基于增量关联规则算法(PIA)的医学数据库挖掘

L. Elfangary, W. A. Atteya
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引用次数: 12

摘要

存储在医疗数据库中的大量知识和数据要求开发专门的工具来存储和访问数据、进行数据分析和有效利用存储的数据知识。目标是展示智能数据分析的方法和工具如何有助于缩小数据收集和数据理解之间日益扩大的差距。通过应用关联规则技术来帮助分析和检索大型医院医疗数据库中收集的大量数据的隐藏模式,可以实现这一目标。所采用的方法导致了通常使用传统技术无法达到的结果。具体来说,使用了肾病检查、体征、症状和诊断的发作数据库。介绍了增量增强型关联规则算法的理论和实践特点。这些特性包括规则、分类、清晰度、自动化、准确性、关系数据库管理系统(RDBMS)和原始数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Medical Databases Using Proposed Incremental Association Rules Algorithm (PIA)
The extensive amounts of knowledge and data stored in medical databases require the development of specialized tools for storing and accessing of data, data analysis and effective use of stored knowledge of data. The goal is to present how methods and tools for intelligent data analysis are helpful in narrowing the increasing gap between data gathering and data comprehension. This goal is achieved by applying Association Rules Technique to help in analyzing and retrieving hidden patterns for a large volume of data collected in a medical database for a large hospital. The approach used led to results normally unattainable using conventional techniques. Specifically, an episode database for Nephrology examinations, signs, symptoms and diagnosis is used. Theoretical and practical features for the Incremental Enhanced Association Rule Algorithm are presented. These features include Rules, Classification, Clarity, Automation, Accuracy, Relational Database Management Systems (RDBMS) and Raw Data.
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