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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >A Class-Information-Based Sparse Component Analysis Method to Identify Differentially Expressed Genes on RNA-Seq Data
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A Class-Information-Based Sparse Component Analysis Method to Identify Differentially Expressed Genes on RNA-Seq Data

机译:基于分类信息的稀疏成分分析方法,用于识别RNA-Seq数据上差异表达的基因

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摘要

With the development of deep sequencing technologies, many RNA-Seq data have been generated. Researchers have proposed many methods based on the sparse theory to identify the differentially expressed genes from these data. In order to improve the performance of sparse principal component analysis, in this paper, we propose a novel class-information-based sparse component analysis (CISCA) method which introduces the class information via a total scatter matrix. First, CISCA normalizes the RNA-Seq data by using a Poisson model to obtain their differential sections. Second, the total scatter matrix is gotten by combining the between-class and within-class scatter matrices. Third, we decompose the total scatter matrix by using singular value decomposition and construct a new data matrix by using singular values and left singular vectors. Then, aiming at obtaining sparse components, CISCA decomposes the constructed data matrix by solving an optimization problem with sparse constraints on loading vectors. Finally, the differentially expressed genes are identified by using the sparse loading vectors. The results on simulation and real RNA-Seq data demonstrate that our method is effective and suitable for analyzing these data.
机译:随着深度测序技术的发展,已经产生了许多RNA-Seq数据。研究人员提出了许多基于稀疏理论的方法,以从这些数据中鉴定差异表达的基因。为了提高稀疏主成分分析的性能,本文提出了一种新颖的基于分类信息的稀疏成分分析(CISCA)方法,该方法通过总散布矩阵引入分类信息。首先,CISCA使用Poisson模型对RNA-Seq数据进行归一化,以获取其差异片段。其次,通过组合类间和类内散布矩阵来获得总散布矩阵。第三,我们通过奇异值分解来分解总散射矩阵,并通过使用奇异值和左奇异向量构造一个新的数据矩阵。然后,CISCA旨在获得稀疏分量,通过解决对加载矢量具有稀疏约束的优化问题,对构造的数据矩阵进行分解。最后,通过使用稀疏加载载体鉴定差异表达的基因。仿真和真实RNA-Seq数据的结果表明,我们的方法有效且适合分析这些数据。

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