Medikuntza arloko eta arlo juridikoko hizkuntzaren prozesamendua

NUBes: A Corpus of Negation and Uncertainty in Spanish Clinical Texts.

This paper introduces the first version of the NUB ES 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.

PRIDAIAS: Hacia la PRIvacidad de los Datos en Aplicaciones de Inteligencia Artificial para la Salud

Proiektu honen helburu orokorra Ikaskuntza Federatuko sistema berri bat garatzea da, Machine Learning, Big Data eta LNP teknika berrietan oinarrituta. Sistema horrek txosten medikoetako testuetatik edukiak atera eta espediente mediko bateko atal zehatzekin lotzea ahalbidetuko luke.

MEDIA team at the CLEF-2020 MultilingualInformation Extraction Task

The aim of this paper is to present our approach (MEDIA)on the CLEF-2020 eHealth Task 1. The task consists in automatically assigning ICD10 codes (CIE-10, in Spanish) to clinical case documents,evaluating the prediction against manually generated ICD10 codifications. Our system took part in two different subtasks: one corresponding to Diagnosis Coding (CodiEsp-D) and the other to Procedure Coding(CodiEsp-P).

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