of headache patients. The knowledge base codes the
NICE Clinical Guideline for headache disorders, the
GP clinical workflow and the clinical best practices
from the Calabria Cephalalgic Network. Communi-
cation interfaces are compliant with HL7 DSS inter-
national standard in order to guarantee interoperabil-
ity with other healthcare applications.
The CDSS has been assessed in the GPs’ daily
practice of the Calabria Cephalalgic Network. The
preliminary results are promising. They confirm an
improvement in the management of patients with
headache within primary care facilities. The CDSS
effectively supports GPs in dealing with a patients
headache diagnosis by reducing diagnosis time on the
one hand, even during the anamnesis phase, inappro-
priate accesses to the Spokes and Reference Centre,
and patient’s expenses on the other hand for headache
treatments.
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