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δ-TRIMAX: Extracting Triclusters and Analysing Coregulation in Time Series Gene Expression Data

机译:δ-TRIMAX:提取三聚体并分析时序基因表达数据中的配伍

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In an attempt to analyse coexpression in a time series mi-croarray gene expression dataset, we introduce here a novel, fast triclus-tering algorithm δ-TRIMAX that aims to find a group of genes that are coexpressed over a subset of samples across a subset of time-points. Here we defined a novel mean-squared residue score for such 3D dataset. At first it uses a greedy approach to find triclusters that have a mean-squared residue score below a threshold δ by deleting nodes from the dataset and then in the next step adds some nodes, keeping the mean squared residue score of the resultant tricluster below δ. So, the goal of our algorithm is to find large and coherent triclusters from the 3D gene expression dataset. Additionally, we have defined an affirmation score to measure the performance of our triclustering algorithm for an artificial dataset. To show biological significance of the triclusters we have conducted GO enrichment analysis. We have also performed enrichment analysis of transcription factor binding sites to establish coregulation of a group of coexpressed genes.
机译:为了分析时间序列微阵列基因表达数据集中的共表达,我们在这里介绍一种新颖的快速三角定量算法δ-TRIMAX,该算法的目的是找到在一个子集的样本子集中共表达的一组基因时间点。在这里,我们为此类3D数据集定义了一种新颖的均方差残差评分。首先,它使用贪婪方法通过从数据集中删除节点来找到残差均方值低于阈值δ的三角洲,然后在下一步中添加一些节点,将所得三角洲的均方残差分数保持在δ以下。因此,我们算法的目标是从3D基因表达数据集中找到大而连贯的三角洲。此外,我们还定义了一个肯定评分来衡量针对人工数据集的细化算法的性能。为了显示三角藻的生物学意义,我们进行了GO富集分析。我们还进行了转录因子结合位点的富集分析,以建立一组共表达基因的共调节。

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