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Clustering of Gene Expression Data Based on Shape Similarity

机译:基于形状相似度的基因表达数据聚类

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摘要

A method for gene clustering from expression profiles using shape information is presented. The conventional clustering approaches such as K-means assume that genes with similar functions have similar expression levels and hence allocate genes with similar expression levels into the same cluster. However, genes with similar function often exhibit similarity in signal shape even though the expression magnitude can be far apart. Therefore, this investigation studies clustering according to signal shape similarity. This shape information is captured in the form of normalized and time-scaled forward first differences, which then are subject to a variational Bayes clustering plus a non-Bayesian (Silhouette) cluster statistic. The statistic shows an improved ability to identify the correct number of clusters and assign the components of cluster. Based on initial results for both generated test data and Escherichia coli microarray expression data and initial validation of the Escherichia coli results, it is shown that the method has promise in being able to better cluster time-series microarray data according to shape similarity.
机译:提出了一种使用形状信息从表达谱进行基因聚类的方法。诸如K-means之类的常规聚类方法假定具有相似功能的基因具有相似的表达水平,因此将具有相似表达水平的基因分配到同一簇中。但是,即使表达量相距甚远,具有相似功能的基因也常常在信号形状上表现出相似性。因此,本研究根据信号形状相似性研究聚类。该形状信息以规范化和时标的前向先验差异的形式捕获,然后对其进行变分贝叶斯聚类以及非贝叶斯(Silhouette)聚类统计。该统计数据显示了更高的能力,可以识别正确数量的群集并分配群集的组件。基于生成的测试数据和大肠杆菌微阵列表达数据的初步结果以及大肠杆菌结果的初步验证,表明该方法有望根据形状相似性更好地聚类时间序列微阵列数据。

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