeline based on SOMs. The unsupervised SOM mapping projects the initially high number of features, such as gene expression profiles, to meta-fea...
Cluster analysis is one of the crucial steps in gene expression pattern (GEP) analysis. It leads to ...
Background: The availability of parallel, high-throughput microarray and sequencing experiments pose...
This paper introduces a comprehensive review of a Growing Hierarchical Self-Organizing Map (GHSOM) r...
Modern high-throughput technologies such as microarrays, next generation sequencing and mass spectro...
Self organizing maps (SOMs) portrait molecular phenotypes with individual resolution. We demonstrate...
Self organizing maps (SOMs) portrait molecular phenotypes with individual resolution. We demonstrate...
Background: 
Self organizing maps (SOM) enable the straightforward portraying of high-dimen...
* to whom correspondence should be addressed Background: Self organizing maps (SOM) enable the strai...
cDNA microarrays permit massively parallel gene expression analysis and have spawned a new paradigm ...
A self-organizing map (SOM) is an artificial neural network algorithm that can learn from the traini...
AbstractDNA microarray technologies together with rapidly increasing genomic sequence information is...
The contiguity between external exposure and internal stress burden in humans is linked by metabolic...
Motivation: Self-Organizing Maps (SOMs) are readily-available bioinformatics methods for clustering ...
A method to evaluate and analyze the massive data generated by series of microarray experiments is o...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
Cluster analysis is one of the crucial steps in gene expression pattern (GEP) analysis. It leads to ...
Background: The availability of parallel, high-throughput microarray and sequencing experiments pose...
This paper introduces a comprehensive review of a Growing Hierarchical Self-Organizing Map (GHSOM) r...
Modern high-throughput technologies such as microarrays, next generation sequencing and mass spectro...
Self organizing maps (SOMs) portrait molecular phenotypes with individual resolution. We demonstrate...
Self organizing maps (SOMs) portrait molecular phenotypes with individual resolution. We demonstrate...
Background: 
Self organizing maps (SOM) enable the straightforward portraying of high-dimen...
* to whom correspondence should be addressed Background: Self organizing maps (SOM) enable the strai...
cDNA microarrays permit massively parallel gene expression analysis and have spawned a new paradigm ...
A self-organizing map (SOM) is an artificial neural network algorithm that can learn from the traini...
AbstractDNA microarray technologies together with rapidly increasing genomic sequence information is...
The contiguity between external exposure and internal stress burden in humans is linked by metabolic...
Motivation: Self-Organizing Maps (SOMs) are readily-available bioinformatics methods for clustering ...
A method to evaluate and analyze the massive data generated by series of microarray experiments is o...
With the increasing amount of available genomic sequences, novel tools are needed for comprehensiv...
Cluster analysis is one of the crucial steps in gene expression pattern (GEP) analysis. It leads to ...
Background: The availability of parallel, high-throughput microarray and sequencing experiments pose...
This paper introduces a comprehensive review of a Growing Hierarchical Self-Organizing Map (GHSOM) r...