Proceedings of the Institute for System Programming of the RAS
RUS  ENG    JOURNALS   PEOPLE   ORGANISATIONS   CONFERENCES   SEMINARS   VIDEO LIBRARY   PACKAGE AMSBIB  
General information
Latest issue
Archive

Search papers
Search references

RSS
Latest issue
Current issues
Archive issues
What is RSS



Proceedings of ISP RAS:
Year:
Volume:
Issue:
Page:
Find






Personal entry:
Login:
Password:
Save password
Enter
Forgotten password?
Register


Proceedings of the Institute for System Programming of the RAS, 2021, Volume 33, Issue 2, Pages 93–114
DOI: https://doi.org/10.15514/ISPRAS-2021-33(2)-5
(Mi tisp587)
 

A novel intelligent system for detection of type 2 diabetes with modified loss function and regularization

M. G.C.a, A. Alsadoonbacd, D. T. H. Phame, S. Abdullahf, H. T. Maie, P. W. C. Prasada, T. Q. V. Nguyene

a Charles Sturt University
b Asia Pacific International College
c University of Western Sydney
d Southern Cross University
e The University of Da Nang – University of Science and Education
f University of Technology, Iraq
References:
Abstract: Type 2 Diabetes (T2DM) makes up about 90% of diabetes cases, as well as tough restriction on continuous monitoring and detecting become one of key aspects in T2DM. This research aims to develop an ensemble of several machine learning and deep learning models for early detection of T2DM with high accuracy. With high diversity of models, the ensemble will provide more excessive performance than single models. Methodology: The proposed system is modified enhanced ensemble of machine learning models for T2DM prediction. It is composed of Logistic Regression, Random Forest, SVM and Deep Neural Network models to generate a modified ensemble model. Results: The output of each model in the modified ensemble is used to figure out the final output of the system. The datasets being used for these models include Practice Fusion HER, Pima Indians diabetic's data, UCI AIM94 Dataset and CA Diabetes Prevalence 2014. In comparison to the previous solutions, the proposed ensemble model solution exposes the effectiveness of accuracy, sensitivity, and specificity. It provides an accuracy of 87.5% from 83.51% in average, sensitivity of 35.8% from 29.59% as well as specificity of 98.9% from 96.27%. The processing time of the proposed model solution with 96.6ms is faster than the state-of-the-art with 97.5ms. Conclusion: The proposed modified enhanced system in this work improves the overall prediction capability of T2DM using an ensemble of several machine learning and deep learning models. A majority voting scheme utilizes the output from several models to make the final accurate prediction. Regularization function in this work is modified in order to include the regularization of all the models in ensemble, that helps prevent the overfitting and encourages the generalization capacity of the proposed system.
Keywords: T2DM prediction, machine learning, ensemble, deep neural networks, SVM, logistic regression, random forests.
Funding agency Grant number
The University of Da Nang – University of Science and Education, Vietnam T2020-TD-03-BS
This research is partially supported by The University of Da Nang – University of Science and Education, Vietnam under grant “T2020-TD-03-BS”.
Document Type: Article
Language: Russian
Citation: M. G.C., A. Alsadoon, D. T. H. Pham, S. Abdullah, H. T. Mai, P. W. C. Prasad, T. Q. V. Nguyen, “A novel intelligent system for detection of type 2 diabetes with modified loss function and regularization”, Proceedings of ISP RAS, 33:2 (2021), 93–114
Citation in format AMSBIB
\Bibitem{G.cAlsPha21}
\by M.~G.C., A.~Alsadoon, D.~T.~H.~Pham, S.~Abdullah, H.~T.~Mai, P.~W.~C.~Prasad, T.~Q.~V.~Nguyen
\paper A novel intelligent system for detection of type 2 diabetes with modified loss function and regularization
\jour Proceedings of ISP RAS
\yr 2021
\vol 33
\issue 2
\pages 93--114
\mathnet{http://mi.mathnet.ru/tisp587}
\crossref{https://doi.org/10.15514/ISPRAS-2021-33(2)-5}
Linking options:
  • https://www.mathnet.ru/eng/tisp587
  • https://www.mathnet.ru/eng/tisp/v33/i2/p93
  • Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
    Proceedings of the Institute for System Programming of the RAS
    Statistics & downloads:
    Abstract page:88
    Full-text PDF :59
    References:15
     
      Contact us:
     Terms of Use  Registration to the website  Logotypes © Steklov Mathematical Institute RAS, 2024