Motivation: A global view of the protein space is essential for functional and evolutionary analysis of proteins. In order to achieve this, a similarity network can be built using pairwise relationships among proteins. However, existing similarity networks employ a single similarity measure and therefore their utility depends highly on the quality of the selected measure. A more robust representation of the protein space can be realized if multiple sources of information are used. Results: We propose a novel approach for analyzing multi-attribute similarity networks by combining random walks on graphs with Bayesian theory. A multi-attribute network is created by combining sequence and structure based similarity measures. For each attribute ...
Biological networks obtained by high-throughput profiling or human curation are typically noisy. For...
BACKGROUND:The sequencing of the human genome has enabled us to access a comprehensive list of genes...
Protein interaction networks are a promising type of data for studying complex biological systems. H...
Motivation: A global view of the protein space is essential for functional and evolutionary analysis...
AbstractA set of proteins is a complex system whose elements are interrelated on the concept of sequ...
Identifying similar diseases could potentially provide deeper understanding of their underlying caus...
Protein classification is one of the critical problems in bioinformatics. Early studies used geometr...
Abstract Background Sequence similarity networks are useful for classifying and characterizing biolo...
Biologists regularly search databases of DNA or protein sequences for evolutionary or functional rel...
Biology's entrance into the genomic age has meant dramatic changes. Biologists once carried out pain...
Identifying protein complexes from protein-protein interaction networks (PPINs) is important to unde...
Biologists are constantly looking for new knowledge about biological properties and processes. Bio-m...
Biological networks obtained by high-throughput profiling or human curation are typically noisy. For...
The study of protein–protein interaction and the determination of protein functions are important pa...
multi-attribute similarity networks for robust representation of the protein spac
Biological networks obtained by high-throughput profiling or human curation are typically noisy. For...
BACKGROUND:The sequencing of the human genome has enabled us to access a comprehensive list of genes...
Protein interaction networks are a promising type of data for studying complex biological systems. H...
Motivation: A global view of the protein space is essential for functional and evolutionary analysis...
AbstractA set of proteins is a complex system whose elements are interrelated on the concept of sequ...
Identifying similar diseases could potentially provide deeper understanding of their underlying caus...
Protein classification is one of the critical problems in bioinformatics. Early studies used geometr...
Abstract Background Sequence similarity networks are useful for classifying and characterizing biolo...
Biologists regularly search databases of DNA or protein sequences for evolutionary or functional rel...
Biology's entrance into the genomic age has meant dramatic changes. Biologists once carried out pain...
Identifying protein complexes from protein-protein interaction networks (PPINs) is important to unde...
Biologists are constantly looking for new knowledge about biological properties and processes. Bio-m...
Biological networks obtained by high-throughput profiling or human curation are typically noisy. For...
The study of protein–protein interaction and the determination of protein functions are important pa...
multi-attribute similarity networks for robust representation of the protein spac
Biological networks obtained by high-throughput profiling or human curation are typically noisy. For...
BACKGROUND:The sequencing of the human genome has enabled us to access a comprehensive list of genes...
Protein interaction networks are a promising type of data for studying complex biological systems. H...