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ISSN:2394-3661 | Crossref DOI | SJIF: 5.138 | PIF: 3.854

International Journal of Engineering and Applied Sciences

(An ISO 9001:2008 Certified Online and Print Journal)

Distributed association rule mining and summarization for Diabetes Mellitus and Its Co-Morbid Risk Prediction strategy using FUZZY Classifier

( Volume 2 Issue 11,November 2015 ) OPEN ACCESS
Author(s):

Dhivya Selvaraj, Mrs.Merlin Mercy

Abstract:

Diabetes is a life-threatening issue in modern health care domain. With the use of data mining techniques, diabetes factors and co morbid risk conditions associated with diabetes has found. In order to stifle the evolution of diabetes mellitus, applies distributed association rule mining and summarization techniques to electronic medical records. This helps to discover set of risk factors and co morbid conditions in distributed medical dataset using frequent itemset mining. In general, association rule mining (ARM) generates bulky volume of data sets which need to summarize certain rules over medical record. This encompasses a novel approach to find the common factors which lead to high risks of diabetes and co morbid conditions associated with diabetes. This performs both association rule mining and association rule summarization techniques with improved classification algorithms. Exiting systems aim to apply association rule mining to electronic medical records to discover sets of risk factors and their corresponding subpopulations that represent patients at particularly high risk of developing diabetes. Given the high dimensionality of EMRs (Electronic Medical Records), association rule mining generates a very large set of rules which we need to summarize for easy clinical use. The existing system reviewed four association rule set summarization techniques and conducted a comparative evaluation to provide guidance regarding the diabetes risk prediction.

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