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Gene Selection for Single-Cell RNA-Seq Data Based on Information Gain and Genetic Algorithm

机译:基于信息增益和遗传算法的单细胞RNA-Seq数据基因选择

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Single-cell RNA-seq data often contain tens of and thousands genes, while too many of them are redundant genes as well as inferior genes. In this study, the information gain is used to coarsely remove those redundant and inferior genes, then a new designed genetic algorithm with a dynamic crossover operator is used to finely select the most important genes. The new feature selection algorithm is abbreviated as IGGA. The difference between the IGGA and the existing methods lies in that IGGA is designed at the first time to select genes from single-cell RNA-seq data. Experimental results performing on several real datasets demonstrate that the proposed algorithm can efficiently select the most important genes.
机译:单细胞RNA-seq数据通常包含成千上万个基因,而太多则既是冗余基因又是劣等基因。在这项研究中,信息增益用于粗略地去除那些多余和劣等的基因,然后使用一种新设计的带有动态交叉算子的遗传算法来精细选择最重要的基因。新的特征选择算法缩写为IGGA。 IGGA与现有方法之间的区别在于,IGGA的设计初衷是从单细胞RNA-seq数据中选择基因。在几个真实数据集上进行的实验结果表明,该算法可以有效地选择最重要的基因。

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