Much of knowledge modeling in the molecular biology domain involves interactions between proteins, genes, various forms of RNA, small molecules, etc. Interactions between these substances are typically extracted and codified manually, increasing the cost and time for modeling and substantially limiting the coverage of the resulting knowledge base. In this paper, we describe an automatic system that learns from text interaction verbs; these verbs can then form the core of automatically retrieved patterns which model classes of biological interactions. We investigate text features relating verbs with genes and proteins, and apply statistical tests and a logistic regression statistical model to determine whether a given verb belongs to the cla...
Background: The selection of relevant articles for curation, and linking those articles to experimen...
The number of biomedical publications has grown steadily in recent years. However, most biomedical f...
Automatic detection of protein-protein interactions (PPIs) in biomedical publications is vital for e...
Abstract Background Considerable efforts have been made to extract protein-protein interactions from...
BACKGROUND: We participated in three of the protein-protein interaction subtasks of the Second BioCr...
AbstractMotivation: The identification of events such as protein–protein interactions (PPIs) from th...
Motivation: An enormous number of protein–protein interaction relationships are buried in millions o...
The detection of mentions of protein-protein interactions in the scientific literature has recently ...
There is an increasing interest in the development of techniques for automatic relation extraction f...
Indiana University-Purdue University Indianapolis (IUPUI)Proteins are the building blocks in a biolo...
During the last decade, biomedicine has witnessed a tremendous development. Large amounts of experim...
International audienceBackgroundDiscovering gene interactions and their characterizations from biolo...
This report describes the BioText team participation in the Second BioCreAtIvE Challenge. We focused...
Extracting information from a stack of data is a tedious task and the scenario is no different in pr...
Background: The selection of relevant articles for curation, and linking those articles to experimen...
The number of biomedical publications has grown steadily in recent years. However, most biomedical f...
Automatic detection of protein-protein interactions (PPIs) in biomedical publications is vital for e...
Abstract Background Considerable efforts have been made to extract protein-protein interactions from...
BACKGROUND: We participated in three of the protein-protein interaction subtasks of the Second BioCr...
AbstractMotivation: The identification of events such as protein–protein interactions (PPIs) from th...
Motivation: An enormous number of protein–protein interaction relationships are buried in millions o...
The detection of mentions of protein-protein interactions in the scientific literature has recently ...
There is an increasing interest in the development of techniques for automatic relation extraction f...
Indiana University-Purdue University Indianapolis (IUPUI)Proteins are the building blocks in a biolo...
During the last decade, biomedicine has witnessed a tremendous development. Large amounts of experim...
International audienceBackgroundDiscovering gene interactions and their characterizations from biolo...
This report describes the BioText team participation in the Second BioCreAtIvE Challenge. We focused...
Extracting information from a stack of data is a tedious task and the scenario is no different in pr...
Background: The selection of relevant articles for curation, and linking those articles to experimen...
The number of biomedical publications has grown steadily in recent years. However, most biomedical f...
Automatic detection of protein-protein interactions (PPIs) in biomedical publications is vital for e...