An Intelligent Rule-based System for Status Epilepticus Prognostication

Introduction: Status epilepticus is one of the most common emergency neurological conditions with high morbidity and mortality. The study aims is to propose an intelligent approach to determine prognosis and the most common causes and outcomes based on clinical symptoms.Material and Methods: A perce...

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Main Authors: Bahare Danaei, Reza Javidan, Maryam Poursadeghfard, Mohtaram Nematollahi
Format: Article
Language:English
Published: Shiraz University of Medical Sciences 2021-04-01
Series:Journal of Biomedical Physics and Engineering
Subjects:
Online Access:https://jbpe.sums.ac.ir/article_45718_02ad78f20025a792d366b7c2bed766df.pdf
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spelling doaj-e3a97044e40b41289b4d316256e8aaf02021-04-20T10:48:08ZengShiraz University of Medical SciencesJournal of Biomedical Physics and Engineering2251-72002251-72002021-04-0111218519610.31661/jbpe.v0i0.91645718An Intelligent Rule-based System for Status Epilepticus PrognosticationBahare Danaei0Reza Javidan1Maryam Poursadeghfard2Mohtaram Nematollahi3MSc, Department of Computer Engineering and Information Technology, Shiraz University of Technology, Shiraz, IranPhD, Department of Computer Engineering and Information Technology, Shiraz University of Technology, Shiraz, IranMD, Clinical Neurology Research Center, Shiraz University of Medical Sciences, Shiraz, IranPhD, Department of Health Information Management, Shiraz University of Medical Sciences, Shiraz, IranIntroduction: Status epilepticus is one of the most common emergency neurological conditions with high morbidity and mortality. The study aims is to propose an intelligent approach to determine prognosis and the most common causes and outcomes based on clinical symptoms.Material and Methods: A perceptron artificial neural network was used to predict the outcome of patients with status epilepticus 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’s patients.Results: The proposed model was prognosticated with 70% accuracy, while Bayesian network and Random Forest approaches have 51% and 46% accuracy. According 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 as 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.https://jbpe.sums.ac.ir/article_45718_02ad78f20025a792d366b7c2bed766df.pdfintelligent approachesdata miningartificial neural networksrule based systemsstatus epilepticusprognosis
collection DOAJ
language English
format Article
sources DOAJ
author Bahare Danaei
Reza Javidan
Maryam Poursadeghfard
Mohtaram Nematollahi
spellingShingle Bahare Danaei
Reza Javidan
Maryam Poursadeghfard
Mohtaram Nematollahi
An Intelligent Rule-based System for Status Epilepticus Prognostication
Journal of Biomedical Physics and Engineering
intelligent approaches
data mining
artificial neural networks
rule based systems
status epilepticus
prognosis
author_facet Bahare Danaei
Reza Javidan
Maryam Poursadeghfard
Mohtaram Nematollahi
author_sort Bahare Danaei
title An Intelligent Rule-based System for Status Epilepticus Prognostication
title_short An Intelligent Rule-based System for Status Epilepticus Prognostication
title_full An Intelligent Rule-based System for Status Epilepticus Prognostication
title_fullStr An Intelligent Rule-based System for Status Epilepticus Prognostication
title_full_unstemmed An Intelligent Rule-based System for Status Epilepticus Prognostication
title_sort intelligent rule-based system for status epilepticus prognostication
publisher Shiraz University of Medical Sciences
series Journal of Biomedical Physics and Engineering
issn 2251-7200
2251-7200
publishDate 2021-04-01
description Introduction: Status epilepticus is one of the most common emergency neurological conditions with high morbidity and mortality. The study aims is to propose an intelligent approach to determine prognosis and the most common causes and outcomes based on clinical symptoms.Material and Methods: A perceptron artificial neural network was used to predict the outcome of patients with status epilepticus 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’s patients.Results: The proposed model was prognosticated with 70% accuracy, while Bayesian network and Random Forest approaches have 51% and 46% accuracy. According 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 as 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.
topic intelligent approaches
data mining
artificial neural networks
rule based systems
status epilepticus
prognosis
url https://jbpe.sums.ac.ir/article_45718_02ad78f20025a792d366b7c2bed766df.pdf
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