Empreu aquest identificador per citar o enllaçar aquest ítem: http://hdl.handle.net/10609/150688
Títol: Medical-treatment recommendation and the integration of process models into knowledge-based systems
Autoria: Subirats, Laia  
Ceccaroni, Luigi  
MAROTO, JOSE MARIA  
de Pablo-Zarzosa, MCarmen  
Miralles, Felip  
Resum: Decision making based on evidence other than human reasoning is becoming increasingly important in healthcare. Valuable evidence is in the form of treatment processes used by healthcare institutions and this paper presents a new framework for representing and modeling knowledge from these processes. Specifically, it presents the integration of data from literature, business processes and decision trees through workflows that cover the full cycle of health care, from diagnosis to prognosis and treatment. With respect to patient status, as single instants cannot convey sufficient information, time series are analyzed and classified to improve decision-making ability. The elicitation of new knowledge takes into account international standards, ontologies, information models, nomenclatures and multiple types of indicators. The integration of formal process-modeling in knowledge-based systems is exemplified by a real-world recommendation scenario. After evaluation with a medical-rehabilitation data set, results show a strong correspondence between treatment recommended by the proposed system and clinical practice.
Paraules clau: cardiac rehabilitation processes
ontologies
rule-based reasoning
clinical decision support systems
Tipus de document: info:eu-repo/semantics/conferenceObject
Data de publicació: mar-2014
Llicència de publicació: http://creativecommons.org/licenses/by-nc-nd/4.0/es/  
Apareix a les col·leccions:Conferències

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