Artificial Intelligence in Medicine
Volume 39, Issue 2 , Pages 137-149, February 2007

Extraction and use of linguistic patterns for modelling medical guidelines

  • Radu Serban

      Affiliations

    • Artificial Intelligence Department, Vrije Universiteit, De Boelelaan 1081a, 1081HV Amsterdam, The Netherlands
    • Corresponding Author InformationCorresponding author. Tel.: +31 20 598 7818; fax: +31 20 598 7653.
  • ,
  • Annette ten Teije

      Affiliations

    • Artificial Intelligence Department, Vrije Universiteit, De Boelelaan 1081a, 1081HV Amsterdam, The Netherlands
  • ,
  • Frank van Harmelen

      Affiliations

    • Artificial Intelligence Department, Vrije Universiteit, De Boelelaan 1081a, 1081HV Amsterdam, The Netherlands
  • ,
  • Mar Marcos

      Affiliations

    • Department of Computer Engineering and Science, Universitat Jaume I, Castellon, Spain
  • ,
  • Cristina Polo-Conde

      Affiliations

    • Department of Computer Engineering and Science, Universitat Jaume I, Castellon, Spain

Received 16 January 2006; received in revised form 26 July 2006; accepted 28 July 2006.

Summary 

Objective

The quality of knowledge updates in evidence-based medical guidelines can be improved and the effort spent for updating can be reduced if the knowledge underlying the guideline text is explicitly modelled using the so-called linguistic guideline patterns, mappings between a text fragment and a formal representation of its corresponding medical knowledge.

Methods and material

Ontology-driven extraction of linguistic patterns is a method to automatically reconstruct the control knowledge captured in guidelines, which facilitates a more effective modelling and authoring of medical guidelines. We illustrate by examples the use of this method for generating and instantiating linguistic patterns in the text of a guideline for treatment of breast cancer, and evaluate the usefulness of these patterns in the modelling of this guideline.

Results

We developed a methodology for extracting and using linguistic patterns in guideline formalization, to aid the human modellers in guideline formalization and reduce the human modelling effort. Using automatic transformation rules for simple linguistic patterns, a good recall (between 72% and 80%) is obtained in selecting the procedural knowledge relevant for the guideline model, even though the precision of the guideline model generated automatically covers only between 20% and 35% of the human-generated guideline model. These results indicate the suitability of our method as a pre-processing step in medical guideline formalization.

Conclusions

Modelling and authoring of medical texts can benefit from our proposed method. As pre-requisites for generating automatically a skeleton of the guideline model from the procedural part of the guideline text, to aid the human modeller, the medical terminology used by the guideline must have a good overlap with existing medical thesauri and its procedural knowledge must obey linguistic regularities that can be mapped into the control constructs of the target guideline modelling language.

Keywords: Knowledge engineering, Ontologies, Medical guideline formalization, Semantic mark-up

To access this article, please choose from the options below

Login to an existing account or Register a new account.

  • Purchase this article for 31.50 USD (You must login/register to purchase this article)

    Online access for 24 hours. The PDF version can be downloaded as your permanent record.

  • Subscribe to this title

    Get unlimited online access to this article and all other articles in this title 24/7 for one year.

  • Claim access now

    For current subscribers with Society Membership or Account Number.

  • Visit SciVerse ScienceDirect to see if you have access via your institution.
 

 This is an extended and revised version of our paper presented in the Conference on Artificial Intelligence in Medicine (AIME 05).

PII: S0933-3657(06)00113-8

doi:10.1016/j.artmed.2006.07.012

Artificial Intelligence in Medicine
Volume 39, Issue 2 , Pages 137-149, February 2007