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首页> 外文期刊>BMC Genomics >Discovering monotonic stemness marker genes from time-series stem cell microarray data
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Discovering monotonic stemness marker genes from time-series stem cell microarray data

机译:从时间序列干细胞微阵列数据中发现单调性干性标记基因

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Background Identification of genes with ascending or descending monotonic expression patterns over time or stages of stem cells is an important issue in time-series microarray data analysis. We propose a method named Monotonic Feature Selector (MFSelector) based on a concept of total discriminating error (DEtotal) to identify monotonic genes. MFSelector considers various time stages in stage order (i.e., Stage One vs. other stages, Stages One and Two vs. remaining stages and so on) and computes DEtotal of each gene. MFSelector can successfully identify genes with monotonic characteristics. Results We have demonstrated the effectiveness of MFSelector on two synthetic data sets and two stem cell differentiation data sets: embryonic stem cell neurogenesis (ESCN) and embryonic stem cell vasculogenesis (ESCV) data sets. We have also performed extensive quantitative comparisons of the three monotonic gene selection approaches. Some of the monotonic marker genes such as OCT4 , NANOG , BLBP , discovered from the ESCN dataset exhibit consistent behavior with that reported in other studies. The role of monotonic genes found by MFSelector in either stemness or differentiation is validated using information obtained from Gene Ontology analysis and other literature. We justify and demonstrate that descending genes are involved in the proliferation or self-renewal activity of stem cells, while ascending genes are involved in differentiation of stem cells into variant cell lineages. Conclusions We have developed a novel system, easy to use even with no pre-existing knowledge, to identify gene sets with monotonic expression patterns in multi-stage as well as in time-series genomics matrices. The case studies on ESCN and ESCV have helped to get a better understanding of stemness and differentiation. The novel monotonic marker genes discovered from a data set are found to exhibit consistent behavior in another independent data set, demonstrating the utility of the proposed method. The MFSelector R function and data sets can be downloaded from: http://microarray.ym.edu.tw/tools/MFSelector/ .
机译:背景技术鉴定时间序列或干细胞阶段中具有单调表达模式的上升或下降的基因是时间序列微阵列数据分析中的重要问题。基于总判别误差(DE total )的概念,我们提出了一种名为单调特征选择器(MFSelector)的方法来识别单调基因。 MFSelector按阶段顺序考虑各个时间阶段(即,第一阶段与其他阶段,第一阶段和第二阶段与剩余阶段等),并计算每个基因的DE 。 MFSelector可以成功识别具有单调特征的基因。结果我们已经证明了MFSelector在两个合成数据集和两个干细胞分化数据集上的有效性:胚胎干细胞神经发生(ESCN)和胚胎干细胞血管生成(ESCV)数据集。我们还对三种单调基因选择方法进行了广泛的定量比较。从ESCN数据集中发现的一些单调标记基因,如OCT4,NANOG,BLBP,表现出与其他研究一致的行为。使用从基因本体分析和其他文献中获得的信息,可以验证MFSelector发现的单调基因在茎或分化中的作用。我们证明并证明,降序基因参与干细胞的增殖或自我更新活性,而升序基因参与干细胞向变异细胞谱系的分化。结论我们开发了一种新颖的系统,即使在没有现有知识的情况下也易于使用,可以在多阶段以及时间序列基因组学矩阵中识别具有单调表达模式的基因集。有关ESCN和ESCV的案例研究有助于更好地理解茎干和分化。从数据集中发现的新型单调标记基因在另一个独立的数据集中表现出一致的行为,证明了所提出方法的实用性。 MFSelector R功能和数据集可以从以下网址下载:http://microarray.ym.edu.tw/tools/MFSelector/。

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