An analysis on the impact of fluoride in human health (dental) using clustering data mining technique

T. Balasubramanian, R. Umarani
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引用次数: 27

Abstract

Data Mining is the process of extracting information from large data sets through using algorithms and Techniques drawn from the field of Statistics, Machine Learning and Data Base Management Systems. Traditional data analysis methods often involve manual work and interpretation of data which is slow, expensive and highly subjective Data Mining, popularly called as knowledge discovery in large data, enables firms and organizations to make calculated decisions by assembling, accumulating, analyzing and accessing corporate data. It uses variety of tools like query and reporting tools, analytical processing tools, and Decision Support System. [1][2] This article explores data mining techniques in health care. In particular, it discusses data mining and its application in areas where people are affected severely by using the under-ground drinking water which consist of high levels of fluoride in Krishnagiri District, Tamil Nadu State, India. This paper identifies the risk factors associated with the high level of fluoride content in water, using clustering algorithms and finds meaningful hidden patterns which give meaningful decision making to this socio-economic real world health hazard.
利用聚类数据挖掘技术分析氟化物对人体健康(牙齿)的影响
数据挖掘是通过使用统计学、机器学习和数据库管理系统领域的算法和技术从大型数据集中提取信息的过程。传统的数据分析方法通常涉及人工工作和对数据的解释,这是缓慢、昂贵和高度主观的。数据挖掘通常被称为大数据中的知识发现,它使公司和组织能够通过收集、积累、分析和访问企业数据来做出计算决策。它使用各种工具,如查询和报告工具、分析处理工具和决策支持系统。[1][2]本文探讨了医疗保健中的数据挖掘技术。报告特别讨论了数据挖掘及其在印度泰米尔纳德邦克里希纳吉里地区因使用含高氟化物的地下饮用水而受到严重影响的地区的应用。本文使用聚类算法确定了与水中高氟化物含量相关的风险因素,并找到了有意义的隐藏模式,为这一社会经济现实世界的健康危害提供了有意义的决策。
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