A New Preprocessing Method for Diabetes and Biomedical Data Classification

People of all ages and socioeconomic levels, all over the world, are being diagnosed with type 2 diabetes at rates that are higher than they have ever been. It is possible for it to be the root cause of a wide variety of diseases, the most notable of which include blindness, renal illness, kidney d...

Full description

Saved in:
Bibliographic Details
Main Authors: Sarbast CHALO, İbrahim Berkan AYDİLEK
Format: Article
Language:English
Published: Qubahan 2023-01-01
Series:Qubahan Academic Journal
Online Access:https://journal.qubahan.com/index.php/qaj/article/view/135
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832544479145361408
author Sarbast CHALO
İbrahim Berkan AYDİLEK
author_facet Sarbast CHALO
İbrahim Berkan AYDİLEK
author_sort Sarbast CHALO
collection DOAJ
description People of all ages and socioeconomic levels, all over the world, are being diagnosed with type 2 diabetes at rates that are higher than they have ever been. It is possible for it to be the root cause of a wide variety of diseases, the most notable of which include blindness, renal illness, kidney disease, and heart disease. Therefore, it is of the utmost importance that a system is devised that, based on medical information, is capable of reliably detecting patients who have diabetes. We present a method for the identification of diabetes that involves the training of the features of a deep neural network between five and 10 times using the cross-validation training mode. The Pima Indian Diabetes (PID) data set was retrieved from the database that is part of the machine learning repository at UCI. In addition, the results of ten-fold cross-validation show an accuracy of 97.8%, a recall OF 97.8%, and a precision of 97.8% for PIMA dataset using RF algorithm. This research examined a variety of other biomedical datasets to demonstrate that machine learning may be used to develop an efficient system that can accurately predict diabetes. Several different types of machine learning classifiers, such as KNN, J48, RF, and DT, were utilized in the experimental findings of biological datasets. The findings that were obtained demonstrated that our trainable model is capable of correctly classifying biomedical data. This was demonstrated by achieving higher 99% accuracy, recall, and precision for parikson dataset.
format Article
id doaj-art-50efbd774313480fa269ed3ca4622d2e
institution Kabale University
issn 2709-8206
language English
publishDate 2023-01-01
publisher Qubahan
record_format Article
series Qubahan Academic Journal
spelling doaj-art-50efbd774313480fa269ed3ca4622d2e2025-02-03T10:12:41ZengQubahanQubahan Academic Journal2709-82062023-01-012410.48161/qaj.v2n4a135135A New Preprocessing Method for Diabetes and Biomedical Data ClassificationSarbast CHALO0İbrahim Berkan AYDİLEK1ran University, Engineering Faculty, Department of Computer Engineering, Şanlıurfa, TurkeyVan University, Engineering Faculty, Department of Computer Engineering, Şanlıurfa, Turkey People of all ages and socioeconomic levels, all over the world, are being diagnosed with type 2 diabetes at rates that are higher than they have ever been. It is possible for it to be the root cause of a wide variety of diseases, the most notable of which include blindness, renal illness, kidney disease, and heart disease. Therefore, it is of the utmost importance that a system is devised that, based on medical information, is capable of reliably detecting patients who have diabetes. We present a method for the identification of diabetes that involves the training of the features of a deep neural network between five and 10 times using the cross-validation training mode. The Pima Indian Diabetes (PID) data set was retrieved from the database that is part of the machine learning repository at UCI. In addition, the results of ten-fold cross-validation show an accuracy of 97.8%, a recall OF 97.8%, and a precision of 97.8% for PIMA dataset using RF algorithm. This research examined a variety of other biomedical datasets to demonstrate that machine learning may be used to develop an efficient system that can accurately predict diabetes. Several different types of machine learning classifiers, such as KNN, J48, RF, and DT, were utilized in the experimental findings of biological datasets. The findings that were obtained demonstrated that our trainable model is capable of correctly classifying biomedical data. This was demonstrated by achieving higher 99% accuracy, recall, and precision for parikson dataset. https://journal.qubahan.com/index.php/qaj/article/view/135
spellingShingle Sarbast CHALO
İbrahim Berkan AYDİLEK
A New Preprocessing Method for Diabetes and Biomedical Data Classification
Qubahan Academic Journal
title A New Preprocessing Method for Diabetes and Biomedical Data Classification
title_full A New Preprocessing Method for Diabetes and Biomedical Data Classification
title_fullStr A New Preprocessing Method for Diabetes and Biomedical Data Classification
title_full_unstemmed A New Preprocessing Method for Diabetes and Biomedical Data Classification
title_short A New Preprocessing Method for Diabetes and Biomedical Data Classification
title_sort new preprocessing method for diabetes and biomedical data classification
url https://journal.qubahan.com/index.php/qaj/article/view/135
work_keys_str_mv AT sarbastchalo anewpreprocessingmethodfordiabetesandbiomedicaldataclassification
AT ibrahimberkanaydilek anewpreprocessingmethodfordiabetesandbiomedicaldataclassification
AT sarbastchalo newpreprocessingmethodfordiabetesandbiomedicaldataclassification
AT ibrahimberkanaydilek newpreprocessingmethodfordiabetesandbiomedicaldataclassification