textabstractWe participated in task 2 of the CLEF eHealth 2016 chal-lenge. Two subtasks were addressed: entity recognition and normalization in a corpus of French drug labels and Medline titles, and ICD-10 coding of French death certificates. For both subtasks we used a dictionary-based approach. For entity recognition and normalization, we used Peregrine, our open-source indexing engine, with a dictionary based on French terms in the Unified Medical Language System (UMLS) supplemented with English UMLS terms that were translated into French with automatic translators. For ICD-10 coding, we used the Solr text tagger, together with one of two ICD-10 terminologies derived from the task training ma-terial. To reduce the number of false-positiv...
Abstract. We present our participation in Task 2 of the 2013 CLEF-eHEALTH Challenge, whose goal was ...
Clinical texts, such as discharge sum-maries or test reports, contain a valuable amount of informati...
This paper describes the participation of the KFU team in the CLEF eHealth 2017 challenge. Specifica...
International audienceThis paper describes the participation of master's students (LITL programme, u...
In this paper we present two tools for facing task 2 in CLEF eHealth 2016. The first one is a semant...
© Springer Nature Switzerland AG 2018. Medical Concept Coding (MCD) is a crucial task in biomedical ...
Abstract. This paper describes the participation of master's students (LITL programme, universi...
BiTeM/SIB Text Mining (http://bitem.hesge.ch/) is a University re-search group carrying over activit...
A vast amount of information in the biomedical domain is available as natural language free text. An...
International audienceExtracting concepts from medical texts is a key to support many advanced appli...
International audienceThis paper describes the participation of a group of students supervised by tw...
Abstract. The ShARe/CLEF eHealth Evaluation Lab (SHEL) organized a chal-lenge on natural language pr...
This paper describes our participation on Task 7 of SemEval 2014, which fo-cused on the recognition ...
In this paper we present a semantic tagger aiming to detect relevant entities in French medical doc...
Phenotypes form the basis for determining the existence of a disease against the given evidence. Muc...
Abstract. We present our participation in Task 2 of the 2013 CLEF-eHEALTH Challenge, whose goal was ...
Clinical texts, such as discharge sum-maries or test reports, contain a valuable amount of informati...
This paper describes the participation of the KFU team in the CLEF eHealth 2017 challenge. Specifica...
International audienceThis paper describes the participation of master's students (LITL programme, u...
In this paper we present two tools for facing task 2 in CLEF eHealth 2016. The first one is a semant...
© Springer Nature Switzerland AG 2018. Medical Concept Coding (MCD) is a crucial task in biomedical ...
Abstract. This paper describes the participation of master's students (LITL programme, universi...
BiTeM/SIB Text Mining (http://bitem.hesge.ch/) is a University re-search group carrying over activit...
A vast amount of information in the biomedical domain is available as natural language free text. An...
International audienceExtracting concepts from medical texts is a key to support many advanced appli...
International audienceThis paper describes the participation of a group of students supervised by tw...
Abstract. The ShARe/CLEF eHealth Evaluation Lab (SHEL) organized a chal-lenge on natural language pr...
This paper describes our participation on Task 7 of SemEval 2014, which fo-cused on the recognition ...
In this paper we present a semantic tagger aiming to detect relevant entities in French medical doc...
Phenotypes form the basis for determining the existence of a disease against the given evidence. Muc...
Abstract. We present our participation in Task 2 of the 2013 CLEF-eHEALTH Challenge, whose goal was ...
Clinical texts, such as discharge sum-maries or test reports, contain a valuable amount of informati...
This paper describes the participation of the KFU team in the CLEF eHealth 2017 challenge. Specifica...