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upload hub_repos/euadr/README.md to hub from bigbio repo

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+
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+ ---
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+ language:
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+ - en
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+ license: unknown
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+ license_bigbio_shortname: UNKNOWN
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+ pretty_name: EU-ADR
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+ ---
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+
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+
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+ # Dataset Card for EU-ADR
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+
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+ ## Dataset Description
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+
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+ - **Homepage:** https://www.sciencedirect.com/science/article/pii/S1532046412000573
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+ - **Pubmed:** True
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+ - **Public:** True
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+ - **Tasks:** Named Entity Recognition, Relation Extraction
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+
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+
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+ Corpora with specific entities and relationships annotated are essential to train and evaluate text-mining systems that are developed to extract specific structured information from a large corpus. In this paper we describe an approach where a named-entity recognition system produces a first annotation and annotators revise this annotation using a web-based interface. The agreement figures achieved show that the inter-annotator agreement is much better than the agreement with the system provided annotations. The corpus has been annotated for drugs, disorders, genes and their inter-relationships. For each of the drug-disorder, drug-target, and target-disorder relations three experts have annotated a set of 100 abstracts. These annotated relationships will be used to train and evaluate text-mining software to capture these relationships in texts.
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+
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+
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+
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+ ## Citation Information
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+
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+ ```
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+ @article{VANMULLIGEN2012879,
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+ title = {The EU-ADR corpus: Annotated drugs, diseases, targets, and their relationships},
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+ journal = {Journal of Biomedical Informatics},
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+ volume = {45},
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+ number = {5},
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+ pages = {879-884},
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+ year = {2012},
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+ note = {Text Mining and Natural Language Processing in Pharmacogenomics},
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+ issn = {1532-0464},
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+ doi = {https://doi.org/10.1016/j.jbi.2012.04.004},
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+ url = {https://www.sciencedirect.com/science/article/pii/S1532046412000573},
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+ author = {Erik M. {van Mulligen} and Annie Fourrier-Reglat and David Gurwitz and Mariam Molokhia and Ainhoa Nieto and Gianluca Trifiro and Jan A. Kors and Laura I. Furlong},
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+ keywords = {Text mining, Corpus development, Machine learning, Adverse drug reactions},
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+ abstract = {Corpora with specific entities and relationships annotated are essential to train and evaluate text-mining systems that are developed to extract specific structured information from a large corpus. In this paper we describe an approach where a named-entity recognition system produces a first annotation and annotators revise this annotation using a web-based interface. The agreement figures achieved show that the inter-annotator agreement is much better than the agreement with the system provided annotations. The corpus has been annotated for drugs, disorders, genes and their inter-relationships. For each of the drug–disorder, drug–target, and target–disorder relations three experts have annotated a set of 100 abstracts. These annotated relationships will be used to train and evaluate text-mining software to capture these relationships in texts.}
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+ }
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+
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+ ```