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首页> 外文期刊>Computational Biology and Bioinformatics, IEEE/ACM Transactions on >Data-Fusion in Clustering Microarray Data: Balancing Discovery and Interpretability
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Data-Fusion in Clustering Microarray Data: Balancing Discovery and Interpretability

机译:聚类微阵列数据中的数据融合:平衡发现和可解释性

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摘要

While clustering genes remains one of the most popular exploratory tools for expression data, it often results in a highly variable and biologically uninformative clusters. This paper explores a data fusion approach to clustering microarray data. Our method, which combined expression data and gene ontology (GO)-derived information, is applied on a real data set to perform genome-wide clustering. A set of novel tools is proposed to validate the clustering results and pick a fair value of infusion coefficient. These tools measure stability, biological relevance, and distance from the expression-only clustering solution. Our results indicate that a data-fusion clustering leads to more stable, biologically relevant clusters that are still representative of the experimental data.
机译:尽管聚类基因仍然是表达数据最流行的探索工具之一,但它通常会导致高度可变且生物学上无信息的聚类。本文探索了一种将微阵列数据聚类的数据融合方法。我们的方法结合了表达数据和基因本体论(GO)衍生的信息,将其应用于真实数据集以执行全基因组聚类。提出了一套新颖的工具来验证聚类结果并选择输注系数的公允值。这些工具可测量稳定性,生物学相关性以及与仅表达的聚类解决方案的距离。我们的结果表明,数据融合聚类导致更稳定的,生物学上相关的聚类,这些聚类仍然可以代表实验数据。

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