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Optimization of a stochastically simulated gene network model via simulated annealing

机译:通过模拟退火优化随机模拟基因网络模型

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By rearranging naturally occurring genetic components, gene networks can be created that display novel functions. When designing these networks, the kinetic parameters describing DNA/protein binding are of great importance, as these parameters strongly influence the behavior of the resulting gene network. This article presents an optimization method based on simulated annealing to locate combinations of kinetic parameters that produce a desired behavior in a genetic network. Since gene expression is an inherently stochastic process, the simulation component of simulated annealing optimization is conducted using an accurate multiscale simulation algorithm to calculate an ensemble of network trajectories at each iteration of the simulated annealing algorithm. Using the three-gene repressilator of Elowitz and Leibler as an example, we show that gene network optimizations can be conducted using a mechanistically realistic model integrated stochastically. The repressilator is optimized to give oscillations of an arbitrary specified period. These optimized designs may then provide a starting-point for the selection of genetic components needed to realize an in vivo system.
机译:通过重新排列天然存在的遗传成分,可以创建具有新颖功能的基因网络。设计这些网络时,描述DNA /蛋白质结合的动力学参数非常重要,因为这些参数会强烈影响所得基因网络的行为。本文提出了一种基于模拟退火的优化方法,以定位在遗传网络中产生所需行为的动力学参数的组合。由于基因表达是固有的随机过程,因此,使用精确的多尺度模拟算法进行模拟退火优化的模拟组件,以在模拟退火算法的每次迭代中计算网络轨迹的集合。以Elowitz和Leibler的三基因再调节器为例,我们表明可以使用随机集成的机械现实模型进行基因网络优化。优化了再加压器,以产生任意指定周期的振荡。然后,这些优化的设计可以为选择实现体内系统所需的遗传成分提供起点。

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