Title :
Aggregating automatically extracted regulatory pathway relations
Author :
Marshall, Byron ; Su, Hua ; McDonald, Daniel ; Eggers, Shauna ; Chen, Hsinchun
Author_Institution :
Oregon State Univ., Corvallis, OR
Abstract :
Automatic tools to extract information from biomedical texts are needed to help researchers leverage the vast and increasing body of biomedical literature. While several biomedical relation extraction systems have been created and tested, little work has been done to meaningfully organize the extracted relations. Organizational processes should consolidate multiple references to the same objects over various levels of granularity, connect those references to other resources, and capture contextual information. We propose a feature decomposition approach to relation aggregation to support a five-level aggregation framework. Our BioAggregate tagger uses this approach to identify key features in extracted relation name strings. We show encouraging feature assignment accuracy and report substantial consolidation in a network of extracted relations
Keywords :
feature extraction; information retrieval; knowledge acquisition; knowledge representation; medical information systems; BioAggregate tagger; biomedical literature; biomedical relation extraction systems; biomedical texts; feature decomposition; five-level aggregation framework; knowledge extraction; regulatory pathway analysis; Abstracts; Algorithm design and analysis; Data mining; Feature extraction; Information analysis; Object recognition; Organizing; Spatial databases; System testing; Visualization; Knowledge representation; regulatory pathway analysis; relation parsing;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2005.856857