10 research outputs found
Searching biomedical databases on complementary medicine: the use of controlled vocabulary among authors, indexers and investigators
BACKGROUND: The optimal retrieval of a literature search in biomedicine depends on the appropriate use of Medical Subject Headings (MeSH), descriptors and keywords among authors and indexers. We hypothesized that authors, investigators and indexers in four biomedical databases are not consistent in their use of terminology in Complementary and Alternative Medicine (CAM). METHODS: Based on a research question addressing the validity of spinal palpation for the diagnosis of neuromuscular dysfunction, we developed four search concepts with their respective controlled vocabulary and key terms. We calculated the frequency of MeSH, descriptors, and keywords used by authors in titles and abstracts in comparison to standard practices in semantic and analytic indexing in MEDLINE, MANTIS, CINAHL, and Web of Science. RESULTS: Multiple searches resulted in the final selection of 38 relevant studies that were indexed at least in one of the four selected databases. Of the four search concepts, validity showed the greatest inconsistency in terminology among authors, indexers and investigators. The use of spinal terms showed the greatest consistency. Of the 22 neuromuscular dysfunction terms provided by the investigators, 11 were not contained in the controlled vocabulary and six were never used by authors or indexers. Most authors did not seem familiar with the controlled vocabulary for validity in the area of neuromuscular dysfunction. Recently, standard glossaries have been developed to assist in the research development of manual medicine. CONCLUSIONS: Searching biomedical databases for CAM is challenging due to inconsistent use of controlled vocabulary and indexing procedures in different databases. A standard terminology should be used by investigators in conducting their search strategies and authors when writing titles, abstracts and submitting keywords for publications
TB-Structure : Collective Intelligence for Exploratory Keyword Search
In this paper we address an exploratory search challenge by presenting a
new (structure-driven) collaborative filtering technique. The aim is to increase search effectiveness
by predicting implicit seeker’s intents at an early stage of the search process. This is
achieved by uncovering behavioral patterns within large datasets of preserved collective search
experience. We apply a specific tree-based data structure called a TB (There-and-Back) structure
for compact storage of search history in the form of merged query trails – sequences of
queries approaching iteratively a seeker’s goal. The organization of TB-structures allows inferring
new implicit trails for the prediction of a seeker’s intents. We used experiments to demonstrate
both: the storage compactness and inference potential of the proposed structure.peerReviewe