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AN ITERATIVE ALGORITHM FOR METABOLIC NETWORK-BASED DRUG TARGET IDENTIFICATION

机译:基于代谢网络的药物目标识别的迭代算法

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Post-genomic advances in bioinformatics have refined drug-design strategies, by focusing on the reduction of serious side-effects through the identification of enzymatic targets. We consider the problem of identifying the enzymes (i.e., drug targets), whose inhibition will stop the production of a given target set of compounds, while eliminating minimal number of non-target compounds. An exhaustive evaluation of all possible enzyme combinations to find the optimal solution subset may become computationally infeasible for very large metabolic networks. We propose a scalable iterative algorithm which computes a sub-optimal solution within reasonable time-bounds. Our algorithm is based on the intuition that we can arrive at a solution close to the optimal one by tracing backward from the target compounds. It evaluates immediate precursors of the target compounds and iteratively moves backwards to identify the enzymes whose inhibition will stop. The production of the target compounds while incurring minimum side-effects. We show that our algorithm converges to a sub-optimal solution within a finite number of such iterations. Our experiments on the E.Coli metabolic network show that the average accuracy of our method deviates from that of the exhaustive search only by 0.02 % . Our iterative algorithm is highly scalable. It can solve the problem for the entire metabolic network of Escherichia Coli in less than 10 seconds.
机译:生物信息学的后基因组学进展通过关注酶标靶的识别来减少严重的副作用,从而完善了药物设计策略。我们考虑鉴定酶(即药物靶标)的问题,其抑制作用将停止产生给定的靶标化合物组,同时消除最少数量的非靶标化合物。对于非常大的代谢网络,穷举评估所有可能的酶组合以找到最佳溶液子集可能在计算上不可行。我们提出了一种可伸缩的迭代算法,该算法可在合理的时限内计算次优解决方案。我们的算法基于这样的直觉,即我们可以通过从目标化合物向后追溯来找到接近最佳解的解决方案。它评估目标化合物的直接前体,并反复向后移动,以识别其抑制作用将终止的酶。在产生最小副作用的同时生产目标化合物。我们表明,我们的算法在有限数量的此类迭代内收敛到次优解。我们在大肠杆菌代谢网络上的实验表明,我们方法的平均准确性与穷举搜索的准确性仅相差0.02%。我们的迭代算法具有高度的可扩展性。它可以在不到10秒的时间内解决整个大肠杆菌的代谢网络问题。

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