RT Journal Article SR Electronic T1 One tagger, many uses: Illustrating the power of ontologies in dictionary-based named entity recognition JF bioRxiv FD Cold Spring Harbor Laboratory SP 067132 DO 10.1101/067132 A1 Lars Juhl Jensen YR 2016 UL http://biorxiv.org/content/early/2016/08/02/067132.abstract AB Automatic annotation of text is an important complement to manual annotation, because the latter is highly labour intensive. We have developed a fast dictionary-based named entity recognition (NER) system and addressed a wide variety of biomedical problems by applied it to text from many different sources. We have used this tagger both in real-time tools to support curation efforts and in pipelines for populating databases through bulk processing of entire Medline, the open-access subset of PubMed Central, NIH grant abstracts, FDA drug labels, electronic health records, and the Encyclopedia of Life. Despite the simplicity of the approach, it typically achieves 80–90% precision and 70–80% recall. Many of the underlying dictionaries were built from open biomedical ontologies, which further facilitate integration of the text-mining results with evidence from other sources.