Prediction of stroke probability occurrence based on fuzzy cognitive maps

Among neurological patients, stroke is the most common cause of mortality. It is a health problem that is very costly all over the world. Therefore, the mortality due to the disease can be reduced by identifying and modifying the risk factors. Controllable factors which are contributing to stroke in...

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Main Authors: Mahsa Khodadadi, Heidarali Shayanfar, Keivan Maghooli, Amir Hooshang Mazinan
Format: Article
Language:English
Published: Taylor & Francis Group 2019-10-01
Series:Automatika
Subjects:
Online Access:http://dx.doi.org/10.1080/00051144.2019.1622883
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spelling doaj-7b3e654192bf43a69229d85e6a11a6702020-11-25T01:02:57ZengTaylor & Francis GroupAutomatika0005-11441848-33802019-10-0160438539210.1080/00051144.2019.16228831622883Prediction of stroke probability occurrence based on fuzzy cognitive mapsMahsa Khodadadi0Heidarali Shayanfar1Keivan Maghooli2Amir Hooshang Mazinan3South Tehran Branch, Islamic Azad UniversityCollege of Electrical Engineering, Iran University of Science and TechnologyScience and Research Branch, Islamic Azad UniversitySouth Tehran Branch, Islamic Azad UniversityAmong neurological patients, stroke is the most common cause of mortality. It is a health problem that is very costly all over the world. Therefore, the mortality due to the disease can be reduced by identifying and modifying the risk factors. Controllable factors which are contributing to stroke including hypertension, diabetes, heart disease, hyperlipidemia, smoking, and obesity. Therefore, by identifying and controlling the risk factors, stroke can be prevented and the effects of this disease could be reduced to a minimum. Therefore, for the quick and timely diagnosis of the disease, we need an intelligent system to predict the stroke risk. In this paper, a method has been proposed for predicting the risk rate of stroke which is based on fuzzy cognitive maps and nonlinear Hebbian learning algorithm. The accuracy of the proposed NHL-FCM model is tested using 15-fold cross-validation, for 90 actual cases, and compared with those of support vector machine and k-nearest neighbours. The proposed method shows superior performance with a total accuracy of (95.4 ± 7.5)%.http://dx.doi.org/10.1080/00051144.2019.1622883Fuzzy cognitive mapsischemicnonlinear Hebbian learningpredictionstroke
collection DOAJ
language English
format Article
sources DOAJ
author Mahsa Khodadadi
Heidarali Shayanfar
Keivan Maghooli
Amir Hooshang Mazinan
spellingShingle Mahsa Khodadadi
Heidarali Shayanfar
Keivan Maghooli
Amir Hooshang Mazinan
Prediction of stroke probability occurrence based on fuzzy cognitive maps
Automatika
Fuzzy cognitive maps
ischemic
nonlinear Hebbian learning
prediction
stroke
author_facet Mahsa Khodadadi
Heidarali Shayanfar
Keivan Maghooli
Amir Hooshang Mazinan
author_sort Mahsa Khodadadi
title Prediction of stroke probability occurrence based on fuzzy cognitive maps
title_short Prediction of stroke probability occurrence based on fuzzy cognitive maps
title_full Prediction of stroke probability occurrence based on fuzzy cognitive maps
title_fullStr Prediction of stroke probability occurrence based on fuzzy cognitive maps
title_full_unstemmed Prediction of stroke probability occurrence based on fuzzy cognitive maps
title_sort prediction of stroke probability occurrence based on fuzzy cognitive maps
publisher Taylor & Francis Group
series Automatika
issn 0005-1144
1848-3380
publishDate 2019-10-01
description Among neurological patients, stroke is the most common cause of mortality. It is a health problem that is very costly all over the world. Therefore, the mortality due to the disease can be reduced by identifying and modifying the risk factors. Controllable factors which are contributing to stroke including hypertension, diabetes, heart disease, hyperlipidemia, smoking, and obesity. Therefore, by identifying and controlling the risk factors, stroke can be prevented and the effects of this disease could be reduced to a minimum. Therefore, for the quick and timely diagnosis of the disease, we need an intelligent system to predict the stroke risk. In this paper, a method has been proposed for predicting the risk rate of stroke which is based on fuzzy cognitive maps and nonlinear Hebbian learning algorithm. The accuracy of the proposed NHL-FCM model is tested using 15-fold cross-validation, for 90 actual cases, and compared with those of support vector machine and k-nearest neighbours. The proposed method shows superior performance with a total accuracy of (95.4 ± 7.5)%.
topic Fuzzy cognitive maps
ischemic
nonlinear Hebbian learning
prediction
stroke
url http://dx.doi.org/10.1080/00051144.2019.1622883
work_keys_str_mv AT mahsakhodadadi predictionofstrokeprobabilityoccurrencebasedonfuzzycognitivemaps
AT heidaralishayanfar predictionofstrokeprobabilityoccurrencebasedonfuzzycognitivemaps
AT keivanmaghooli predictionofstrokeprobabilityoccurrencebasedonfuzzycognitivemaps
AT amirhooshangmazinan predictionofstrokeprobabilityoccurrencebasedonfuzzycognitivemaps
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