Memorias de investigación
Communications at congresses:
"Mealtime Blood Glucose Classifier Based on Fuzzy Logic for the DIABTel Telemedicine System"
Year:2009

Research Areas
  • Processing and signal analysis

Information
Abstract
Abstract. The accurate interpretation of Blood Glucose (BG) values is essential for diabetes care. However, BG monitoring data does not provide complete information about associated meal and moment of measurement, unless patients fulfil it manually. An automatic classification of incomplete BG data helps to a more accurate interpretation, contributing to Knowledge Management (KM) tools that support decisionmaking in a telemedicine system. This work presents a fuzzy rule-based classifier integrated in a KM agent of the DIABTel telemedicine architecture, to automatically classify BG measurements into meal intervals and moments of measurement. Fuzzy Logic (FL) tackles with the incompleteness of BG measurements and provides a semantic expressivity quite close to natural language used by physicians, what makes easier the system output interpretation. The best mealtime classifier provides an accuracy of 77.26% and does not increase significantly the KM analysis times. Results of classification are used to extract anomalous trends in the patient¿s data. Keywords: Diabetes, Telemedicine, Fuzzy Logic, Classification.
International
Si
Congress
Lecture Notes in Computer Science Springer
960
Place
Verona
Reviewers
Si
ISBN/ISSN
978-3-642-02975-2
Start Date
20/07/2009
End Date
22/07/2009
From page
295
To page
304
Lecture Notes in Computer Science Springer
Participants

Research Group, Departaments and Institutes related
  • Creador: Grupo de Investigación: Grupo de Bioingeniería y Telemedicina
  • Centro o Instituto I+D+i: Centro de tecnología Biomédica CTB
  • Departamento: Tecnología Fotónica