Predicting long-term type 2 diabetes with support vector machine using oral glucose tolerance test.

Journal: PloS one
PMID:

Abstract

Diabetes is a large healthcare burden worldwide. There is substantial evidence that lifestyle modifications and drug intervention can prevent diabetes, therefore, an early identification of high risk individuals is important to design targeted prevention strategies. In this paper, we present an automatic tool that uses machine learning techniques to predict the development of type 2 diabetes mellitus (T2DM). Data generated from an oral glucose tolerance test (OGTT) was used to develop a predictive model based on the support vector machine (SVM). We trained and validated the models using the OGTT and demographic data of 1,492 healthy individuals collected during the San Antonio Heart Study. This study collected plasma glucose and insulin concentrations before glucose intake and at three time-points thereafter (30, 60 and 120 min). Furthermore, personal information such as age, ethnicity and body-mass index was also a part of the data-set. Using 11 OGTT measurements, we have deduced 61 features, which are then assigned a rank and the top ten features are shortlisted using minimum redundancy maximum relevance feature selection algorithm. All possible combinations of the 10 best ranked features were used to generate SVM based prediction models. This research shows that an individual's plasma glucose levels, and the information derived therefrom have the strongest predictive performance for the future development of T2DM. Significantly, insulin and demographic features do not provide additional performance improvement for diabetes prediction. The results of this work identify the parsimonious clinical data needed to be collected for an efficient prediction of T2DM. Our approach shows an average accuracy of 96.80% and a sensitivity of 80.09% obtained on a holdout set.

Authors

  • Hasan T Abbas
    Department of Electrical & Computer Engineering, Texas A&M University at Qatar, Doha, Qatar.
  • Lejla Alic
    Magnetic Detection & Imaging Group, Faculty of Science & Technology, University of Twente, Enschede, The Netherlands.
  • Madhav Erraguntla
    Knowledge Based Systems, Inc., USA.
  • Jim X Ji
    Department of Electrical & Computer Engineering, Texas A&M University at Qatar, Doha, Qatar.
  • Muhammad Abdul-Ghani
    Diabetes Division Department of Medicine Texas Diabetes Institute University of Texas Health Science Center at San Antonio San Antonio TX USA.
  • Qammer H Abbasi
    James Watt School of EngineeringUniversity of Glasgow Glasgow G12 8QQ U.K.
  • Marwa K Qaraqe
    College of Science and Engineering, Hamad Bin Khalifa University, Doha, Qatar.