利用关联概念分析从儿童癌症数据中挖掘异质关联

Mickael Wajnberg, Petko Valtchev, A. Massé, A. Benmoussa, M. Krajinovic, C. Laverdière, E. Levy, D. Sinnett, V. Marcil
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引用次数: 1

摘要

为了深入了解人类疾病,生物学家通常会从患者数据中挖掘相关模式。临床数据集通常是未标记的,涉及特征,也就是标记,分为两类,即生物功能,因此目标模式可能混合了这两种水平。由于这种异构模式超出了当前分析工具的范围,因此需要设计专门的挖掘器,例如关联规则。当代的多关系(MR)关联挖掘器虽然能够混合对象类型,但在规则形状(原子结论)方面相当有限,而忽略了特征组成。我们自己的方法建立在概念分析的核磁共振扩展的基础上,进一步增强了灵活的定位操作和患者数据的专用核磁共振建模。生成的MR关联挖掘器在儿科肿瘤学数据集上进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Heterogeneous Associations from Pediatric Cancer Data by Relational Concept Analysis
To gain an in-depth understanding of human diseases, biologists typically mine patient data for relevant patterns. Clinical datasets are often unlabeled and involve features, a.k.a. markers, split into classes w.r.t. biological functions, whereby target patterns might well mix both levels. As such heterogeneous patterns are beyond the reach of current analytical tools, dedicated miners, e.g. for association rules, need to be devised. Contemporary multi-relational (MR) association miners, while capable of mixing object types, are rather limited in rule shape (atomic conclusions) while ignoring feature composition. Our own approach builds upon a MR-extension of concept analysis further enhanced with flexible propositionnalisation operators and dedicated MR modeling of patient data. The resulting MR association miner was validated on a pediatric oncology dataset.
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