• Title of article

    An Intelligent Rule-based System for Status Epilepticus Prognostication

  • Author/Authors

    Danaei ، Bahare Department of Computer Engineering and Information Technology - Shiraz University of Technology , Javidan ، Reza Department of Computer Engineering and Information Technology - Shiraz University of Technology , Poursadeghfard ، Maryam Clinical Neurology Research Center - Shiraz University of Medical Sciences , Nematollahi ، Mohtaram Department of Health Information Management - Shiraz University of Medical Sciences

  • From page
    185
  • To page
    196
  • Abstract
    Background: Status epilepticus is one of the most common emergency neurologi cal conditions with high morbidity and mortality. Objective: The aim of this study is to propose an intelligent approach to de termine prognosis and the most common causes and outcomes based on clinical symptoms. Material and Methods: In this descriptive-analytic study, a perceptron artifi cial neural network was used to predict the outcome of patients with status epilepti cus on discharge. But this method, which is understandable, is known as black boxes. Therefore, some rules were extracted from it in this study. The case study of this paper is data of Nemazee hospital patients. Results: The proposed model was prognosticated with 70% accuracy, while Bayesian network and Random Forest approaches have 51% and 46% accuracy. Ac cording to the results, recovery and mortality groups had often used phenytoin and anesthetic drugs as seizure controlling drug, respectively. Moreover, drug withdrawal and cerebral infarction were known as the most common etiology for recovery and mortality groups, respectively and there was a relationship between age and outcome, like in previous studies. Conclusion: To identify some factors affecting the outcome such as withdrawal, their effects either can be avoided or can use sensitive treatment for patients with poor prognosis.
  • Keywords
    Intelligent Approaches , Data mining , Artificial neural networks , Rule Based Systems , Status Epilepticus , Prognosis
  • Journal title
    Journal of Biomedical Physics and Engineering
  • Journal title
    Journal of Biomedical Physics and Engineering
  • Record number

    2593320