A machine learning-based system to normalise gene mentions to unique database identifiers Online publication date: Sat, 24-Jan-2015
by Yifei Chen; Feng Liu; Bernard Manderick
International Journal of Data Mining and Bioinformatics (IJDMB), Vol. 5, No. 6, 2011
Abstract: In this paper, we propose an integrated Gene normaliser (GNer) to assign a unique database identifier for each recognised gene mention in biological literature. The GNer combines Support Vector Machines (SVMs) and some rule-base components. First, we construct a dictionary from EntrezGene and BioThesaurus. Then we reduce variations and ambiguities of synonyms based on a designed pre-processor. Finally, a SVM-based disambiguation filter is developed to eliminate the ambiguity of exact matching. From the experimental results, the proposed GNer can achieve a fairly good performance, which can achieve the precision 80.5%, the recall 86.4% and the Fβ>1 measure 83.4.
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