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Optimization Based Inference of Metabolic Networks from M etabolome Data

机译:基于代谢组学数据的代谢网络优化推论

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An optimization-based network inference approach was developed and applied to in silico metabolome data of Escherichia coli and Saccharomyc-es cerevisiae. The steady-state metabolome data used were generated in silico by simulating kinetic models belonging to the investigated microorganisms. Lyapunov equation, which puts a link between Jacobian matrix of the system and the covariance matrix is the basis for the optimization based approach. Data-derived covariance matrix is the input to the underdetermined Lyapunov equation, which is used for the prediction of Jacobian matrix based on an objective function. Taking into account the sparsity of biological networks as cellular objective, a consistent mathematical objective function was chosen. Inference of the underlying metabolic network was performed based on a genetic-algorithm formulation. The approach results in promising inference of the metabolic networks in question. Sensitivity of the results to the approach is also investigated.
机译:开发了基于优化的网络推理方法,并将其应用于大肠杆菌和啤酒酵母的计算机代谢组数据。通过模拟属于研究微生物的动力学模型,在计算机上生成了所使用的稳态代谢组数据。 Lyapunov方程将系统的Jacobian矩阵与协方差矩阵联系起来,是基于优化的方法的基础。数据衍生的协方差矩阵是未确定的Lyapunov方程的输入,该方程用于基于目标函数的Jacobian矩阵预测。考虑到生物网络的稀疏性作为细胞目标,因此选择了一致的数学目标函数。基于遗传算法公式对基础代谢网络进行推断。该方法导致了有关代谢网络的有前途的推断。还研究了结果对方法的敏感性。

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