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A time series driven decomposed evolutionary optimization approach for reconstructing large-scale gene regulatory networks based on fuzzy cognitive maps

机译:时间序列驱动的分解进化优化方法用于基于模糊认知图的大规模基因调控网络重构

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摘要

BackgroundReconstructing gene regulatory networks (GRNs) from expression data plays an important role in understanding the fundamental cellular processes and revealing the underlying relations among genes. Although many algorithms have been proposed to reconstruct GRNs, more rapid and efficient methods which can handle large-scale problems still need to be developed. The process of reconstructing GRNs can be formulated as an optimization problem, which is actually reconstructing GRNs from time series data, and the reconstructed GRNs have good ability to simulate the observed time series. This is a typical big optimization problem, since the number of variables needs to be optimized increases quadratically with the scale of GRNs, resulting an exponential increase in the number of candidate solutions. Thus, there is a legitimate need to devise methods capable of automatically reconstructing large-scale GRNs.
机译:背景从表达数据重建基因调控网络(GRN)在理解基本的细胞过程和揭示基因之间的潜在关系方面起着重要作用。尽管已经提出了许多重建GRN的算法,但仍需要开发更快速,更有效的方法来处理大规模问题。重建GRN的过程可以表述为一个优化问题,实际上是根据时间序列数据重建GRN,而重建的GRN具有良好的模拟观测时间序列的能力。这是一个典型的大优化问题,因为需要优化的变量数量随GRN的规模呈二次方增加,从而导致候选解的数量呈指数增长。因此,有必要设计能够自动重构大规模GRN的方法。

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