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. 2009 Nov 14:2009:568-72.

Towards temporal relation discovery from the clinical narrative

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Towards temporal relation discovery from the clinical narrative

Guergana Savova et al. AMIA Annu Symp Proc. .

Abstract

Disease progression and understanding relies on temporal concepts. Discovery of automated temporal relations and timelines from the clinical narrative allows for mining large data sets of clinical text to uncover patterns at the disease and patient level. Our overall goal is the complex task of building a system for automated temporal relation discovery. As a first step, we evaluate enabling methods from the general natural language processing domain - deep parsing and semantic role labeling in predicate-argument structures - to explore their portability to the clinical domain. As a second step, we develop an annotation schema for temporal relations based on TimeML. In this paper we report results and findings from these first steps. Our next efforts will scale up the data collection to develop domain-specific modules for the enabling technologies within Mayo's open-source clinical Text Analysis and Knowledge Extraction System.

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References

    1. Pustejovsky J, Hanks P, Saur R, See A, Gaizauskas R, Setzer A, Radev D, Sundheim B, Day D, Ferro L, Lazo M.2003The timebank corpusIn Corpus Linguistics647–656.
    1. Sauri R, Littman J, Knippen B, Gaizauskas R, Setzer A, Pustejovky J.2006. TimeML annotation guidelines. http://www.timeml.org/site/publications/timeMLdocs/annguide_1.2.1.pdf
    1. Bethard S, Martin JH. Identification of event mentions and their semantic class. EMNLP 2006
    1. Boguraev B, Ando RK. Timebank-driven timeml analysis. In: Katz Graham, Pustejovsky James, Schilder Frank., editors. Annotating, Extracting and Reasoning about Time and Events, Dagstuhl Seminars. German Research Foundation; 2005.
    1. Saurı R, Knippen R, Verhagen M, Pustejovsky J.2005. Evita: A robust event recognizer for qa systems. HLT-EMNLP, 2005

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