A Hybrid Intelligent System for Diagnosis of Diabetes

Authors

  • Mashhour M. Bani Amer 1Department of Biomedical Engineering, Jordan University of Science and Technology
  • Abed Saif Alghawli Salman Bin Abdulaziz University

DOI:

https://doi.org/10.14738/tnc.21.120

Abstract

This paper presents a hybrid intelligent system for diagnoses of diabetes. It is based on neuro-fuzzy inference system which is trained and tested using experimental data collected from two hundred different patients. The main clinical feature of this system is that it can be used by a patient’s smart phone, Pocket PC or PDA to provide local diagnosis of blood glucose level and to transmit the captured data to a remote hospital or clinician for assistance and medical advice. The performance of the system was tested and the results showed that it is capable to diagnose the diabetes with a high degree of precision.

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Published

2014-02-14

How to Cite

Bani Amer, M. M., & Alghawli, A. S. (2014). A Hybrid Intelligent System for Diagnosis of Diabetes. Discoveries in Agriculture and Food Sciences, 2(1), 33–39. https://doi.org/10.14738/tnc.21.120