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Analysis of Gene Expression Discretization Techniques in Microarray Biclustering

机译:基因表达离散化技术在微阵列芯片化中的应用

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Gene expression biclustering analysis is a commonly used technique to see the interaction between genes under certain experiments or conditions. More specifically in the study of diseases, these methods are used to compare control and affected data in order to identify the involved or relevant genes. In some cases, discretization is needed for these algorithms to work correctly. In this context, the choice of the discretization method is extremely important and has a major impact on the outcome. In this work we analyze several discretization methods for Alzheimer Disease (AD) gene expression data and compare the results of a state-of-art biclustering algorithm after each discretization. The comparison reveals that biclusters obtained from discretized expression values achieve a major coverage and overall enrichment than biclusters generated from real-valued expression data. In a particular experiment, a clustering-based discretization method overcomes all competing techniques for the dataset under study, in statistical terms.
机译:基因表达双聚类分析是在某些实验或条件下查看基因之间相互作用的常用技术。更具体地说,在疾病研究中,这些方法用于比较对照和受影响的数据,以鉴定涉及的基因或相关基因。在某些情况下,需要离散化才能使这些算法正常工作。在这种情况下,离散化方法的选择非常重要,并且对结果有重大影响。在这项工作中,我们分析了阿尔茨海默病(AD)基因表达数据的几种离散化方法,并在每次离散化后比较了最新的双聚类算法的结果。比较表明,与从实值表达数据生成的双聚类相比,从离散表达值获得的双聚类实现了较大的覆盖范围和总体富集。在一个特定的实验中,基于聚类的离散化方法以统计术语克服了所研究数据集的所有竞争技术。

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