Prediction of the evolution of bipolar depression using semantic web technologies

Chania(2014)

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摘要
In our study we present a design for a decision support system for patients suffering from Bipolar Disorder (BD). Bipolar Disorder is a recurrent and highly disabling psychiatric illness that evolves constantly in time and often leads to crucial incidents. We focus on Bipolar Depression and especially on a Breakthrough Depressive Episode scenario that occurs when a patient shows depressive symptoms during pharmaceutical treatment. Using Semantic Web Technologies we developed SybillaTUC, a prototype Clinical Decision Support System which combines the clinical guidelines for Bipolar Disorder with a patient's condition and his medical record. The system is able to predict the evolution of the disease for each patient, alerting the clinician on the possibility of a crucial incident suggesting optimal treatment.
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关键词
decision support systems,medical computing,semantic Web,BD,SybillaTUC,bipolar depression,breakthrough depressive episode scenario,clinical decision support system,clinical guidelines,depressive symptoms,medical record,optimal treatment,patient condition,pharmaceutical treatment,psychiatric illness,semantic Web technologies,Bipolar Disorder,Breakthrough Depressive Episode,Clinical Decision Support Systems,Semantic Web
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