BIO Web of Conferences (Jan 2024)

LogNNet Neural Network Application for Diabetes Mellitus Diagnosis

  • Izotov Y. A.,
  • Huyut M. T.,
  • Velichko A. A.

DOI
https://doi.org/10.1051/bioconf/202410502003
Journal volume & issue
Vol. 105
p. 02003

Abstract

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The paper presents a LogNNet neural network algorithm for diabetes mellitus diagnosing based on a public dataset. The study used 100 thousand records of patient conditions. Model quality was evaluated using the Matthews Correlation Coefficient metric (MCC). The LogNNet neural network model showed high accuracy (MCC=0.733) in diabetes mellitus recognition. A highly positive relationship between HbA1c level and glucose level in the disease diagnosing was found using the LogNNet model. It has been observed that evaluating these variables together is much more effective than their individual effects in diagnosing the disease.