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A novel fuzzy and multiobjective evolutionary algorithm based gene assignment for clustering short time series expression data

机译:基于模糊和多目标进化算法的基于基于基于基于组的聚类短时间序列表达数据的基因分配

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Conventional clustering algorithms based on Euclidean distance or Pearson correlation coefficient are not able to include order information in the distance metric and also unable to distinguish between random and real biological patterns. We present template based clustering algorithm for time series gene expression data. Template profiles are defined based on up-down regulation of genes between consecutive time points. Assignment of genes to templates is based on fuzzy membership function. Multi-objective evolutionary algorithm is used to determine compact clusters with varying number of templates. Statistical significance of each template is determined using permutation based non-parametric test. Statistically significant profiles are further tested for their biological relevance using gene ontology analysis. The algorithm was able to distinguish between real and noisy pattern when tested on artificial and real biological data. The proposed algorithm has shown better or similar performance compared to STEM and better than k-means on a real biological data.
机译:基于欧几里德距离或Pearson相关系数的传统聚类算法不能包括距离度量中的订单信息,并且也无法区分随机和真实的生物模式。我们提出了基于模板的时间序列基因表达数据的聚类算法。基于连续时间点之间的基因的上下上调调节来定义模板配置文件。将基因分配给模板是基于模糊的会员函数。多目标进化算法用于确定具有不同数量模板的紧凑簇。使用基于置换的非参数测试确定每个模板的统计显着性。通过基因本体分析进一步测试统计学上显着的谱。当在人工和真实生物数据测试时,该算法能够区分真实和嘈杂的模式。在真实的生物数据上相比,所提出的算法表现出更好或更好的性能,并且比K-Means更好。

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