BACKGROUND: The identification of robust lists of molecular biomarkers related to a disease is a fundamental step for early diagnosis and treatment. However, methodologies for biomarker discovery using microarray data often provide results with limited overlap. It has been suggested that one reason for these inconsistencies may be that in complex diseases, such as cancer, multiple genes belonging to one or more physiological pathways are associated with the outcomes. Thus, a possible approach to improve list stability is to integrate biological information from genomic databases in the learning process; however, a comprehensive assessment based on different types of biological information is still lacking in the literature. In this work we...
In order to identify the genes associated with a given disease, a number of different high-throughpu...
Motivation: Understanding the association between genetic diseases and their causal genes is an impo...
Protein-protein interactions integrated with disease-gene associations represent important informati...
Abstract Background Semantic similarity measures are ...
The structured vocabulary that describes gene function, the gene ontology (GO), serves as a powerful...
Identifying similar diseases could potentially provide deeper understanding of their underlying caus...
Background: Predictive, stable and interpretable gene signatures are generally seen as an important ...
Biological systems, as complex as they may be, exhibit certain behavioural patterns as a response to...
AbstractBackgroundIdentifying relatedness among diseases could help deepen understanding for the und...
<p>Likelihood that two proteins will be related by ligand similarity (solid line: SEA E-value < 1e-5...
The ultimate aim of postgenomic biomedical research is to understand mechanisms of cellular systems ...
Contains fulltext : 34770.pdf ( ) (Open Access)ABSTRACT: BACKGROUND: In the post-g...
There exists a plethora of measures to evaluate functional similarity (FS) between genes, which is a...
The expansion of protein-ligand annotation databases has enabled large-scale networking of proteins ...
The ability to model intragenic relationships using networks has allowed for the interpretation of c...
In order to identify the genes associated with a given disease, a number of different high-throughpu...
Motivation: Understanding the association between genetic diseases and their causal genes is an impo...
Protein-protein interactions integrated with disease-gene associations represent important informati...
Abstract Background Semantic similarity measures are ...
The structured vocabulary that describes gene function, the gene ontology (GO), serves as a powerful...
Identifying similar diseases could potentially provide deeper understanding of their underlying caus...
Background: Predictive, stable and interpretable gene signatures are generally seen as an important ...
Biological systems, as complex as they may be, exhibit certain behavioural patterns as a response to...
AbstractBackgroundIdentifying relatedness among diseases could help deepen understanding for the und...
<p>Likelihood that two proteins will be related by ligand similarity (solid line: SEA E-value < 1e-5...
The ultimate aim of postgenomic biomedical research is to understand mechanisms of cellular systems ...
Contains fulltext : 34770.pdf ( ) (Open Access)ABSTRACT: BACKGROUND: In the post-g...
There exists a plethora of measures to evaluate functional similarity (FS) between genes, which is a...
The expansion of protein-ligand annotation databases has enabled large-scale networking of proteins ...
The ability to model intragenic relationships using networks has allowed for the interpretation of c...
In order to identify the genes associated with a given disease, a number of different high-throughpu...
Motivation: Understanding the association between genetic diseases and their causal genes is an impo...
Protein-protein interactions integrated with disease-gene associations represent important informati...