INFLUENCE OF DATA MINING TECHNIQUES IN HEALTHCARE RESEARCH
International Journal of Computer Science (IJCS) Published by SK Research Group of Companies (SKRGC)
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Abstract
In lifestyle healthcare research plays the vital role in future world because of common occurrence of chronic illness which leads to depression for the people. In the 21st century, every hospital maintains a ledger in a computerized database to store medical reports for monitoring health details. Hospital operations have evolved with new improved tools and technology due to the existence of image processing and data mining, which have improved significantly over time. Data mining is a process of extracting knowledge from huge datasets and has various applications such as brain tumor detection, cancer detection, heart disease, cell mutation, and hospital administration. It can be analyzed based on clustering and classification.
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Keywords
Medicine, Predict Tumor, knowledge mining