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

dc.AffiliationOctober University for modern sciences and Arts (MSA)
dc.contributor.authorAli R.E.
dc.contributor.authorEl-Kadi H.
dc.contributor.authorLabib S.S.
dc.contributor.authorSaad Y.I.
dc.contributor.otherFaculty of Computer Science
dc.contributor.otherMSA University
dc.contributor.otherFaculty of Computers and Artificial Intelligence
dc.contributor.otherGiza
dc.contributor.otherEgypt; Faculty of Computers and Artificial Intelligence
dc.contributor.otherGiza
dc.contributor.otherEgypt; Cairo University
dc.contributor.otherCairo
dc.contributor.otherEgypt; Hepatogastroenterology and Clinical Nutrition
dc.contributor.otherFaculty of Medicine
dc.contributor.otherCairo University
dc.contributor.otherGiza
dc.contributor.otherEgypt
dc.date.accessioned2020-01-09T20:40:43Z
dc.date.available2020-01-09T20:40:43Z
dc.date.issued2019
dc.descriptionScopus
dc.description.abstractDiabetes 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.urihttps://www.scimagojr.com/journalsearch.php?q=21100867241&tip=sid&clean=0
dc.identifier.issn2158107X
dc.identifier.urihttps://t.ly/R2gLD
dc.language.isoEnglishen_US
dc.publisherScience and Information Organizationen_US
dc.relation.ispartofseriesInternational Journal of Advanced Computer Science and Applications
dc.relation.ispartofseries10
dc.subjectArtificial neural networken_US
dc.subjectDiabetesen_US
dc.subjectNonalcoholic fatty liver diseaseen_US
dc.subjectObesityen_US
dc.subjectSupport vector machineen_US
dc.titlePrediction of potential-diabetic obese-patients using machine learning techniquesen_US
dc.typeArticleen_US
dcterms.isReferencedByBhupathiraju, S.N., Hu, F.B., Epidemiology of obesity and diabetes and their cardiovascular complications (2016) Circulation research, 118 (11), pp. 1723-1735; Ng, M., Global, regional, and national prevalence of overweight and obesity in children and adults during 1980-2013: a systematic analysis for the Global Burden of Disease Study 2013 (2014) The lancet, 384 (9945), pp. 766-781; Al-Goblan, A.S., Al-Alfi, M.A., Khan, M.Z., Mechanism linking diabetes mellitus and obesity (2014) Diabetes, metabolic syndrome and obesity: targets and therapy, 7, p. 587; Iyer, A., Jeyalatha, S., Sumbaly, R., Diagnosis of diabetes using classification mining techniques (2015), arXiv preprint; (2014) Control, C.f.D. and Prevention, National diabetes statistics report: estimates of diabetes and its burden in the United States, , Atlanta, GA: US Department of Health and Human Services, 2014. 2014; Cichosz, S.L., (2016) Predictive models in diabetes: Early prediction and detecting of type 2 diabetes and related complications, , Aalborg Universitetsforlag; Zou, Q., Predicting diabetes mellitus with machine learning techniques (2018) Frontiers in genetics, p. 9; Krasteva, A., Oral cavity and systemic diseases-diabetes mellitus (2011) Biotechnology & Biotechnological Equipment, 25 (1), pp. 2183-2186; Devi, M.R., Shyla, J.M., Analysis of various data mining techniques to predict diabetes mellitus (2016) International Journal of Applied Engineering Research, 11 (1), pp. 727-730; Iancu, I., Mota, M., Iancu, E., Method for the analysing of blood glucose dynamics in diabetes mellitus patients (2008) in 2008 IEEE International Conference on Automation, Quality and Testing, Robotics. IEEE; Mills, E.P., Treating nonalcoholic fatty liver disease in patients with type 2 diabetes mellitus: a review of efficacy and safety (2018) Therapeutic advances in endocrinology and metabolism, 9 (1), pp. 15-28; Isomaa, B., Cardiovascular morbidity and mortality associated with the metabolic syndrome (2001) Diabetes care, 24 (4), pp. 683-689; Marchesini, G., Nonalcoholic fatty liver disease: a feature of the metabolic syndrome (2001) Diabetes, 50 (8), pp. 1844-1850; Ballestri, S., Nonalcoholic fatty liver disease is associated with an almost twofold increased risk of incident type 2 diabetes and metabolic syndrome. Evidence from a systematic review and meta-analysis (2016) Journal of gastroenterology and hepatology, 31 (5), pp. 936-944; Peterson, D.M., The mind's new labels? (2001) The MIT Encyclopedia of the Cognitive Sciences, , Review of RA Wilson and FC Keil (Eds.), Elsevier; Kavakiotis, I., Machine learning and data mining methods in diabetes research (2017) Computational and structural biotechnology journal, 15, pp. 104-116; Nilashi, M., An analytical method for diseases prediction using machine learning techniques (2017) Computers & Chemical Engineering, 106, pp. 212-223; Kumar, R.N., Kumar, M.A., Medical Data Mining Techniques for Health Care Systems (2016) International Journal of Engineering Science, p. 3498; Boukenze, B., Mousannif, H., Haqiq, A., Performance of data mining techniques to predict in healthcare case study: chronic kidney failure disease (2016) Int. Journal of Database Managment systems, 8 (30), pp. 1-9; Abdullah, M., Al-Asmari, S., Anemia types prediction based on data mining classification algorithms (2017) Communication, Management and Information Technology-Sampaio de Alencar; Kumari, V.A., Chitra, R., Classification of diabetes disease using support vector machine (2013) International Journal of Engineering Research and Applications, 3 (2), pp. 1797-1801; Daghistani, T., Alshammari, R., Diagnosis of diabetes by applying data mining classification techniques (2016) International Journal of Advanced Computer Science and Applications (IJACSA), 7 (7), pp. 329-332; El-Halees, A.M., Shurrab, A.H., Blood tumor prediction using data mining techniques (2017) Blood tumor prediction using data mining techniques, p. 6; Wiley, M.T., (2011) Machine learning for diabetes decision support, , Ohio University; Jahankhani, P., Kodogiannis, V., Revett, K., EEG signal classification using wavelet feature extraction and neural networks (2006) in IEEE John Vincent Atanasoff 2006 International Symposium on Modern Computing (JVA'06). IEEE; Eljil, K.A.A.S., (2014) Predicting Hypoglycemia in Diabetic Patients using Machine Learning Techniques; Hashmi, S.F., (2013) A Machine Learning Approach to Diagnosis of Parkinson's Disease; Frutuoso, D.G., (2015) SMITH-Smart MonITor Health system
dcterms.sourceScopus

Files

Original bundle

Now showing 1 - 2 of 2
Loading...
Thumbnail Image
Name:
avatar_scholar_256.png
Size:
6.31 KB
Format:
Portable Network Graphics
Description:
Loading...
Thumbnail Image
Name:
Paper_12-Prediction_of_Potential_Diabetic_Obese_Patients.pdf
Size:
934.76 KB
Format:
Adobe Portable Document Format
Description: