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upload hub_repos/chemdner/README.md to hub from bigbio repo
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README.md
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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: CHEMDNER
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---
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# Dataset Card for CHEMDNER
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## Dataset Description
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- **Homepage:** https://biocreative.bioinformatics.udel.edu/resources/biocreative-iv/chemdner-corpus/
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- **Pubmed:** True
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- **Public:** True
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- **Tasks:** Named Entity Recognition, Text Classification
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We present the CHEMDNER corpus, a collection of 10,000 PubMed abstracts that
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contain a total of 84,355 chemical entity mentions labeled manually by expert
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chemistry literature curators, following annotation guidelines specifically
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defined for this task. The abstracts of the CHEMDNER corpus were selected to be
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representative for all major chemical disciplines. Each of the chemical entity
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mentions was manually labeled according to its structure-associated chemical
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entity mention (SACEM) class: abbreviation, family, formula, identifier,
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multiple, systematic and trivial.
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## Citation Information
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```
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@article{Krallinger2015,
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title = {The CHEMDNER corpus of chemicals and drugs and its annotation principles},
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author = {
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Krallinger, Martin and Rabal, Obdulia and Leitner, Florian and Vazquez,
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Miguel and Salgado, David and Lu, Zhiyong and Leaman, Robert and Lu, Yanan
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and Ji, Donghong and Lowe, Daniel M. and Sayle, Roger A. and
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Batista-Navarro, Riza Theresa and Rak, Rafal and Huber, Torsten and
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Rockt{"a}schel, Tim and Matos, S{'e}rgio and Campos, David and Tang,
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Buzhou and Xu, Hua and Munkhdalai, Tsendsuren and Ryu, Keun Ho and Ramanan,
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S. V. and Nathan, Senthil and {{Z}}itnik, Slavko and Bajec, Marko and
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Weber, Lutz and Irmer, Matthias and Akhondi, Saber A. and Kors, Jan A. and
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Xu, Shuo and An, Xin and Sikdar, Utpal Kumar and Ekbal, Asif and Yoshioka,
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Masaharu and Dieb, Thaer M. and Choi, Miji and Verspoor, Karin and Khabsa,
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Madian and Giles, C. Lee and Liu, Hongfang and Ravikumar, Komandur
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Elayavilli and Lamurias, Andre and Couto, Francisco M. and Dai, Hong-Jie
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and Tsai, Richard Tzong-Han and Ata, Caglar and Can, Tolga and Usi{'e},
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Anabel and Alves, Rui and Segura-Bedmar, Isabel and Mart{'i}nez, Paloma
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and Oyarzabal, Julen and Valencia, Alfonso
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},
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year = 2015,
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month = {Jan},
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day = 19,
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journal = {Journal of Cheminformatics},
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volume = 7,
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number = 1,
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pages = {S2},
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doi = {10.1186/1758-2946-7-S1-S2},
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issn = {1758-2946},
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url = {https://doi.org/10.1186/1758-2946-7-S1-S2},
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abstract = {
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The automatic extraction of chemical information from text requires the
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recognition of chemical entity mentions as one of its key steps. When
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developing supervised named entity recognition (NER) systems, the
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availability of a large, manually annotated text corpus is desirable.
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Furthermore, large corpora permit the robust evaluation and comparison of
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different approaches that detect chemicals in documents. We present the
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CHEMDNER corpus, a collection of 10,000 PubMed abstracts that contain a
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total of 84,355 chemical entity mentions labeled manually by expert
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chemistry literature curators, following annotation guidelines specifically
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defined for this task. The abstracts of the CHEMDNER corpus were selected
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to be representative for all major chemical disciplines. Each of the
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chemical entity mentions was manually labeled according to its
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structure-associated chemical entity mention (SACEM) class: abbreviation,
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family, formula, identifier, multiple, systematic and trivial. The
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difficulty and consistency of tagging chemicals in text was measured using
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an agreement study between annotators, obtaining a percentage agreement of
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91. For a subset of the CHEMDNER corpus (the test set of 3,000 abstracts)
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we provide not only the Gold Standard manual annotations, but also mentions
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automatically detected by the 26 teams that participated in the BioCreative
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IV CHEMDNER chemical mention recognition task. In addition, we release the
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CHEMDNER silver standard corpus of automatically extracted mentions from
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17,000 randomly selected PubMed abstracts. A version of the CHEMDNER corpus
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in the BioC format has been generated as well. We propose a standard for
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required minimum information about entity annotations for the construction
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of domain specific corpora on chemical and drug entities. The CHEMDNER
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corpus and annotation guidelines are available at:
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ttp://www.biocreative.org/resources/biocreative-iv/chemdner-corpus/
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}
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}
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```
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