Data Mining Techniques Based Diabetes Prediction

Main Article Content

Aditya Saxena
Megha Jain
Prashant Shrivastava

Abstract

Data mining plays an important part in the healthcare sector disease prediction. Techniques of data mining are commonly used in early disease detection. Diabetes is one of the world’s greatest health challenges. A widespread chronic condition is a diabetes. Diabetes prediction is a science that is increasingly growing. Diabetes prediction at an early stage will lead to better therapy. It is necessary to avoid, monitor and increase diabetes consciousness because it causes other health issues. Diabetes of type 1 or type 2 can lead to heart disorders, kidney diseases or complications with the eye. This survey paper reflects on numerous approaches and data mining strategies used to forecast multiple diabetes disorders at an early stage. Become a chronic disease because of diabetes. The patient lives will be spared by an early prediction of this disease. By the use of data mining tools and processes, diabetes is avoided and treatment rates are reduced. The association rule mining, classification, clustering, Random Forest, Prediction as well as the Artificial Neural Network (ANN) are among the most common and important data mining technology. Different data mining methods are available to avoid diseases such as cardiac disease, cancer including kidney etc. This study examines the use of data mining methods to predict multiple disease types.

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[1]
Aditya Saxena, Megha Jain, and Prashant Shrivastava , Trans., “Data Mining Techniques Based Diabetes Prediction”, IJAINN, vol. 1, no. 2, pp. 29–35, Dec. 2023, doi: 10.54105/ijainn.B1012.041221.
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How to Cite

[1]
Aditya Saxena, Megha Jain, and Prashant Shrivastava , Trans., “Data Mining Techniques Based Diabetes Prediction”, IJAINN, vol. 1, no. 2, pp. 29–35, Dec. 2023, doi: 10.54105/ijainn.B1012.041221.
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