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A hybrid and exploratory approach to knowledge discovery in metabolomic data

机译:代谢组数据知识发现的混合和探索方法

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In this paper, we propose a hybrid and exploratory knowledge discovery approach for analyzing metabolomic complex data based on a combination of supervised classifiers, pattern mining and Formal Concept Analysis (FCA). The approach is based on three main operations, preprocessing, classification, and postprocessing. Classifiers are applied to datasets of the form individuals x features and produce sets of ranked features which are further analyzed. Pattern mining and FCA are used to provide a complementary analysis and support for visualization. A practical application of this framework is presented in the context of metabolomic data, where two interrelated problems are considered, discrimination and prediction of class membership. The dataset is characterized by a small set of individuals and a large set of features, in which predictive biomarkers of clinical outcomes should be identified. The problems of combining numerical and symbolic data mining methods, as well as discrimination and prediction, are detailed and discussed. Moreover, it appears that visualization based on FCA can be used both for guiding knowledge discovery and for interpretation by domain analysts. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种混合和探索性知识发现方法,用于基于监督分类器,模式挖掘和正式概念分析(FCA)的组合分析代谢组成复杂数据。该方法基于三个主要操作,预处理,分类和后处理。分类器应用于表单个人x的数据集,并产生进一步分析的排名特征集。模式挖掘和FCA用于提供可视化的互补分析和支持。该框架的实际应用在代谢组数据的背景下呈现,其中考虑了两个相互关联的问题,歧视和预测阶级成员资格。数据集的特征在于一小一小一组特征,其中应该识别临床结果的预测生物标志物。详细讨论并讨论了数值和符号数据挖掘方法以及识别和预测的结合问题。此外,似乎基于FCA的可视化可以用于指导知识发现和通过域分析人员解释。 (c)2019年Elsevier B.V.保留所有权利。

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