METHOD FOR CONSTRUCTING A DECISION TREE FOR DIAGNOSING EPILEPSY IN CHILDREN

Authors

  • Maryam Midharara Author
  • Kuchkarova Nozimakhon Anvarovna Author

Keywords:

expert system, electroencephalography, epilepsy, decision tree, method, algorithm, program.

Abstract

A method and algorithm for constructing a decision tree for diagnosing epilepsy in children are proposed. The analysis and processing of medical data, consisting of electroencephalogram indicators, rhythms and provocative tests, which make it possible to determine the type of epilepsy in children, was carried out. The proposed algorithmic and software allows you to determine the type of epilepsy in children with a reliability and efficiency of 95%.

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Published

2024-04-10

Issue

Section

Natural Sciences

How to Cite

METHOD FOR CONSTRUCTING A DECISION TREE FOR DIAGNOSING EPILEPSY IN CHILDREN. (2024). Innovations in Science and Technologies, 1(3), 369-376. https://innoist.uz/index.php/ist/article/view/362

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