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Evolutionary divide-and-conquer approach to inferring S-system models of genetic networks

机译:进化分治法推论遗传网络的S系统模型

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This paper proposes an efficient evolutionary divide-and-conquer approach (EDACA) to inferring S-system models of genetic networks from time-series data of gene expression. Inference of an S-system model has 2N(N+1) parameters to be optimized, where N is the number of genes in a genetic network. To cope with higher dimensionality, the proposed approach consists of two stages where each uses a divide-and-conquer strategy. The optimization problem is first decomposed into N subproblems having 2(N+1) parameters each. At the first stage, each subproblem is solved using a novel intelligent genetic algorithm (IGA) with intelligent crossover based on orthogonal experimental design (OED). The intelligent crossover divides two parents into n pairs of parameter groups, economically identifies the potentially better one of two groups of each pair, and systematically obtains a potentially good approximation to the best one of all 2/sup n/ combinations using at most 2n function evaluations. At the second stage, the obtained N solutions to the N subproblems are combined and refined using an OED-based simulated annealing algorithm (OSA) for handling noisy gene expression data. The effectiveness of EDACA is evaluated using simulated expression patterns with/without noise running on a single-CPU PC. It is shown that: 1) IGA is efficient enough to solve subproblems; 2) IGA is significantly superior to the existing method of using GA with simplex crossover; and 3) EDACA performs well in inferring S-system models of genetic networks from small-noise gene expression data.
机译:本文提出了一种有效的进化分治法(EDACA),可以从基因表达的时间序列数据推断出遗传网络的S系统模型。 S系统模型的推论具有2N(N + 1)个参数需要优化,其中N是遗传网络中基因的数量。为了应对更高的维度,建议的方法包括两个阶段,每个阶段均采用分而治之的策略。首先将优化问题分解为N个子问题,每个子问题具有2(N + 1)个参数。在第一阶段,使用基于正交实验设计(OED)的具有智能交叉功能的新型智能遗传算法(IGA)解决每个子问题。智能分频器将两个父级分为n对参数组,经济地识别每对中的两个组中可能更好的一组,并使用最多2n个函数系统地获得所有2 / sup n /组合中最好的一个的潜在良好近似值评估。在第二阶段,使用基于OED的模拟退火算法(OSA)处理嘈杂的基因表达数据,对获得的N个子问题的N个解决方案进行合并和优化。 EDACA的有效性是通过在单CPU PC上运行有无噪声的模拟表达模式进行评估的。结果表明:1)IGA足够有效地解决子问题; 2)IGA明显优于使用具有单纯形交叉的GA的现有方法; (3)EDACA在从小噪声基因表达数据推断遗传网络的S系统模型方面表现良好。

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