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 Semi-automated screening of biomedical citations for systematic reviews Wallace BC; Trikalinos TA; Lau J; Brodley C; Schmid CHBMC Bioinformatics  2010[Jan]; 11 (ä): 55BACKGROUND: Systematic reviews address a specific clinical question by unbiasedly  assessing and analyzing the pertinent literature. Citation screening is a  time-consuming and critical step in systematic reviews. Typically, reviewers must  evaluate thousands of citations to identify articles eligible for a given review.  We explore the application of machine learning techniques to semi-automate  citation screening, thereby reducing the reviewers' workload. RESULTS: We present  a novel online classification strategy for citation screening to automatically  discriminate "relevant" from "irrelevant" citations. We use an ensemble of  Support Vector Machines (SVMs) built over different feature-spaces (e.g.,  abstract and title text), and trained interactively by the reviewer(s).  Semi-automating the citation screening process is difficult because any such  strategy must identify all citations eligible for the systematic review. This  requirement is made harder still due to class imbalance; there are far fewer  "relevant" than "irrelevant" citations for any given systematic review. To  address these challenges we employ a custom active-learning strategy developed  specifically for imbalanced datasets. Further, we introduce a novel undersampling  technique. We provide experimental results over three real-world systematic  review datasets, and demonstrate that our algorithm is able to reduce the number  of citations that must be screened manually by nearly half in two of these, and  by around 40% in the third, without excluding any of the citations eligible for  the systematic review. CONCLUSIONS: We have developed a semi-automated citation  screening algorithm for systematic reviews that has the potential to  substantially reduce the number of citations reviewers have to manually screen,  without compromising the quality and comprehensiveness of the review.|*Review Literature as Topic[MESH]|Information Storage and Retrieval/*methods[MESH]|Periodicals as Topic[MESH]|Publications[MESH]
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