Lada A. Adamic, Dennis M. Wilkinson, B. Huberman, Eytan Adar
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A literature based method for identifying gene-disease connections
We present a statistical method that can swiftly identify, from the literature, sets of genes known to be associated with given diseases. It offers a comprehensive way to treat alias symbols, a statistical method for computing the relevance of the gene to the query, and a novel way to disambiguate gene symbols from other abbreviations. The method is illustrated by finding genes related to breast cancer.