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International Journal of Diabetes & Clinical Diagnosis Volume 3 (2016), Article ID 3:IJDCD-116, 6 pages
http://dx.doi.org/10.15344/2394-1499/2016/116
Review Article
System Engineering Approach of Diabetes Treatment

Levente Kov´acs*, Gy¨orgy Eigner

John von Neumann, Faculty of Informatics, University Research and Innovation Center, Physiological Controls Group, Obuda University, Budapest, Hungary
Dr. Levente Kov´acs, John von Neumann, Faculty of Informatics, University Research and Innovation Center, Physiological Controls Group, Obuda University, Budapest, Hungary; E-mail: kovacs.levente@nik.uni-obuda.hu
31 October 2015; 16 April 2016; 18 April 2016
Kov´acs L, Eigner G (2016) System Engineering Approach of Diabetes Treatment. Int J Diabetes Clin Diagn 3: 116. doi: http://dx.doi.org/10.15344/2394-1499/2016/116

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