Salvador Lima Lopez
2020
NUBes: A Corpus of Negation and Uncertainty in Spanish Clinical Texts
Salvador Lima Lopez
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Naiara Perez
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Montse Cuadros
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German Rigau
Proceedings of The 12th Language Resources and Evaluation Conference
This paper introduces the first version of the NUBes corpus (Negation and Uncertainty annotations in Biomedical texts in Spanish). The corpus is part of an on-going research and currently consists of 29,682 sentences obtained from anonymised health records annotated with negation and uncertainty. The article includes an exhaustive comparison with similar corpora in Spanish, and presents the main annotation and design decisions. Additionally, we perform preliminary experiments using deep learning algorithms to validate the annotated dataset. As far as we know, NUBes is the largest available corpora for negation in Spanish and the first that also incorporates the annotation of speculation cues, scopes, and events.
HitzalMed: Anonymisation of Clinical Text in Spanish
Salvador Lima Lopez
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Naiara Perez
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Laura García-Sardiña
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Montse Cuadros
Proceedings of The 12th Language Resources and Evaluation Conference
HitzalMed is a web-framed tool that performs automatic detection of sensitive information in clinical texts using machine learning algorithms reported to be competitive for the task. Moreover, once sensitive information is detected, different anonymisation techniques are implemented that are configurable by the user –for instance, substitution, where sensitive items are replaced by same category text in an effort to generate a new document that looks as natural as the original one. The tool is able to get data from different document formats and outputs downloadable anonymised data. This paper presents the anonymisation and substitution technology and the demonstrator which is publicly available at https://snlt.vicomtech.org/hitzalmed.