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Enhanced stochastic optimization algorithm for finding effective multi-target therapeutics

机译:增强的随机优化算法,用于寻找有效的多目标治疗药物

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BackgroundFor treating a complex disease such as cancer, we need effective means to control the biological network that underlies the disease. However, biological networks are typically robust to external perturbations, making it difficult to beneficially alter the network dynamics by controlling a single target. In fact, multi-target therapeutics is often more effective compared to monotherapies, and combinatory drugs are commonly used these days for treating various diseases. A practical challenge in combination therapy is that the number of possible drug combinations increases exponentially, which makes the prediction of the optimal drug combination a difficult combinatorial optimization problem. Recently, a stochastic optimization algorithm called the Gur Game algorithm was proposed for drug optimization, which was shown to be very efficient in finding potent drug combinations.ResultsIn this paper, we propose a novel stochastic optimization algorithm that can be used for effective optimization of combinatory drugs. The proposed algorithm analyzes how the concentration change of a specific drug affects the overall drug response, thereby making an informed guess on how the concentration should be updated to improve the drug response. We evaluated the performance of the proposed algorithm based on various drug response functions, and compared it with the Gur Game algorithm.ConclusionsNumerical experiments clearly show that the proposed algorithm significantly outperforms the original Gur Game algorithm, in terms of reliability and efficiency. This enhanced optimization algorithm can provide an effective framework for identifying potent drug combinations that lead to optimal drug response.
机译:背景技术对于治疗诸如癌症的复杂疾病,我们需要有效的手段来控制构成该疾病基础的生物网络。然而,生物网络通常对外部扰动具有鲁棒性,使得难以通过控制单个目标来有益地改变网络动态。实际上,与单一疗法相比,多靶点疗法通常更有效,并且如今组合药物通常用于治疗各种疾病。组合疗法中的一个实际挑战是可能的药物组合数量成倍增加,这使得对最佳药物组合的预测成为困难的组合优化问题。最近,提出了一种用于药物优化的随机优化算法,称为Gur Game算法,被证明在寻找有效的药物组合方面非常有效。结果在本文中,我们提出了一种新颖的随机优化算法,可用于组合药物的有效优化。毒品。所提出的算法分析了特定药物的浓度变化如何影响整体药物反应,从而就如何更新浓度以改善药物反应做出明智的猜测。我们基于各种药物反应函数评估了该算法的性能,并将其与Gur Game算法进行了比较。结论数值实验清楚地表明,该算法在可靠性和效率上均明显优于原始Gur Game算法。这种增强的优化算法可以为识别导致最佳药物反应的有效药物组合提供有效的框架。

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