Automatika (Oct 2023)

A novel neural network method using radial basis function for effective assessment of stiffness index on lumbar disc degenerative subjects

  • C. K. Sreeja,
  • V. N. Meena Devi,
  • M. K. Aneesh

DOI
https://doi.org/10.1080/00051144.2023.2223496
Journal volume & issue
Vol. 64, no. 4
pp. 964 – 970

Abstract

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ABSTRACTLumbar disc degenerative disc disease with back pain and its severity is a leading health issue in society and MRI is the best modality to detect the severity and degree of disc degeneration. The most critical component of degenerative disc disease deals with triggering rapid action for real-time-based system identification. The input is obtained from the non-invasive device called finger pulse plethysmography to assess the stiffness and its correlation with body composition in lumbar disc degeneration. The recent methodology contributions aim at predicting the stiffness which uses pulse wave velocity and reflection on signal features. As the signals are very sensitive to differences between high and low ranges, finger pulse plethysmography effectively detects irregularities at early stages. Based on the severity of degeneration, shown by the MRI report, subjects were grouped into the disc bulging group (DBG) and the nerve compression group (NCG). The supervised features help in training the signals to correct the limitations of prediction. Finally, the Radial Basis Function neural network approach helps in diminishing the local minimal values in the signal. It helps in the effective categorization of anomalous and ordinary stiffness index measurements for lumbar disc degeneration.

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