Motivation: With an overwhelming amount of textual information in molecular biology and biomedicine, there is a need for effective literature mining techniques that can help biologists to gather and make use of the knowledge encoded in text documents. Although the knowledge is organized around sets of domain-specific terms, few literature mining systems incorporate deep and dynamic terminology processing. Results: In this paper, we present an overview of an integrated framework for terminology-driven mining from biomedical literature. The framework integrates the following components: automatic term recognition, term variation handling, acronym acquisition, automatic discovery of term similarities and term clustering. The term variant recog...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article we present an approach to the automatic discovery of term similarities, which may se...
In this paper we present a framework for the effective management of terms and their variants that a...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
AbstractSophisticated information technologies are needed for effective data acquisition and integra...
Abstract Background Due to the rapidly expanding body of biomedical literature, biologists require i...
AbstractSophisticated information technologies are needed for effective data acquisition and integra...
Discovering links and relationships is one of the main challenges in biomedical research, as scienti...
Abstract Motivation With more and more research dedicated to literature mining in the biomedical dom...
Abstract Background The exploding growth of the biomedical literature presents many challenges for b...
Motivation: The recent explosion of interest in mining the biomedical literature for associations be...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article we present an approach to the automatic discovery of term similarities, which may se...
In this paper we present a framework for the effective management of terms and their variants that a...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
MOTIVATION: With an overwhelming amount of textual information in molecular biology and biomedicine,...
AbstractSophisticated information technologies are needed for effective data acquisition and integra...
Abstract Background Due to the rapidly expanding body of biomedical literature, biologists require i...
AbstractSophisticated information technologies are needed for effective data acquisition and integra...
Discovering links and relationships is one of the main challenges in biomedical research, as scienti...
Abstract Motivation With more and more research dedicated to literature mining in the biomedical dom...
Abstract Background The exploding growth of the biomedical literature presents many challenges for b...
Motivation: The recent explosion of interest in mining the biomedical literature for associations be...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article, we present an approach to the automatic discovery of term similarities, which may s...
In this article we present an approach to the automatic discovery of term similarities, which may se...
In this paper we present a framework for the effective management of terms and their variants that a...