Designing a Fuzzy Expert System for Diagnosis and Prediction of Metabolic Syndrome in Children and Adolescents

Document Type : Original Article

Authors

1 Assistant Professor of Applied Mathematics, Payame Noor University, Tehran, Iran

2 PhD Student in Applied Mathematics, Payame Noor University, Tehran, Iran

Abstract

Introduction: Metabolic Syndrome (MetS) is one of the most common metabolic disorders
seen in children and adolescents. In this study, the prevalence of MetS and its related factors
are evaluated using a fuzzy expert system (FES) in a national representative sample of age
groups.
Methods: The FES is designed based on the data of 800 participants of the fifth study of the
program for monitoring and prevention of non-communicable diseases among children and
adolescents in Iran in 2015. The data of 560 participants were used as training data and 240 as
test data were used to test the rules and output of the system. The fuzzy system that has been
designed includes input data (age, waist, systolic blood pressure, diastolic blood pressure,
BMI, waist-to-height ratio, nutrition, and abdominal obesity), and at the end gives us an
output that diagnoses the health status with MetS or predicts the disease.
Results: The analysis shows that this method, with an accuracy of more than 98%, can predict
and diagnose MetS among children and adolescents better than other methods.
Conclusion: The fuzzy system is designed to accept multiple variables simultaneously as
input variables and also use more people information than similar research as primary data.
In addition, its accuracy is more than 98%. Preliminary data were collected from children and
adolescents with different lifestyles across the country. This system can act as an assistant in
the service of a specialist doctor to diagnose the disease.

Keywords


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