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Linking chemical and disease entities to ontologies by integrating PageRank with extracted relations from literature
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In: J Cheminform (2020)
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Improving accessibility and distinction between negative results in biomedical relation extraction
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In: Genomics Inform (2020)
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BiOnt: Deep Learning Using Multiple Biomedical Ontologies for Relation Extraction
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A hybrid approach toward biomedical relation extraction training corpora: combining distant supervision with crowdsourcing
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In: Database (Oxford) (2020)
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Proposal of the First International Workshop on Semantic Indexing and Information Retrieval for Health from Heterogeneous Content Types and Languages (SIIRH)
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MER: a shell script and annotation server for minimal named entity recognition and linking
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Identifying Human Phenotype Terms by Combining Machine Learning and Validation Rules
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The CHEMDNER corpus of chemicals and drugs and its annotation principles
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Automatic concept recognition using the Human Phenotype Ontology reference and test suite corpora
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Automatic Background Knowledge Selection for Matching Biomedical Ontologies
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CIDS country rankings: comparing documents and citations of USA, UK and China top researchers ...
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