AUTOMATIC DIABETES DETECTION SYSTEM USING PCA AND FUZZY K-NN

Authors

  • Ery Permana Yudha Universitas Duta Bangsa Surakarta
  • Eko Purwanto Universitas Duta Bangsa Surakarta
  • Ratna Puspita Indah Universitas Duta Bangsa Surakarta

DOI:

https://doi.org/10.47701/icohetech.v4i1.3392

Keywords:

Diabetes, diagnosis, data analysis, machine learning

Abstract

In recent years, the prevalence of diabetes has reached alarming levels, necessitating efficient and timely diagnosis for effective management. This research presents an innovative approach to diabetes detection through an automatic system that leverages advanced technologies such as machine learning and medical data analysis. The proposed system aims to streamline the diabetes diagnosis by analyzing various medical data sources. By utilizing a machine learning algorithm, the system seeks to extract meaningful patterns and relationships from these diverse datasets. Key components of the automatic diabetes detection system include data preprocessing, feature extraction, and model training. The system's performance is evaluated using various metrics, such as sensitivity, specificity, accuracy, and f1-score. Overall, the proposed automatic diabetes detection system holds immense promise in revolutionizing the field of diabetes diagnosis.

References

American Diabetes Association. (2013). Standards of medical care in diabetes—2013. Diabetes Care, 36(Supplement 1), S11-S66.

Shaw, J. E., Sicree, R. A., & Zimmet, P. Z. (2010). Global estimates of the prevalence of diabetes for 2010 and 2030. Diabetes Research and Clinical Practice, 87(1), 4-14.

Jolliffe, I. T. (2002). Principal component analysis. Wiley Online Library.

Haider, M. A., & Fung, G. (2004). Principal component analysis in clinical studies. Computerized Medical Imaging and Graphics, 28(6), 343-348.

Bezdek, J. C. (1981). Pattern recognition with fuzzy objective function algorithms. Plenum Press.

Bezdek, J. C., & Pal, S. K. (1992). Fuzzy models for pattern recognition. IEEE Press.

Smith, A. F., & Murphy, R. J. (2004). Machine learning in computer-aided diagnosis of the thorax and colon in CT: a survey. IEEE Transactions on Medical Imaging, 23(7), 678-696.

Hameed, A. S., & Mohamed, S. A. (2014). Comparative study for brain tumor classification using multilayer perceptron neural network and K-nearest neighbor. Journal of Computer Science, 10(10), 1973-1978.

Johnson, M. K., & Brown, G. (1993). Fuzzy clustering with variable cluster size and shape. Fuzzy Sets and Systems, 55(2), 121-138.

Pedregosa, F., Varoquaux, G., Gramfort, A., Michel, V., Thirion, B., Grisel, O., ... & Vanderplas, J. (2011). Scikit-learn: Machine learning in Python. Journal of Machine Learning Research, 12(Oct), 2825-2830.

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Published

2023-09-23