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A Genetic K-means Clustering Algorithm Applied to Gene Expression Data

机译:一种遗传k-means聚类算法应用于基因表达数据

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One of the current main strategies to understand a biological process at genome level is to cluster genes by their expression data obtained from DNA microarray experiments. The classic K-means clustering algorithm is a deterministic search and may terminate in a locally optimal clustering. In this paper, a genetic K-means clustering algorithm, called GKMCA, for clustering in gene expression datasets is described. GKMCA is a hybridization of a genetic algorithm (GA) and the iterative optimal K-means algorithm (IOKMA). In GKMCA, each individual is encoded by a partition table which uniquely determines a clustering, and three genetic operators (selection, crossover, mutation) and an IOKM operator derived from IOKMA are employed. The superiority of the GKMCA over the IOKMA and over other GA-clustering algorithms without the IOKM operator is demonstrated for two real gene expression datasets.
机译:理解基因组水平在基因组水平的生物过程的主要策略之一是通过从DNA微阵列实验获得的表达数据进行群集基因。经典k均值聚类算法是确定性搜索,并且可以在局部最佳聚类中终止。本文描述了一种遗传k-means聚类算法,称为gkmca,用于在基因表达数据集中聚类。 GKMCA是遗传算法(GA)和迭代最佳K均值算法(Iokma)的杂交。在GKMCA中,每个单独的分区表编码,该分区表唯一地确定聚类,并且使用三个遗传运算符(选择,交叉,突变)和源自Iokma的Iokm运算符。对于两个实际基因表达数据集,对没有Iokm运算符的Iokma和其他GA聚类算法的GKMCA的优越性。

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