High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network

Presently, several million people suffer from major depressive and bipolar disorders. Thus, the modelling, characterization, classification, diagnosis, and analysis of such mental disorders bears great significance in medical research. Electroencephalogram records provide important information to im...

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Main Authors: Miguel Ángel Luján, Ana M. Torres, Alejandro L. Borja, José L. Santos, Jorge Mateo Sotos
Format: Article
Language:English
Published: MDPI AG 2022-01-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/11/3/343
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author Miguel Ángel Luján
Ana M. Torres
Alejandro L. Borja
José L. Santos
Jorge Mateo Sotos
author_facet Miguel Ángel Luján
Ana M. Torres
Alejandro L. Borja
José L. Santos
Jorge Mateo Sotos
author_sort Miguel Ángel Luján
collection DOAJ
description Presently, several million people suffer from major depressive and bipolar disorders. Thus, the modelling, characterization, classification, diagnosis, and analysis of such mental disorders bears great significance in medical research. Electroencephalogram records provide important information to improve clinical diagnosis and are very useful in the scientific community. In this work, electroencephalogram records and patient data from the Hospital Virgen de la Luz in Cuenca (Spain) were processed for a correct classification of bipolar disorders. This work implemented an innovative radial basis function-based neural network employing a fuzzy means algorithm. The results show that the proposed method is an effective approach for discrimination of two kinds of classes, i.e., bipolar disorder patients and healthy persons. The proposed algorithm achieved the best performance compared with other machine learning techniques such as Bayesian linear discriminant analysis, Gaussian naive Bayes, decision trees, K-nearest neighbour, or support vector machine, showing a very high accuracy close to 97%. Therefore, the neural network technique presented could be used as a new tool for the diagnosis of bipolar disorder, considering the possibility of integrating this method into medical software.
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spelling doaj.art-9967a80e569e4254906156d64491d3522023-11-23T16:15:21ZengMDPI AGElectronics2079-92922022-01-0111334310.3390/electronics11030343High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural NetworkMiguel Ángel Luján0Ana M. Torres1Alejandro L. Borja2José L. Santos3Jorge Mateo Sotos4Departamento de Ingeniería Eléctrica, Electrónica, Automática y Comunicaciones, Universidad de Castilla-La Mancha, 02071 Albacete, SpainInstituto de Tecnología, Construcción y Telecomunicaciones, Universidad de Castilla-La Mancha, 16071 Cuenca, SpainDepartamento de Ingeniería Eléctrica, Electrónica, Automática y Comunicaciones, Universidad de Castilla-La Mancha, 02071 Albacete, SpainServicio de Psiquiatría, Hospital Virgen de la Luz, 16002 Cuenca, SpainInstituto de Tecnología, Construcción y Telecomunicaciones, Universidad de Castilla-La Mancha, 16071 Cuenca, SpainPresently, several million people suffer from major depressive and bipolar disorders. Thus, the modelling, characterization, classification, diagnosis, and analysis of such mental disorders bears great significance in medical research. Electroencephalogram records provide important information to improve clinical diagnosis and are very useful in the scientific community. In this work, electroencephalogram records and patient data from the Hospital Virgen de la Luz in Cuenca (Spain) were processed for a correct classification of bipolar disorders. This work implemented an innovative radial basis function-based neural network employing a fuzzy means algorithm. The results show that the proposed method is an effective approach for discrimination of two kinds of classes, i.e., bipolar disorder patients and healthy persons. The proposed algorithm achieved the best performance compared with other machine learning techniques such as Bayesian linear discriminant analysis, Gaussian naive Bayes, decision trees, K-nearest neighbour, or support vector machine, showing a very high accuracy close to 97%. Therefore, the neural network technique presented could be used as a new tool for the diagnosis of bipolar disorder, considering the possibility of integrating this method into medical software.https://www.mdpi.com/2079-9292/11/3/343electroencephalography (EEG)machine learningdeep learningneural networkbipolar disorder
spellingShingle Miguel Ángel Luján
Ana M. Torres
Alejandro L. Borja
José L. Santos
Jorge Mateo Sotos
High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network
Electronics
electroencephalography (EEG)
machine learning
deep learning
neural network
bipolar disorder
title High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network
title_full High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network
title_fullStr High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network
title_full_unstemmed High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network
title_short High-Precise Bipolar Disorder Detection by Using Radial Basis Functions Based Neural Network
title_sort high precise bipolar disorder detection by using radial basis functions based neural network
topic electroencephalography (EEG)
machine learning
deep learning
neural network
bipolar disorder
url https://www.mdpi.com/2079-9292/11/3/343
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