An Optimized KDD Process for Collecting and Processing Ingested and Streaming Healthcare Data

Argyro Mavrogiorgou, Athanasios Kiourtis, George Manias, D. Kyriazis
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引用次数: 3

Abstract

Nowadays organizations are surrounded with enormous amounts of data, losing all the important information that resides in it. Knowledge Discovery in Databases (KDD) can aid organizations to transform this data into valuable information, by extracting complex patterns and relationships from it. To achieve that, various KDD techniques and tools have been proposed, resulting into impressive outcomes in various domains, especially in healthcare. Due to the huge amount of data available within the healthcare systems, data mining is extremely important for the healthcare sector. However, what is of major importance as well, is the way through which the data is collected, preprocessed and integrated with each other, considering its heterogeneous and diverse nature and format. To address all these challenges, this paper proposes a generalized KDD approach, which in essence constitutes a supplement of all the existing approaches that study and analyse the data mining part of the KDD process. This approach primarily concentrates on the phases of the selection, the preprocessing, as well as the transformation of the collected healthcare data, which are considered to be of great importance for its successful mining, analysis, and interpretation. The prototype of the proposed approach provides an example of the developed mechanism, explaining in deep detail its phases, verifying its possible wide applicability and adoption in various healthcare scenarios.
用于收集和处理摄取和流式医疗保健数据的优化KDD流程
如今,组织被大量的数据包围着,丢失了所有存在于其中的重要信息。数据库中的知识发现(KDD)可以通过从中提取复杂的模式和关系,帮助组织将这些数据转换为有价值的信息。为了实现这一目标,已经提出了各种KDD技术和工具,在各个领域,特别是在医疗保健领域,产生了令人印象深刻的结果。由于医疗保健系统中存在大量可用数据,因此数据挖掘对于医疗保健部门非常重要。然而,考虑到数据的异构和多样化性质和格式,数据的收集、预处理和相互集成的方式也同样重要。为了解决所有这些挑战,本文提出了一种广义的KDD方法,它本质上是对所有研究和分析KDD过程中数据挖掘部分的现有方法的补充。这种方法主要集中在选择、预处理以及收集到的医疗保健数据的转换阶段,这些阶段对于成功地挖掘、分析和解释数据非常重要。所建议方法的原型提供了开发机制的一个示例,详细解释了其各个阶段,验证了其在各种医疗保健场景中的广泛适用性和采用。
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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