| Literature DB >> 14728128 |
Y Aphinyanaphongs1, C F Aliferis.
Abstract
The discipline of Evidence Based Medicine (EBM) studies formal and quasi-formal methods for identifying high quality medical information and abstracting it in useful forms so that patients receive the best customized care possible [1]. Current computer-based methods for finding high quality information in PubMed and similar bibliographic resources utilize search tools that employ preconstructed Boolean queries. These clinical queries are derived from a combined application of (a) user interviews, (b) ad-hoc manual document quality review, and (c) search over a constrained space of disjunctive Boolean queries. The present research explores the use of powerful text categorization (machine learning) methods to identify content-specific and high-quality PubMed articles. Our results show that models built with the proposed approach outperform the Boolean based PubMed clinical query filters in discriminatory power.Entities:
Mesh:
Year: 2003 PMID: 14728128 PMCID: PMC1480096
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076