Applications of Data Mining Techniques in Healthcare and Prediction of Heart Attacks

K. Srinivas, B. Kavihta, Rani A Dr, Govrdhan, Karimnagar Jagtial
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引用次数: 257

Abstract

The healthcare environment is generally perceived as being 'information rich' yet 'knowledge poor'. There is a wealth of data available within the healthcare systems. However, there is a lack of effective analysis tools to discover hidden relationships and trends in data. Knowledge discovery and data mining have found numerous applications in business and scientific domain. Valuable knowledge can be discovered from application of data mining techniques in healthcare system. In this study, we briefly examine the potential use of classification based data mining techniques such as Rule based, Decision tree, Naive Bayes and Artificial Neural Network to massive volume of healthcare data. The healthcare industry collects huge amounts of healthcare data which, unfortunately, are not "mined" to discover hidden information. For data preprocessing and effective decision making One Dependency Augmented Naive Bayes classifier (ODANB) and naive credal classifier 2 (NCC2) are used. This is an extension of naive Bayes to imprecise probabilities that aims at delivering robust classifications also when dealing with small or incomplete data sets. Discovery of hidden patterns and relationships often goes unexploited. Using medical profiles such as age, sex, blood pressure and blood sugar it can predict the likelihood of patients getting a heart disease. It enables significant knowledge, e.g. patterns, relationships between medical factors related to heart disease, to be established.
数据挖掘技术在医疗保健和心脏病发作预测中的应用
医疗保健环境通常被认为是“信息丰富”但“知识贫乏”。在医疗保健系统中有大量可用的数据。然而,缺乏有效的分析工具来发现数据中隐藏的关系和趋势。知识发现和数据挖掘在商业和科学领域有着广泛的应用。数据挖掘技术在医疗保健系统中的应用可以发现有价值的知识。在本研究中,我们简要地研究了基于分类的数据挖掘技术,如基于规则的、决策树的、朴素贝叶斯和人工神经网络对大量医疗保健数据的潜在应用。医疗保健行业收集了大量的医疗保健数据,不幸的是,这些数据没有被“挖掘”以发现隐藏的信息。在数据预处理和有效决策方面,采用了一依赖增强朴素贝叶斯分类器(ODANB)和朴素凭证分类器2 (NCC2)。这是朴素贝叶斯对不精确概率的扩展,目的是在处理小数据集或不完整数据集时提供健壮的分类。隐藏模式和关系的发现往往未被利用。利用年龄、性别、血压和血糖等医疗资料,它可以预测患者患心脏病的可能性。它可以建立重要的知识,例如模式,与心脏病有关的医学因素之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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