Publication | Open Access
Reconciliation Of Multiple Guidelines For Decision Support: A Case Study On The Multidisciplinary Management Of Breast Cancer Within The Desiree Project.
21
Citations
15
References
2017
Year
Clinical Decision-makingDecision ScienceSemantic WebRainbow BoxesMultidisciplinary CareDesiree ProjectMedical Decision MakingData ScienceMedical Expert SystemManagementData IntegrationDecision TheoryMedical OntologyBiomedical OntologyCpg RecommendationsHealth PolicyMedicineDecision AidClinical Decision SupportDecision Support SystemsClinical DataNursingMultiple GuidelinesBreast CancerOncologyClinical Decision Support SystemHealth Informatics
Breast cancer is the most common cancer among women. DESIREE is a European project which aims at developing web-based services for the management of primary breast cancer by multidisciplinary breast units (BUs). We describe the guideline-based decision support system (GL-DSS) of the project. Various breast cancer clinical practice guidelines (CPGs) have been selected to be concurrently applied to provide state-of-the-art patient-specific recommendations. The aim is to reconcile CPG recommendations with the objective of complementarity to enlarge the number of clinical situations covered by the GL-DSS. Input and output data exchange with the GL-DSS is performed using FHIR. We used a knowledge model of the domain as an ontology on which relies the reasoning process performed by rules that encode the selected CPGs. Semantic web tools were used, notably the Euler/EYE inference engine, to implement the GL-DSS. "Rainbow boxes" are a synthetic tabular display used to visualize the inferred recommendations.
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