利用模糊隶属度对核心模式进行解释基因表达簇中的连通性

N. A. Yousri, M. Kamel, M. Ismail
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引用次数: 2

摘要

基于连通性的聚类可以揭示基因表达模式的连续性,从而发现肿瘤类型之间的相互关系,以及基因之间的调控关系,从而发现基因通路。模式核心是表达模式的一个子集,它代表了整个模式集,可用于揭示数据和集群的结构,特别是在存在大量数据集的情况下。这项工作提出了一种模糊的方法,从寻找基于密度的表达模式核心开始。然后将这些核心聚类到核心集群中,并为数据集中的所有模式计算这些核心的模糊隶属关系。然后使用基于连通性的算法将整个数据集聚到模式集群中,其中模式集群可能包含一个或多个核心集群。每个模式簇中与核心簇的模糊隶属关系被用来利用核心簇的结构来解释模式簇的连通性,以及识别每个模式如何与一种或多种肿瘤类型相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using fuzzy memberships to core patterns to interpret connectedness in gene expression clusters
Connectivity based clustering can reveal the continuity of gene expression patterns, and thus can discover interrelations between tumor types, as well as regulatory relations between genes that can lead to discovering gene pathways. Pattern cores are a subset of expression patterns that are representatives of the whole set of patterns and can be used to reveal the structure of the data as well as that of the clusters, especially in the presence of huge data sets. This work presents a fuzzy approach that starts by finding the density-based expression pattern cores. Those cores are then clustered into core clusters and fuzzy memberships to those cores are calculated for all patterns in the data set. The whole data set is then clustered into pattern clusters using a connectivity-based algorithm, where a pattern cluster might contain one or more core clusters. The fuzzy memberships to core clusters in each pattern cluster are used to interpret the connectedness of the pattern cluster using the structure of core clusters, as well as to identify how each pattern is related to one or more tumor types.
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