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Genescene: Biomedical Text And Data Mining

Leroy, Gondy and Chen, Hsinchun and Martinez, Jesse D. and Eggers, Shauna and Falsey, Ryan R. and Kislin, Kerri L. and Huang, Zan and Li, Jiexun and Xu, Jie and McDonald, Daniel M. and Ng, Gavin (2005) Genescene: Biomedical Text And Data Mining.

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Abstract

To access the content of digital texts efficiently, it is necessary to provide more sophisticated access than keyword based searching. Genescene provides biomedical researchers with research findings and background relations automatically extracted from text and experimental data. These provide a more detailed overview of the information available. The extracted relations were evaluated by qualified researchers and are precise. A qualitative ongoing evaluation of the current online interface indicates that this method to search the literature is more useful and efficient than keyword based searching.

EPrint Type:Preprint
Keywords:National Science Digital Libraray, NSDL, Artificial Intelligence Lab, AI Lab, Genescene
Subjects:Data Mining
Medical Libraries
Information Extraction
ID Code:432
Deposited On:16 August 2004
Alternative Locations:http://ai.bpa.arizona.edu/go/papers.html
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