Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization

A neuro fuzzy hybrid model (NFHM) is proposed as a new artificial intelligence method to classify blood pressure (BP). The NFHM uses techniques such as neural networks, fuzzy logic and evolutionary computation, and in the last case genetic algorithms (GAs) are used. The main goal is to model the beh...

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Main Authors: Juan Carlos Guzman, Patricia Melin, German Prado-Arechiga
Format: Article
Language:English
Published: MDPI AG 2017-07-01
Series:Algorithms
Subjects:
Online Access:https://www.mdpi.com/1999-4893/10/3/79
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author Juan Carlos Guzman
Patricia Melin
German Prado-Arechiga
author_facet Juan Carlos Guzman
Patricia Melin
German Prado-Arechiga
author_sort Juan Carlos Guzman
collection DOAJ
description A neuro fuzzy hybrid model (NFHM) is proposed as a new artificial intelligence method to classify blood pressure (BP). The NFHM uses techniques such as neural networks, fuzzy logic and evolutionary computation, and in the last case genetic algorithms (GAs) are used. The main goal is to model the behavior of blood pressure based on monitoring data of 24 h per patient and based on this to obtain the trend, which is classified using a fuzzy system based on rules provided by an expert, and these rules are optimized by a genetic algorithm to obtain the best possible number of rules for the classifier with the lowest classification error. Simulation results are presented to show the advantage of the proposed model.
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spelling doaj.art-dc152b9cbb4b4b9687fe417e181c4a672022-12-22T02:22:12ZengMDPI AGAlgorithms1999-48932017-07-011037910.3390/a10030079a10030079Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule OptimizationJuan Carlos Guzman0Patricia Melin1German Prado-Arechiga2Tijuana Institute of Technology, Calzada Tecnologico s/n, Fracc. Tomas Aquino, Baja California, Tijuana 22379, MexicoTijuana Institute of Technology, Calzada Tecnologico s/n, Fracc. Tomas Aquino, Baja California, Tijuana 22379, MexicoCardiodiagnostico, Excel Medical Center, Tijuana 22379, MexicoA neuro fuzzy hybrid model (NFHM) is proposed as a new artificial intelligence method to classify blood pressure (BP). The NFHM uses techniques such as neural networks, fuzzy logic and evolutionary computation, and in the last case genetic algorithms (GAs) are used. The main goal is to model the behavior of blood pressure based on monitoring data of 24 h per patient and based on this to obtain the trend, which is classified using a fuzzy system based on rules provided by an expert, and these rules are optimized by a genetic algorithm to obtain the best possible number of rules for the classifier with the lowest classification error. Simulation results are presented to show the advantage of the proposed model.https://www.mdpi.com/1999-4893/10/3/79neural networksgenetic algorithmsfuzzy logicblood pressure
spellingShingle Juan Carlos Guzman
Patricia Melin
German Prado-Arechiga
Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization
Algorithms
neural networks
genetic algorithms
fuzzy logic
blood pressure
title Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization
title_full Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization
title_fullStr Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization
title_full_unstemmed Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization
title_short Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization
title_sort design of an optimized fuzzy classifier for the diagnosis of blood pressure with a new computational method for expert rule optimization
topic neural networks
genetic algorithms
fuzzy logic
blood pressure
url https://www.mdpi.com/1999-4893/10/3/79
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AT patriciamelin designofanoptimizedfuzzyclassifierforthediagnosisofbloodpressurewithanewcomputationalmethodforexpertruleoptimization
AT germanpradoarechiga designofanoptimizedfuzzyclassifierforthediagnosisofbloodpressurewithanewcomputationalmethodforexpertruleoptimization