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EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis

Disease diagnosis is a critical task which needs to be done with extreme precision. In recent times, medical data mining is gaining popularity in complex healthcare problems based disease datasets. Unstructured healthcare data constitutes irrelevant information which can affect the prediction abilit...

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Autores principales: Mishra, Sushruta, Tripathy, Hrudaya Kumar, Mallick, Pradeep Kumar, Bhoi, Akash Kumar, Barsocchi, Paolo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7411768/
https://www.ncbi.nlm.nih.gov/pubmed/32698547
http://dx.doi.org/10.3390/s20144036
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author Mishra, Sushruta
Tripathy, Hrudaya Kumar
Mallick, Pradeep Kumar
Bhoi, Akash Kumar
Barsocchi, Paolo
author_facet Mishra, Sushruta
Tripathy, Hrudaya Kumar
Mallick, Pradeep Kumar
Bhoi, Akash Kumar
Barsocchi, Paolo
author_sort Mishra, Sushruta
collection PubMed
description Disease diagnosis is a critical task which needs to be done with extreme precision. In recent times, medical data mining is gaining popularity in complex healthcare problems based disease datasets. Unstructured healthcare data constitutes irrelevant information which can affect the prediction ability of classifiers. Therefore, an effective attribute optimization technique must be used to eliminate the less relevant data and optimize the dataset for enhanced accuracy. Type 2 Diabetes, also called Pima Indian Diabetes, affects millions of people around the world. Optimization techniques can be applied to generate a reliable dataset constituting of symptoms that can be useful for more accurate diagnosis of diabetes. This study presents the implementation of a new hybrid attribute optimization algorithm called Enhanced and Adaptive Genetic Algorithm (EAGA) to get an optimized symptoms dataset. Based on readings of symptoms in the optimized dataset obtained, a possible occurrence of diabetes is forecasted. EAGA model is further used with Multilayer Perceptron (MLP) to determine the presence or absence of type 2 diabetes in patients based on the symptoms detected. The proposed classification approach was named as Enhanced and Adaptive-Genetic Algorithm-Multilayer Perceptron (EAGA-MLP). It is also implemented on seven different disease datasets to assess its impact and effectiveness. Performance of the proposed model was validated against some vital performance metrics. The results show a maximum accuracy rate of 97.76% and 1.12 s of execution time. Furthermore, the proposed model presents an F-Score value of 86.8% and a precision of 80.2%. The method is compared with many existing studies and it was observed that the classification accuracy of the proposed Enhanced and Adaptive-Genetic Algorithm-Multilayer Perceptron (EAGA-MLP) model clearly outperformed all other previous classification models. Its performance was also tested with seven other disease datasets. The mean accuracy, precision, recall and f-score obtained was 94.7%, 91%, 89.8% and 90.4%, respectively. Thus, the proposed model can assist medical experts in accurately determining risk factors of type 2 diabetes and thereby help in accurately classifying the presence of type 2 diabetes in patients. Consequently, it can be used to support healthcare experts in the diagnosis of patients affected by diabetes.
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spelling pubmed-74117682020-08-25 EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis Mishra, Sushruta Tripathy, Hrudaya Kumar Mallick, Pradeep Kumar Bhoi, Akash Kumar Barsocchi, Paolo Sensors (Basel) Article Disease diagnosis is a critical task which needs to be done with extreme precision. In recent times, medical data mining is gaining popularity in complex healthcare problems based disease datasets. Unstructured healthcare data constitutes irrelevant information which can affect the prediction ability of classifiers. Therefore, an effective attribute optimization technique must be used to eliminate the less relevant data and optimize the dataset for enhanced accuracy. Type 2 Diabetes, also called Pima Indian Diabetes, affects millions of people around the world. Optimization techniques can be applied to generate a reliable dataset constituting of symptoms that can be useful for more accurate diagnosis of diabetes. This study presents the implementation of a new hybrid attribute optimization algorithm called Enhanced and Adaptive Genetic Algorithm (EAGA) to get an optimized symptoms dataset. Based on readings of symptoms in the optimized dataset obtained, a possible occurrence of diabetes is forecasted. EAGA model is further used with Multilayer Perceptron (MLP) to determine the presence or absence of type 2 diabetes in patients based on the symptoms detected. The proposed classification approach was named as Enhanced and Adaptive-Genetic Algorithm-Multilayer Perceptron (EAGA-MLP). It is also implemented on seven different disease datasets to assess its impact and effectiveness. Performance of the proposed model was validated against some vital performance metrics. The results show a maximum accuracy rate of 97.76% and 1.12 s of execution time. Furthermore, the proposed model presents an F-Score value of 86.8% and a precision of 80.2%. The method is compared with many existing studies and it was observed that the classification accuracy of the proposed Enhanced and Adaptive-Genetic Algorithm-Multilayer Perceptron (EAGA-MLP) model clearly outperformed all other previous classification models. Its performance was also tested with seven other disease datasets. The mean accuracy, precision, recall and f-score obtained was 94.7%, 91%, 89.8% and 90.4%, respectively. Thus, the proposed model can assist medical experts in accurately determining risk factors of type 2 diabetes and thereby help in accurately classifying the presence of type 2 diabetes in patients. Consequently, it can be used to support healthcare experts in the diagnosis of patients affected by diabetes. MDPI 2020-07-20 /pmc/articles/PMC7411768/ /pubmed/32698547 http://dx.doi.org/10.3390/s20144036 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Mishra, Sushruta
Tripathy, Hrudaya Kumar
Mallick, Pradeep Kumar
Bhoi, Akash Kumar
Barsocchi, Paolo
EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
title EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
title_full EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
title_fullStr EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
title_full_unstemmed EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
title_short EAGA-MLP—An Enhanced and Adaptive Hybrid Classification Model for Diabetes Diagnosis
title_sort eaga-mlp—an enhanced and adaptive hybrid classification model for diabetes diagnosis
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7411768/
https://www.ncbi.nlm.nih.gov/pubmed/32698547
http://dx.doi.org/10.3390/s20144036
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