On integrating clustering and statistical analysis for supporting cardiovascular disease diagnosis

A. Wosiak, D. Zakrzewska
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引用次数: 10

Abstract

Statistical analysis of medical data plays significant role in medical diagnostics development. However in many cases the statistics is not effective enough. In the paper we consider combining statistical inference with clustering in the preprocessing phase of data analysis. The proposed methodology is checked on cardiovascular data and used for developing methods of early diagnosis of hypertension in children. Experiments, conducted on the real data, have demonstrated that the proposed hybrid approach allowed to discover relationships which have not been identified by using only the statistical methods. We have observed approximately 30% growth in the number of correlations between diagnosed attributes. Moreover all the obtained statistically significant dependencies were stronger in clusters rather than in the whole datasets.
整合聚类与统计分析支持心血管疾病诊断
医疗数据的统计分析在医学诊断的发展中起着重要的作用。然而,在许多情况下,统计数据是不够有效的。本文考虑在数据分析的预处理阶段将统计推理与聚类相结合。提出的方法是检查心血管数据和用于开发方法早期诊断高血压的儿童。在真实数据上进行的实验表明,所提出的混合方法可以发现仅使用统计方法无法识别的关系。我们观察到诊断属性之间的相关性增加了大约30%。此外,所有获得的统计显著相关性在聚类中比在整个数据集中更强。
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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