Motivation: Genome-wide gene expression measurements, as currently determined by the microarray technology, can be represented mathematically as points in a high-dimensional gene expression space. Genes interact with each other in regulatory networks, restricting the cellular gene expression profiles to a certain manifold, or surface, in gene expression space. To obtain knowledge about this manifold, various dimensionality reduction methods and distance metrics are used. For data points distributed on curved manifolds, a sensible distance measure would be the geodesic distance along the manifold. In this work, we examine whether an approximate geodesic distance measure captures biological similarities better than the traditionally used Eucl...
BackgroundLife processes are determined by the organism's genetic profile and multiple environmental...
| openaire: EC/H2020/748354/EU//NonnegativeRankThe spatial organization of the genome in the cell nu...
In this paper, we propose a novel geodesic distance based clustering approach for delineating bounda...
Recent advances in molecular biology and biotechnology have made it possible to mon-itor the activit...
Using microarray measurements techniques, it is possible to measure the activity of genes simultaneo...
Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensio...
This thesis deals with manifold learning techniques and their application in gene expression data an...
The spatial organization of genomes is non-random, cell-type specific, and has been linked to cellul...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
Identifying differentially expressed genes is critical in microarray data analysis. Many methods hav...
Abstract — In this paper we show that the normalized compression distance can be applied to gene exp...
This paper deals with a new distance measure for genes using their microarray expressions. The dista...
Background The search for cluster structure in microarray datasets is a base problem for the so-cal...
Similarity measurement is one of the most important stages in the process of cancer discovery from g...
BackgroundLife processes are determined by the organism's genetic profile and multiple environmental...
| openaire: EC/H2020/748354/EU//NonnegativeRankThe spatial organization of the genome in the cell nu...
In this paper, we propose a novel geodesic distance based clustering approach for delineating bounda...
Recent advances in molecular biology and biotechnology have made it possible to mon-itor the activit...
Using microarray measurements techniques, it is possible to measure the activity of genes simultaneo...
Manifold learning models attempt to parsimoniously describe multivariate data through a low-dimensio...
This thesis deals with manifold learning techniques and their application in gene expression data an...
The spatial organization of genomes is non-random, cell-type specific, and has been linked to cellul...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
Identifying differentially expressed genes is critical in microarray data analysis. Many methods hav...
Abstract — In this paper we show that the normalized compression distance can be applied to gene exp...
This paper deals with a new distance measure for genes using their microarray expressions. The dista...
Background The search for cluster structure in microarray datasets is a base problem for the so-cal...
Similarity measurement is one of the most important stages in the process of cancer discovery from g...
BackgroundLife processes are determined by the organism's genetic profile and multiple environmental...
| openaire: EC/H2020/748354/EU//NonnegativeRankThe spatial organization of the genome in the cell nu...
In this paper, we propose a novel geodesic distance based clustering approach for delineating bounda...