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Neural Biclustering in Gene Expression Analysis

机译:基因表达分析中的神经混群

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Clustering in high dimensional spaces is a very difficult task. Dealing with DNA microarrays is even more difficult because gene subsets are coregulated and coexpressed only under specific conditions. Biclusterng addresses the problem of finding such submanifolds by exploiting both gene and condition (tissue) clustering. The paper proposes a self-organizing neural network, GH EXIN, which builds a hierarchical tree by adapting its architecture to data. It is integrated in a framework in which gene and tissue clustering are alternated and controlled by the quality of the bicluster. Examples of the approach and a biological validation of results are also given.
机译:高维空间中的聚类是一项非常困难的任务。处理DNA微阵列甚至更加困难,因为仅在特定条件下才对基因亚群进行共调节和共表达。通过利用基因和条件(组织)聚类,Biclusterng解决了找到此类子流形的问题。本文提出了一种自组织神经网络GH EXIN,它通过将其体系结构适应数据来构建分层树。它被整合在一个框架中,在该框架中,基因和组织的集群交替发生,并由双链簇的质量控制。还给出了方法的示例以及结果的生物学验证。

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