Prediction of potential-diabetic obese-patients using machine learning techniques

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dc.contributor.author Ali R.E.
dc.contributor.author El-Kadi H.
dc.contributor.author Labib S.S.
dc.contributor.author Saad Y.I.
dc.contributor.other Faculty of Computer Science
dc.contributor.other MSA University
dc.contributor.other Faculty of Computers and Artificial Intelligence
dc.contributor.other Giza
dc.contributor.other Egypt; Faculty of Computers and Artificial Intelligence
dc.contributor.other Giza
dc.contributor.other Egypt; Cairo University
dc.contributor.other Cairo
dc.contributor.other Egypt; Hepatogastroenterology and Clinical Nutrition
dc.contributor.other Faculty of Medicine
dc.contributor.other Cairo University
dc.contributor.other Giza
dc.contributor.other Egypt
dc.date.accessioned 2020-01-09T20:40:43Z
dc.date.available 2020-01-09T20:40:43Z
dc.date.issued 2019
dc.identifier.issn 2158107X
dc.identifier.uri https://t.ly/R2gLD
dc.description Scopus
dc.description.abstract Diabetes is a disease that is chronic. Improper blood glucose control may cause serious complications in diabetic patients as heart and kidney disease, strokes, and blindness. Obesity is considered to be a massive risk factor of type 2 diabetes. Machine Learning has been applied to many medical health aspects. In this paper, two machine learning techniques were applied; Support Vector Machine (SVM) and Artificial Neural Network (ANN) to predict diabetes mellitus. The proposed techniques were applied on a real dataset from Al-Kasr Al-Aini Hospital in Giza, Egypt. The models were examined using four-fold cross validation. The results were conducted from two phases in which forecasting patients with fatty liver disease using Support Vector Machine in the first phase reached the highest accuracy of 95% when applied on 8 attributes. Then, Artificial Neural Network technique to predict diabetic patients were applied on the output of phase 1 and another different 8 attributes to predict non-diabetic, pre-diabetic and diabetic patients with accuracy of 86.6%. � 2018 The Science and Information (SAI) Organization Limited. en_US
dc.description.uri https://www.scimagojr.com/journalsearch.php?q=21100867241&tip=sid&clean=0
dc.language.iso English en_US
dc.publisher Science and Information Organization en_US
dc.relation.ispartofseries International Journal of Advanced Computer Science and Applications
dc.relation.ispartofseries 10
dc.subject Artificial neural network en_US
dc.subject Diabetes en_US
dc.subject Nonalcoholic fatty liver disease en_US
dc.subject Obesity en_US
dc.subject Support vector machine en_US
dc.title Prediction of potential-diabetic obese-patients using machine learning techniques en_US
dc.type Article en_US
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dcterms.source Scopus
dc.Affiliation October University for modern sciences and Arts (MSA)


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