基因调控网络的最优摄动控制

N. Bouaynaya, R. Shterenberg, D. Schonfeld
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引用次数: 2

摘要

我们将基因调控网络中的控制问题表述为一个逆扰动问题,它提供了一组可行的扰动,迫使网络从不希望的稳态分布过渡到理想的稳态分布。我们在适当的基表示中推导出这种扰动的一般表征。我们随后考虑最优摄动,使原始网络和控制(摄动)网络之间的总能量变化最小化。变化的“能量”由扰动矩阵的欧几里得范数表征。我们将最优控制问题转化为一个半确定规划问题,从而提供了一个全局最优解,该解可以使用标准的半确定规划解有效地计算。我们将所提出的控制应用于人类黑色素瘤基因调控网络,并表明稳态概率质量从不希望的高转移状态转移到所选择的稳态概率质量。
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Optimal perturbation control of gene regulatory networks
We formulate the control problem in gene regulatory networks as an inverse perturbation problem, which provides the feasible set of perturbations that force the network to transition from an undesirable steady-state distribution to a desirable one. We derive a general characterization of such perturbations in an appropriate basis representation. We subsequently consider the optimal perturbation, which minimizes the overall energy of change between the original and controlled (perturbed) networks. The “energy” of change is characterized by the Euclidean-norm of the perturbation matrix. We cast the optimal control problem as a semi-definite programming (SDP) problem, thus providing a globally optimal solution which can be efficiently computed using standard SDP solvers. We apply the proposed control to the Human melanoma gene regulatory network and show that the steady-state probability mass is shifted from the undesirable high metastatic states to the chosen steady-state probability mass.
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