Biclustering of expression data.

Y Cheng, G M Church
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引用次数: 0

Abstract

An efficient node-deletion algorithm is introduced to find submatrices in expression data that have low mean squared residue scores and it is shown to perform well in finding co-regulation patterns in yeast and human. This introduces "biclustering", or simultaneous clustering of both genes and conditions, to knowledge discovery from expression data. This approach overcomes some problems associated with traditional clustering methods, by allowing automatic discovery of similarity based on a subset of attributes, simultaneous clustering of genes and conditions, and overlapped grouping that provides a better representation for genes with multiple functions or regulated by many factors.

表达式数据的双聚类。
介绍了一种高效的节点删除算法,用于在表达数据中寻找具有低均方残差分数的子矩阵,并在酵母和人类中显示出良好的共调控模式。这引入了“双聚类”,或基因和条件的同时聚类,以从表达数据中发现知识。该方法克服了传统聚类方法存在的一些问题,允许基于属性子集的相似性自动发现、基因和条件的同时聚类以及为具有多种功能或受多种因素调节的基因提供更好的表示的重叠分组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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