Comparison of Classifiers for the Risk of Diabetes Prediction

被引:65
|
作者
Nai-arun, Nongyao [1 ]
Moungmai, Rungruttikarn [1 ]
机构
[1] Nakhon Sawan Rajabhat Univ, Fac Sci & Technol, Nakhon Sawan, Thailand
关键词
diabetes; random forest; logistic regression; artificial neural networks; decision tree; naive bayes; bagging; boosting;
D O I
10.1016/j.procs.2015.10.014
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
This paper applied a use of algorithms to classify the risk of diabetes mellitus. Four well known classification models that are Decision Tree, Artificial Neural Networks, Logistic Regression and Naive Bayes were first examined. Then, Bagging and Boosting techniques were investigated for improving the robustness of such models. Additionally, Random Forest was not ignored to evaluate in the study. Findings suggest that the best performance of disease risk classification is Random Forest algorithm. Therefore, its model was used to create a web application for predicting a class of the diabetes risk. (C) 2015 The Authors. Published by Elsevier B.V.
引用
收藏
页码:132 / 142
页数:11
相关论文
共 50 条
  • [41] Prediction of cardiovascular risk in people with diabetes
    Winocour, PH
    Fisher, M
    DIABETIC MEDICINE, 2003, 20 (07) : 515 - 527
  • [42] Diabetes Risk Prediction and Lifestyle Modification
    Schaefer, Ernst J.
    Maddalena, Julia
    Ai, Masumi
    Gleason, Joi A.
    Zhou, Yanhua
    Liu, Ching-Ti
    White, Charles
    Cupples, L. Adrienne
    Dansinger, Michael L.
    DIABETES, 2017, 66 : LB20 - LB20
  • [43] Risk prediction models in diabetes prevention
    Kahn, Richard
    LANCET DIABETES & ENDOCRINOLOGY, 2014, 2 (01): : 2 - 3
  • [44] Metabolomic Prediction of Diabetes and Cardiovascular Risk
    Dagogo-Jack, Samuel
    MEDICAL PRINCIPLES AND PRACTICE, 2012, 21 (05) : 401 - 403
  • [45] Genes, diabetes and cardiovascular risk prediction
    Stefano Del Prato
    Nature Reviews Endocrinology, 2009, 5 : 192 - 193
  • [46] Comparison of NN and LR classifiers in the context of screening native American elders with diabetes
    Upadhyaya, S.
    Farahmand, K.
    Baker-Demaray, T.
    EXPERT SYSTEMS WITH APPLICATIONS, 2013, 40 (15) : 5830 - 5838
  • [47] Machine learning algorithms for outcome prediction in (chemo)radiotherapy: An empirical comparison of classifiers
    Deist, Timo M.
    Dankers, Frank J. W. M.
    Valdes, Gilmer
    Wijsman, Robin
    Hsu, I-Chow
    Oberije, Cary
    Lustberg, Tim
    van Soest, Johan
    Hoebers, Frank
    Jochems, Arthur
    El Naqa, Issam
    Wee, Leonard
    Morin, Olivier
    Raleigh, David R.
    Bots, Wouter
    Kaanders, Johannes H.
    Belderbos, Jose
    Kwint, Margriet
    Solberg, Timothy
    Monshouwer, Rene
    Bussink, Johan
    Dekker, Andre
    Lambin, Philippe
    MEDICAL PHYSICS, 2018, 45 (07) : 3449 - 3459
  • [48] PREDICTION OF NOCTURNAL HYPOGLYCAEMIA IN ADULTS WITH TYPE 1 DIABETES USING MACHINE LEARNING CLASSIFIERS
    Afentakis, I.
    Herrero, P.
    Unsworth, R.
    Reddy, M.
    Oliver, N.
    Georgiou, P.
    DIABETES TECHNOLOGY & THERAPEUTICS, 2022, 24 : A226 - A226
  • [49] Effective Prediction of Type II Diabetes Mellitus Using Data Mining Classifiers and SMOTE
    Shuja, Mirza
    Mittal, Sonu
    Zaman, Majid
    ADVANCES IN COMPUTING AND INTELLIGENT SYSTEMS, ICACM 2019, 2020, : 195 - 211
  • [50] Diabetes Mellitus Disease Prediction Using Machine Learning Classifiers with Oversampling and Feature Augmentation
    Ahamed, B. Shamreen
    Arya, Meenakshi S.
    Nancy, Auxilia Osvin V.
    ADVANCES IN HUMAN-COMPUTER INTERACTION, 2022, 2022