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Evolving Robust Gene Regulatory Networks

机译:不断发展的强大基因调控网络

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摘要

Design and implementation of robust network modules is essential for construction of complex biological systems through hierarchical assembly of ‘parts’ and ‘devices’. The robustness of gene regulatory networks (GRNs) is ascribed chiefly to the underlying topology. The automatic designing capability of GRN topology that can exhibit robust behavior can dramatically change the current practice in synthetic biology. A recent study shows that Darwinian evolution can gradually develop higher topological robustness. Subsequently, this work presents an evolutionary algorithm that simulates natural evolution in silico, for identifying network topologies that are robust to perturbations. We present a Monte Carlo based method for quantifying topological robustness and designed a fitness approximation approach for efficient calculation of topological robustness which is computationally very intensive. The proposed framework was verified using two classic GRN behaviors: oscillation and bistability, although the framework is generalized for evolving other types of responses. The algorithm identified robust GRN architectures which were verified using different analysis and comparison. Analysis of the results also shed light on the relationship among robustness, cooperativity and complexity. This study also shows that nature has already evolved very robust architectures for its crucial systems; hence simulation of this natural process can be very valuable for designing robust biological systems.
机译:健壮的网络模块的设计和实现对于通过“零件”和“设备”的分层组装来构建复杂的生物系统至关重要。基因调控网络(GRN)的健壮性主要归因于基础拓扑。 GRN拓扑具有自动行为的自动设计能力可以显着改变合成生物学的当前实践。最近的研究表明,达尔文进化可以逐渐发展出更高的拓扑鲁棒性。随后,这项工作提出了一种进化算法,该算法模拟计算机模拟的自然进化,用于识别对扰动具有鲁棒性的网络拓扑。我们提出了一种基于蒙特卡洛的量化拓扑鲁棒性的方法,并设计了一种适合度近似方法来有效地计算拓扑鲁棒性,这在计算上非常密集。尽管该框架被普遍用于发展其他类型的响应,但已使用两种经典的GRN行为(振荡和双稳态)验证了该框架。该算法确定了健壮的GRN架构,并使用不同的分析和比较对其进行了验证。对结果的分析还阐明了鲁棒性,合作性和复杂性之间的关系。这项研究还表明,大自然已经为其关键系统发展了非常强大的体系结构。因此,模拟这种自然过程对于设计健壮的生物系统可能非常有价值。

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