论文标题
一种新型的基于颗粒的双聚类方法,用于挖掘共表达的基因
A Novel Granular-Based Bi-Clustering Method of Deep Mining the Co-Expressed Genes
论文作者
论文摘要
在处理巨大和异质的基因表达数据群时,传统的聚类方法受到限制,这激发了双聚类方法的发展。双聚类方法用于挖掘其在测试条件下共同调节样品亚集的双重群体。研究表明,在生物信息学研究中,基因表达数据的一致趋势和趋势的开采趋势和趋势相似。不幸的是,传统的双聚类方法在发现此类双重群体方面并不完全有效。因此,我们通过涉及颗粒计算理论提出了一种新型的双聚集方法。在拟议的方案中,被认为是时间序列的基因数据矩阵被转变为一系列有序的信息颗粒。通过信息颗粒,我们构建了基因数据的特征矩阵,以捕获连续条件之间表达值的波动趋势,以挖掘理想的双重群体。实验结果与理论分析一致,并显示了提出方法的出色性能。
Traditional clustering methods are limited when dealing with huge and heterogeneous groups of gene expression data, which motivates the development of bi-clustering methods. Bi-clustering methods are used to mine bi-clusters whose subsets of samples (genes) are co-regulated under their test conditions. Studies show that mining bi-clusters of consistent trends and trends with similar degrees of fluctuations from the gene expression data is essential in bioinformatics research. Unfortunately, traditional bi-clustering methods are not fully effective in discovering such bi-clusters. Therefore, we propose a novel bi-clustering method by involving here the theory of Granular Computing. In the proposed scheme, the gene data matrix, considered as a group of time series, is transformed into a series of ordered information granules. With the information granules we build a characteristic matrix of the gene data to capture the fluctuation trend of the expression value between consecutive conditions to mine the ideal bi-clusters. The experimental results are in agreement with the theoretical analysis, and show the excellent performance of the proposed method.