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Forecasting Diabetes Mellitus with Biometric Measurements

Year 2011, Volume: 1 Issue: 1, 28 - 42, 01.06.2011

Abstract

Forecasting diabetes mellitus with biometric measurements is presented in this paper. Multilayer perceptron, Elman, ART1 Neural Networks, K-Nearest Neighbor (k- NN) and Support Vector Machine (SVM) methods were used in diabetes mellitus forecast system. The result of this study will provide alternative solutions to the medical staff in determining whether someone has diabets or not which is much easier rather than presently doing a blood test. The feedforward and feedback neural networks, K-Nearest Neighbour (k -NN) and Support Vector Machine (SVM) classifiers have been chosen for learning and testing of 768 data where 268 of them are diagnosed with diabetes. For forecasting system, 8 different biometric measurements were used. These parameters are; number of times pregnant, plasma glucose concentration, blood pressure, triceps skin fold thickness, serum insulin, body mass index, diabetes pedigree function and age. Different structures of networks were tested and the results are compared in terms of testing performance for each network model. The main purpose of this study is to forecast whether someone has diabetes or not. Finally, the best performance was observed as 87.06% in the LS-SVM model structure

References

  • World Health Organization, Media Centre, Diabetes
  • Texas Heart Institute, Heart Information Center, Diabetes Mellitus
  • Smith, J. W., Everhart, J. E., Dickson, W. C., Knowler, W. C. and Johannes, R. S. (1988) Using the ADAP learning algorithm to forecast the onset of diabetes mellitus. In Proceedings of the Symposium on Computer Applications in Medical Care (Washington, 1988), ed. R. A. Greenes, pp. 261–265. Los Alamitos, CA: IEEE Computer Society Press.
  • Artifical Neural Networks, GIRISH KUMAR JHA, Indian Agricultural Research Inst., PUSA, New Delhi-110 012
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  • S.I. Ao and V. Paladea, “Ensemble of Elman neural networks and support vector machines for reverse engineering of gene regulatory networks”, Applied Soft Computing, Vol 11, Issue 2, March 2011, Pages 1718-1726
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  • Principe, J.C. "Artificial Neural Networks"(extract).The Electrical Engineering HandbookEd. Richard C. Dorf Boca Raton: CRC Press LLC, 2000.
  • Samuel E. Buttrey, and Ciril Karo.” Using k-nearest-neighbor classification in the leaves of a tree.” Computational Statistics & Data Analysis 40 (2002) 27 – 37. Received1 May 2001; accepted 1 October 2001.
  • Yan Xu a,b, Xiao-Bo Wang a, Jun Ding b, Ling-Yun Wu c, Nai-Yang Deng a,” Lysine acetylation sites prediction using an ensemble of support vector machine classiŞers”, Journal of Theoretical Biology 264 (2010) 130–135.
Year 2011, Volume: 1 Issue: 1, 28 - 42, 01.06.2011

Abstract

References

  • World Health Organization, Media Centre, Diabetes
  • Texas Heart Institute, Heart Information Center, Diabetes Mellitus
  • Smith, J. W., Everhart, J. E., Dickson, W. C., Knowler, W. C. and Johannes, R. S. (1988) Using the ADAP learning algorithm to forecast the onset of diabetes mellitus. In Proceedings of the Symposium on Computer Applications in Medical Care (Washington, 1988), ed. R. A. Greenes, pp. 261–265. Los Alamitos, CA: IEEE Computer Society Press.
  • Artifical Neural Networks, GIRISH KUMAR JHA, Indian Agricultural Research Inst., PUSA, New Delhi-110 012
  • Frank Rosenblatt. (1958). "The Perceptron: A Probabilistic Model for Information Storage and Organization in the Brain." Psychological Review, 65(6).
  • http://www.nd.com/definitions/mlp.htm
  • Rudjer Boskovic Institute, Neural Networks tutorials
  • Zurada, J.M., 1992. Introduction to Artificial Neural Networks. West Publishing Company, pp. 423–426.
  • University of Ulster, School of Computing and Intelligent Systems, Computational Intelligence Course, Recurrent Networks and Neural Network Applications Tutorial.
  • S.I. Ao and V. Paladea, “Ensemble of Elman neural networks and support vector machines for reverse engineering of gene regulatory networks”, Applied Soft Computing, Vol 11, Issue 2, March 2011, Pages 1718-1726
  • Encyclopedia of Cognitive Science Book, Adaptive Resonance Theory, Stephen Grossberg
  • Principe, J.C. "Artificial Neural Networks"(extract).The Electrical Engineering HandbookEd. Richard C. Dorf Boca Raton: CRC Press LLC, 2000.
  • Samuel E. Buttrey, and Ciril Karo.” Using k-nearest-neighbor classification in the leaves of a tree.” Computational Statistics & Data Analysis 40 (2002) 27 – 37. Received1 May 2001; accepted 1 October 2001.
  • Yan Xu a,b, Xiao-Bo Wang a, Jun Ding b, Ling-Yun Wu c, Nai-Yang Deng a,” Lysine acetylation sites prediction using an ensemble of support vector machine classiŞers”, Journal of Theoretical Biology 264 (2010) 130–135.
There are 14 citations in total.

Details

Other ID JA34ZD93AM
Journal Section Research
Authors

Emrullah Acar This is me

Mehmet Siraç Özerdem This is me

Veysi Akpolat This is me

Publication Date June 1, 2011
Published in Issue Year 2011 Volume: 1 Issue: 1

Cite

APA Acar, E., Özerdem, M. S., & Akpolat, V. (2011). Forecasting Diabetes Mellitus with Biometric Measurements. International Archives of Medical Research, 1(1), 28-42.
AMA Acar E, Özerdem MS, Akpolat V. Forecasting Diabetes Mellitus with Biometric Measurements. IAMR. June 2011;1(1):28-42.
Chicago Acar, Emrullah, Mehmet Siraç Özerdem, and Veysi Akpolat. “Forecasting Diabetes Mellitus With Biometric Measurements”. International Archives of Medical Research 1, no. 1 (June 2011): 28-42.
EndNote Acar E, Özerdem MS, Akpolat V (June 1, 2011) Forecasting Diabetes Mellitus with Biometric Measurements. International Archives of Medical Research 1 1 28–42.
IEEE E. Acar, M. S. Özerdem, and V. Akpolat, “Forecasting Diabetes Mellitus with Biometric Measurements”, IAMR, vol. 1, no. 1, pp. 28–42, 2011.
ISNAD Acar, Emrullah et al. “Forecasting Diabetes Mellitus With Biometric Measurements”. International Archives of Medical Research 1/1 (June 2011), 28-42.
JAMA Acar E, Özerdem MS, Akpolat V. Forecasting Diabetes Mellitus with Biometric Measurements. IAMR. 2011;1:28–42.
MLA Acar, Emrullah et al. “Forecasting Diabetes Mellitus With Biometric Measurements”. International Archives of Medical Research, vol. 1, no. 1, 2011, pp. 28-42.
Vancouver Acar E, Özerdem MS, Akpolat V. Forecasting Diabetes Mellitus with Biometric Measurements. IAMR. 2011;1(1):28-42.

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