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An infobutton for Web 2.0 clinical discussions: the knowledge linkage framework. | LitMetric

An infobutton for Web 2.0 clinical discussions: the knowledge linkage framework.

IEEE Trans Inf Technol Biomed

NICHE Research Group, Faculty of Computer Science, Halifax, NS, Canada.

Published: January 2012

This paper aims to develop an infobutton to automatically retrieve published papers corresponding to a topic-specific online clinical discussion. The knowledge linkages infobutton is designed to supplement online clinical conversations with pertinent medical literature from Pubmed. The project involves three distinct steps: 1) Clinical messages around a specific problem are grouped together into a thread. 2) These threads are processed using Metamap to link the conversations to keywords from the MeSH lexicon. 3) These keywords are used in a novel search strategy to retrieve a set of papers from Pubmed, which are then returned to the user. A pilot study using the messages from 2007 and 2008, was conducted to compare the knowledge linkage search strategy to a vector space model and extended Boolean model. The knowledge linkage model proved to be significantly better in terms of precision ( p = 0.013 and 0.003, respectively) and recall ( p = 0.351 and 0.013). Pertinent papers were returned to over 55% of the threads. This approach has demonstrated how clinicians can supplement their peer communications with evidence based research. Future work should focus on how to improve the threading and keyword-mapping strategies.

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Source
http://dx.doi.org/10.1109/TITB.2011.2177097DOI Listing

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