基因表达数据中层次密度簇的交互探索

Tran Van Long, L. Linsen
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引用次数: 2

摘要

基因表达数据聚类是生物信息学研究和生物医学应用中的一项重要任务。本文提出了一种有效的基因表达数据聚类算法。聚类算法是基于对数据密度分布的分析。我们提出了一个交叉分割的基因表达数据到数据点的支持。密度集群是在一定密度水平上最大限度地连接区域,因此可以组织成层次结构。为了进行交互式视觉探索,我们使用二维径向布局的分层密度聚类树,其中包含平行坐标和热图的链接视图和嵌入视图。我们的系统支持对密度集群分布和密度集群模式的理解。对常见基因表达数据集的实验结果表明了该算法的有效性和可扩展性。
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Interactive Exploration of Hierarchical Density Clusters in Gene Expression Data
Clustering gene expression data is an important task in bioinformatics research and biomedical applications. In this paper, we present an effective clustering algorithm for gene expression data. The clustering algorithm is based on the analysis of data's density distribution. We propose an intersecting partition of gene expression data into the supports of data points. Density clusters are maximally connected regions at certain density levels, and thus, can be organized in a hierarchical structure. For interactive visual exploration, we use a 2D radial layout of the hierarchical density cluster tree with linked as well as embedded views of parallel coordinates and heat maps. Our system supports the understanding of the distribution of density clusters and the patterns of the density clusters. Experimental results for common gene expression data sets shows the effectiveness and scalability of the algorithm.
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