Abstract Background Automatic identification of term variants or acceptable alternative free-text terms for gene and protein names from the millions of biomedical publications is a challenging task. Ontologies, such as the Cardiovascular Disease Ontology (CVDO), capture domain knowledge in a computational form and can provide context for gene/protein names as written in the literature. This study investigates: 1) if word embeddings from Deep Learning algorithms can provide a list of term variants for a given gene/protein of interest; and 2) if biological knowledge from the CVDO can improve such a list without modifying the word embeddings created. Methods We have manually annotated 105 gene/protein names from 25 PubMed titles/abstracts and ...
In many areas of academic publishing, there is an explosion of literature, and sub-division of field...
Background: The engineering of ontologies, especially with a view to a text-mining use, is still a ...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
Abstract Background Automatic identification of term variants or acceptable alternative free-text te...
Background Automatic identification of term variants or acceptable alternative free-text terms for g...
Abstract Background Named entity recognition is critical for biomedical text mining, where it is not...
<div><p>Synonymous relationships among biomedical terms are extensively annotated within specialized...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
The massive growth of biomedical text makes it very challenging for researchers to review all releva...
Motivation: With an overwhelming amount of textual information in molecular biology and biomedicine,...
TermsMapped.xls, this file contains the mapping performed for the 105 terms from 25 PubMed titles/ab...
We present an approach towards the automatic detection of names of proteins, genes, species, etc. i...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
MOTIVATION: Automatic phenotype concept recognition from unstructured text remains a challenging tas...
Abstract Background Due to the rapidly expanding body of biomedical literature, biologists require i...
In many areas of academic publishing, there is an explosion of literature, and sub-division of field...
Background: The engineering of ontologies, especially with a view to a text-mining use, is still a ...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
Abstract Background Automatic identification of term variants or acceptable alternative free-text te...
Background Automatic identification of term variants or acceptable alternative free-text terms for g...
Abstract Background Named entity recognition is critical for biomedical text mining, where it is not...
<div><p>Synonymous relationships among biomedical terms are extensively annotated within specialized...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
The massive growth of biomedical text makes it very challenging for researchers to review all releva...
Motivation: With an overwhelming amount of textual information in molecular biology and biomedicine,...
TermsMapped.xls, this file contains the mapping performed for the 105 terms from 25 PubMed titles/ab...
We present an approach towards the automatic detection of names of proteins, genes, species, etc. i...
With the ever increase in biomedical literature, text-mining has emerged as an important technology ...
MOTIVATION: Automatic phenotype concept recognition from unstructured text remains a challenging tas...
Abstract Background Due to the rapidly expanding body of biomedical literature, biologists require i...
In many areas of academic publishing, there is an explosion of literature, and sub-division of field...
Background: The engineering of ontologies, especially with a view to a text-mining use, is still a ...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...