Objective The ShARe/CLEF eHealth 2013 Evaluation Lab Task 1 was organized to evaluate the state of the art on the clinical text in (i) disorder mention identification/recognition based on Unified Medical Language System (UMLS) definition (Task 1a) and (ii) disorder mention normalization to an ontology (Task 1b). Such a community evaluation has not been previously executed. Task 1a included a total of 22 system submissions, and Task 1b included 17. Most of the systems employed a combination of rules and machine learners. Materials and methods We used a subset of the Shared Annotated Resources (ShARe) corpus of annotated clinical text-199 clinical notes for training and 99 for testing (roughly 180 K words in total). We provided the community ...
Abstract. This paper reports on the 2nd ShARe/CLEFeHealth eval-uation lab which continues our evalua...
Discharge summaries and other free-text reports in healthcare transfer information between working s...
This paper describes the SemEval-2014, Task 7 on the Analysis of Clinical Text and presents the eval...
Objective: The ShARe/CLEF eHealth 2013 Evaluation Lab Task 1 was organized to evaluate the state of ...
Abstract. The ShARe/CLEF eHealth Evaluation Lab (SHEL) organized a chal-lenge on natural language pr...
In this paper the system that was developed by Team UWM for the Task 14 of SemEval 2015 competition ...
Abstract. We participated in both tasks 1a and 1b of the ShARe/CLEF 2013 NLP Challenge, where 1a was...
Abstract Background Traditionally text mention normalization corpora have normalized concepts to sin...
This work describes the participation of the University of Texas Health Science Center at Houston (U...
Abstract. This paper describes a system for span detection and nor-malization of disorder mentions i...
This paper describes Team UWM’s sys-tem for the Task 7 of SemEval 2014 that does disorder mention ex...
Phenotypes form the basis for determining the existence of a disease against the given evidence. Muc...
The Australian e-Health Research Centre (AEHRC) recently participated in the ShARe/CLEF eHealth Eval...
AbstractBackgroundIdentifying key variables such as disorders within the clinical narratives in elec...
Abstract. In this pilot study, we aimed to generate a reference stan-dard of clinical acronyms and a...
Abstract. This paper reports on the 2nd ShARe/CLEFeHealth eval-uation lab which continues our evalua...
Discharge summaries and other free-text reports in healthcare transfer information between working s...
This paper describes the SemEval-2014, Task 7 on the Analysis of Clinical Text and presents the eval...
Objective: The ShARe/CLEF eHealth 2013 Evaluation Lab Task 1 was organized to evaluate the state of ...
Abstract. The ShARe/CLEF eHealth Evaluation Lab (SHEL) organized a chal-lenge on natural language pr...
In this paper the system that was developed by Team UWM for the Task 14 of SemEval 2015 competition ...
Abstract. We participated in both tasks 1a and 1b of the ShARe/CLEF 2013 NLP Challenge, where 1a was...
Abstract Background Traditionally text mention normalization corpora have normalized concepts to sin...
This work describes the participation of the University of Texas Health Science Center at Houston (U...
Abstract. This paper describes a system for span detection and nor-malization of disorder mentions i...
This paper describes Team UWM’s sys-tem for the Task 7 of SemEval 2014 that does disorder mention ex...
Phenotypes form the basis for determining the existence of a disease against the given evidence. Muc...
The Australian e-Health Research Centre (AEHRC) recently participated in the ShARe/CLEF eHealth Eval...
AbstractBackgroundIdentifying key variables such as disorders within the clinical narratives in elec...
Abstract. In this pilot study, we aimed to generate a reference stan-dard of clinical acronyms and a...
Abstract. This paper reports on the 2nd ShARe/CLEFeHealth eval-uation lab which continues our evalua...
Discharge summaries and other free-text reports in healthcare transfer information between working s...
This paper describes the SemEval-2014, Task 7 on the Analysis of Clinical Text and presents the eval...