Using Combinatory Categorial Grammar to Extract Biomedical Information
IEEE Intelligent Systems
Automatic Extraction of Biological Information from Scientific Text: Protein-Protein Interactions
Proceedings of the Seventh International Conference on Intelligent Systems for Molecular Biology
Grounding spatial named entities for information extraction and question answering
HLT-NAACL-GEOREF '03 Proceedings of the HLT-NAACL 2003 workshop on Analysis of geographic references - Volume 1
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The new challenge in post-genome research is to unravel the underlying interplay of bio-molecules as informative molecular interaction pathways. However, much of the molecular interaction information is currently contained in scientific journals. Despite previous accomplishments from the text mining community and the increasing research activities in biological text mining, biologists are still expending great efforts by laborious hand-curation of the scientific literature to create quality online databases of bio-molecules and their interactions. In this paper, we examine why this is the case by reviewing the various challenges in mining biological literature for bio-molecular interaction pathways. We propose a methodology for training and evaluating biological literature-based data mining applications with annotated biological review papers. By laying out the various computational challenges, we hope that a road map can be furnished for the text-based data mining community to collectively solve this complex but increasingly important data mining task in bio-informatics.