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Hierarchical tree snipping: clustering guided by prior knowledge

机译:分层树剪裁:以先验知识为指导的聚类

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Motivation: Hierarchical clustering is widely used to cluster genes into groups based on their expression similarity. This method first constructs a tree. Next this tree is partitioned into subtrees by cutting all edges at some level, thereby inducing a clustering. Unfortunately, the resulting clusters often do not exhibit significant functional coherence. Results: To improve the biological significance of the clustering, we develop a new framework of partitioning by snipping-cutting selected edges at variable levels. The snipped edges are selected to induce clusters that are maximally consistent with partially available background knowledge such as functional classifications. Algorithms for two key applications are presented: functional prediction of genes, and discovery of functionally enriched clusters of co-expressed genes. Simulation results and cross-validation tests indicate that the algorithms perform well even when the actual number of clusters differs considerably from the requested number. Performance is improved compared with a previously proposed algorithm.
机译:动机:分层聚类广泛用于根据基因的表达相似性将基因聚类。此方法首先构造一棵树。接下来,通过在某种程度上剪切所有边缘将该树划分为子树,从而引发聚类。不幸的是,所得的簇通常不表现出明显的功能一致性。结果:为了提高聚类的生物学意义,我们通过以可变水平剪裁选定的边缘,开发了一种新的划分框架。选择剪切的边缘以诱导与部分可用的背景知识(例如功能分类)最大程度地一致的聚类。提出了两个关键应用的算法:基因的功能预测和共表达基因功能丰富的簇的发现。仿真结果和交叉验证测试表明,即使簇的实际数量与请求的数量明显不同,该算法也能很好地执行。与先前提出的算法相比,性能得到了改善。

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