Abstract. We are developing a system that analyze medical reports and extract a SNOMED-CT based concept representation. The more interesting characteristic of our system is not only that it can detect the concepts. It also takes into account if they appear in an affirmative, negative or speculative context. The system also separates the concept representation according to the structure of the document. Our system takes these steps: automatic orthographic correction, acronyms and abbreviation detection, negation and speculation phrase detection and medical concepts detection. For participating in Task 1 we have adapted our system in order to ob-tain the mentions that belong to the Disorders UMLS semantic group. The approach is based on using...
Medical narratives written by clinicians constitute critical information in healthcare domain and ar...
This paper presents a rule-based method for the detection and normalization of medical entities usin...
The Australian e-Health Research Centre (AEHRC) recently participated in the ShARe/CLEF eHealth Eval...
Abstract. We are developing a system that analyzes medical reports and extracts a SNOMED-CT based co...
This paper describes our participation in task 7 of SemEval 2014, which focuses on analysis of clini...
[Poster]. IHI'10 ACM International Health Informatics Symposium Arlington, VA, USA - November 11-12,...
Unstructured clinical notes are rich sources for valuable patient information. Information extractio...
MetaMap1 is a widely available program providing access to the concepts in the UMLS ® Metathesaurus®...
AbstractObjectiveTo develop a method to exploit the UMLS Metathesaurus for extracting and categorizi...
The automatic conversion of free text into a medical ontology can allow computational access to impo...
This paper describes our participation on Task 7 of SemEval 2014, which fo-cused on the recognition ...
MetaMap is an online application that allows mapping text to UMLS Metathesaurus concepts, which is v...
University of Minnesota Ph.D. dissertation. September 2009. Major: Computer Science. Advisors: John ...
Abstract. We used MetaMap and YTEX as a basis for the construc-tion of two separate systems to parti...
BACKGROUND: In this paper, we describe the design and preliminary evaluation of a new type of tools ...
Medical narratives written by clinicians constitute critical information in healthcare domain and ar...
This paper presents a rule-based method for the detection and normalization of medical entities usin...
The Australian e-Health Research Centre (AEHRC) recently participated in the ShARe/CLEF eHealth Eval...
Abstract. We are developing a system that analyzes medical reports and extracts a SNOMED-CT based co...
This paper describes our participation in task 7 of SemEval 2014, which focuses on analysis of clini...
[Poster]. IHI'10 ACM International Health Informatics Symposium Arlington, VA, USA - November 11-12,...
Unstructured clinical notes are rich sources for valuable patient information. Information extractio...
MetaMap1 is a widely available program providing access to the concepts in the UMLS ® Metathesaurus®...
AbstractObjectiveTo develop a method to exploit the UMLS Metathesaurus for extracting and categorizi...
The automatic conversion of free text into a medical ontology can allow computational access to impo...
This paper describes our participation on Task 7 of SemEval 2014, which fo-cused on the recognition ...
MetaMap is an online application that allows mapping text to UMLS Metathesaurus concepts, which is v...
University of Minnesota Ph.D. dissertation. September 2009. Major: Computer Science. Advisors: John ...
Abstract. We used MetaMap and YTEX as a basis for the construc-tion of two separate systems to parti...
BACKGROUND: In this paper, we describe the design and preliminary evaluation of a new type of tools ...
Medical narratives written by clinicians constitute critical information in healthcare domain and ar...
This paper presents a rule-based method for the detection and normalization of medical entities usin...
The Australian e-Health Research Centre (AEHRC) recently participated in the ShARe/CLEF eHealth Eval...