Background: Semantic similarity between Gene Ontology (GO) terms is a fundamental measure for many bioinformatics applications, such as determining functional similarity between genes or proteins. Most previous research exploited information content to estimate the semantic similarity between GO terms; recently some research exploited word embeddings to learn vector representations for GO terms from a large-scale corpus. In this paper, we proposed a novel method, named GO2Vec, that exploits graph embeddings to learn vector representations for GO terms from GO graph. GO2Vec combines the information from both GO graph and GO annotations, and its learned vectors can be applied to a variety of bioinformatics applications, such as calculating fu...
The rapid growth of biomedical data annotated by Gene Ontology (GO) vocabulary demands an intelligen...
This research explores the feasibility of semantic similarity approaches to supporting predictive ta...
Semantic similarity measures have become important in bioinformatics as they quantify relatedness be...
Measuring the semantic similarity between Gene Ontology (GO) terms is an essential step in functiona...
The study of protein–protein interaction and the determination of protein functions are important pa...
International audienceThe Gene Ontology (GO) is a well known controlled vocabulary describing the bi...
Abstract Background The Gene Ontology (GO) is a well known controlled vocabulary describing the biol...
Abstract Background Semantic similarity measures are ...
Abstract Background Semantic similarity measures are ...
International audienceAbstract Background Automatic functional annotation of proteins is an open res...
MotivationWhile the manually curated Gene Ontology (GO) is widely used, inferring a GO directly from...
The structured vocabulary that describes gene function, the gene ontology (GO), serves as a powerful...
Abstract Background Comparing and classifying functions of gene products are important in today’s bi...
The gene ontology (GO) database contains GO terms that describe biological functions of genes. Previ...
AbstractExisting methods for computing the semantic similarity between Gene Ontology (GO) terms are ...
The rapid growth of biomedical data annotated by Gene Ontology (GO) vocabulary demands an intelligen...
This research explores the feasibility of semantic similarity approaches to supporting predictive ta...
Semantic similarity measures have become important in bioinformatics as they quantify relatedness be...
Measuring the semantic similarity between Gene Ontology (GO) terms is an essential step in functiona...
The study of protein–protein interaction and the determination of protein functions are important pa...
International audienceThe Gene Ontology (GO) is a well known controlled vocabulary describing the bi...
Abstract Background The Gene Ontology (GO) is a well known controlled vocabulary describing the biol...
Abstract Background Semantic similarity measures are ...
Abstract Background Semantic similarity measures are ...
International audienceAbstract Background Automatic functional annotation of proteins is an open res...
MotivationWhile the manually curated Gene Ontology (GO) is widely used, inferring a GO directly from...
The structured vocabulary that describes gene function, the gene ontology (GO), serves as a powerful...
Abstract Background Comparing and classifying functions of gene products are important in today’s bi...
The gene ontology (GO) database contains GO terms that describe biological functions of genes. Previ...
AbstractExisting methods for computing the semantic similarity between Gene Ontology (GO) terms are ...
The rapid growth of biomedical data annotated by Gene Ontology (GO) vocabulary demands an intelligen...
This research explores the feasibility of semantic similarity approaches to supporting predictive ta...
Semantic similarity measures have become important in bioinformatics as they quantify relatedness be...