| Literature DB >> 26958270 |
Rebecka Weegar1, Maria Kvist2, Karin Sundström3, Søren Brunak4, Hercules Dalianis1.
Abstract
Detection of early symptoms in cervical cancer is crucial for early treatment and survival. To find symptoms of cervical cancer in clinical text, Named Entity Recognition is needed. In this paper the Clinical Entity Finder, a machine-learning tool trained on annotated clinical text from a Swedish internal medicine emergency unit, is evaluated on cervical cancer records. The Clinical Entity Finder identifies entities of the types body part, finding and disorder and is extended with negation detection using the rule-based tool NegEx, to distinguish between negated and non-negated entities. To measure the performance of the tools on this new domain, two physicians annotated a set of clinical notes from the health records of cervical cancer patients. The inter-annotator agreement for finding, disorder and body part obtained an average F-score of 0.677 and the Clinical Entity Finder extended with NegEx had an average F-score of 0.667.Entities:
Mesh:
Year: 2015 PMID: 26958270 PMCID: PMC4765575
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076