多高度分支切割的层次聚类在短时间序列基因表达数据中的应用

Athanasios Vogogias, J. Kennedy, D. Archambault
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引用次数: 3

摘要

严格遵守预先指定的阈值和静态图形表示可能导致对集群合并的错误决策。作为现有自动化或半自动化方法的替代方案,我们开发了一种可视化分析方法,用于对短时间序列基因表达数据进行分层聚类分析。动态滑块控制参数,如聚类合并的相似阈值和相对聚类内独特性水平,可用于识别聚类内的“弱边”。专家用户可以向下钻取以进一步探索树状图,并检测嵌套的簇和异常值。这是通过使用滑块和指向并单击表示来切割树的多个高度的分支来完成的。该工具的原型是与一小群生物学家合作开发的,用于分析他们自己的数据集。对该工具的初步反馈是积极的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Clustering with Multiple-Height Branch-Cut Applied to Short Time-Series Gene Expression Data
Rigid adherence to pre-specified thresholds and static graphical representations can lead to incorrect decisions on merging of clusters. As an alternative to existing automated or semi-automated methods, we developed a visual analytics approach for performing hierarchical clustering analysis of short time-series gene expression data. Dynamic sliders control parameters such as the similarity threshold at which clusters are merged and the level of relative intra-cluster distinctiveness, which can be used to identify "weak-edges" within clusters. An expert user can drill down to further explore the dendrogram and detect nested clusters and outliers. This is done by using the sliders and by pointing and clicking on the representation to cut the branches of the tree in multiple-heights. A prototype of this tool has been developed in collaboration with a small group of biologists for analysing their own datasets. Initial feedback on the tool has been positive.
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