Facilitating Biomedical Systematic Reviews Using Ranked Text Retrieval and Classification
نویسندگان
چکیده
Searching and selecting articles to be included in systematic reviews is a real challenge for healthcare agencies responsible for publishing these reviews. The current practice of manually reviewing all papers returned by complex hand-crafted boolean queries is human labour-intensive and difficult to maintain. We demonstrate a two-stage searching system that takes advantage of ranked queries and support-vector machine text classification to assist in the retrieval of relevant articles, and to restrict results to higher-quality documents. Our proposed approach shows significant work saved in the systematic review process over a baseline of a keyword-based retrieval
منابع مشابه
Boolean and ranked information retrieval for biomedical systematic reviewing
Evidence-based medicine seeks to base clinical decisions on the best currently available scientific evidence and is becoming accepted practice. A key role is played by systematic reviews, which synthesize the biomedical literature and rely on different information retrieval methods to identify a comprehensive set of relevant studies. With Boolean retrieval, the primary retrieval method in this ...
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تاریخ انتشار 2008