Sciweavers

BMCBI
2008

MScanner: a classifier for retrieving Medline citations

13 years 4 months ago
MScanner: a classifier for retrieving Medline citations
Background: Keyword searching through PubMed and other systems is the standard means of retrieving information from Medline. However, ad-hoc retrieval systems do not meet all of the needs of databases that curate information from literature, or of text miners developing a corpus on a topic that has many terms indicative of relevance. Several databases have developed supervised learning methods that operate on a filtered subset of Medline, to classify Medline records so that fewer articles have to be manually reviewed for relevance. A few studies have considered generalisation of Medline classification to operate on the entire Medline database in a non-domainspecific manner, but existing applications lack speed, available implementations, or a means to measure performance in new domains. Results: MScanner is an implementation of a Bayesian classifier that provides a simple web interface for submitting a corpus of relevant training examples in the form of PubMed IDs and returning result...
Graham L. Poulter, Daniel L. Rubin, Russ B. Altman
Added 09 Dec 2010
Updated 09 Dec 2010
Type Journal
Year 2008
Where BMCBI
Authors Graham L. Poulter, Daniel L. Rubin, Russ B. Altman, Cathal Seoighe
Comments (0)