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An integer optimization approach for reverse engineering of gene regulatory networks

机译:基因调控网络逆向工程的整数优化方法

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Gene regulatory networks are a common tool to describe the chemical interactions between genes in a living cell. This paper considers the Weighted Gene Regulatory Network (WGRN) problem, which consists in identifying a reduced set of interesting candidate regulatory elements which can explain the expression of all other genes. We provide an integer programming formulation based on a graph model and derive from it a branch-and-bound algorithm which exploits the Lagrangian relaxation of suitable constraints. This allows to determine lower bounds tighter than CPLEX on most benchmark instances, with the exception of the sparser ones. In order to determine feasible solutions for the problem, which appears to be a hard task for general-purpose solvers, we also develop and compare two metaheuristic approaches, namely a Tabu Search and a Variable Neighborhood Search algorithm. The experiments performed on both of them suggest that diversification is a key feature to solve the problem.
机译:基因调控网络是描述活细胞中基因之间化学相互作用的常用工具。本文考虑了加权基因调控网络(WGRN)问题,该问题在于确定减少的一组有趣的候选调控元件,这些元件可以解释所有其他基因的表达。我们提供了基于图模型的整数规划公式,并从中推导了分支定界算法,该算法利用了适当约束的拉格朗日松弛。这样,在大多数基准测试实例上,可以确定比CPLEX更严格的下限,但稀疏实例除外。为了确定该问题的可行解决方案,这似乎是通用解决方案的艰巨任务,我们还开发和比较了两种元启发式方法,即禁忌搜索和可变邻域搜索算法。对它们两个进行的实验表明,多样化是解决该问题的关键特征。

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