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Prediction of metabolic syndrome based on sleep and work-related risk factors using an artificial neural network.

Meysam EyvazlouMahdi HosseinpouriHamidreza MokaramiVahid GharibiMehdi JahangiriRosanna CousinsHossein-Ali NikbakhtAbdullah Barkhordari
Published in: BMC endocrine disorders (2020)
Our analyses indicate that ANN models which include psychosocial stressors and sleep variables as well as biomedical and clinical variables perform well in predicting MetS. The findings can be helpful in designing preventative strategies to reduce the cost of healthcare associated with MetS in the workplace.
Keyphrases
  • neural network
  • metabolic syndrome
  • risk factors
  • healthcare
  • sleep quality
  • physical activity
  • mental health
  • insulin resistance
  • uric acid
  • cardiovascular risk factors
  • cardiovascular disease
  • skeletal muscle
  • social media