Title of article :
How can information extraction ease formalizing treatment processes in clinical practice guidelines?: A method and its evaluation
Author/Authors :
Kaiser، نويسنده , , Katharina and Akkaya، نويسنده , , Cem and Miksch، نويسنده , , Silvia، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
SummaryObjective
izing clinical practice guidelines (CPGs) for a subsequent computer-supported processing is a challenging, but burdensome and time-consuming task. Existing methods and tools to support this task demand detailed medical knowledge, knowledge about the formal representations, and a manual modeling. Furthermore, formalized guideline documents mostly fall far short in terms of readability and understandability for the human domain modeler.
s and material
pose a new multi-step approach using information extraction methods to support the human modeler by both automating parts of the modeling process and making the modeling process traceable and comprehensible. This paper addresses the first steps to obtain a representation containing processes which is independent of the final guideline representation language.
s
e developed and evaluated several heuristics without the need to apply natural language understanding and implemented them in a framework to apply them to several guidelines from the medical subject of otolaryngology. Findings in the evaluation indicate that using semi-automatic, step-wise information extraction methods are a valuable instrument to formalize CPGs.
sion
aluation shows that a heuristic-based approach can achieve good results, especially for guidelines with a major portion of semi-structured text. It can be applied to guidelines irrespective to the final guideline representation format.
Keywords :
Information extraction and integration , clinical practice guidelines , Computer-interpretable guidelines , Guideline representation , Treatment processes , Time-oriented information , Otolaryngology
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine