2011 | OriginalPaper | Chapter
Careflow Planning: From Time-Annotated Clinical Guidelines to Temporal Hierarchical Task Networks
Authors : Arturo González-Ferrer, Annette ten Teije, Juan Fdez-Olivares, Krystyna Milian
Published in: Artificial Intelligence in Medicine
Publisher: Springer Berlin Heidelberg
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Decision-making, care planning and adaptation of treatment are important aspects of the work of clinicians, that can clearly benefit from IT support. Clinical Practice Guidelines (CPG) languages provide formalisms for specifying knowledge related to such tasks, such as decision criteria and time-oriented aspects of the patient treatment. In these CPG languages, little research has been directed to efficiently deal with the integration of temporal and resource constraints, for the purpose of generating patient tailored treatment plans, i.e. care pathways. This paper presents an AI-based knowledge engineering methodology to develop, model, and operationalize care pathways, providing computer-aided support for the planning, visualization and execution of the patient treatment. This is achieved by translating time-annotated Asbru CPG’s into temporal HTN planning domains. The proposed methodology is illustrated through a case study based on Hodgkin’s disease.