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New algorithms for inferring gene regulatory networks from time-series expression data on Apache Spark

机译:从Apache Spark上的时间序列表达数据推断基因调控网络的新算法

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Gene regulatory networks (GRNs) are crucial to understand the inner workings of the cell and the complexity of gene interactions. Numerous algorithms have been developed to infer GRNs from gene expression data. As the number of identified genes increases and the complexity of their interactions is uncovered, gene networks become cumbersome to test. Furthermore, prodding through experimental results requires an enormous amount of computation, resulting in slow data processing. Therefore, new approaches are needed to analyse copious amounts of experimental data from cellular GRNs. To meet this need, cloud computing is promising as reported in the literature. Here we present two new algorithms for reverse engineering GRNs in a cloud environment. The algorithms, implemented in Spark, employ an information-theoretic approach to infer GRNs from time-series gene expression data. Experimental results show that one of our new algorithms is faster than, yet as accurate as, two existing cloud-based GRN inference methods.
机译:基因调控网络(GRN)对于了解细胞的内部运作以及基因相互作用的复杂性至关重要。已经开发出许多算法来从基因表达数据推断出GRN。随着鉴定出的基因数量的增加和相互作用的复杂性被发现,基因网络变得难以测试。此外,通过实验结果进行探测需要大量的计算,从而导致数据处理缓慢。因此,需要新的方法来分析来自细胞GRN的大量实验数据。为了满足这种需求,如文献所报道的,云计算是有前途的。在这里,我们提出了两种在云环境中对GRN进行逆向工程的新算法。在Spark中实施的算法采用信息论方法从时序基因表达数据中推断出GRN。实验结果表明,我们的一种新算法比现有的两种基于云的GRN推理方法要快,但准确性更高。

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