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TGCnA: temporal gene coexpression network analysis using a low-rank plus sparse framework

机译:TGCNA:使用低级别加稀疏框架的时间基因共表达网络分析

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ABSTRACT Various gene network models with distinct physical nature have been widely used in biological studies. For temporal transcriptomic studies, the current dynamic models either ignore the temporal variation in the network structure or fail to scale up to a large number of genes due to severe computational bottlenecks and sample size limitation. Although the correlation-based gene networks are computationally affordable, they have limitations after being applied to gene expression time-course data. We proposed Temporal Gene Coexpression Network Analysis (TGCnA) framework for the transcriptomic time-course data. The mathematical nature of TGCnA is the joint modeling of multiple covariance matrices across time points using a ‘low-rank plus sparse’ framework, in which the network similarity across time points is explicitly modeled in the low-rank component. We demonstrated the advantage of TGCnA in covariance matrix estimation and gene module discovery using both simulation data and real transcriptomic data. The code is available at https://github.com/QiZhangStat/TGCnA.
机译:摘要各种基因网络模型具有不同的物理性质已被广泛用于生物学研究。对于时间转录组研究,当前动态模型忽略网络结构中的时间变化,或者由于严重的计算瓶颈和样本尺寸限制而无法扩展到大量基因。尽管基于相关的基因网络是计算的,但它们在应用于基因表达时间课程数据后具有局限性。我们提出了用于转录组的时间课程数据的时间基因共存网络分析(TGCNA)框架。 TGCNA的数学性质是使用“低级别加稀疏”框架跨时间点的多个协方差矩阵的联合建模,其中在低秩分量中明确地建模了时间点的网络相似性。我们展示了使用模拟数据和实际转录组数据的协方差矩阵估计和基因模块发现的TGCNA的优势。代码可在https://github.com/qizhangstat/tgcna获得。

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