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首页> 外文期刊>OMICS: A journal of integrative biology >Gene Expression Data Analysis Using Closed Itemset Mining for Labeled Data
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Gene Expression Data Analysis Using Closed Itemset Mining for Labeled Data

机译:基因表达数据分析使用封闭的Itemset开采带安全标签的数据时

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摘要

This article presents an approach to microarray data analysis using discretised expression values in combination with a methodology of closed itemset mining for class labeled data (RelSets). A statistical 2×2 factorial design analysis was run in parallel. The approach was validated on two independent sets of two-color microarray experiments using potato plants. Our results demonstrate that the two different analytical procedures, applied on the same data, are adequate for solving two different biological questions being asked. Statistical analysis is appropriate if an overview of the consequences of treatments and their interaction terms on the studied system is needed. If, on the other hand, a list of genes whose expression (upregulation or downregulation) differentiates between classes of data is required, the use of the RelSets algorithm is preferred. The used algorithms are freely available upon request to the authors.
机译:本文提出了一种微阵列的方法数据分析使用discretised表达式的值结合的方法关闭itemset开采类标签数据(RelSets)。统计2×2因子设计分析并行地运行。两组独立的双色微阵列实验利用马铃薯植物。证明这两种不同的分析过程、应用于相同的数据适合解决两种不同的生物被问到的问题。适当的的后果如果概述治疗和它们的交互方面研究了系统是必要的。一个基因的表达(upregulation或列表downregulation)类之间的区别数据是必需的,RelSets的使用算法者优先。免费提供要求作者。

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