Literature DB >> 21713313

Computational intelligence in early diabetes diagnosis: a review.

Devang Odedra, Subir Samanta, Ambarish S Vidyarthi.   

Abstract

The development of an effective diabetes diagnosis system by taking advantage of computational intelligence is regarded as a primary goal nowadays. Many approaches based on artificial network and machine learning algorithms have been developed and tested against diabetes datasets, which were mostly related to individuals of Pima Indian origin. Yet, despite high accuracies of up to 99% in predicting the correct diabetes diagnosis, none of these approaches have reached clinical application so far. One reason for this failure may be that diabetologists or clinical investigators are sparsely informed about, or trained in the use of, computational diagnosis tools. Therefore, this article aims at sketching out an outline of the wide range of options, recent developments, and potentials in machine learning algorithms as diabetes diagnosis tools. One focus is on supervised and unsupervised methods, which have made significant impacts in the detection and diagnosis of diabetes at primary and advanced stages. Particular attention is paid to algorithms that show promise in improving diabetes diagnosis. A key advance has been the development of a more in-depth understanding and theoretical analysis of critical issues related to algorithmic construction and learning theory. These include trade-offs for maximizing generalization performance, use of physically realistic constraints, and incorporation of prior knowledge and uncertainty. The review presents and explains the most accurate algorithms, and discusses advantages and pitfalls of methodologies. This should provide a good resource for researchers from all backgrounds interested in computational intelligence-based diabetes diagnosis methods, and allows them to extend their knowledge into this kind of research.

Entities:  

Mesh:

Year:  2011        PMID: 21713313      PMCID: PMC3143540          DOI: 10.1900/RDS.2010.7.252

Source DB:  PubMed          Journal:  Rev Diabet Stud        ISSN: 1613-6071


  20 in total

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4.  Take action to prevent diabetes--the IMAGE toolkit for the prevention of type 2 diabetes in Europe.

Authors:  J Lindström; A Neumann; K E Sheppard; A Gilis-Januszewska; C J Greaves; U Handke; P Pajunen; S Puhl; A Pölönen; A Rissanen; M Roden; T Stemper; V Telle-Hjellset; J Tuomilehto; D Velickiene; P E Schwarz; T Acosta; M Adler; A AlKerwi; N Barengo; R Barengo; J M Boavida; K Charlesworth; V Christov; B Claussen; X Cos; E Cosson; S Deceukelier; V Dimitrijevic-Sreckovic; P Djordjevic; P Evans; A-M Felton; M Fischer; R Gabriel-Sanchez; A Gilis-Januszewska; M Goldfracht; J L Gomez; C J Greaves; M Hall; U Handke; H Hauner; J Herbst; N Hermanns; L Herrebrugh; C Huber; U Hühmer; J Huttunen; A Jotic; Z Kamenov; S Karadeniz; N Katsilambros; M Khalangot; K Kissimova-Skarbek; D Köhler; V Kopp; P Kronsbein; B Kulzer; D Kyne-Grzebalski; K Lalic; N Lalic; R Landgraf; Y H Lee-Barkey; S Liatis; J Lindström; K Makrilakis; C McIntosh; M McKee; A C Mesquita; D Misina; F Muylle; A Neumann; A C Paiva; P Pajunen; B Paulweber; M Peltonen; L Perrenoud; A Pfeiffer; A Pölönen; S Puhl; F Raposo; T Reinehr; A Rissanen; C Robinson; M Roden; U Rothe; T Saaristo; J Scholl; P E Schwarz; K E Sheppard; S Spiers; T Stemper; B Stratmann; J Szendroedi; Z Szybinski; T Tankova; V Telle-Hjellset; G Terry; D Tolks; F Toti; J Tuomilehto; A Undeutsch; C Valadas; P Valensi; D Velickiene; P Vermunt; R Weiss; J Wens; T Yilmaz
Journal:  Horm Metab Res       Date:  2010-04-13       Impact factor: 2.936

5.  A European evidence-based guideline for the prevention of type 2 diabetes.

Authors:  B Paulweber; P Valensi; J Lindström; N M Lalic; C J Greaves; M McKee; K Kissimova-Skarbek; S Liatis; E Cosson; J Szendroedi; K E Sheppard; K Charlesworth; A-M Felton; M Hall; A Rissanen; J Tuomilehto; P E Schwarz; M Roden; M Paulweber; A Stadlmayr; L Kedenko; N Katsilambros; K Makrilakis; Z Kamenov; P Evans; A Gilis-Januszewska; K Lalic; A Jotic; P Djordevic; V Dimitrijevic-Sreckovic; U Hühmer; B Kulzer; S Puhl; Y H Lee-Barkey; A AlKerwi; C Abraham; W Hardeman; T Acosta; M Adler; A AlKerwi; N Barengo; R Barengo; J M Boavida; K Charlesworth; V Christov; B Claussen; X Cos; E Cosson; S Deceukelier; V Dimitrijevic-Sreckovic; P Djordjevic; P Evans; A-M Felton; M Fischer; R Gabriel-Sanchez; A Gilis-Januszewska; M Goldfracht; J L Gomez; C J Greaves; M Hall; U Handke; H Hauner; J Herbst; N Hermanns; L Herrebrugh; C Huber; U Hühmer; J Huttunen; A Jotic; Z Kamenov; S Karadeniz; N Katsilambros; M Khalangot; K Kissimova-Skarbek; D Köhler; V Kopp; P Kronsbein; B Kulzer; D Kyne-Grzebalski; K Lalic; N Lalic; R Landgraf; Y H Lee-Barkey; S Liatis; J Lindström; K Makrilakis; C McIntosh; M McKee; A C Mesquita; D Misina; F Muylle; A Neumann; A C Paiva; P Pajunen; B Paulweber; M Peltonen; L Perrenoud; A Pfeiffer; A Pölönen; S Puhl; F Raposo; T Reinehr; A Rissanen; C Robinson; M Roden; U Rothe; T Saaristo; J Scholl; P E Schwarz; K E Sheppard; S Spiers; T Stemper; B Stratmann; J Szendroedi; Z Szybinski; T Tankova; V Telle-Hjellset; G Terry; D Tolks; F Toti; J Tuomilehto; A Undeutsch; C Valadas; P Valensi; D Velickiene; P Vermunt; R Weiss; J Wens; T Yilmaz
Journal:  Horm Metab Res       Date:  2010-04-13       Impact factor: 2.936

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Authors:  A Kazemnejad; Z Batvandi; J Faradmal
Journal:  East Mediterr Health J       Date:  2010-06       Impact factor: 1.628

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Journal:  IEEE Trans Inf Technol Biomed       Date:  2010-01-12

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Authors:  P E H Schwarz; J Li; J Lindstrom; J Tuomilehto
Journal:  Horm Metab Res       Date:  2008-11-19       Impact factor: 2.936

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Journal:  IEEE Trans Neural Netw       Date:  1995
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  8 in total

1.  Computational intelligence-based diagnosis tool for the detection of prediabetes and type 2 diabetes in India.

Authors:  Devang Odedra; Subir Samanta; Ambarish S Vidyarthi
Journal:  Rev Diabet Stud       Date:  2012-05-10

Review 2.  A Review of Emerging Technologies for the Management of Diabetes Mellitus.

Authors:  Konstantia Zarkogianni; Eleni Litsa; Konstantinos Mitsis; Po-Yen Wu; Chanchala D Kaddi; Chih-Wen Cheng; May D Wang; Konstantina S Nikita
Journal:  IEEE Trans Biomed Eng       Date:  2015-08-19       Impact factor: 4.538

3.  Java-based diabetes type 2 prediction tool for better diagnosis.

Authors:  Devang Odedra; Medhavi Mallick; Prateek Shukla; Subir Samanta; Ambarish S Vidyarthi
Journal:  Diabetes Technol Ther       Date:  2011-11-07       Impact factor: 6.118

4.  Machine Learning Models in Type 2 Diabetes Risk Prediction: Results from a Cross-sectional Retrospective Study in Chinese Adults.

Authors:  Xiao-Lu Xiong; Rong-Xin Zhang; Yan Bi; Wei-Hong Zhou; Yun Yu; Da-Long Zhu
Journal:  Curr Med Sci       Date:  2019-07-25

Review 5.  Artificial Intelligence for Diabetes Management and Decision Support: Literature Review.

Authors:  Ivan Contreras; Josep Vehi
Journal:  J Med Internet Res       Date:  2018-05-30       Impact factor: 5.428

6.  An artificial neural network approach to detect presence and severity of Parkinson's disease via gait parameters.

Authors:  Tiwana Varrecchia; Stefano Filippo Castiglia; Alberto Ranavolo; Carmela Conte; Antonella Tatarelli; Gianluca Coppola; Cherubino Di Lorenzo; Francesco Draicchio; Francesco Pierelli; Mariano Serrao
Journal:  PLoS One       Date:  2021-02-19       Impact factor: 3.240

7.  Feasibility of an Activity Control System in Patients with Diabetes: A Study Protocol of a Randomised Controlled Trial.

Authors:  Pedro Montagut-Martínez; Jose Joaquin García-Arenas; Matilde Romero-López; Nicomedes Rodríguez-Rodríguez; David Pérez-Cruzado; Jesús González-Lama
Journal:  Diabetes Metab Syndr Obes       Date:  2022-09-02       Impact factor: 3.249

8.  Development of Various Diabetes Prediction Models Using Machine Learning Techniques.

Authors:  Juyoung Shin; Jaewon Kim; Chanjung Lee; Joon Young Yoon; Seyeon Kim; Seungjae Song; Hun-Sung Kim
Journal:  Diabetes Metab J       Date:  2022-03-11       Impact factor: 5.893

  8 in total

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