• Corpus ID: 17263301

Determination of Blood Glucose Concentration by Using Wavelet Transform and Neural Networks

@article{Ashok2013DeterminationOB,
  title={Determination of Blood Glucose Concentration by Using Wavelet Transform and Neural Networks},
  author={V. Ashok and Nirmal Kumar},
  journal={Iranian Journal of Medical Sciences},
  year={2013},
  volume={38},
  pages={51 - 56}
}
BACKGROUND Early and non-invasive determination of blood glucose level is of great importance. We aimed to present a new technique to accurately infer the blood glucose concentration in peripheral blood flow using non-invasive optical monitoring system. METHODS The data for the research were obtained from 900 individuals. Of them, 750 people had diabetes mellitus (DM). The system was designed using a helium neon laser source of 632.8 nm wavelength with 5mW power, photo detectors and digital… 

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