about
Crowdsourcing in biomedicine: challenges and opportunitiesPubMed and beyond: a survey of web tools for searching biomedical literatureExploring the Unexplored: Identifying Implicit and Indirect Descriptions of Biomedical Terminologies Based on Multifaceted Weighting CombinationsStudying PubMed usages in the field for complex problem solving: Implications for tool design.Understanding PubMed user search behavior through log analysisDeepMeSH: deep semantic representation for improving large-scale MeSH indexingCommunity challenges in biomedical text mining over 10 years: success, failure and the future.Developing topic-specific search filters for PubMed with click-through data.Improving accuracy for identifying related PubMed queries by an integrated approach.Concept-based query expansion for retrieving gene related publications from MEDLINE.MeSH Now: automatic MeSH indexing at PubMed scale via learning to rankBoolean versus ranked querying for biomedical systematic reviewsUser centered and ontology based information retrieval system for life sciences.Performance evaluation of Unified Medical Language System®'s synonyms expansion to query PubMed.Automated semantic annotation of rare disease cases: a case studyA study on PubMed search tag usage pattern: association rule mining of a full-day PubMed query log.Automated Patent Categorization and Guided Patent Search using IPC as Inspired by MeSH and PubMedTowards Transforming Expert-based Content to Evidence-based Content.Query log analysis of an electronic health record search engine.MeSHLabeler: improving the accuracy of large-scale MeSH indexing by integrating diverse evidenceAnalysis of PubMed User Sessions Using a Full-Day PubMed Query Log: A Comparison of Experienced and Nonexperienced PubMed Users.Discovering biomedical semantic relations in PubMed queries for information retrieval and database curationImproving information retrieval using Medical Subject Headings Concepts: a test case on rare and chronic diseasesKnowledge-Based Query Construction Using the CDSS Knowledge Base for Efficient Evidence RetrievalAutomatically finding relevant citations for clinical guideline development.Improving the utility of MeSH® terms using the TopicalMeSH representation.Improving image retrieval effectiveness via query expansion using MeSH hierarchical structure.Comment on 'MeSH-up: effective MeSH text classification for improved document retrieval'PhenDisco: phenotype discovery system for the database of genotypes and phenotypes.MeSHSim: An R/Bioconductor package for measuring semantic similarity over MeSH headings and MEDLINE documents.GO2PUB: Querying PubMed with semantic expansion of gene ontology terms.Bat-Inspired Algorithm Based Query Expansion for Medical Web Information Retrieval."Hybrid Topics" - Facilitating the Interpretation of Topics Through the Addition of MeSH Descriptors to Bags of Words.Bridging the gap: Incorporating a semantic similarity measure for effectively mapping PubMed queries to documents.Query expansion using MeSH terms for dataset retrieval: OHSU at the bioCADDIE 2016 dataset retrieval challenge.Initializing and Growing a Database of Health Information Technology (HIT) Events by Using TF-IDF and Biterm Topic Modeling.Classical databases and knowledge organization: A case for boolean retrieval and human decision-making during searchesA Corpus with Multi-Level Annotations of Patients, Interventions and Outcomes to Support Language Processing for Medical Literature
P2860
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P2860
description
2009 nî lūn-bûn
@nan
2009 թուականի Յունուարին հրատարակուած գիտական յօդուած
@hyw
2009 թվականի հունվարին հրատարակված գիտական հոդված
@hy
2009年の論文
@ja
2009年学术文章
@wuu
2009年学术文章
@zh-cn
2009年学术文章
@zh-hans
2009年学术文章
@zh-my
2009年学术文章
@zh-sg
2009年學術文章
@yue
name
Evaluation of Query Expansion Using MeSH in PubMed.
@ast
Evaluation of Query Expansion Using MeSH in PubMed.
@en
type
label
Evaluation of Query Expansion Using MeSH in PubMed.
@ast
Evaluation of Query Expansion Using MeSH in PubMed.
@en
prefLabel
Evaluation of Query Expansion Using MeSH in PubMed.
@ast
Evaluation of Query Expansion Using MeSH in PubMed.
@en
P2860
P1476
Evaluation of Query Expansion Using MeSH in PubMed.
@en
P2093
P2860
P2888
P356
10.1007/S10791-008-9074-8
P577
2009-01-01T00:00:00Z
P5875
P6179
1007640210