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Method for the identification of the subsets of genes specifically consistently co-expressed in a set of datasets

机译:鉴定在一组数据集中明确一致表达的基因子集的方法

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The recently proposed binarization of consensus partition matrices (Bi-CoPaM) ensemble clustering method has offered the ability to mine multiple genome-wide microarray datasets for the subsets of genes which are consistently co-expressed in all of these datasets. Though, some of those subsets of genes might also be consistently co-expressed in many other datasets that were generated under a wider range of conditions than those of interest in a single focused study. Here we propose a new method, named as the unification of clustering results from multiple datasets using external specifications (UNCLES). The external specifications imposed in this study aim at mining for the subsets of genes that are consistently co-expressed in one set of datasets (S+) and not consistently co-expressed in another set of datasets (S−). We tested our proposed method over eight budding yeast cell-cycle datasets for S+ and other six general budding yeast datasets for S−. Our results have shown the ability of our method to find the subsets of genes consistently co-expressed in the S+ datasets successfully, while excluding the subsets of genes that are also consistently co-expressed in the S− datasets.
机译:最近提出的共识分区矩阵(Bi-CoPaM)集成聚类二值化方法提供了挖掘在所有这些数据集中一致表达的基因子集的多个全基因组微阵列数据集的能力。但是,这些基因的某些子集也可能在许多其他数据集中一致表达,而这些数据集是在比单个集中研究所关注的条件更广泛的条件下生成的。在这里,我们提出了一种新方法,称为使用外部规范(UNCLES)来自多个数据集的聚类结果的统一。这项研究中施加的外部规范旨在挖掘在一组数据集中(S + )一致表达而在另一组数据集(S不一致表达)的基因子集。 -)。我们在S + 的八个芽酵母细胞周期数据集和S -的其他六个普通芽酵母数据集上测试了我们提出的方法。我们的结果表明,我们的方法能够成功找到在S + 数据集中一致表达的基因子集,而排除了在S + 数据集中一致表达的基因子集。 sup>-数据集。

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