用形式概念分析进行症状调查,提高医学诊断水平

C. Săcărea, Diana Sotropa, Diana Troanca
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引用次数: 5

摘要

模式抽取是知识发现领域的一个重要课题。在众多的数据挖掘技术中,我们建议使用一种新的方法:形式概念分析(FCA)和图数据库以及Neo4j的实现。FCA是应用数学的一个重要领域,它使用对象-属性关系的最大聚类来发现和表示知识结构。近年来,FCA的应用在许多研究领域得到了越来越多的重视。尽管FCA和Neo4j之间的图表示很相似,但元素之间的结构和关系表示不同,可以提供不同的分析视角。本文更深入地介绍了如何从医疗数据中提取模式并通过FCA和Neo4j进行解释,以帮助医务人员提高诊断的准确性。我们检查与患者症状和诊断相关的因素,然后将结果与医疗保健中心提供的结果进行比较。我们应用知识发现技术和概念景观范式,以获得深入和高定性的医疗数据知识表示。利用概念层次的有效性和图形化表示,从医疗数据集中提取有价值的知识,解决了电子病历系统中的知识发现、处理和表示任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Symptoms investigation by means of formal concept analysis for enhancing medical diagnoses
Pattern extraction is one of the major topics in Knowledge Discovery. Out of numerous data mining techniques we propose to use a new approach: Formal Concept Analysis (FCA) together with Graph Databases with the implementation Neo4j. FCA is a prominent field of applied mathematics using maximal clusters of object-attribute relationships to discover and represent knowledge structures. The use of FCA gained much importance in many research domains in recent years. Despite the similarity of the graph representation between FCA and Neo4j, the structure and relations among the elements are represented differently and can offer a different perspective on the analysis. This paper gives more insight into how patterns can be extracted from medical data and interpreted by means of FCA and Neo4j in order to help medical staff improve the accuracy of diagnoses. We examine the factors related to patients' symptoms and diagnostics and then compare the results with the ones provided by a medical care center. We apply knowledge discovery techniques and conceptual landscapes paradigm in order to obtain an in-depth and high qualitative knowledge representation of medical data. By making use of the effectiveness and the graphical representation of conceptual hierarchies we extract valuable knowledge from medical data sets through which we solve the knowledge discovery, processing and representation task in Electronic Health Record systems.
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